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World Class Training Solutions
2
Outline
• Brief Introduction to PetroTeach
• Introducing our Distinguished Instructor David Garner
• Webinar Presentation (45 - 60 min.)
• Q&A (10 - 15 min.)
Petroleum Data Analytics
Introduction to PetroTeach
Hydraulic Fracturing Webinar 3
 Providing 150 training courses
 About 50 Distinguished Lecturers
 Online, Public and In-house Courses
 Download Our Catalogue !
 Follow us on Social Media!
4
Tuesday 1st – 16:00 GMT
Nightmare of Hydrate Blockage
Professor Bahman Tohidi
Wednesday 9th – 16:00 GMT
Seismic Reservoir Characterization
Dr. Andrew Ross
Thursday 10th – 16:00 GMT
Hydraulic Fracturing
Jerry Rusnak
Monday 14th – 17:00 GMT
3D Printing: The Future of Geology
Dr. Franek Hasiuk and Dr. Sergey Ishutov
Free Webinars in September
Monday 21th – 17:00 GMT
Elements of Fiscal Regimes and Impact on
E&P Economics and Take Statistics
Professor Wumi Illedare
Thursday 3 rd – 16:00 GMT
Advanced Petrophysics
Mostafa Haggag
5
Wednesday 7th – 16:00 GMT
Classic Measurement vs. Image Processing
Professor Reza Azin
Thursday 1st – 16:00 GMT
Casing and Cementing
Jerry Rusnak
Wednesday 14th – 16:00 GMT
Advanced Analysis of Carbonate System
Professor Maria Mutti
Monday 21th – 16:00 GMT
SAGD And Solvent-SAGD Design And Analysis
Dr. Mazda Irani
Free Webinars in October
6
Wednesday 25th – 18:00 GMT
Plug and Abandonment (P&A) of Wells
Dr. Mahmoud Khalifeh
Monday 9th – 18:00 GMT
Electrofacies, A Guided Machine Learning For The Practice of Geomodeling
David Garner
Free Webinars in November
Sunday 1st – 16:00 GMT
BoreHole Image Application
Imene Ferhat
Wednesday 18th – 18:00 GMT
Well Integrity Management System
Fayez Makkar
Wednesday 4th – 16:00 GMT
Application of Artificial Intelligence and Machine Learning
in Petroleum Engineering
Professor Shahab D. Mohaghegh
7
Tuesday 1st – 16:00 GMT
Fundamentals of Carbonate Reservoirs
Professor Ezat Heydari
Free Webinars in December
Wednesday 9th – 16:00 GMT
The Role of Geomodeling in The Multi-Disciplinary Team
David Garner
Register by email to:
webinar@petro-teach.com
https://www.petro-teach.com
Sunday 13th – 16:00 GMT
Petroleum Investment Analysis
Dr. Babak Jafarizadeh
Tuesday 15th – 16:00 GMT
Carbon Capture, Utilization And Storage
Dr. Franek Hasiuk
David Garner
PetroTeach
Distingushed Instructor
• He holds a Masters degree from Cornell
Univesity in Geophysics
• David Garner has more than 30 years of
Petroleum Industry experience in project teams,
consulting services and R&D.
• He has worked for Chevron, ConocoPhillips,
Equinor, Haliburton, TerraMod Consulting
• He is an active member of CSPG, EAGE, SPE,
AAPG, IAMG and is a licensed professional
with APEGA
8Electrofacies Modeling
Electrofacies, A Guided Machine Learning
For the Practice of Geomodelling
David Garner
9.11.2020
World Class Training Solutions
www.petro-teach.com
1010
Agenda Topics
• Geomodeling context
• Facies and Facies Definitions
• Facies Classification and Motivation to Improve
• Electrofacies Concepts and Application Illustrations
− Unsupervised, supervised, parametric, non-parametric
• Selected Case Examples highlighting different issues
− Heidrun Field – shoreface -Fangst
− Winborne Field – Devonian carbonate reef - Leduc
− Ells River – shoreface - McMurray
− Corner Field – point bar - McMurray
• Geomodeling Impacts
• Summary Remarks
©David Garner
11
Goal:
• Goal: to bring consistency to facies logs thus enhancing the
workflows, integration of data and quality of reservoir modeling
• Premise: Facies logs are typically not tuned optimally to the
hierarchical geomodeling workflows
©David Garner
1212
Facies
VE=7.5
8o dip
Analogues
Classifications
Geomodels
Fluvial
Point Bar
Data
Integration
Garner, et al. 2014; Martinius, et al., 2017
Geo-Modeling Involves Concepts to Models
Statistical & Physical behaviour
Sedimentology
to stratigraphy
©David Garner
13
Rescaling workflows (context)
Geomodelers work with multi-scale data (i.e., different support volumes)
Logs
Blocked wells
Geomodel
Flow model
Seismic model
Core plugs
Models are generated at different scales
Slide modified from
1414
Facies as conditioning data
Facies are used
•To represent and honour reservoir heterogeneities,
Facies+Petrophysics:
−Reservoir architecture described by the sequence of litho-facies
−Variability of the rock properties within each given facies
•As a categorical variable for conditioning geomodels – as “Truth”
•As statistically stationary domains of properties
1D facies is a significant data type influencing the entire
subsurface workflow, from Static Facies to Dynamic
©David Garner
1515
Static Facies to Dynamic
Benefits of Rock Types in the Flow Simulator
Ability to apply parameters by individual rock type:
 Capillary pressure curves, Pc, water trends
 Relative Permeability, Kr, Curve shapes
 Relative Permeability, Kr, End points
 Thermal Properties, e.g. conductivity, diffusivity
 Geomechanical properties, e.g. Young’s, Poisson’s, dilation
Issue …Scaling Facies Models into Rock types …preserving heterogeneity!
