This document is a thesis submitted by Micheil Gordon to Cranfield University in partial fulfillment of a Master's degree in Advanced Mechanical Engineering. The thesis presents a numerical model to perform an integrated fatigue analysis of offshore wind turbines and monopile foundations considering both wind and wave loading. The model is used to explore how different wind and wave superposition methodologies affect the final system fatigue life. Sensitivity analyses are conducted and results are found to agree with literature, indicating little difference between two superposition methods when rounded to one decimal place.
Energy Systems Optimization of a Shopping Mall: The present study focuses on the development of software (general mathematical optimization model) which has the following characteristics:
β’ It will be able to find the optimal combination of installed equipment (power & heat generation etc) in a Shopping Mall (micro-grid)
β’ With multi-objective to maximize the cost at the same time as minimizing the environmental impacts (i.e. CO2 emissions).
β’ To date, this tool is scarce to the industry (similar to DER-CAM, Homer).
Energy Systems Optimization of a Shopping Mall: The present study focuses on the development of software (general mathematical optimization model) which has the following characteristics:
β’ It will be able to find the optimal combination of installed equipment (power & heat generation etc) in a Shopping Mall (micro-grid)
β’ With multi-objective to maximize the cost at the same time as minimizing the environmental impacts (i.e. CO2 emissions).
β’ To date, this tool is scarce to the industry (similar to DER-CAM, Homer).
International Journal of Engineering Research and Development (IJERD)IJERD Editor
Β
journal publishing, how to publish research paper, Call For research paper, international journal, publishing a paper, IJERD, journal of science and technology, how to get a research paper published, publishing a paper, publishing of journal, publishing of research paper, reserach and review articles, IJERD Journal, How to publish your research paper, publish research paper, open access engineering journal, Engineering journal, Mathemetics journal, Physics journal, Chemistry journal, Computer Engineering, Computer Science journal, how to submit your paper, peer reviw journal, indexed journal, reserach and review articles, engineering journal, www.ijerd.com, research journals,
yahoo journals, bing journals, International Journal of Engineering Research and Development, google journals, hard copy of journal
Experimental investigation, optimization and performance prediction of wind t...eSAT Journals
Β
Abstract Man has been doing business with Winds since a very long period of time; the wind power has been used as long as humans have put sails into the wind. For more than two millennia wind powered machines have ground grain and pumped water. This affiliation of man and wind is inexhaustible which makes Wind Energy a very significant and rapidly developing renewable energy sources in all over the world. But when it comes to electricity generation by harnessing the wind energy, indeed, it requires more technicality, since it requires a great need for correct and reliable installations of new wind turbines in a more optimized way for smooth operations and electricity productions, and for that, a precise knowledge of wind energy regime is a prerequisite for the efficient and optimized extraction of power from the wind. The main purpose of this paper is to present, in brief, wind potential and to perform an investigation on wind flow characteristics at RGPV Hill Top. In this work the recorded time series wind data for a period of five months as from july-2013 to November-2013 at the heights of 20 meters and 40 meters was fetched and analyzed for studying the observed wind climate, which was recorded by the NRG Symphonie Data logger wind mast installed at Energy Park, RGPV campus with an fixed averaging interval of 10 minutes, the analyzed data which was worked upon comprises of wind speed data in meter per second and its direction of flow in degrees. As a part of this work, the Wind Atlas Analysis and Application Program (WAsP) was employed to predict average mean-wind speeds for all directions for some desired sites. The influences of roughness of the terrain, for the area were also taken into consideration, followed by the vector map of the area. These data were analyzed using WAsP software and regional wind climate of the area was determined, leading to a wind resource map of the whole site, providing crucial details which helped in selecting the proposed turbine sites. Also, the AEP for the two already installed turbines was calculated.
Validation of wind resource assessment process based on CFD Jean-Claude Meteodyn
Β
Wind resource assessment requires nowadays more efficient tools to provide an accurate evaluation of production in order to reduce costs.As onshore wind farms are built in more complex terrains, it is necessary to find a new method to provide a fine evaluation of energy which reduces the error during the data extrapolation process. This explains why CFD models have become a standard for WRA in specific conditions.This presentation is focused on the wind speed and energy yield prediction carried out for a 29MW wind farm project. The accuracy of the wind modeling is investigated by the cross validation between the different met masts around the site. The net energy prediction P50 is compared against real wind farm performance data during a blind test organized by EWEA in 2013. More than 50 companies have been involved in order to compare methods results.
How to increase safety while at the same time reducing overall installation time and component damages? How to speed up offshore installation without compromising flexibility? Jesper MΓΈller, Senior Key Expert Offshore Installation at Siemens Wind Power, answers these and more questions in his presentation here: http://bit.ly/PresentationMoller
Support Vector Machine for Wind Speed PredictionIJRST Journal
Β
The energy is a vital input for the social and economic development of any nation. With increasing agricultural and industrial activities in the country, the demand for energy is also increasing. The increasing use of natural and renewable energy sources is needed to take the burden of our current dependency on fossil fuels. Development and analysis of renewable energy models helps utility in energy forecasting, planning, research and policy making. The wind power is a clean, inexhaustible, and almost a free source of energy. But the integration of wind parks with the power grid has resulted in many challenges for the utility in terms of commitment and control of power plants. As wind speed and wind direction fluctuate frequently, the accurate long-term and short-term forecasting of wind speed is important for ascertaining the wind power generation availability. To deal with wind speed forecasting, many methods have been developed such as physical method, which use lots of physical considerations to reach the best forecasting precision and other is the statistical method, which specializes in finding the relationship of the measured power data. Wind speed can be predicted by using time series analysis, artificial neural network, Kalman Filter method, linear prediction method, spatial correlation models and wavelet, also by using the support vector machines. In this paper, the SVM is used for day ahead prediction of wind speed using historical data of wind park. In this paper Support Vector Machine (SVM) results are compared with feedforward Backpropagation neural network. It is observed that the Mean Absolute Percentage Error (MAPE) by SVM method is around 7% and correlation coefficient is close to 1. This justifies the ability of SVM for wind speed prediction task than Backpropagation algorithm.
This paper develops a hybrid Measure-Correlate-Predict (MCP) strategy to predict the long term wind resource variations at a farm site. The hybrid MCP method uses the recorded data of multiple reference stations to estimate the long term wind condition at the target farm site. The weight of each reference station in the hybrid strategy is determined based on: (i) the distance and (ii) the elevation difference between the target farm site and each reference station. The applicability of the proposed hybrid strategy is investigated using four different MCP methods: (i) linear regression; (ii) variance ratio; (iii) Weibull scale; and (iv) Artificial Neural Networks (ANNs). To implement this method, we use the hourly averaged wind data recorded at six stations in North Dakota between the year 2008 and 2010. The station Pillsbury is selected as the target farm site. The recorded data at the other five stations
(Dazey, Galesbury, Hillsboro, Mayville and Prosper) is used as reference station data. Three sets of performance metrics are used to evaluate the hybrid MCP method. The first set of metrics analyze the statistical performance, including the mean wind speed, the wind speed variance, the root mean squared error, and the maximum absolute error. The second set of metrics evaluate the distribution of long term wind speed; to this end, the Weibull distribution and the Multivariate and Multimodal Wind Distribution (MMWD) models are adopted in this paper. The third set of metrics analyze the energy production capacity and the efficiency of the wind farm. The results illustrate that the many-to-one correlation in such a hybrid approach can provide more reliable prediction of the long term onsite wind variations, compared to one-to-one correlations.
The maintenance cost of wind farms is one of the major factors influencing the prof- itability of wind projects. During preventive maintenance, the shutdown of wind turbines results in downtime wind energy losses. Appropriate determination of when to perform maintenance and which turbine(s) to maintain can reduce the overall downtime losses sig- nificantly. This paper uses a wind farm power generation model to evaluate downtime energy losses during preventive maintenance for a given group of wind turbines in the en- tire array. Wakes effects are taken into account to accurately estimate energy production over a specified time period. In addition to wind condition, the influence of wake effects is a critical factor in determining the selection of turbine(s) under maintenance. To min- imize the overall downtime loss of an offshore wind farm due to preventive maintenance, an optimal scheduling problem is formulated that selects the maintenance time of each turbine. Weather conditions are imposed as constraints to ensure the safety of mainte- nance personnel, transportation, and tooling infrastructure. A genetic algorithm is used to solve the optimal scheduling problem. The maintenance scheduling is optimized for a utility-scale offshore wind farm with 25 turbines. The optimized schedule not only reduces the overall downtime loss by selecting the maintenance dates when wind speed is low, but also considers the wake effects among turbines. Under given wind direction, the turbines under maintenance are usually the ones that can generate strong wake effects on others during certain wind conditions, or the ones that generate relatively less power being under excessive wake effects.
International Journal of Engineering Research and Development (IJERD)IJERD Editor
Β
journal publishing, how to publish research paper, Call For research paper, international journal, publishing a paper, IJERD, journal of science and technology, how to get a research paper published, publishing a paper, publishing of journal, publishing of research paper, reserach and review articles, IJERD Journal, How to publish your research paper, publish research paper, open access engineering journal, Engineering journal, Mathemetics journal, Physics journal, Chemistry journal, Computer Engineering, Computer Science journal, how to submit your paper, peer reviw journal, indexed journal, reserach and review articles, engineering journal, www.ijerd.com, research journals,
yahoo journals, bing journals, International Journal of Engineering Research and Development, google journals, hard copy of journal
Experimental investigation, optimization and performance prediction of wind t...eSAT Journals
Β
Abstract Man has been doing business with Winds since a very long period of time; the wind power has been used as long as humans have put sails into the wind. For more than two millennia wind powered machines have ground grain and pumped water. This affiliation of man and wind is inexhaustible which makes Wind Energy a very significant and rapidly developing renewable energy sources in all over the world. But when it comes to electricity generation by harnessing the wind energy, indeed, it requires more technicality, since it requires a great need for correct and reliable installations of new wind turbines in a more optimized way for smooth operations and electricity productions, and for that, a precise knowledge of wind energy regime is a prerequisite for the efficient and optimized extraction of power from the wind. The main purpose of this paper is to present, in brief, wind potential and to perform an investigation on wind flow characteristics at RGPV Hill Top. In this work the recorded time series wind data for a period of five months as from july-2013 to November-2013 at the heights of 20 meters and 40 meters was fetched and analyzed for studying the observed wind climate, which was recorded by the NRG Symphonie Data logger wind mast installed at Energy Park, RGPV campus with an fixed averaging interval of 10 minutes, the analyzed data which was worked upon comprises of wind speed data in meter per second and its direction of flow in degrees. As a part of this work, the Wind Atlas Analysis and Application Program (WAsP) was employed to predict average mean-wind speeds for all directions for some desired sites. The influences of roughness of the terrain, for the area were also taken into consideration, followed by the vector map of the area. These data were analyzed using WAsP software and regional wind climate of the area was determined, leading to a wind resource map of the whole site, providing crucial details which helped in selecting the proposed turbine sites. Also, the AEP for the two already installed turbines was calculated.
Validation of wind resource assessment process based on CFD Jean-Claude Meteodyn
Β
Wind resource assessment requires nowadays more efficient tools to provide an accurate evaluation of production in order to reduce costs.As onshore wind farms are built in more complex terrains, it is necessary to find a new method to provide a fine evaluation of energy which reduces the error during the data extrapolation process. This explains why CFD models have become a standard for WRA in specific conditions.This presentation is focused on the wind speed and energy yield prediction carried out for a 29MW wind farm project. The accuracy of the wind modeling is investigated by the cross validation between the different met masts around the site. The net energy prediction P50 is compared against real wind farm performance data during a blind test organized by EWEA in 2013. More than 50 companies have been involved in order to compare methods results.