©David Garner
1616
Definitions
Practitioners from different disciplines describe the facies variable from their viewpoints:
 Facies: a general term used to reflect any and all of the rock definitions present.
 Litho-facies: describe the characteristics of a real rock. Typically described during
visual inspection of the actual sample.
 Bio-facies and Ichno-facies: describe biological content of actual samples through
visual identification which supports differentiation of depositional environments
 Depositional Facies: a generic term used to account for the depositional environment
and lithofacies assemblages.
 Electro-facies: a term describing log-derived lithologies or rock types using statistical
methods
 Petro-facies: commonly used to describe log-derived lithologies or reservoir rock types
 Rock Types: used as an engineering term for flow studies
©David Garner
1717
Classification of Lithofacies/Electro-Facies
Various approaches
• Combine rock fabric, pore space and petrophysics (e.g. Lucia, F. J., 1995)
• Detailed description of depositional and diagenetic processes from core or image data
• Electrofacies using multivariate statistics using wireline and core or image description
(e.g. Nivlet, et al. 2001; Ye and Rabiller, 2000)
• Rules Based Petrophysical Classification (Petrofacies); e.g. use of cutoffs or polygons
Account for quality of pores & engineering impact
Account for spatial location
All of these approaches require a commitment of time and effort to clean and
understand the database
©David Garner
1818
Advantages of Electrofacies Technology
The under-used application of electrofacies modeling provides a
robust framework of methods:
1. Improved integration and consistency in the application of well data
(conditioning) in the full geomodeling workflow
2. Strengthens geology-to-flow principles
3. Decreased observational bias in facies classification
4. Decreased facies classification uncertainty
5. Faster run time and enabler of first-pass geomodels
6. Reduced need for coring from a geomodeling perspective
©David Garner
19
Barriers to Adoption of Electrofacies
• Workflow steps are not widely established in industry practice or
promoted by s/w vendors.
• A lack of best practice guidance and training.
• Misuse or sub-optimal application
• Lack of dissemination of software to G&G staff beyond
petrophysicists holds back the technology
Solution: Treating the electrofacies practice as an open team
driven interpretation, a guided machine learning process
©David Garner
20
Electrofacies General Theory Illustration
Identify which “facies” class to assign to well log data without facies description:
Inputs: facies description and log/image/seismic curves
Find an orientation along which the two classes have the greatest separation
and the least inflation
After Davis, 1986 Assign unknown samples
Garner, D.L., Woo, A., and Broughton, P., 2009, Applications of 1D Electro-Facies Modeling (Abstract),
presented at the CSPG CSEG CWLS Convention, May
©David Garner
2121
Assignment Functions (classification)
• Linear: Modes have similar size
• Quadratic: Modes have different sizes
• Non-parametric: No size/shape assumption
Centroids
Mahalanobis
distances Assignment probabilities can be
controlled (by posterior weights) to
adjust output facies proportionsCentroids = Center of mass
©David Garner
22
Un-Supervised Discriminant Analysis
Mode mapping or “bump hunting” (kernel estimation)
 Find high densities of points
grouped together
• Can be interpreted as petrofacies
 Define Seed points
• Shown in color in cross plots
 These samples can be used as
the training set for discriminant
analysis
GRRhob
Neut
Neut
Rhob
GR
©David Garner
23
Un-Supervised Method
Classification of samples
Assign all samples in relation
to a function of 3 variables
GR, RHOB, Neutron
GR
Rhob
Rhob
Neut
Neut
©David Garner
24
Un-Supervised
Method
In this example…
Electro-facies have a better visual
relationship to the effective porosity
curve than to the Vshale curve
Porosity = f(Density,GR)
Efacies = f(Density,GR,Neutron)
Electro-facies models can be a
practical way to proceed
Vshale
©David Garner
25
Assumptions (from discriminant analysis as guide to data issues)
1. The observations in each class were randomly chosen.
− Observed facies are not random samples, are spatially biased as is the natural
variability of depositional successions.