How to increase safety while at the same time reducing overall installation time and component damages? How to speed up offshore installation without compromising flexibility? Jesper MΓΈller, Senior Key Expert Offshore Installation at Siemens Wind Power, answers these and more questions in his presentation here: http://bit.ly/PresentationMoller
Support Vector Machine for Wind Speed PredictionIJRST Journal
Β
The energy is a vital input for the social and economic development of any nation. With increasing agricultural and industrial activities in the country, the demand for energy is also increasing. The increasing use of natural and renewable energy sources is needed to take the burden of our current dependency on fossil fuels. Development and analysis of renewable energy models helps utility in energy forecasting, planning, research and policy making. The wind power is a clean, inexhaustible, and almost a free source of energy. But the integration of wind parks with the power grid has resulted in many challenges for the utility in terms of commitment and control of power plants. As wind speed and wind direction fluctuate frequently, the accurate long-term and short-term forecasting of wind speed is important for ascertaining the wind power generation availability. To deal with wind speed forecasting, many methods have been developed such as physical method, which use lots of physical considerations to reach the best forecasting precision and other is the statistical method, which specializes in finding the relationship of the measured power data. Wind speed can be predicted by using time series analysis, artificial neural network, Kalman Filter method, linear prediction method, spatial correlation models and wavelet, also by using the support vector machines. In this paper, the SVM is used for day ahead prediction of wind speed using historical data of wind park. In this paper Support Vector Machine (SVM) results are compared with feedforward Backpropagation neural network. It is observed that the Mean Absolute Percentage Error (MAPE) by SVM method is around 7% and correlation coefficient is close to 1. This justifies the ability of SVM for wind speed prediction task than Backpropagation algorithm.
This paper develops a hybrid Measure-Correlate-Predict (MCP) strategy to predict the long term wind resource variations at a farm site. The hybrid MCP method uses the recorded data of multiple reference stations to estimate the long term wind condition at the target farm site. The weight of each reference station in the hybrid strategy is determined based on: (i) the distance and (ii) the elevation difference between the target farm site and each reference station. The applicability of the proposed hybrid strategy is investigated using four different MCP methods: (i) linear regression; (ii) variance ratio; (iii) Weibull scale; and (iv) Artificial Neural Networks (ANNs). To implement this method, we use the hourly averaged wind data recorded at six stations in North Dakota between the year 2008 and 2010. The station Pillsbury is selected as the target farm site. The recorded data at the other five stations
(Dazey, Galesbury, Hillsboro, Mayville and Prosper) is used as reference station data. Three sets of performance metrics are used to evaluate the hybrid MCP method. The first set of metrics analyze the statistical performance, including the mean wind speed, the wind speed variance, the root mean squared error, and the maximum absolute error. The second set of metrics evaluate the distribution of long term wind speed; to this end, the Weibull distribution and the Multivariate and Multimodal Wind Distribution (MMWD) models are adopted in this paper. The third set of metrics analyze the energy production capacity and the efficiency of the wind farm. The results illustrate that the many-to-one correlation in such a hybrid approach can provide more reliable prediction of the long term onsite wind variations, compared to one-to-one correlations.
The maintenance cost of wind farms is one of the major factors influencing the prof- itability of wind projects. During preventive maintenance, the shutdown of wind turbines results in downtime wind energy losses. Appropriate determination of when to perform maintenance and which turbine(s) to maintain can reduce the overall downtime losses sig- nificantly. This paper uses a wind farm power generation model to evaluate downtime energy losses during preventive maintenance for a given group of wind turbines in the en- tire array. Wakes effects are taken into account to accurately estimate energy production over a specified time period. In addition to wind condition, the influence of wake effects is a critical factor in determining the selection of turbine(s) under maintenance. To min- imize the overall downtime loss of an offshore wind farm due to preventive maintenance, an optimal scheduling problem is formulated that selects the maintenance time of each turbine. Weather conditions are imposed as constraints to ensure the safety of mainte- nance personnel, transportation, and tooling infrastructure. A genetic algorithm is used to solve the optimal scheduling problem. The maintenance scheduling is optimized for a utility-scale offshore wind farm with 25 turbines. The optimized schedule not only reduces the overall downtime loss by selecting the maintenance dates when wind speed is low, but also considers the wake effects among turbines. Under given wind direction, the turbines under maintenance are usually the ones that can generate strong wake effects on others during certain wind conditions, or the ones that generate relatively less power being under excessive wake effects.
Semester Project 3: Security of Power SupplySΓΈren Aagaard
Β
The project is about the security of power supply, both current and in the future. Renewable energys part, of the total electricity production will continue to grow in the following years, this will be illuminated and analyzed.
The applicable legislation will be provided and explained to help grasping the legal aspect of the security of power supply.
The economical optimum power supply will be calculated, to help evaluate if it is profitable to uphold Denmarks high security of power supply.
To provide a more practical view, a model of the powergrid has come together, analysing how the grid react to the strain caused by errors, to help fathom by which criteria the grid is constructed.
This report consists of the analysis of results of evaluation of a 3inch diameter silicon wafer that was fabricated in the clean room at USC under Professor. Kaviani. The wafer consists of resistors, capacitors, MOSFETs and diodes. The device was tested and the results are used to characterize the device. The whole process was done in 100 class clean room, the Powell Foundation Instructional Laboratory. This report will show the calculations performed to do an analysis of the results and will aim to offer an insight into the theory behind the operation of these devices.
Multidimensional optimal droop control for wind resources in dc m 2vikram anand
Β
The strategy is based on an autonomous distributed control
scheme in which the DC bus voltage level is used as an indicator of the power balance in the
microgrid. The autonomous control strategy does not rely on communication links or a
central controller, resulting in reduced costs and enhanced reliability. As part of the control
strategy, an adaptive droop control technique is proposed for PV sources in order to
maximize the utilization of power available from these sources while ensuring acceptable
levels of system voltage regulation
1. CRANFIELD UNIVERSITY
Micheil Gordon
Integrated Fatigue Analysis of an Offshore Wind Turbine and
Monopile Foundation
School of Energy, Environment and Agrifood
Advanced Mechanical Engineering
MSc
Academic Year: 2014 - 2015
Supervisor: Professor Feargal Brennan
September 2015
5. i
ABSTRACT
Fatigue is a major concern for the design of offshore wind turbines with monopile
foundations as a result of the very high number of cyclic loads the system
experiences over its lifetime. This investigation presents a numerical model in
Matlab capable of performing an integrated wind and wave loading fatigue
analysis of an offshore wind turbine and monopile foundation. Subsequently the
model has been used to explore how different wind and wave superposition
methodologies effect the final system fatigue life. The results were found to agree
with the literature and indicated that there is no difference between using the out-
of-phase spectral superposition or KΓΌhnβs unweighted equivalent method when
rounded to one decimal place. Full explanations and discussions are provided
throughout.
Keywords:
Morison Equation, Wave Theories, Time Domain, Frequency Domain, Fourier
Transform, Actuator Disk Theory, Mudline Bending Stress, Power Spectra
Density, Damage Equivalent Stress Range
6.
7. iii
ACKNOWLEDGEMENTS
Firstly, I would like to express my sincere gratitude to my thesis supervisor
Professor Feargal Brennan who despite his busy schedule, always found time to
sit down and discuss my concerns whenever I was in need. I would also like to
thank two of my student colleagues, Marc and Emily for their continued help with
some of the more advanced mathematics used in the study. And finally thank you
to my girlfriend and family for mental and financial support over the last year,
which without, this would have never been possible.
8.
9. v
TABLE OF CONTENTS
ABSTRACT ......................................................................................................... i
ACKNOWLEDGEMENTS...................................................................................iii
LIST OF FIGURES............................................................................................vii
LIST OF TABLES...............................................................................................ix
LIST OF EQUATIONS........................................................................................ x
LIST OF ABBREVIATIONS.............................................................................. xiii
1 INTRODUCTION............................................................................................. 1
1.1 Offshore Wind Turbine Fatigue................................................................. 3
1.2 Fatigue Analysis Methods......................................................................... 4
1.2.1 Minerβs Rule ....................................................................................... 5
1.2.2 Deterministic Method.......................................................................... 6
1.2.3 Time Domain...................................................................................... 6
1.2.4 Frequency Domain............................................................................. 8
1.3 Aim and Objectives................................................................................. 10
2 METHODOLOGY.......................................................................................... 11
2.1 Methodology Overview Flowchart........................................................... 12
2.2 Reference Parameters............................................................................ 13
2.2.1 Reference Site Conditions................................................................ 13
2.2.2 Reference Wind Turbine and Foundation Parameters ..................... 14
2.3 Wave Loading......................................................................................... 17
2.3.1 Wave Climate................................................................................... 17
2.3.2 Wave Spectra................................................................................... 18
2.3.3 Wave Kinematics ............................................................................. 22
2.3.4 Airy Linear Wave Theory.................................................................. 23
2.3.5 Stokes Second Order Wave Theory................................................. 26
2.3.6 Morison Equation ............................................................................. 26
2.4 Wind Loading.......................................................................................... 29
2.4.1 Wind Climate.................................................................................... 29
2.4.2 Normal Wind Conditions................................................................... 29
2.4.3 Wind Modelling................................................................................. 30
2.5 System Response from Wind Loading.................................................... 36
2.5.1 Tower Top Displacement Transfer Function .................................... 38
2.6 System Response from Wave Loading................................................... 41
2.6.1 MWL Displacement Transfer Function ............................................. 41
2.7 Mudline Bending Stress from Wind......................................................... 44
2.7.1 Mudline Wind Bending Stress Transfer Function ............................. 44
2.7.2 Power Spectral Density of the Turbulent Thrust Force on the Rotor
.................................................................................................................. 45
2.7.3 Mudline Bending Stress Spectrum from Wind Loading .................... 46
2.7.4 Mudline Bending Stress Time Series ............................................... 49
10. vi
2.8 Mudline Bending Stress from Wave........................................................ 52
2.8.1 Mudline Wave Bending Stress Transfer Function ............................ 52
2.8.2 Power Spectral Density of Wave Loading ........................................ 53
2.8.3 Mudline Bending Stress Spectrum from Wave Loading ................... 55
2.8.4 Mudline Bending Stress Time Series ............................................... 57
2.9 Rainflow Counting and Damage Equivalent Stress Range..................... 59
2.10 Wind and Wave Loading Superposition................................................ 60
3 RESULTS...................................................................................................... 61
3.1 Sensitivity Analyses ................................................................................ 61
3.2 Superposition of the Wind and Wave Stresses Before and After
Rainflow Counting......................................................................................... 62
3.3 Summary of Results................................................................................ 63
4 DISCUSSION................................................................................................ 65
4.1 Evaluating Airy and Stokes Second Order Wave Theories..................... 65
4.2 Significance of the Drag Term in the Morison Equation.......................... 67
4.3 Fatigue Loading Regimes....................................................................... 68
4.4 Results.................................................................................................... 69
4.4.1 Simulation Length ............................................................................ 70
4.4.2 Spectral Multiplication ...................................................................... 70
4.4.3 System Response ............................................................................ 71
4.4.4 Final Results Analysis ...................................................................... 71
4.5 Areas for Future Investigations ............................................................... 74
5 CONCLUSIONS............................................................................................ 75
REFERENCES................................................................................................. 77
APPENDICES .................................................................................................. 81
Appendix A UK Significant Wave Heights..................................................... 81
Appendix B Equations for Airy Linear and Stokeβs 2nd Order Wave Theories
...................................................................................................................... 82
Appendix C Integration of Airy Linear Wave Theory over Depth................... 83
Appendix D Integration of Stokeβs 2nd Order Wave Theory over Depth ........ 87
Appendix E Actuator Disk Theory................................................................. 89
Appendix F Wind Turbulence Intensity Factor .............................................. 91
Appendix G Wind Speed Distribution............................................................ 92
Appendix H Wind Turbulence ....................................................................... 97
Appendix I Finding the Tower Top Stiffness ............................................... 104
Appendix J Finding the MWL Stiffness ....................................................... 105
Appendix K Mudline Wind Bending Stress Transfer Function..................... 108
Appendix L Turbulent Thrust Force PSD .................................................... 110
Appendix M List of S-N Curves................................................................... 112
11. vii
LIST OF FIGURES
Figure 1: Global wind power (Gsanger and Pitteloud, 2013).............................. 1
Figure 2: S-N curves for steel structures in seawater with cathodic protection (Det
Norske Veritas, 2012).................................................................................. 5
Figure 3: Time based fatigue determination of fatigue damage from wave loading
(Passon, 2015) ............................................................................................ 7
Figure 4: Methodology flow chart ..................................................................... 12
Figure 5: Offshore wind activity in Europe (Lynn, 2011)................................... 13
Figure 6: Wave spectra .................................................................................... 20
Figure 7: Free surface elevation time series from JONSWAP spectrum .......... 22
Figure 8: Ranges of validity for a variety of wave theories (Det Norske Veritas,
2014) ......................................................................................................... 23
Figure 9: Water particle motion (Veldkamp and Van Der Tempel, 2005) ......... 24
Figure 10: Actuator disk model (Manwell et al., 2009)...................................... 30
Figure 11: Number of occurrences of 10min wind speed intervals in one year with
wind speed bins 1m/s wide........................................................................ 33
Figure 12: Kaimal spectrum for mean wind speed from 3.5m/s to 24.5m/s and
with a turbulence intensity of 12% ............................................................. 35
Figure 13: Offshore wind system modelled as a 1 degree of freedom mass-on-
pole system (Van Der Tempel, 2006) ........................................................ 36
Figure 14: Transfer function of tower top displacement for the NREL reference
turbine with its respective foundation properties (peak=0.6330Hz) ........... 40
Figure 15: Transfer function of MWL displacement for the NREL reference turbine
with its respective foundation properties (peak=8.1652Hz) ....................... 42
Figure 16: Transfer function for mudline bending stress from wind loading ..... 44
Figure 17: PSDs of the turbulent thrust force on the rotor at each operational
mean wind speed with a 12% turbulence intensity .................................... 46
Figure 18: Process to find the mudline bending stress spectrum from wind loading
.................................................................................................................. 48
Figure 19: Mudline bending stress Spectrum from wind loading ...................... 49
Figure 20: Mudline bending stress for 10min mean wind speed of 10.5m/s..... 51
Figure 21: Transfer function for mudline bending stress from wave loading .... 53
Figure 22: PSD of the wave loading integrated over the depth ........................ 55
12. viii
Figure 23: Process to find the mudline bending stress from wave loading....... 56
Figure 24: Mudline bending stress Spectrum from wave loading ..................... 57
Figure 25: Mudline bending stress from wave loading ..................................... 58
Figure 26: Comparing results using Airy and Stokes 2nd order wave theories.. 66
Figure 27: Significance of the Drag term in the Morison Equation (no marine
growth)....................................................................................................... 67
Figure 28: Significance of the Drag term in the Morison Equation (with marine
growth)....................................................................................................... 68
Figure 29: In-phase versus out of phase superposition (KΓΌhn, 2001) .............. 72
Figure 30: Significant wave height around the UK (ABP mer, 2008)................ 81
Figure 31: Airy and Stokeβs 2nd order wave theories (Det Norske Veritas, 2010)
.................................................................................................................. 82
Figure 32: Turbulence intensity as a function of mean wind speed (Van Der
Tempel, 2006) ........................................................................................... 91
Figure 33: Turbulence intensity as a function of mean wind speed (Burton et al.,
2011) ......................................................................................................... 91
Figure 34: Weibull probability density function when πΌ = 6m/s (Manwell et al.,
2009) ......................................................................................................... 93
Figure 35: Yearly average wind speed at 100m elevation in European waters
(Van Der Tempel, 2006) ............................................................................ 94
Figure 36: Weibull distribution for mean annual wind speed = 10m/s and SD=4.8
.................................................................................................................. 95
Figure 37: Example of the wind spped probability for a 1m/s wind speed bin (Lynn,
2011) ......................................................................................................... 95
Figure 38: Ten minute mean wind speed from 0.5m/s to 9.5m/s with turbulence
superimposed on top ................................................................................. 98
Figure 39: Ten minute mean wind speed from 10.5m/s to 19.5m/s with turbulence
superimposed on top ................................................................................. 99
Figure 40: Ten minute mean wind speed from 20.5m/s to 29.5m/s with turbulence
superimposed on top ............................................................................... 100
Figure 41: One month of wind speed data ..................................................... 101
Figure 42: Wind loading over a one month period.......................................... 103
Figure 43: Finding the tower top displacement transfer function .................... 104
13. ix
LIST OF TABLES
Table 1: Site reference parameters.................................................................. 14
Table 2: Turbine and foundation reference parameters ................................... 16
Table 3: Wave parameters (Det Norske Veritas, 2010, Van Der Tempel, 2006)
.................................................................................................................. 18
Table 4: Wave number determination using two methods................................ 26
Table 5: Finding the tower top stiffness............................................................ 39
Table 6: Sensitivity analysis ............................................................................. 61
Table 7: Results summary table....................................................................... 64
Table 8: Finding the axial induction factor for a turbine with a Cp=0.482 ......... 89
Table 9: Turbine thrust calculation parameters .............................................. 102
Table 10: S-N curves for most frequently used structural details β Reproduced
from DNV-J101 (Det Norske Veritas, 2014)............................................. 112
14. x
LIST OF EQUATIONS
Equation 1: Miners Rule ..................................................................................... 6
Equation 2: Pierson-Moskowitz wave spectrum ............................................... 19
Equation 3: JONSWAP wave spectrum ........................................................... 19
Equation 4: Normalizing factor ......................................................................... 19
Equation 5: Peak Period................................................................................... 19
Equation 6: Peak frequency ............................................................................. 19
Equation 7: Spectral width parameter .............................................................. 19
Equation 8: Wave amplitude components ........................................................ 21
Equation 9: Free surface elevation................................................................... 21
Equation 10: Horizontal water particle velocity (Airy) ....................................... 24
Equation 11: Horizontal water particle acceleration (Airy) ................................ 24
Equation 12: Wave number.............................................................................. 24
Equation 13: Wave length (for Airy shallow water and Stokes 2nd order) ......... 25
Equation 14: Wave celerity (for Airy shallow water and Stokes 2nd order)........ 25
Equation 15: Wave celerity (for Airy deep water) ............................................. 25
Equation 16: Dispersion relation....................................................................... 25
Equation 17: Morison Equation ........................................................................ 27
Equation 18: Thrust - Wind turbine................................................................... 31
Equation 19: Axial induction factor ................................................................... 31
Equation 20: Turbulence Intensity.................................................................... 34
Equation 21: Equation of motion ...................................................................... 37
Equation 22: Frequency response function for displacement........................... 37
Equation 23: Undamped natural frequency ...................................................... 37
Equation 24: Damping ratio.............................................................................. 38
Equation 25: Damping coefficient..................................................................... 38
Equation 26: Frequency response function for displacement........................... 38
Equation 27: Transfer function for the tower top displacement......................... 40
Equation 28: Transfer function for the MWL displacement............................... 42
15. xi
Equation 29: Transfer function for mudline bending stress from wind loading.. 45
Equation 30: Definition of PSD (1).................................................................... 46
Equation 31: Definition of PSD (2).................................................................... 47
Equation 32: Response spectrum of the mudline bending stress from wind
loading....................................................................................................... 47
Equation 33: Phasor form of a complex number .............................................. 50
Equation 34: Transfer function for mudline bending stress from wave loading 52
Equation 35: PSD wave loading integrated over depth .................................... 54
Equation 36: Response spectrum of the mudline bending stress from wind
loading....................................................................................................... 55
Equation 37: Damage equivalent stress range using KΓΌhnβs unweighted
equivalent method ..................................................................................... 62
Equation 38: Damage equivalent stress range direct superposition................. 63
Equation 39: SN curve ..................................................................................... 63
Equation 40: Power coefficient (1).................................................................... 89
Equation 41: Rotor power................................................................................. 89
Equation 42: Power coefficient (2).................................................................... 89
Equation 43: Weibull probability distribution..................................................... 92
Equation 44: Shape factor βkβ............................................................................ 92
Equation 45: Scale factor βcβ............................................................................. 92
Equation 46: Kaimal spectrum.......................................................................... 97
Equation 47: Integral scale parameter.............................................................. 97
Equation 48: Differential equation of the elastic curve.................................... 105
Equation 49: Moment ..................................................................................... 105
Equation 50: Equation of the elastic curve ..................................................... 105
Equation 51: Differential equation of the elastic curve.................................... 106
Equation 52: Simplified equation of the elastic curve where z=h.................... 106
Equation 53: Stiffness .................................................................................... 106
Equation 54: Stiffness at hub height............................................................... 107
Equation 55: Stiffness at the MWL (1)............................................................ 107
Equation 56: Stiffness at the MWL (2)............................................................ 107
16. xii
Equation 57: Flexure Formula (1) (Gere and Goodno, 2009)......................... 108
Equation 58: Flexure Formula (2)................................................................... 108
Equation 59: Deflection as a function of height .............................................. 108
Equation 60: Bending stress in terms of displacement................................... 108
Equation 61: Transfer function for mudline bending stress from wind loading 109
Equation 62: PSD of the turbulent thrust force on the rotor............................ 110
Equation 63: Normalised Kaimal spectrum .................................................... 110
Equation 64: Ten minute wind speed standard deviation (from Equation 20) 110
Equation 65: Thrust coefficient estimation (Frohboese et al., 2010)............... 111
17. xiii
LIST OF ABBREVIATIONS
BEM Blade Element Momentum Theory
DAF Dynamic Amplification Factor
DNV Det Norske Veritas
EEA European Environmental Agency
EWEA European Wind Energy Association
FFT Fast Fourier Transform
IFFT Inverse Fast Fourier Transform
JONSWAP Joint North Sea Wave Project
MWL Mean Water Level
NREL National Renewable Energy Laboratory
OWT Offshore Wind Turbine
PSD Power Spectral Density
RFC Rainflow Counting
TLP Tension Leg Platform
19. 1
1 INTRODUCTION
Worldwide renewable energy production has been increasing in recent years as
governments strive to meet environmental legislation, curtail dependence on
fossil fuel derived energy, address issues surrounding climate change as well as
lower CO2 emissions (Breton and Moe, 2009). Both onshore and offshore global
wind energy generation has witnessed yearly increases. In 1997 the total global
installed capacity was 7.5GW which rose, in 2012, to more than 282GW (refer to
Figure 1), and now represents a major contributor in the global electricity
production infrastructure (Gsanger and Pitteloud, 2013).
Figure 1: Global wind power (Gsanger and Pitteloud, 2013)
The wind energy sector in Europe currently have the largest installed wind power
generation capacity of any continent amounting to 128.8GW (EWEA, 2015).
However, Europeβs dominant position is being challenged by the Asian wind
energy markets driven by rapid expansion in China. In 2012 there were almost
100GW of installed capacity across the Asian continent (Gsanger and Pitteloud,
2013) and according to the World Wind Energy Association, by 2016, the global
wind energy capacity will reach 500GW and by 2020, 1000GW (Gsanger and
Pitteloud, 2013).
20. 2
In 2007 EU communities agreed to legislation that committed to generating 20%
of total energy consumed from green technologies by 2020 (Breton and Moe,
2009). Meanwhile the UK implemented a 15% renewable energy target to be
achieved before 2020 (DECC, 2011). The UK harbours some of the greatest wind
resources across Europe and as a result the number of wind farms have
increased consistently over the last couple of decades (MacKay, 2008). Presently
in the UK, there are 4,263 onshore and 1,075 offshore turbines with a total power
output of 6,937 MW and 3,653 MW respectively (Renewable UK, 2014).
Since the construction of the worldβs first offshore wind turbine off the coast of
Denmark in 1992, offshore wind, especially in Northern Europe, has undergone
a dramatic expansion and at present it is estimated that one in three wind
installations are located offshore (Gsanger and Pitteloud, 2013). There are
numerous reasons why the wind energy market is increasingly looking to move
offshore. European countries are characterised by high population densities and
as such, establishing suitable onshore wind farm locations is becoming
increasingly problematic. This is especially true of areas close to urban centres
where power demand is highest (Lynn, 2011). In addition, advances in wind
turbine technology have yielded more efficient technologies which capitalise on
economies of scale. With rotor diameters now in excess of 120m and set to
increase, onshore space as well as the limited capacity of the transportation
infrastructure has become a significant limitation to onshore wind (Lynn, 2011,
Jonkman, 2007). Furthermore, offshore wind farms benefit from greater, more
consistent wind speeds, an absence of noise disturbance and a reduction in
visual obstruction which has been the cause of public opposition since their
inception (Burton et al., 2011).
According to the The Crown Estate (2013), roughly 6% of all UK homes were
powered by offshore wind energy in 2012, with the UK currently leading the world
in offshore wind energy production. Currently 1 in every 2 offshore turbines
installed worldwide are located in the seas surrounding the British Isles (Gsanger
and Pitteloud, 2013).
21. 3
Despite their merits, offshore wind is subject to approximately one and a half to
two times greater financial costs than their onshore counterparts, are currently
limited to shallow waters below 30m of depth (Breton and Moe, 2009), and are
subjected to additional wave and current loads (Jonkman, 2007).