2. The probability of an unknown observation belonging to each class is equal
− Facies proportions are not equal in nature.
3. Variables are normally distributed within each class.
− By-facies distributions of log variables have various shapes.
4. The variance-covariance matrices of the classes are equal in size.
− The spread of properties for a given facies may be narrow or wide depending on
lithological characteristics.
5. None of the observations used to calculate the function were misclassified.
− Facies and logs have many imprecisions leading to erroneous petrophysical
statistics. Depth shifts, interpretive scale, bed boundary overlap, log normalization,
interpretive ambiguities are sources of potential “errors” in training sets.
©David Garner
2626
• Electrofacies Classification
− unsupervised approach – facies data is not provided
− supervised approach – facies data is provided
• Multivariate probability function described:
− Parametrically: linear and quadratic
− Non-parametrically : Bayesian and kernel
GR
RHOB
X
Electrofacies Modeling Approaches
p(x | Fj) Data
NFi
FpFxp
FpFxp
xFp NF
j
jj
ii
i ,...,1,
)()|(
)()|(
)|(
1





x
X
F1 F2
Nonparametric
Parametric
“Probability to assign an
observation x to the class Fi”
©David Garner
27
Case 1: Carbonate Reef Example using Electrofacies
Fore-Reef
Lagoon
Reef and
Grainstone
7 described facies
Model facies trends impacted petrophysics, e.g. vertical permeability in high energy depositional areas
Kv
Fore-Reef
Reef and
GrainstoneLagoonField Study 1999-2000
Facies groups imply
different petrophysics.
Model zones and trends
related to deposition
©David Garner
28
Case 2: Heidrun Field (The Magical Goat)
• Norwegian Sea Dataset
• 4 Stratigraphic units – Fangst
Formation
• Focus on the lowest zone
17 wells
• 4 Facies
• Training, N=1729
• Trained, N=2732
Training Data Clean up:
• Cleaned Outliers from distributions
• Bi-modal depo-facies split and re-assigned
Garner, Srivastava, Yarus, 2015. Presented at EAGE Petroleum Geostatistics, Biarritz
©David Garner
29
Cleaning the Training set
Heidrun Field
Initial – 2nd Facies
is bi-modal
Cleaned – 2nd facies -
lower quality mode moved
to 1st facies
Depositional Facies interpretations may combine contrasting lithologies in
facies associations to represent a depositional process or location.
17 wells, 4 facies
©David Garner
3030
Classification Results
Heidrun Field
Training Trained Full Log Coverage
Facies N=1729 N=1729 N=2732
1 17.7% 15.6% 16.5%
2 26.6% 26.4% 26.3%
3 11.9% 9.5% 8.2%
4 43.8% 48.4% 49.0%
Direct Bayesian Approach (by Mohan Srivastava)
©David Garner
3131
Electrofacies (Heidrun Field)
GR Rhob Pr{F1} Pr{F2} Pr{F3} Pr{F4}Raw TrainNeutron
Efacies
Pr{max}
CBA A
Garner, Srivastava, Yarus, 2015. Presented at EAGE Petroleum Geostatistics, Biarritz
3232
Core Facies
Description
• Grouped Data exhibits
unreasonable overlap
• e.g. Diagenetic (black points)
2008
lumped
cleaned
FACIES GR PHIE RHOB NPSS
2 10-60 24-38 1900-2200 16-52
3 10-70 22-36 1950-2250 12-50
4 10-70 20-36 1950-2250 14-50
6 60-110 2-18 2100-2350 30-56
7 40-90 10-28 2100-2350 28-48
9 10-50 0-8 2500-2700 0-30
Case 3: Ells River
Presented at
Geoconvention, 2009
3333
Electro-Facies Supervised Classification
& Assignment
2008
GR
Density
Bayesian Classifier with a Gaussian kernel and posterior weights to adjust output
facies proportions
Using
4 curves
Ells River
©David Garner
3434
Electro-facies Results Example
The study compared results to core photos and image logs
2007 2008
Based on geological concepts the proportions were adjusted to ensure the succession captured the variability
of a lower shoreface (mixed clastics) to upper shoreface (sand dominated) transition.
3535
Checking the Models
F2 F4 F6 F7 F9
Phie Rhob GR NPSS
Stringers9
Sandy Mud7
Mud6
Sand w/ mud drapes4
Fine Sand2
©David Garner
3636
Comments
It was possible to influence the result by changing the following parameters
(detailed descriptions follow):
1) Wells used to guide the prediction
2) Log-curve sets used for the discrimination and classification
3) Facies data input, i.e. amount of cleaning, lumping
4) Assignment probability of each facies, i.e. posterior weights
5) Linear, quadratic or non-parametric calculation method of the discriminant
function Use non-parametric for supervised models
6) Choice of kernel operator, e.g. Nearest Neighbour, Epanechnikov, Gaussian
©David Garner
37
Example Facies Model
Seq-3
Seq-2
McM
Wab
GOC
DevUnc
8
ElectroFacies Results
SandSand
InterbedInterbed SSSS
MudMud
Muddy IB SSMuddy IB SS
StringersStringers
Garner, 2009; Rubin, et al., 2009 (Gussow conference)
Ells River
©David Garner
3838
Case 3 Conclusions (1/2)
A petrophysically consistent and robust Electro-facies model was developed
for populating 3D models
The number of core facies were reduced based on similarity in log response
Core Description was used to classify Electro-facies in wells using a non-
parametric discriminant analysis
To account for vertical trends, analysis was separated into layers for
assignments
The proportions of the input training samples were used as a guide for the
output proportions during the process
Geological Concepts were used to validate and further adjust proportions
©David Garner
3939
Case 3 Conclusions (2/2)
Fluid effects on logs may cause erroneous classifications
The optimum number of curves is between three and six
 Using too many curves does not improve the discriminant function
Select curves that are reliable and thought to be representative of the
rock types
The input from the geologists was important for deciding on final
electro-facies predictions (Geological Concepts)
Feedback from team members after use of Efacies can be
beneficial for updating models
©David Garner
4040
Example 4: Facies Visual and Electrofacies
Visual Interpretation Electrofacies
Point Bar
Deposit
Electrofacies are consistent with the log scale variations
These visual facies were interpreted coarsely
Corner Field
Presented at
WHOC2014
New Orleans
Garner, et al. 2014; WHOC14-139©David Garner
41
Point Bar
example
Figure from Martinius,
et al., 2017
Marine and Petroleum
Geology, Vol. 82
Visually interpreted depo-facies inputs are not consistent with logs. Electrofacies results
provide log-scale resolution and consistency necessary for geomodeling processes©David Garner
42
Blind Tests: Judgement considerations
• Concept facies are mainly defined by percentages of
mud visually, i.e vshale range. Some geometric
issues apply.
• Classification Errors tend to be a reclassification
to an adjacent quality facies
• Breccia is a textural designation with a broad range
of qualities. The mode is closest to middle quality
I.H.S. with tails in all facies.
• Electrofacies are similar to a lithofacies or petrofacies
Breccia
Sandstone
SIHS 1
SIHS 2
Mixed IHS
MIHS
Mudstone
©David Garner
43
Step-wise Results Reporting
Curves
RhoB
GR
NPSS
DT
PEF
DTS
6 5 4 3
Not covered
PCA screening
Step-wise reporting:
• Rank variables
• Wilks’ Lambda
• Avg Canonical
Correlations
• Eigen values
Not covered
Discussion of log curves
Strengths/weaknesses
Normalization required
Vintages and quality
Advanced analysis:
Transition statistics
Shannon’s entropy©David Garner
44
Validation well (excluded from training)
4
4
Input
Visual
Interpretation
6 5 4 3
Number of Curves NPSS
RHOB
Electrofacies
An excluded well used as a blind test for validation purposes is shown. Non-parametric models
are compared using 3-6 curves which show consistency and log scale variability©David Garner
45
Blind Tests (New Wells)
Visual
Facies
Pr{max}Pr{max}
Efacies
Visual
Facies
Visual
Facies
Blind wells show low probability efacies assignments tend to be a reclassification to adjacent
quality facies, aiding consistency for heterogeneity modeling
©David Garner
46
Electrofacies Impacts: Improved parameters
Permeability Models Water saturation trends
 Captures capillary effect Percolation effects
©David Garner
Summary
Motivation to Improve Facies – additional points
• Electrofacies: Generating reliable inputs to geomodeling results in
• Quality: Description misinterpretations, bed boundaries, depth errors are
corrected
• Coverage: Facies in uncored intervals and uncored wells.
• Consistency: Petrophysical consistency in electrofacies model fidelity
• Electrofacies application to analogue fields ensures a reliability with
asset comparisons
• Accelerates subsurface project cycle times
• Rapid assimilation of delineation results Fast-track Decision Analysis
Static Models represent heterogeneities: Define important ones
©David Garner
Introduction to Geomodelling practice (1) (online)
5 half days, Jan 18 -22 (half day each)
[To be repeated: Tentative dates Mar 29-April 2]
Register@petro-teach.com
Course Overview:
A key goal in the Geomodelling practice is to provide images of reservoir heterogeneities critical to
better understanding the physical hydrocarbon extraction processes. Geomodels help reveal the impact of
the various reservoir multi-scale features on dynamic behaviour. Challenges exist to adapt workflows
and build efficiencies for subsurface modelling needs. The course intent is to provide grounding in
geomodelling thought process, and to place high level topics into their basic integrated context. By the
end of the course, each topic will have been defined and discussed and related to general workflows with
examples.