The augmented costs borne by offshore wind are attributed to installation and
maintenance, the logistics of subsea cabling to establish grid connectivity, as well
as the required complex foundation systems (EEA, 2009). According to the
European Environmental Agency (EEA) the cost of the offshore foundation
amounts to as much as 15% to 30% of the overall investment depending on the
water depth (EEA, 2009) and Greenpeace, (2000) cited in EEA (2009) found that
a depth increase from 8m to 16m resulted in a rise of 11% in foundation cost.
In the future, it is predicted that offshore wind turbine near shore site availability
will diminish pushing offshore wind turbines into sites with deeper waters and
harsher conditions. In response, the industry is investigating a number of
foundation solutions such as the tripod and jacked foundation as well as floating
options such as tension leg platforms (TLPβs), spar buoyβs and semi-
submersibles. For more information refer to Jonkman (2007). However in the
short to medium term it is imperative that design of the monopile foundation is as
cost efficient as possible and that fatigue damage as a result of the wind and
wave interactions is adequately designed for, resulting in an economical structure
that is fit for purpose for its entire design life (Lynn, 2011).
The proceeding section will consider the importance of fatigue in the design of
offshore wind turbines and monopile foundations, and some of the techniques
that have been developed to ensure adequate fatigue lives are achieved.
1.1 Offshore Wind Turbine Fatigue
Offshore wind turbine design requires the consideration of two fundamental
aspects that must be evaluated during the design process. The first is the ability
of the system to withstand the ultimate loading conditions likely to occur, and the
second is the ability of the system to withstand the continuous cyclic loading
which lead to accumulated fatigue damage (Manwell et al., 2009). This
22. 4
investigation is concerned with the more complex of the two, the fatigue of the
system.
Fatigue is caused by the repeated loading and unloading of a material resulting
in the formation of tiny internal cracks which propagate with every additional
loading cycle. Crack initiation is a result of the presence of small material defects
from manufacturing processes or from areas experiencing stress concentrations
(Patel, 1989).
Fatigue is a major concern for the design of offshore wind turbines (OWT) with
monopile foundations as a result of the very high number of cyclic loads the
system experiences over its lifetime. Under constant loading conditions, it is
assumed that a component able to endure 107 cycles will never fail from fatigue.
However, a typical wind turbine system can experience in excess of 108 cycles
over a 20 year lifetime (Burton et al., 2011). In addition, the slender shape and
form of the offshore wind turbine results in a system natural frequency that is very
close to the excitation frequencies from the wind, wave and mechanical loading
conditions (Arany et al., 2014). Thus, for reasons discussed, the design of OWTβs
are predominantly governed by fatigue rather than the ultimate load (Burton et
al., 2011, Dong et al., 2011), which in turn, is predominantly governed by wind
and wave loading (Passon and Branner, 2014). Therefore detailed fatigue
analyses, that take wind and wave loading into consideration, must be conducted
to enable adequate design concessions to ensure a system is fit for purpose
(Manwell et al., 2009). A number of the procedures used in OWT fatigue analyses
are presented below.
1.2 Fatigue Analysis Methods
There are currently three established methods used in the fatigue analysis of
offshore structures. These include the deterministic method, the time domain
method and the frequency domain method. Each method will be briefly
considered in the following sections.
23. 5
1.2.1 Minerβs Rule
Empirical fatigue investigations usually involve the application of cyclic loads to
test specimens under constant load amplitudes (Pook, 2007). The purpose of
such experiments is to establish the number of loading cycles a specimen can
withstand at that constant amplitude until failure occurs. The test data is then
plotted on a log-log scale to produce an S-N curve. Figure 2, reproduced from
Det Norske Veritas (2012), demonstrates a number of examples of S-N curves
for steel structures in seawater with cathodic protection.
Figure 2: S-N curves for steel structures in seawater with cathodic protection
(Det Norske Veritas, 2012)
The S-N curve can indicate accumulated fatigue damage of a component
manufactured from the specific specimen material for a number of load cycles
when subjected to a specified constant amplitude loading regime. However,
many industrial processes subject components to dynamic loading, in which case
Minerβs Rule is required.
Minerβs Rule makes allowances for loading regimes which involve different
amplitude stress cycles by grouping stress ranges with approximate equivalence
24. 6
and dividing by the total number of permitted cycles for that given stress range
(Equation 1) (Barltrop and Adams, 1991).
β
ππ
ππ
= 1 Equation 1: Miners Rule
Where:
ππ = Cycle number
ππ = Number of cycles at failure
Miner observed this linear relationship in 1945 which has come to be known as
Minerβs Rule, Palmgren-Minerβs Rule or alternatively as the linear damage rule
(Pook, 2007).
1.2.2 Deterministic Method
The deterministic fatigue analysis method is the most simplistic of the three, and
assumes that the loading regime can be described by representative loading
scenarios each with a defined number of loading cycles, over a specified time. A
stress is established for each load case and a total damage is found for that time
period (Barltrop and Adams, 1991).
The deterministic method is limited for situations where dynamic periodic loading
conditions prevail and where the structureβs natural frequency is close to the
excitation frequencies from the loading environment. Suitable scenarios for the
deterministic method include the extreme load analysis of jacket and gravity
based offshore structures and the fatigue analysis of fixed structures with short
periods (Barltrop and Adams, 1991). Therefore, a deterministic approach is not
recommended in the fatigue analysis of offshore wind turbines and other methods
should be explored.
1.2.3 Time Domain
Time domain calculations for offshore wind turbine fatigue evaluation require
either empirical wind and wave data over long periods of time or stochastic wind
and wave time series data generated from wind and wave spectra (KΓΌhn, 2001).
25. 7
Subsequently the wind and wave data is translated into a loading time series
which is used in combination with the specific structural model to deliver the
stress or strain time series taking into account the system response (Passon,
2015). This process is described for wave loading in Figure 3.
Figure 3: Time based fatigue determination of fatigue damage from wave loading
(Passon, 2015)
Time domain is particularly important for verification purposes and according to
Seidel et al. (2004), at the very minimum, the final fatigue calculations should be
performed in the time domain. Of the three approaches the time domain method
has the greatest ability to simulate the physical environment (KΓΌhn, 2001). All
non-linear loading interactions can be incorporated to provide a comprehensive
model with sufficiently accurate results for most design purposes (Van Der
Tempel, 2006).
However, simulations that represent real time environmental processes require
significant computing resources and must be conducted for lengthy time periods
in order to obtain sufficient accuracy (KΓΌhn, 2001). This became a significant
limitation during the 1980βs when the oil and gas industry were conducting fatigue
26. 8
analyses of oil platforms subjected to in excess of 70 load combinations acting
on the structure at any moment in time (Halfpenny, 1999).
Currently the offshore industry standard for fatigue analyses are for calculations
to be conducted in the frequency domain (Van Der Tempel, 2006) and the only
offshore fatigue calculations conducted in the time domain are for systems
demonstrating significant non-linearity, such as floating structures (KΓΌhn, 2001).
1.2.4 Frequency Domain
Frequency domain analysis also known as spectral analysis for fatigue
calculations, is an extremely powerful method for establishing the structural
response of linearly excited offshore systems (Seidel, 2014). Frequency domain
fatigue calculations increased significantly during the 1980βs and early 1990βs as
a method to mitigate a lack of computational resources required to perform
fatigue calculations in the time domain (Van Der Tempel, 2006). Structures
subject to dynamic loading from wind and waves are well suited to spectral fatigue
analysis due to:
a) The statistically stationary assumptions made for wind speeds and wave
amplitudes.
b) The ability to consider both wind and wave loading regimes independent during
the calculation process (Barltrop and Adams, 1991).
According to the offshore standard Det Norske Veritas (2014), wind speeds are
considered stationary over any given ten minute period with constant mean and
standard deviation, while for waves the stationary duration is assumed to last for
three hours (Det Norske Veritas, 2014). These assumptions permit the
independent calculation of the wind and wave spectra and the subsequent
separate calculation of the structural loading from these two sources of structural
excitation (Det Norske Veritas, 2014). Furthermore, offshore wind turbines with
monopile foundations experience a mudline bending stress that is linearly
proportional to both the wind speed and wave amplitude. Thus from the wind and
wave spectra two separate mudline bending stress spectra can be established in
a relatively straightforward fashion (Barltrop and Adams, 1991). The final process
27. 9
is the superposition of the system response from wind and wave loading to
establish the accumulative fatigue damage. Various approaches can be adopted
for these final stages and will be discussed and explored in greater detail in the
coming chapters.
Both the time and frequency domain approaches for fatigue analysis provide
equally acceptable methods for offshore wind turbines with monopile foundations
and are also entirely interchangeable via the Fourier transform (Van Der Tempel,
2006). Every signal can be described as values changing in time or by the
combination of the fundamental frequencies (Stein, 2000). By performing a
Fourier transformation the random time signal can be described by the sum of
numerous sine waves each with their own frequency, amplitude and phase thus
moving from the time to the frequency domain (Van Der Tempel, 2006). Equally
the inverse procedure can be performed to revert back to the time domain.
The spectral approach becomes limited for systems experiencing non-linearities
in the structureβs loading regime. For an offshore wind turbine system this occurs
from wave drag which is calculated using the Morison equation (section 2.3.6).
However, the literature states that for slender monopile foundations the wave
resistance is dominated by inertia, resulting in the ability to neglect the drag term
in the Morison equation thus making spectral analysis possible (Seidel, 2014,
Arany et al., 2014, Van Der Tempel, 2006).
Both the time and frequency domain methodologies are well suited to the fatigue
analysis of an offshore wind turbine and monopile structure. While the time
domain represents a specific stochastic process over a specific moment in time,
the frequency domain describes every stochastic possibility (Van Der Tempel,
2006). For the reasons discussed above, the majority of this investigation has
been conducted in the frequency domain to simplify the procedure and to limit
the computational resources required for the analysis. However, towards the end
of the study the inverse Fourier Transform has been applied to generate a
mudline bending stress time history in order to establish the damage equivalent
stress range value via Rainflow Counting and the subsequent fatigue life from the
relevant S-N curve.
28. 10
1.3 Aim and Objectives
The aim of this investigation is to present a numerical model in Matlab capable of
performing an integrated wind and wave fatigue analysis of an offshore wind
turbine and monopile foundation. The model will be used to establish how
different superposition methods of the wind and wave stress spectra effect the
overall fatigue life.
To achieve this aim the following objectives will be addressed:
1. Identify and define the characteristics of a suitable reference wind turbine
system and deployment site
2. Conduct a detailed review of relevant theory in the literature
3. Identify and present a suitable methodology to meet the outlined aim
4. Develop and implement the methodology in a number of Matlab scripts
5. Define and justify all simulation input parameters
6. Run a series of simulations to establish how different wind and wave
superposition methodologies effect the final system fatigue life
7. Discuss the results and the limitations of the approaches used
8. Identify areas for future research
29. 11
2 METHODOLOGY
This chapter describes, in detail, all relevant theory necessary to carry out an
integrated fatigue analysis of an offshore wind turbine and monopile foundation.
The information presented has been obtained from a wide variety of sources
including offshore standards, theoretical text books and peer-reviewed journal
articles. In the proceeding section a methodological overview can be found,
describing the various stages used in the form of a flow chart while additional
supporting material can be found in the appendices at the end of this study.
31. 13
2.2 Reference Parameters
2.2.1 Reference Site Conditions
To perform a fatigue analysis on an offshore wind turbine and monopile
foundation, it was necessary to define all governing characteristics. This was
undertaken by considering characteristics that typify the current UK offshore wind
turbine installations using available data.
According to the European Wind Energy Association, in 2012 the average
European offshore wind installation was located at a distance of 29km from the
shoreline, at a depth of 22m (EWEA, 2013). Thus, for the purposes of this
investigation a βtypicalβ European location was adopted, with a UK focused
windfarm in mind. Figure 5 provides the locations of the current European wind
farms, the majority of which are located in the North Sea.
Figure 5: Offshore wind activity in Europe (Lynn, 2011)
32. 14
Once the reference site parameters were defined it was important to define the
corresponding sea state parameters, namely the significant wave height (Hs),
and mean zero-crossing period (Tz). A representative significant wave height for
a location roughly 30km from the UK East Coast was found to be approximately
1.5m (see Figure 30 in Appendix A) and a typical corresponding mean zero-
crossing period was chosen of 5 seconds (Van Der Tempel, 2006). Further
description of the significant wave height and mean zero-crossing period can be
found in Table 3. Finally the long-term mean wind speed had to be defined in
order to establish the offshore wind climate at the reference site. This was
assumed to be 10m/s from data presented by Van Der Tempel (2006) (see Figure
35 in Appendix G).