Learning Objectives:
Grounding in:
• Essential Geostatistical theory and application
• Geomodelling thought process in workflows and key algorithms
• Best practices and Trade Craft
Course price (Euro):
• 20% DISCOUNT for Ph.D. students, Group (≥ 3 person) and early bird registrants (4 weeks before)
48
49
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propose. The information presented on this material is collected, maintained and provided purely for the
convenience of the reader. We have made every attempt to ensure that the information contained in this
material has been obtained from reliable sources and PetroTeach is not responsible for any errors,
decisions or omissions of the information. The information on this material has been incorporated in good
faith and it is only for the general education and training purpose. It should not be relied upon for any
specific purpose and no representation or warranty is given for its accuracy or completeness.
By accessing this material, you agree that PetroTeach will not be liable for any loss incurred due to the
use of the information and the material contained.
The copyright for this material is solely belongs to the PetroTeach and Its Instructors.
Any access to it by the general public does not imply free license to any company/organization to use it
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Electrofacies Modeling

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Electrofacies a guided machine learning for practice of geomodelling

  • 2. 2 Outline • Brief Introduction to PetroTeach • Introducing our Distinguished Instructor David Garner • Webinar Presentation (45 - 60 min.) • Q&A (10 - 15 min.) Petroleum Data Analytics
  • 3. Introduction to PetroTeach Hydraulic Fracturing Webinar 3  Providing 150 training courses  About 50 Distinguished Lecturers  Online, Public and In-house Courses  Download Our Catalogue !  Follow us on Social Media!
  • 4. 4 Tuesday 1st – 16:00 GMT Nightmare of Hydrate Blockage Professor Bahman Tohidi Wednesday 9th – 16:00 GMT Seismic Reservoir Characterization Dr. Andrew Ross Thursday 10th – 16:00 GMT Hydraulic Fracturing Jerry Rusnak Monday 14th – 17:00 GMT 3D Printing: The Future of Geology Dr. Franek Hasiuk and Dr. Sergey Ishutov Free Webinars in September Monday 21th – 17:00 GMT Elements of Fiscal Regimes and Impact on E&P Economics and Take Statistics Professor Wumi Illedare Thursday 3 rd – 16:00 GMT Advanced Petrophysics Mostafa Haggag
  • 5. 5 Wednesday 7th – 16:00 GMT Classic Measurement vs. Image Processing Professor Reza Azin Thursday 1st – 16:00 GMT Casing and Cementing Jerry Rusnak Wednesday 14th – 16:00 GMT Advanced Analysis of Carbonate System Professor Maria Mutti Monday 21th – 16:00 GMT SAGD And Solvent-SAGD Design And Analysis Dr. Mazda Irani Free Webinars in October
  • 6. 6 Wednesday 25th – 18:00 GMT Plug and Abandonment (P&A) of Wells Dr. Mahmoud Khalifeh Monday 9th – 18:00 GMT Electrofacies, A Guided Machine Learning For The Practice of Geomodeling David Garner Free Webinars in November Sunday 1st – 16:00 GMT BoreHole Image Application Imene Ferhat Wednesday 18th – 18:00 GMT Well Integrity Management System Fayez Makkar Wednesday 4th – 16:00 GMT Application of Artificial Intelligence and Machine Learning in Petroleum Engineering Professor Shahab D. Mohaghegh
  • 7. 7 Tuesday 1st – 16:00 GMT Fundamentals of Carbonate Reservoirs Professor Ezat Heydari Free Webinars in December Wednesday 9th – 16:00 GMT The Role of Geomodeling in The Multi-Disciplinary Team David Garner Register by email to: webinar@petro-teach.com https://www.petro-teach.com Sunday 13th – 16:00 GMT Petroleum Investment Analysis Dr. Babak Jafarizadeh Tuesday 15th – 16:00 GMT Carbon Capture, Utilization And Storage Dr. Franek Hasiuk
  • 8. David Garner PetroTeach Distingushed Instructor • He holds a Masters degree from Cornell Univesity in Geophysics • David Garner has more than 30 years of Petroleum Industry experience in project teams, consulting services and R&D. • He has worked for Chevron, ConocoPhillips, Equinor, Haliburton, TerraMod Consulting • He is an active member of CSPG, EAGE, SPE, AAPG, IAMG and is a licensed professional with APEGA 8Electrofacies Modeling
  • 9. Electrofacies, A Guided Machine Learning For the Practice of Geomodelling David Garner 9.11.2020 World Class Training Solutions www.petro-teach.com
  • 10. 1010 Agenda Topics • Geomodeling context • Facies and Facies Definitions • Facies Classification and Motivation to Improve • Electrofacies Concepts and Application Illustrations − Unsupervised, supervised, parametric, non-parametric • Selected Case Examples highlighting different issues − Heidrun Field – shoreface -Fangst − Winborne Field – Devonian carbonate reef - Leduc − Ells River – shoreface - McMurray − Corner Field – point bar - McMurray • Geomodeling Impacts • Summary Remarks ©David Garner