This investigation selected a reference site, sea climate and wind climate
parameters according to the current typical UK offshore wind turbine. The results
are presented in Table 1.
Table 1: Site reference parameters
Parameter Information
Reference location UK North Sea
Depth of reference site 20m
Distance from shore β30km
Significant wave height (Hs) 1.5m
Mean zero-crossing period (Tz) 5 sec
Long-term offshore mean wind speed 10m/s
2.2.2 Reference Wind Turbine and Foundation Parameters
In 2012, the average capacity of a European offshore wind turbine rose from
3.6MW to 4MW. With the majority (76%) of new wind turbine models delivering
in excess of 5MW this trend is set to increase in the future (EWEA, 2013). As a
result, characteristics from the National Renewable Energy Laboratoryβs (NREL)
5MW reference wind turbine, described by Jonkman et al. (2009) were adopted.
33. 15
Despite the very comprehensive description given by Jonkman et al. (2009), for
the NREL turbine, there is a lack of information pertaining to the offshore
monopile foundation. Thus, a number of assumptions were necessarily made to
provide the foundation parameters.
According to Jonkman et al. (2009) the NREL reference turbine has a hub height
of 90m with a tower top diameter of 3.87 m and a thickness of 0.019 m. The tower
itself is 87.6m high meaning that the hub is at a height of 2.4m above the tower
top. The tower base diameter is 6m with a thickness of 0.027m. The resulting
masses for the hub, nacelle and tower are given in Table 2.
It was assumed that the foundation height was equal to the mean water depth
(20m), and by making an assumption regarding the foundation diameter,
thickness and material density, the foundation mass can be estimated. According
to Busby (2012) and Musial (2011), the diameter of a modern monopile
foundation is currently around 6m. The reference diameter for this investigation
was therefore assumed have a uniform diameter across its height and equal to
the tower base diameter of 6m. A monopile foundation with a 6m diameter,
according to Margariti et al. (2015), can have a wall thickness up to 0.15m. This
was therefore selected as the foundation reference thickness.
Finally, the NREL reference turbine (Jonkman et al., 2009) quotes the density of
the tower steel as 8500kg/m3 rather than the typical value of 7850kg/m3 to
account for the paint, bolts, welds and flanges. The density of the foundation steel
is assumed equal to the density of the tower steel. Taking all the above
parameters into account the foundation reference mass was found (see Table 2).
This investigation has been conducted without taking into consideration the
effects of a transition piece between the tower and foundation, the effects of
which are beyond the scope of this project. Thus for the purposes of this study
the base of the tower sits on top of the top of the foundation, both of which have
equal diameters.
34. 16
Table 2: Turbine and foundation reference parameters
Component Mass [kg]
Hub 56780
Nacelle 240000
Tower 347460
Foundation 237328
TOTAL 881568
Finally, the turbine operational wind speeds must also be defined for the
calculation of the turbine thrust. For the 5MW NREL reference turbine the cut in
speed is quoted as 3m/s and the cut out speed is quoted at 25m/s.
35. 17
2.3 Wave Loading
In this section the procedure for establishing the wave loading on a monopile
foundation is established.
2.3.1 Wave Climate
Wave processes are random in nature consisting of irregular wave shapes,
heights, lengths and propagation speeds. Thus, in order to model wave
processes, a random mathematical model is recommended (Det Norske Veritas,
2010). To empirically establish the sea state at a site of interest the most
important data to collect includes the wave maximum and minimum height, the
strange peaks and the slow variations (Van Der Tempel, 2006). This data must
be collected over long periods of time, ideally for more than ten years (Det Norske
Veritas, 2014). Wave data can be collected from a number of sources including:
ο· Satellite data
ο· Visual measurements
ο· Wave buoys
(Tupper, 1996).
As previously mentioned, sea states are considered stationary random processes
with a stationery period of three hours. However, in reality this can vary from
around 30 minutes and up to 10 hours (Det Norske Veritas, 2010).
In the absence of empirically collected specific sea state data, general long term
wave statistics can be used to describe a sea state with the help of a wave
spectrum (Det Norske Veritas, 2014). A description of the basic wave parameters
is provided in Table 3.
36. 18
Table 3: Wave parameters (Det Norske Veritas, 2010, Van Der Tempel, 2006)
Wave Parameter
Name
Symbol Description
Wave height H Difference between the highest crest and the deepest trough
between two successive zero-upcrossings.
Significant wave
Height
Hs Measure of the wave climate intensity as well as the variability
in the wave heights. It is measured by averaging the height of
the highest one third of the waves during each monitoring
period. It is also represented by four times the standard
deviation of the sea elevation.
Wave period T Time taken for a wave to pass through two zero-up-crossings.
Mean zero crossing
period
Tz The mean time measured divided by the number of zero-up-
crossings
Wave amplitude a Half the wave height
Wave length Ξ» Horizontal distance between two wave crests
2.3.2 Wave Spectra
When site specific wave statistics are unavailable a wave spectrum can be used
to recreate a sea state representative of the estimated long term parameters. Two
of the most frequently used spectra include the Pierson-Moskowitz and
JONSWAP (Joint North Sea Wave Project) wave spectra. The former was fitted
to data collected in open Atlantic waters during long periods of consistent
environmental conditions and represents a fully developed sea. The latter
spectrum is representative of the North Sea and describes a non-fully developed
sea (Van Der Tempel, 2006). Both spectra can be arranged to accept Hs and Tz
as the two input parameters, depending on the site. This investigation has
employed the JONSWAP spectrum to describe the sea state as it best represents
the North Sea waters where many of the UK offshore wind farms are located (see
Figure 5).
Equation 2 to Equation 7 have been used to generate the JONSWAP wave
spectrum for the reference sea state parameters as presented in the Table 1, the
37. 19
Pierson-Moskowitz is also presented for comparative purposes (Det Norske
Veritas, 2010, Det Norske Veritas, 2014).
π ππ(π) =
π»π
2
4πππ§
4
π5
Γ exp (β
1
π
Γ (πππ§)β4
)
Equation 2: Pierson-
Moskowitz wave spectrum
ππ½π(π) = πΉπ Γ π ππ(π) Γ πΉπ
exp(β0.5(
πβππ
πΓππ
)
2
)
Equation 3: JONSWAP
wave spectrum
πΉπ = 1 β (0.287 Γ ln(πΎ))
Equation 4: Normalizing
factor
ππ =
ππ§
β
5 + πΎ
11 + πΎ
Equation 5: Peak Period
ππ =
1
ππ
Equation 6: Peak
frequency
π = 0.07 πππ π β€ ππ
and
π = 0.09 πππ π > ππ
Equation 7: Spectral width
parameter
Where:
π = Wave frequency
ππ = Peak frequency
πΉπ = Normalizing factor
πΎ = Non-dimensional peak enhancement factor (taken as 3.3)
ππ = Peak period
Further details regarding the determination of the peak enhancement factor can
be found in the DNV standards. However for the purposes of this study it has
been taken as 3.3, which is quoted in the literature as an average value
38. 20
representative of not fully developed seas such as those found in the North Sea
(Det Norske Veritas, 2014, Van Der Tempel, 2006, Patel, 1989, Veldkamp and
Van Der Tempel, 2005, Chakrabarti, 2005).
Figure 6 demonstrates the two wave spectra for the case when Hs=1.5m, Tz=5
seconds and Ξ³=3.3.
Figure 6: Wave spectra
From a wave spectrum, it is possible to generate a time series of wave elevation
by distilling the random wave amplitudes into regular wave characteristics (Patel,
1989). A phase angle between 0 and 2Ο is randomly assigned to each wave. The
sum of all the waves for a given frequency and at a given moment in time provide
the sea surface elevation (Van Der Tempel, 2006). Equation 8 and Equation 9
describes how this process is carried out numerically while Figure 7 presents an
example time series generated from the JONSWAP spectrum described above.
For further information refer to Patel (1989).
39. 21
ππ = β[2 Γ ππ½π(π)π Γ ππ(π)]
Equation 8: Wave
amplitude components
π(π‘) = β ππ
π
π=1
Γ sin[π + (2π Γ ππ Γ π‘)]
Equation 9: Free
surface elevation
Where:
ππ = Wave amplitude components
ππ½π = JONSWAP wave power spectrum density
ππ = Width of the frequency band
π(π‘) = Free surface elevation as a function of time
π‘ = Time vector
π = Phase of the wave. Randomly assigned and assumed uniformly distributed
between 0 and 2Ο
The wave amplitude components are required to determine the wave kinematics
which are further discussed in the proceeding chapter.
40. 22
Figure 7: Free surface elevation time series from JONSWAP spectrum
2.3.3 Wave Kinematics
Water particle velocity and acceleration, known as the wave kinematics, can be
described by employing a suitable wave theory. Each wave theory has its
limitations and range of validity. The lower order wave theories, such as Airy
linear wave theory, are valid for low amplitude sea-sates, while the higher order
theories have been shown to better represent rougher seas (Det Norske Veritas,
2010).
Taking into account the reference sea-state parameters (Table 1), and the validity
ranges described in Figure 8 below, this investigation considers the first two wave
theories only. These include Airy linear, and Stokes 2nd order wave theories (Det
Norske Veritas, 2010).
41. 23
Figure 8: Ranges of validity for a variety of wave theories (Det Norske Veritas,
2014)
Figure 8 presents the range of validity of some of the most common wave theories
reproduced from the DNV offshore standard Det Norske Veritas (2014).
2.3.4 Airy Linear Wave Theory
The most simplistic wave theory is the linear wave theory, developed by Airy in
1845, and often referred to as Airy small amplitude wave theory due to its limited
applicability for waves with large amplitudes (Patel, 1989). The theory is limited
by a number of assumptions that govern its validity. These include:
1. Wave height is assumed much smaller than the wavelength and water
depth
2. Water density is constant
3. Surface tension and viscosity neglected
4. Squares of particle velocities are considered negligible
5. Vertical accelerations not neglected
6. Wave motion assumed irrotational
(Patel, 1989, Det Norske Veritas, 2014)
42. 24
According the Airy, the water particles move in elliptical orbits when in shallow
water while in deep waters they move in circular orbits (Van Der Tempel, 2006).
Figure 9, reproduced from Veldkamp and Van Der Tempel (2005), provides a
graphical description of the water particle motion as described by Airy.
Figure 9: Water particle motion (Veldkamp and Van Der Tempel, 2005)
The water particle velocity and acceleration can be determined according to Airy
linear wave theory from Equation 10 to Equation 15. For a full, comprehensive
equation list for both Airy and Stokeβs 2nd order theories in shallow and deep water
refer to Figure 31 in Appendix B.
π’(π, π§; π‘) = ππ2πππ Γ
cosh[π(π§ + π)]
sinh(ππ)
Γ cos(π β 2πππ π‘)
Equation 10:
Horizontal water
particle velocity
(Airy)
π’Μ(π, π§; π‘) = ππ(2πππ)2
Γ
cosh[π(π§ + π)]
sinh(ππ)
Γ sin(π β 2πππ π‘)
Equation 11:
Horizontal water
particle acceleration
(Airy)
π =
2π
π
Equation 12: Wave
number
43. 25
π =cT
Equation 13: Wave
length (for Airy
shallow water and
Stokes 2nd
order)
π = β
π
π
tanh(ππ)
Equation 14: Wave
celerity (for Airy
shallow water and
Stokes 2nd
order)
π =
ππ
2π
Equation 15: Wave
celerity (for Airy
deep water)
Where:
π = Acceleration due to gravity [m/s2]
From the equations presented in Figure 31 in Appendix B it can be seen that it is
not possible to obtain a value for the wave number (k) for Airy in shallow water or
for Stokeβs 2nd order without first defining an initial value. An iterative approach
has been suggested by Fontana (2014) where an initial wave number is
determined using Airy deep water theory which, is in turn used to find all other
parameters. Alternatively the wave number can be established iteratively by
solving the dispersion equation for the dispersion relationship described by
Equation 16 (Veldkamp and Van Der Tempel, 2005, Arany et al., 2014).
π2
= ππ tanh(ππ) Equation 16: Dispersion relation
Both approaches were used in this investigation for all corresponding frequency
values to increase confidence in the accuracy of the results. The outcome from
the two approaches were in complete agreement up to four decimal places. A
sample of the results is given in Table 4.