  • 11. 11 Goal: • Goal: to bring consistency to facies logs thus enhancing the workflows, integration of data and quality of reservoir modeling • Premise: Facies logs are typically not tuned optimally to the hierarchical geomodeling workflows ©David Garner
  • 12. 1212 Facies VE=7.5 8o dip Analogues Classifications Geomodels Fluvial Point Bar Data Integration Garner, et al. 2014; Martinius, et al., 2017 Geo-Modeling Involves Concepts to Models Statistical & Physical behaviour Sedimentology to stratigraphy ©David Garner
  • 13. 13 Rescaling workflows (context) Geomodelers work with multi-scale data (i.e., different support volumes) Logs Blocked wells Geomodel Flow model Seismic model Core plugs Models are generated at different scales Slide modified from
  • 14. 1414 Facies as conditioning data Facies are used •To represent and honour reservoir heterogeneities, Facies+Petrophysics: −Reservoir architecture described by the sequence of litho-facies −Variability of the rock properties within each given facies •As a categorical variable for conditioning geomodels – as “Truth” •As statistically stationary domains of properties 1D facies is a significant data type influencing the entire subsurface workflow, from Static Facies to Dynamic ©David Garner
  • 15. 1515 Static Facies to Dynamic Benefits of Rock Types in the Flow Simulator Ability to apply parameters by individual rock type:  Capillary pressure curves, Pc, water trends  Relative Permeability, Kr, Curve shapes  Relative Permeability, Kr, End points  Thermal Properties, e.g. conductivity, diffusivity  Geomechanical properties, e.g. Young’s, Poisson’s, dilation Issue …Scaling Facies Models into Rock types …preserving heterogeneity! ©David Garner
  • 16. 1616 Definitions Practitioners from different disciplines describe the facies variable from their viewpoints:  Facies: a general term used to reflect any and all of the rock definitions present.  Litho-facies: describe the characteristics of a real rock. Typically described during visual inspection of the actual sample.  Bio-facies and Ichno-facies: describe biological content of actual samples through visual identification which supports differentiation of depositional environments  Depositional Facies: a generic term used to account for the depositional environment and lithofacies assemblages.  Electro-facies: a term describing log-derived lithologies or rock types using statistical methods  Petro-facies: commonly used to describe log-derived lithologies or reservoir rock types  Rock Types: used as an engineering term for flow studies ©David Garner
  • 17. 1717 Classification of Lithofacies/Electro-Facies Various approaches • Combine rock fabric, pore space and petrophysics (e.g. Lucia, F. J., 1995) • Detailed description of depositional and diagenetic processes from core or image data • Electrofacies using multivariate statistics using wireline and core or image description (e.g. Nivlet, et al. 2001; Ye and Rabiller, 2000) • Rules Based Petrophysical Classification (Petrofacies); e.g. use of cutoffs or polygons Account for quality of pores & engineering impact Account for spatial location All of these approaches require a commitment of time and effort to clean and understand the database ©David Garner
  • 18. 1818 Advantages of Electrofacies Technology The under-used application of electrofacies modeling provides a robust framework of methods: 1. Improved integration and consistency in the application of well data (conditioning) in the full geomodeling workflow 2. Strengthens geology-to-flow principles 3. Decreased observational bias in facies classification 4. Decreased facies classification uncertainty 5. Faster run time and enabler of first-pass geomodels 6. Reduced need for coring from a geomodeling perspective ©David Garner
  • 19. 19 Barriers to Adoption of Electrofacies • Workflow steps are not widely established in industry practice or promoted by s/w vendors. • A lack of best practice guidance and training. • Misuse or sub-optimal application • Lack of dissemination of software to G&G staff beyond petrophysicists holds back the technology Solution: Treating the electrofacies practice as an open team driven interpretation, a guided machine learning process ©David Garner
  • 20. 20 Electrofacies General Theory Illustration Identify which “facies” class to assign to well log data without facies description: Inputs: facies description and log/image/seismic curves Find an orientation along which the two classes have the greatest separation and the least inflation After Davis, 1986 Assign unknown samples Garner, D.L., Woo, A., and Broughton, P., 2009, Applications of 1D Electro-Facies Modeling (Abstract), presented at the CSPG CSEG CWLS Convention, May ©David Garner
  • 21. 2121 Assignment Functions (classification) • Linear: Modes have similar size • Quadratic: Modes have different sizes • Non-parametric: No size/shape assumption Centroids Mahalanobis distances Assignment probabilities can be controlled (by posterior weights) to adjust output facies proportionsCentroids = Center of mass ©David Garner
  • 22. 22 Un-Supervised Discriminant Analysis Mode mapping or “bump hunting” (kernel estimation)  Find high densities of points grouped together • Can be interpreted as petrofacies  Define Seed points • Shown in color in cross plots  These samples can be used as the training set for discriminant analysis GRRhob Neut Neut Rhob GR ©David Garner
  • 23. 23 Un-Supervised Method Classification of samples Assign all samples in relation to a function of 3 variables GR, RHOB, Neutron GR Rhob Rhob Neut Neut ©David Garner
  • 24. 24 Un-Supervised Method In this example… Electro-facies have a better visual relationship to the effective porosity curve than to the Vshale curve Porosity = f(Density,GR) Efacies = f(Density,GR,Neutron) Electro-facies models can be a practical way to proceed Vshale ©David Garner
  • 25. 25 Assumptions (from discriminant analysis as guide to data issues) 1. The observations in each class were randomly chosen. − Observed facies are not random samples, are spatially biased as is the natural variability of depositional successions. 2. The probability of an unknown observation belonging to each class is equal − Facies proportions are not equal in nature. 3. Variables are normally distributed within each class. − By-facies distributions of log variables have various shapes. 4. The variance-covariance matrices of the classes are equal in size. − The spread of properties for a given facies may be narrow or wide depending on lithological characteristics. 5. None of the observations used to calculate the function were misclassified. − Facies and logs have many imprecisions leading to erroneous petrophysical statistics. Depth shifts, interpretive scale, bed boundary overlap, log normalization, interpretive ambiguities are sources of potential “errors” in training sets. ©David Garner
  • 26. 2626 • Electrofacies Classification − unsupervised approach – facies data is not provided − supervised approach – facies data is provided • Multivariate probability function described: − Parametrically: linear and quadratic − Non-parametrically : Bayesian and kernel GR RHOB X Electrofacies Modeling Approaches p(x | Fj) Data NFi FpFxp FpFxp xFp NF j jj ii i ,...,1, )()|( )()|( )|( 1      x X F1 F2 Nonparametric Parametric “Probability to assign an observation x to the class Fi” ©David Garner
  • 27. 27 Case 1: Carbonate Reef Example using Electrofacies Fore-Reef Lagoon Reef and Grainstone 7 described facies Model facies trends impacted petrophysics, e.g. vertical permeability in high energy depositional areas Kv Fore-Reef Reef and GrainstoneLagoonField Study 1999-2000 Facies groups imply different petrophysics. Model zones and trends related to deposition ©David Garner
  • 28. 28 Case 2: Heidrun Field (The Magical Goat) • Norwegian Sea Dataset • 4 Stratigraphic units – Fangst Formation • Focus on the lowest zone 17 wells • 4 Facies • Training, N=1729 • Trained, N=2732 Training Data Clean up: • Cleaned Outliers from distributions • Bi-modal depo-facies split and re-assigned Garner, Srivastava, Yarus, 2015. Presented at EAGE Petroleum Geostatistics, Biarritz ©David Garner
  • 29. 29 Cleaning the Training set Heidrun Field Initial – 2nd Facies is bi-modal Cleaned – 2nd facies - lower quality mode moved to 1st facies Depositional Facies interpretations may combine contrasting lithologies in facies associations to represent a depositional process or location. 17 wells, 4 facies ©David Garner
  • 30. 3030 Classification Results Heidrun Field Training Trained Full Log Coverage Facies N=1729 N=1729 N=2732 1 17.7% 15.6% 16.5% 2 26.6% 26.4% 26.3% 3 11.9% 9.5% 8.2% 4 43.8% 48.4% 49.0% Direct Bayesian Approach (by Mohan Srivastava) ©David Garner
  • 31. 3131 Electrofacies (Heidrun Field) GR Rhob Pr{F1} Pr{F2} Pr{F3} Pr{F4}Raw TrainNeutron Efacies Pr{max} CBA A Garner, Srivastava, Yarus, 2015. Presented at EAGE Petroleum Geostatistics, Biarritz
  • 32. 3232 Core Facies Description • Grouped Data exhibits unreasonable overlap • e.g. Diagenetic (black points) 2008 lumped cleaned FACIES GR PHIE RHOB NPSS 2 10-60 24-38 1900-2200 16-52 3 10-70 22-36 1950-2250 12-50 4 10-70 20-36 1950-2250 14-50 6 60-110 2-18 2100-2350 30-56 7 40-90 10-28 2100-2350 28-48 9 10-50 0-8 2500-2700 0-30 Case 3: Ells River Presented at Geoconvention, 2009
  • 33. 3333 Electro-Facies Supervised Classification & Assignment 2008 GR Density Bayesian Classifier with a Gaussian kernel and posterior weights to adjust output facies proportions Using 4 curves Ells River ©David Garner
  • 34. 3434 Electro-facies Results Example The study compared results to core photos and image logs 2007 2008 Based on geological concepts the proportions were adjusted to ensure the succession captured the variability of a lower shoreface (mixed clastics) to upper shoreface (sand dominated) transition.