44. 26
Table 4: Wave number determination using two methods
Frequency (Hz) 0.001 0.004341 0.007682 0.011023 0.014365 0.017706
k - Fontana, (2013)
method 0.00045 0.00195 0.00345 0.00495 0.00646 0.00798
k - Dispersion
equation method 0.00046 0.00195 0.00346 0.00497 0.00646 0.00800
Note that for the Fontana (2014) method, five iterations were used, which was
adequate to achieve a convergence to six decimal places.
Some of the key benefits in using Airy linear wave theory is its reduced complexity
in terms of its ability to be coded, its reduced computational requirements and the
fact that it has been linearized allowing the computation of irregular seas as the
sum of multiple, regular linear waves (Patel, 1989). However it must be noted that
both the height of the waves and the wave depth have significant bearing on the
limits of validity of all wave theories. In addition to Figure 8, a further wave theory
validation was performed for this studyβs reference parameters, for both Airy and
Stokeβs 2nd order wave theories. This is presented in section 4.1 in the discussion
chapter. With reference to Figure 8 and the supplimentary validation performed
in section 4.1 this investigation will employ Airy linear wave theory only in order
to reduce the complexity of the analysis and to conserve computational
resources.
2.3.5 Stokes Second Order Wave Theory
With reference to Figure 8 it can be seen that Stokeβs 2nd order wave theory has
increased validity for sea states exhibiting larger amplitude waves. For all the
equations relating to Stokeβs 2nd order wave theory refer to Figure 31 in Appendix
B and for a discussion of the validity of both Airy and Stokeβs 2nd order, refer to
section 4.1 in the discussion chapter.
2.3.6 Morison Equation
The Morison Equation still remains the most accurate method to estimate the
wave loading on slender offshore structures from the wave particle velocity and
45. 27
acceleration (Veldkamp and Van Der Tempel, 2005). Structural members which
have a diameter divided by the wavelength less than 0.2 can be considered
slender and are assumed not to interact or influence the wave properties (Patel,
1989). Thus, the total wave forces on slender members are given as the sum of
the inertia forces (due to fluid acceleration) and drag forces (due to the fluid
velocity) (Patel, 1989). For the purposes of this investigation, the monopile
structure is considered slender. If this assumption no longer holds true, the model
will no longer be valid without additional modification to take diffraction into
account.
The forces exerted on the slender monopile structure can then be represented
by the Morison equation which includes the integration of the water particle
velocity and acceleration over the depth (Patel, 1989). The first term in the
equation represents the inertia force and the second term represents the drag
force.
πΉ = πΆ π πππ2
β« π’Μ
0
βπ
ππ§ + πΆ π· πππ β« |π’|
0
βπ
π’ ππ§
Equation 17: Morison
Equation
Where:
πΉ = Total wave force on the member found by integration over the water depth
πΆ π = Inertia coefficient
πΆ π· = Drag coefficient
π = Fluid density
π = Member radius
π’Μ = Water particle acceleration
|π’|π’ = Water particle |velocity| * velocity
A limitation of using the Morison equation is that it requires the selection of two
empirical parameters for the load calculation: the drag and inertia coefficients.
The selection of the drag and inertia coefficients are dependent on empirical data
46. 28
and should be determined experimentally. The DNV standards suggest various
methods to determine suitable drag and inertia coefficients for design purposes,
however for an offshore monopile foundation the literature suggests suitable
values. This investigation has taken values recommended in the literature
relevant to offshore wind turbines with monopile foundations. Thus, the drag
coefficient has been taken as 0.70 assuming a smooth monopile (no marine
growth present), and 2.0 as the inertia coefficient (Van Der Tempel, 2006,
Veldkamp and Van Der Tempel, 2005, Barltrop and Adams, 1991).
The full and detailed integration process, including the final integrated equations
are given in Appendix C for Airy and Appendix D for Stokeβs 2nd order.
47. 29
2.4 Wind Loading
In this section the procedure for establishing the wind loading on a monopile
foundation is established.
2.4.1 Wind Climate
As well as varying with time, wind speed varies with height due to wind shear.
Typically, the wind reference height is taken as 10m and wind speed average
times vary between 1, 10 and 60 minutes (Det Norske Veritas, 2010). Wind shear
occurs in approximately the first 2km of the atmosphere and is a result of friction
with the ground where the wind speed is zero (Van Der Tempel, 2006). To take
this into consideration, models have been developed which depend on the
surface roughness (topography) and the reference height.
The wind climate of a site can be separated into two categories: normal wind
climate and extreme wind climate. The former is used as the foundation for
fatigue load calculations and as such will be the focus of this investigation (Det
Norske Veritas, 2014). Normal wind conditions are described by air density, a
long term distribution of the 10 minute wind speed and the wind shear and
turbulence. Both are dependent on height and terrain (Det Norske Veritas, 2014,
Van Der Tempel, 2006).
2.4.2 Normal Wind Conditions
The parameters required to describe the normal wind climate are outlined in Det
Norske Veritas (2014) and include the 10 minute mean wind speed (U10) and the
standard deviation (Ο10), during which, constant conditions are assumed. The
intensity in the turbulence during the ten minute period is given as the ratio
between Ο10 and U10. Similar to the wave climate, the wind climate can be
described by a wind spectrum as a function of Ο10 and U10 some of which are
discussed in the next section.
48. 30
2.4.3 Wind Modelling
To establish the thrust force from the turbine the wind speed must be modelled
which can subsequently be used in combination with the actuator disk theory.
These processes are discussed in the following sections.
2.4.3.1 Actuator Disk Theory
The purpose of a wind turbine is to translate the kinetic energy of the wind into
rotational energy to drive a turbine. The quantity of energy extractable is
governed by the Betz limit determined at 59% (Lynn, 2011). This theoretical limit
is based on linear momentum theory where the mass flow rate in must be equal
to the mass flow rate out. Any decrease in velocity must therefore result in an
increase in volume. This process can be represented using a stream tube (see
Figure 10).
Figure 10: Actuator disk model (Manwell et al., 2009)
Where U1 indicates free stream velocity, U2 and U3 indicate the velocity across
the actuator disk (rotor) and U4 indicates the velocity downstream. The actuator
disk theory can be used to establish the thrust of the turbine, provided the
following assumptions are made:
ο· Homogeneous, incompressible, steady state fluid flow
ο· No friction drag
ο· Rotor is comprised of an infinite number of blades
ο· Thrust distributed uniformly across the rotor area
ο· Wake non-rotating
49. 31
ο· Static pressure far upstream and far downstream is equal to ambient
static pressure
(Manwell et al., 2009)
Employing the conservation of linear momentum and the Bernoulli function for
the two control volumes, an expression for the turbine thrust can be derived (see
(Manwell et al., 2009) or (Lynn, 2011) for derivation).
π =
1
2
π π π΄ πππ‘ππ π2
[4π(1 β π)] Equation 18: Thrust - Wind turbine
π =
π1 β π2
π1
Equation 19: Axial induction factor
Where:
π = Turbine thrust
π π = Density of air
π΄ πππ‘ππ = Rotor area
π = π1 = Freestream velocity
π2 = Velocity across the actuator disk
π = Axial induction factor
From Equation 18 and Equation 19 it can be seen that to establish the thrust from
the free stream velocity it is necessary to know the flow velocity across the disk
(π2). For the current investigation π2 is not known therefore an alternative method
has been used to establish the axial induction factor (π).
Two methods can be used to find the axial induction factor, the first uses Blade
Element Momentum theory (BEM theory), and the second uses the equation for
the thrust coefficient. Both methods can be used to estimate the turbine thrust
from the instantaneous wind speed (Van Der Tempel, 2006, Arany et al., 2014).
Although BEM theory is more accurate, it also requires highly detailed information
pertaining to the turbine blade geometry which is often difficult to obtain. Such a
50. 32
detailed analysis is not necessary for the purpose of this investigation. Therefore,
to estimate the axial induction factor the latter method was used, and to estimate
the thrust coefficient, Frohboese et al. (2010)βs thrust coefficient estimation
method has been used (see Section 2.7.2). Appendix E presents the process
used to find the axial induction factor.
Once the axial induction factor has been established the actuator disk theory can
be used directly with the free stream wind velocity to determine the turbine thrust.
2.4.3.2 Wind Speed Distributions
Probability density functions (pdfβs) allow the probability of occurrence of a given
wind speed within a given range to be established (Lynn, 2011). Two of the most
common probability distributions used in wind modelling are the Rayleigh and
Weibull probability distributions. The Rayleigh distribution requires knowledge of
one parameter: the mean wind speed, while the Weibull distribution requires the
determination of two parameters: a shape factor (k) and a scale factor (c). Both
βkβ and βcβ are functions of the mean wind speed and the standard deviation
(Manwell et al., 2009). The Weibull distribution is preferred when additional data
is available and it has also been shown to represent a broader range of wind
climates (Lynn, 2011). Thus the Weibull distribution has been used to model the
wind climate in this investigation, and the procedure employed is presented in
Appendix G.
Assuming a long term mean wind speed of 10m/s (Table 1), and by following the
methodologies outlined in Appendix G, the number of occurrences for each mean
wind speed from 0.5m/s up to 30m/s, over the course of one year were found
(Figure 11).
51. 33
Figure 11: Number of occurrences of 10min wind speed intervals in one year with
wind speed bins 1m/s wide
Figure 11 is used later in the fatigue analysis, and describes the number of
statistically probable times a mean wind speed occurs over the course of one
year. This is useful in order to establish the average damage equivalent stress
range for all operational mean wind speeds.
2.4.3.3 Wind Speed Turbulence
The turbulent nature of the wind must be considered as part of a fatigue analysis
due to the random and fluctuating loads it causes on the wind turbine structure
(Manwell et al., 2009).
During each ten minute wind stationary period the wind speed will fluctuate as a
result of turbulence. Wind turbulence can be described by superimposing
turbulent fluctuations about the mean, where the wind speed is equal to the wind
speed mean plus the turbulence (Burton et al., 2011, Arany et al., 2014).
Turbulence intensity is location dependent and predominantly a function of
surface roughness and thermal variability (air density) (Burton et al., 2011).
According to Lloyd (2000) and IEC (2009) the turbulence intensity for an offshore,
52. 34
near shore site, representative of the UK North Sea wind turbine locations, is
approximately 12% for wind speeds above 5m/s (see Figure 32 and Figure 33).
For the purposes of this investigation the turbulence intensity has been assumed
to be constant for all operational ten minute mean wind speeds at 12%. The
relationship between the turbulence intensity and mean wind speed standard
deviation is described by Equation 20.
πΌ =
π
πΜ 10
Equation 20: Turbulence Intensity
Where:
πΌ = Turbulence intensity
πΜ 10 = Ten minute mean wind speed
π = Ten minute wind speed standard deviation
The turbulence in the wind during any given ten minute period can be described
by a wind turbulence power spectral density (PSD), provided the ten minute mean
wind speed and standard deviation are known. Wind turbulence PSDβs describe
the frequency content of wind speed variations. Two of the most commonly used
spectra are the Karman and Kaimal spectra (Burton et al., 2011, Van Der Tempel,
2006). While the Karman spectra has been cited as a good representation of
turbulence in wind tunnels, the Kaimal spectrum is said to better describe
atmospheric turbulence observations (Burton et al., 2011). With reference to the
above, this investigation employs the Kaimal spectrum. The process used to
generate the Kiamal spectrum for each operational mean wind speed is given in
Appendix H and the results are presented below in Figure 12. Note that the
operational wind speeds for the NREL 5MW reference turbine range from 3m/s
to 25m/. Therefore the mean wind speeds range from 3.5m/s to 24.5m/s to cover
all operational wind conditions.
53. 35
Figure 12: Kaimal spectrum for mean wind speed from 3.5m/s to 24.5m/s and
with a turbulence intensity of 12%
At this point in the analysis, a time series of wind speeds data can be generated
from the turbulence spectrum by applying an inverse fast Fourier transform
(IFFT), and used in combination with the actuator disk theory to establish the
thrust for each wind speed. An example of this process can be found in Appendix
H. However, it is more practical to maintain the analysis in the frequency domain
for as long as possible to reduce computational processing time.
54. 36
2.5 System Response from Wind Loading
The dynamic response of systems subjected to time-varying loads requires
careful consideration (Van Der Tempel, 2006) which is what will be explored in
this section. As previously discussed, when the natural frequency of a system
coincides with the frequencies experienced from the wind and wave loading, an
amplification in the stresses and subsequently the fatigue damage occur (Arany
et al., 2014). This phenomenon can be avoided by determining the dynamic
amplification factor (DAF) which depends on the system damping. To establish
the DAF very specific information is required pertaining the turbine, tower,
foundation and soil conditions. This study has acquired this information based on
the NREL 5MW reference turbine, presented in section 2.2.
The behaviour of an offshore wind turbine system is analogues to a mass-on-
pole system. As such it can be reduced to a one degree of freedom system and
described by the equation of motion (Equation 21). Figure 13 reproduced from
Van Der Tempel (2006) demonstrates such a system.
Figure 13: Offshore wind system modelled as a 1 degree of freedom mass-on-
pole system (Van Der Tempel, 2006)
55. 37
πΉ(π‘) = ππ₯Μ + ππ₯Μ + ππ₯ Equation 21: Equation of motion
Where:
πΉ = Force [N]
π = Mass [kg]
π = Damping coefficient [Ns/m]
π = Stiffness [N/m]
π₯Μ = Acceleration [m/s2]
π₯Μ =Velocity [m/s]
π₯ = Displacement [m]
The frequency response of the system subjected to a force input πΉ(π‘) which is
equal to the delta function πΏ(π‘) can be found by taking the Fourier transforms of
both sides of the equation of motion (Equation 21). Provided the system stiffness,
damping coefficient and mass are known the transformation will provide a transfer
function of the tower top load to the tower top displacement. For a more detailed
explanation see Bendat and Piersol (1993) and Van Der Tempel (2006).
π(π) =
1/π
1 β (
π
ππ
)
2
+
π2ππ
ππ
Equation 22: Frequency response
function for displacement
Where:
π = Damping ratio (Equation 24)
ππ = Undamped natural frequency (Hz)
π = Displacement [m]
ππ =
1
2π
β
π
π
Equation 23: Undamped natural
frequency
56. 38
π =
π
2βππ
Equation 24: Damping ratio
π = π ππππ‘ππππ Γ 2βππ Equation 25: Damping coefficient
The system gain can then be found by taking the modulus of Equation 22 giving:
|π(π)| =
1/π
β[1 β (
π
ππ
)
2
]
2
+ [
2ππ
ππ
]
2
Equation 26: Frequency response
function for displacement
It is important to note that although the theory presented above is generalised,
the system gain equation (Equation 26) represents the DAF of the offshore
structure (Arany et al., 2014).
2.5.1 Tower Top Displacement Transfer Function
Regrettably, a tower top displacement transfer function is not provided for the
NREL 5MW reference turbine, nor is the required stiffness and damping
coefficient. However, the mass of the tower, rotor and nacelle are given (Table 2)
and from assumptions made about the foundation, the foundation mass was also
established (Table 2).
In order to find the stiffness of the system accurately, one of two methods can be
used. Either an FEA model is constructed, a tower top load applied and the
deflection recorded, or a similar experiment is performed on the actual specific
turbine to measure the tower top deflection under a given load (Van Der Tempel,
2006). Both of these methods are beyond the scope of this investigation,
therefore the stiffness had to be estimated from information found in the literature.
In a study by Yeter et al. (2014), a scaling method was used to determine the
transfer function for the NREL reference turbine which was based on the transfer
function derived by Van Der Tempel (2006) for a 2MW Vestas turbine at Blyth.
Yeter et al. (2014) found that the peak frequency of the tower top displacement
transfer function was equal to 0.633Hz.
57. 39
Assuming the findings by Yeter et al. (2014) can be applied to this investigation,
the stiffness and subsequently the transfer function can be established using an
iterative approach. Taking the peak frequency equal to 0.633Hz the stiffness is
adjusted until this peak frequency is achieved. Table 5 demonstrates this
process.
Table 5: Finding the tower top stiffness
Trial number Frequency [Hz] Stiffness [N/m]
1 0.5290 100000
2 0.5795 120000
3 0.6259 140000
4 0.6329 143200
Referring to Table 5 the stiffness at the tower top has been taken as 143200N/m.
Further description of this process can be found in Figure 43 in Appendix I.
Finally, by estimating the damping coefficient which was found using Equation 25
and assuming the damping as a percentage of the critical damping at 1% as
outlined by Det Norske Veritas (2014) and by Van Der Tempel (2006), the tower
top displacement transfer function was found (Figure 14).
58. 40
Figure 14: Transfer function of tower top displacement for the NREL reference
turbine with its respective foundation properties (peak=0.6330Hz)
Figure 14 demonstrates the transfer function for the tower top displacement and
is represented by Equation 27.
|π»(π ) πΏπ‘ππ| = |
π(π ) π‘ππ
πΉ(π ) π€πππ
|
Equation 27: Transfer function for the
tower top displacement
Where:
|π»(π ) πΏπ‘ππ| = Transfer function gain for the tower top displacement [m/N]
π(π ) π‘ππ = Displacement at the tower top from wind loading [m]
πΉ(π ) π€πππ = Wind loading [N]
59. 41
2.6 System Response from Wave Loading
The transfer function required for the wave loading will differ from the tower top
transfer function as a result of the difference in stiffness of the system at the
location of the wave loading. However without precise data of the stiffness along
the length of the turbine the precise transfer function must be found again by
making assumptions and simplifications. This section outlines the methodology
used to establish the transfer function for the mean water level (MWL)
displacement. Three fundamental assumptions must be made before this can be
conducted:
1. The 2nd moment of inertia is constant across the system
2. The transfer function established at the MWL can be applied to the load
data thatβs been integrated over the depth
3. The system can be modelled as a linearly elastic beam and follows
Hookβs Law
Assuming all the above, the deflection of the system at the MWL, which was
defined as 20m in section 2.2.1, can be established.
2.6.1 MWL Displacement Transfer Function
To establish the MWL transfer function, the stiffness at the MWL must be
estimated. A detailed description of this process can be found in 0, which found
the MWL stiffness to be 23824900N/m. Finally by following the same process
used to find the tower top displacement transfer function the MWL displacement
transfer function was found (Figure 15).
60. 42
Figure 15: Transfer function of MWL displacement for the NREL reference
turbine with its respective foundation properties (peak=8.1652Hz)
Figure 15 demonstrates the transfer function for the MWL displacement and is
represented by Equation 28.
|π»(π ) πΏπππΏ| = |
π(π ) πππΏ
πΉ(π ) π€ππ£π
|
Equation 28: Transfer function for the
MWL displacement
Where:
π»(π ) πΏπππΏ = Transfer function for the MWL displacement [m/N]
π(π ) πππΏ = Displacement at the MWL displacement from wave loading [m]
πΉ(π ) π€ππ£π = Wave loading [N]
61. 43
It should be noted that only one transfer function for the wave loading
displacement has been generated at the MWL, therefore a conservative
assumption is made that this transfer function can be employed in conjunction
with the integrated wave load over the depth. The validity of this assumption is
beyond the scope of this investigation and is suggested as an area for future
investigations.
62. 44
2.7 Mudline Bending Stress from Wind
In this section the final procedures required to establish the mudline bending
stress are presented.
2.7.1 Mudline Wind Bending Stress Transfer Function
The first step in the process is to translate the tower top displacement transfer
function into a mudline bending stress transfer function. This can be achieved by
multiplying by the linear relationship between displacement and stress (Van Der
Tempel, 2006). To establish this relationship the flexure formula was used
(Equation 57) and the full procedure can be found in Appendix K.
Figure 16: Transfer function for mudline bending stress from wind loading
The transfer function represented by Figure 16 is given below in Equation 61.
63. 45
|π»(π ) ππ€πππ| = |
π(π ) π€πππ
πΉ(π ) π€πππ
|
Equation 29: Transfer function for
mudline bending stress from wind
loading
Where:
|π»(π ) ππ€πππ| = Wind loading mudline bending stress transfer function
π(π ) π€πππ = Mudline bending stress from wind loading
Finally, to obtain the mudline bending stress spectrum, the transfer function of
mudline bending stress from wind loading must be multiplied by the square root
of the PSD of the turbulent thrust force on the rotor (Seidel, 2014). The reason
why it has to be multiplied by the square root of the PSD is a result of the definition
of what a PSD represents. This is discussed further in section 2.7.3.
2.7.2 Power Spectral Density of the Turbulent Thrust Force on the
Rotor
Since the beginning of this investigation a frequency domain approach has been
adopted, and as a result it is necessary to establish a PSD of the turbulent thrust
force acting on the rotor. This was accomplished using equations presented by
Arany et al. (2014) where the Kaimal spectrum is multiplied by components from
the actuator disk theory to yield the desired PSD. This process was performed 22
times to generate a PSD for each operational mean wind speed. All details of this
process are described in Appendix L and the results are presented in Figure 17.
64. 46
Figure 17: PSDs of the turbulent thrust force on the rotor at each operational
mean wind speed with a 12% turbulence intensity
2.7.3 Mudline Bending Stress Spectrum from Wind Loading
In this section the final steps are taken in order to obtain the mudline bending
stress spectrum from wind loading, which is required for the wind loading fatigue
estimation. As previously mentioned it is necessary to multiply the transfer
function of mudline bending stress from wind loading (Equation 61) by the square
root of the PSD of the turbulent thrust force (Figure 17 and Equation 62), to yield
the mudline bending stress spectrum from wind loading. The reason for
performing the multiplication in this manner is due to the definition of a PSD where
the energy (E) at a given frequency is represented by the following:
πΈ(π) = |π(π)|2 Equation 30: Definition of PSD (1)
Therefore:
65. 47
|π(π)|2
= π πΉ π€πππ
(π) = |πΉ(π ) π€πππ|2 Equation 31: Definition of PSD (2)
Where:
πΈ(π) = Energy at a given frequency
|π(π)|2
= PSD
|πΉ(π ) π€πππ|2
= PSD of the turbulent thrust force on the rotor
Thus to multiply the thrust force by the Kaimal PSD all terms must be squared,
and to obtain the mudline bending stress spectrum from wind loading, the transfer
function for mudline bending stress from wind loading must be multiplied by the
square root of the PSD of the turbulent thrust force. This procedure is described
by Equation 32.
π ππ€πππ = |
π(π ) π€πππ
πΉ(π ) π€πππ
| Γ β|πΉ(π ) π€πππ|
Equation 32: Response spectrum of the
mudline bending stress from wind
loading
The process is also described by Figure 18 with the final result given in Figure
19.
67. 49
Figure 19: Mudline bending stress Spectrum from wind loading
2.7.4 Mudline Bending Stress Time Series
The mudline bending stress spectrum from wind loading is used to generate the
mudline bending stress from wind loading time series. This procedure was carried
out using an inverse Fast Fourier Transform (IFFT) in Matlab. The theory and
analytical process of the Fast Fourier Transform (FFT) is not discussed further in
this investigation. For additional information regarding FFT and IFFT, refer to
Stein (2000). However, moving from the frequency domain into the time domain
poses a critical issue. In the majority of cases where IFFT is required, the IFFT is
conducted on a PSD that has been derived from empirical data collected in the
time domain, and which has been previously transformed using FFT. When this
process is performed the FFT vector is complex and contains all phase
information that is necessary to revert back to the original time series using the
IFFT algorithm (Halfpenny, 1999). In the present example the stress spectrum
68. 50
has been derived from the relevant theory available in the literature and has not
directly come from the FFT of the measured time series. As a result all the original
phase information is missing and must be reintroduced if a statistically significant
time series representation is to be obtained. According to Halfpenny (1999) both
wind speed and wave height time histories can be considered βergodic stationary
Gaussian random processesβ which implies that the results are independent of
the point at which they are measured in time. In other words, the time history
measured between point βAβ and βBβ will provide statistically the same information
between point βA+Cβ and point βB+Cβ. For such processes, the phase information
can be assumed to be randomly distributed between βπ and π.
Therefore, by assuming that the stress spectra from wind and wave loading are
ergodic stationary Gaussian random processes, the phase information can be
regenerated and combined prior to carrying out the IFFT using the phasor form
of a complex number (Equation 33).