  • 35. 3535 Checking the Models F2 F4 F6 F7 F9 Phie Rhob GR NPSS Stringers9 Sandy Mud7 Mud6 Sand w/ mud drapes4 Fine Sand2 ©David Garner
  • 36. 3636 Comments It was possible to influence the result by changing the following parameters (detailed descriptions follow): 1) Wells used to guide the prediction 2) Log-curve sets used for the discrimination and classification 3) Facies data input, i.e. amount of cleaning, lumping 4) Assignment probability of each facies, i.e. posterior weights 5) Linear, quadratic or non-parametric calculation method of the discriminant function Use non-parametric for supervised models 6) Choice of kernel operator, e.g. Nearest Neighbour, Epanechnikov, Gaussian ©David Garner
  • 37. 37 Example Facies Model Seq-3 Seq-2 McM Wab GOC DevUnc 8 ElectroFacies Results SandSand InterbedInterbed SSSS MudMud Muddy IB SSMuddy IB SS StringersStringers Garner, 2009; Rubin, et al., 2009 (Gussow conference) Ells River ©David Garner
  • 38. 3838 Case 3 Conclusions (1/2) A petrophysically consistent and robust Electro-facies model was developed for populating 3D models The number of core facies were reduced based on similarity in log response Core Description was used to classify Electro-facies in wells using a non- parametric discriminant analysis To account for vertical trends, analysis was separated into layers for assignments The proportions of the input training samples were used as a guide for the output proportions during the process Geological Concepts were used to validate and further adjust proportions ©David Garner
  • 39. 3939 Case 3 Conclusions (2/2) Fluid effects on logs may cause erroneous classifications The optimum number of curves is between three and six  Using too many curves does not improve the discriminant function Select curves that are reliable and thought to be representative of the rock types The input from the geologists was important for deciding on final electro-facies predictions (Geological Concepts) Feedback from team members after use of Efacies can be beneficial for updating models ©David Garner
  • 40. 4040 Example 4: Facies Visual and Electrofacies Visual Interpretation Electrofacies Point Bar Deposit Electrofacies are consistent with the log scale variations These visual facies were interpreted coarsely Corner Field Presented at WHOC2014 New Orleans Garner, et al. 2014; WHOC14-139©David Garner
  • 41. 41 Point Bar example Figure from Martinius, et al., 2017 Marine and Petroleum Geology, Vol. 82 Visually interpreted depo-facies inputs are not consistent with logs. Electrofacies results provide log-scale resolution and consistency necessary for geomodeling processes©David Garner
  • 42. 42 Blind Tests: Judgement considerations • Concept facies are mainly defined by percentages of mud visually, i.e vshale range. Some geometric issues apply. • Classification Errors tend to be a reclassification to an adjacent quality facies • Breccia is a textural designation with a broad range of qualities. The mode is closest to middle quality I.H.S. with tails in all facies. • Electrofacies are similar to a lithofacies or petrofacies Breccia Sandstone SIHS 1 SIHS 2 Mixed IHS MIHS Mudstone ©David Garner
  • 43. 43 Step-wise Results Reporting Curves RhoB GR NPSS DT PEF DTS 6 5 4 3 Not covered PCA screening Step-wise reporting: • Rank variables • Wilks’ Lambda • Avg Canonical Correlations • Eigen values Not covered Discussion of log curves Strengths/weaknesses Normalization required Vintages and quality Advanced analysis: Transition statistics Shannon’s entropy©David Garner
  • 44. 44 Validation well (excluded from training) 4 4 Input Visual Interpretation 6 5 4 3 Number of Curves NPSS RHOB Electrofacies An excluded well used as a blind test for validation purposes is shown. Non-parametric models are compared using 3-6 curves which show consistency and log scale variability©David Garner
  • 45. 45 Blind Tests (New Wells) Visual Facies Pr{max}Pr{max} Efacies Visual Facies Visual Facies Blind wells show low probability efacies assignments tend to be a reclassification to adjacent quality facies, aiding consistency for heterogeneity modeling ©David Garner
  • 46. 46 Electrofacies Impacts: Improved parameters Permeability Models Water saturation trends  Captures capillary