π§ = |π§| Γ π ππ Equation 33: Phasor form of a complex
number
Where:
|π§| = The amplitude of the stress spectrums
π = Phase randomly assigned between βπ and π
π§ = Complex vector of mudline bending stress spectrum ready for IFFT
The length of the simulation for the wind loading was 600 seconds with a load
measurement assumed to occur every second. This is due to the Kaimal
spectrum based on a 10 minute mean wind speed. Referring back to section
2.4.3, the number of occurrences of that ten minute mean wind speed over the
course of one year are then given by the Weibull distribution.
Using IFFT on the mudline bending stress spectra the mudline bending stress
time series can be found for each ten minute mean wind speed. To then establish
the full yearly stress history from wind, each time history can be duplicated βNβ
times as described by the Weibull distribution.
69. 51
An example of the IFFT time series for a ten minute mean wind speed of 10.5m/s
is demonstrated by Figure 20.
Figure 20: Mudline bending stress for 10min mean wind speed of 10.5m/s
Randomly assigned phase information was incorporated into each wind stress
spectrum within the operational wind speed range (3m/s to 25m/s) before taking
the IFFT to generate the respective mudline bending stress time series.
70. 52
2.8 Mudline Bending Stress from Wave
Employing the same approach used for the determination of the PSD of the
mudline bending stress from wind loading, the PSD of the mudline bending stress
from wave loading was established. The individual steps are detailed here.
2.8.1 Mudline Wave Bending Stress Transfer Function
With reference to Appendix K the wave loading deflection transfer function
presented in Figure 15 was translated into the mudline bending stress transfer
function using Equation 34. The distance from the point of loading (MWL) was
assumed constant and equal to the reference depth of 20m, and the value for the
distance from the neutral axis (y) is half the diameter, which for the tower base
and foundation is 3m (6/2). The pertinent equations are presented below and the
final result is presented in Figure 21.
|
π(π ) πππΏ
πΉ(π ) π€ππ£π
| Γ (
3πΈπ¦
πΏ2
) = |π»(π ) ππ€ππ£π|
|
π(π ) πππΏ
πΉ(π ) π€ππ£π
| Γ (
3 Γ 210 Γ 109
Γ 3
202
)
|
π(π ) πππΏ
πΉ(π ) π€ππ£π
| Γ (4.725 Γ 109)
= |π»(π ) ππ€ππ£π|
|π»(π ) ππ€ππ£π| = |
π(π ) π€ππ£π
πΉ(π ) π€ππ£π
|
Equation 34: Transfer function for
mudline bending stress from wave
loading
71. 53
Figure 21: Transfer function for mudline bending stress from wave loading
2.8.2 Power Spectral Density of Wave Loading
The PSD of the wave loading was established in a similar fashion used to find
the PSD of the turbulent thrust force, with reference made to Arany et al. (2014).
As previously mentioned, performing fatigue analysis in the frequency domain
using the Morison equation is problematic due to the non-linearity that is
introduced by the drag term (Van Der Tempel, 2006). This can be overcome by
neglecting the drag term and including only the inertia term in the calculations.
This is an acceptable assumption often made in the relevant literature (Van Der
Tempel, 2006, Arany et al., 2014, Seidel, 2014, KΓΌhn, 2001) and can be justified
as a result of the dominance of the inertia term when considering offshore
monopile foundation structures. Neglecting the drag term also results in the
significant simplification in the integration which now only requires the
consideration of water particle acceleration. Taking all these factors into account
72. 54
the PSD of the wave loading can be described by the equations presented below.
For further explanation of the integration refer to Appendix C.2. The final PSD is
given in Figure 22.
π πΉ π€ππ£π
(π) = πΆ π
2
ππ π€
2
π·4
π6
4
π4
π ππβ2(ππ)
Γ [β« cosh[π(π§ + π)]
π
βπ
ππ§]
2
Γ ππ½π(π)
= πΆ π
2
ππ π€
2
π·4
π6
4
π4
π ππβ2(ππ)
Γ [
1
π
[sinh(ππ)]]
2
Γ ππ½π(π)
= πΆ π
2
ππ π€
2
π·4
π6
4
π4
(
1
π
)
2
Γ ππ½π(π)
Equation 35:
PSD wave
loading
integrated
over depth
Where:
ππ½π(π) = JONSWAP wave PSD
πΆ π = Inertia coefficient (taken as 2 as recommended by Van Der Tempel (2006),
Veldkamp and Van Der Tempel (2005) and Barltrop and Adams (1991).
ππ π€ = Seawater density (taken as 1025kg/m3)
π· = Diameter of the monopile foundation (6m)
π = Water depth (20m in this investigation)
π = Wave number (found using method described in section 2.3.4)
73. 55
Figure 22: PSD of the wave loading integrated over the depth
2.8.3 Mudline Bending Stress Spectrum from Wave Loading
Following the same procedure used to obtain the mudline bending stress
spectrum from wind loading, the bending stress spectrum from wave loading was
established. The transfer function of mudline bending stress from wave loading
(Equation 34) is multiplied by the square root of the wave loading PSD to yield
the mudline bending stress spectrum from wave loading. This process is
described by Equation 36, Figure 23 and Figure 24.
π ππ€ππ£π = |
π(π ) π€ππ£π
πΉ(π ) π€ππ£π
| Γ β|πΉ(π ) π€ππ£π|
Equation 36: Response spectrum of the
mudline bending stress from wind
loading
75. 57
Figure 24: Mudline bending stress Spectrum from wave loading
2.8.4 Mudline Bending Stress Time Series
The mudline bending stress from wave loading time series was found employing
the same methodology used to establish the stress time series from wind loading.
The mudline stress time series from wave loading is presented over a time period
of 600 seconds in Figure 25.
It is worth noting that with reference to Figure 23 and Figure 24 it can be seen
that beyond a frequency of 2Hz the spectrum amplitude is tending to zero,
therefore it is not necessary to plot beyond 2Hz. This is a result of the
multiplication with the JONSWAP spectrum which tends to zero as the frequency
increases. Further discussion of this can be found in the discussion section.
76. 58
Figure 25: Mudline bending stress from wave loading
The length of the time and length of frequency was maintained equal for both the
wind and wave stress calculation to permit the direct combination of the wind and
wave stress values. Furthermore, according to Van Der Tempel (2006) simulation
time of 10 minutes (600 seconds) is considered a standard length of time for
fatigue studies performed in the time domain. A sensitivity analysis is carried out
in section 3.1 to establish the variation in accumulated fatigue damage from wind
and wave loading as a result of repeated simulations, and the simulation length
is further discussed in section 4.4.1.
77. 59
2.9 Rainflow Counting and Damage Equivalent Stress Range
The final step in the process to establish the accumulated fatigue damage of the
reference turbine at the reference site is the calculation of the damage equivalent
stress range value by using Paris Law in combination with a Rainflow counting
algorithm. The methods used to perform this analysis are described in detail by
Pook (2007). The damage equivalent stress range is then used in combination
with a suitable S-N curve to determine the number of life cycles the system can
withstand for the reference conditions. For information regarding the different
types of S-N curves refer to the DNV standard Det Norske Veritas (2012).
As previously mentioned, the S-N curve is plotted on a log-log scale which results
in extreme sensitivity in the final results depending on the S-N curve used. Thus,
to find the number of cycles to failure and the subsequent number of years to
failure, the DNV standard for offshore wind turbine design was referred to. As
recommended by Det Norske Veritas (2014) for offshore wind turbine structures,
the S-N curve in seawater with cathodic protection βDβ was selected. The latter
proportion of the curve is used when >106 cycles can be expected which results
in a Paris coefficient of 5 and a log πΜ value of 15.606. The latter proportion of
the curve was used in this investigation due to the high number of cycles the
system is expected to endure throughout its design life. Note that a value of 5 for
the Paris exponent has been assumed throughout. Appendix M presents further
information regarding suggested S-N curves and Figure 2 found in section 1.2.1
depicts the plots.
78. 60
2.10 Wind and Wave Loading Superposition
Superposition of the wind and wave loading is a topic of discussion in the
literature and many approaches to perform this operation have been proposed
(KΓΌhn 2001). An objective of this investigation was to establish how different wind
and wave superposition methodologies effect the final system fatigue life. To
address this objective the following approaches were used.
The first superposition method, discussed by KΓΌhn (2001) and Van Der Tempel
(2006), suggests that the bending stress spectra determined for both wind and
waves can be combined (summed) prior to establishing the damage equivalent
stress range. At this point, there are two options for the spectral superposition:
in-phase, or out-of-phase superposition (see Figure 29). Van Der Tempel (2006)
does not specify which should be used, while KΓΌhn (2001) has considered both.
Both have been considered in this investigation, however, it is evident that in-
phase will yield a more conservative result than the out-of-phase method. The
out-of-phase approach is closer to reality as a result of its ability to take into
account, to some extent, the out-of-phase wind and wave loading conditions.
Thus, for this investigation, the random phase component has been added
separately to wind and wave mudline bending spectra before IFFT and prior to
the spectra superposition. This results in a partial cancellation of a proportion of
the amplification which would otherwise occur with the application of equal phase
data. The difference in the final result, with and without the application of
difference phase information is presented in Table 7 and discussed further in the
discussion chapter.
The next method compared is KΓΌhnβs unweighted equivalent method which was
shown to provide accurate results with a 3% error and at least as accurate as any
alternative method (KΓΌhn, 2001). The final approach directly combines the
damage equivalent stress range values from wind and waves.
The final method directly combines the separate damage equivalent stress
ranges after Rainflow Counting and is included for comparative purposes.
79. 61
3 RESULTS
This investigation so far has concentrated on the development of a suitable model
that can be used to find the damage equivalent stress range values from wind
and wave loading of the NREL 5MW reference turbine. All methods presented
were subsequently implemented into a series of Matlab scripts which are used to
obtain the results presented in this chapter.
3.1 Sensitivity Analyses
Due to the application of the random phase, each simulation performed will yield
slightly different results. A sensitivity analysis was carried out to determine the
sensitivity of the damage equivalent stress range results to repeated simulations.
The analysis was conducted for both wind and wave loading separately as well
as for in and out-of-phase spectral superposition. The mean fatigue cycle
frequency was also established for the combined wind and wave stress time
series in order to find fatigue life in years. Each simulation was run 50, 100 and
200 times to establish the variation in the results, see Table 6.
Table 6: Sensitivity analysis
ITERATIONS 50 100 200
Wind Average Damage Equivalent Stress Range [MPa] 9.9561 9.9564 9.578
Wave Average Damage Equivalent Stress Range [MPa] 1.3640 1.3568 1.3611
Wind and Wave Damage Equivalent Stress Range (In-
phase spectral superposition) [MPa]
10.3691 10.3927 10.3688
Wind and Wave Damage Equivalent Stress Range (Out-
of-phase spectral superposition) [MPa]
10.0786 10.0954 10.0699
Wind and Wave average fatigue cycle frequency (Out-
of-phase spectral superposition) [Hz]
0.4713 0.4738 0.4729
From Table 6 it can be seen that the results, except for the fatigue cycle
frequency, regardless of the number of iterations are accurate to one decimal
80. 62
place and do not appear to be converging to a particular value beyond one
decimal place. Due to the random nature of the wind and wave data significantly
more than 200 iterations would be required to see a convergence in the results
for two decimal places or more. This is beyond the scope of this investigation.
Therefore all results have been rounded to one decimal place except for the
fatigue cycle frequency, which has been rounded to two decimal places.
3.2 Superposition of the Wind and Wave Stresses Before and
After Rainflow Counting
In addition to presenting a working model to establish the damage equivalent
stress range value from the wind and wave loading, this investigation sought to
establish the effects of different methodological superposition of the wind and
wave loading. The results from this analysis are presented below.
The first damage equivalent stress range was found using spectral superposition,
which is a method used by both Van Der Tempel (2006) and KΓΌhn (2001). The
wind and wave stress spectra are combined (summed) before performing IFFT
and subsequently RFC. This method was implemented in Matlab and the results
are given in Table 7.
The second method used follows KΓΌhnβs unweighted equivalent method. The
procedure is provided in Equation 37.
βπππ
2
= βπππ_π€πππ
2
+ βπππ π€ππ£π
2
βπππ = ββπππ_π€πππ
2
+ βπππ π€ππ£π
2
= β10.02 + 1.42
= ππ. π π΄π·π
Equation 37: Damage equivalent stress
range using KΓΌhnβs unweighted
equivalent method
Using values quoted in Table 6 regarding the direct combined damage equivalent
stress range value from wind and wave loading, post RFC can be found by
summing the two values, to give the following: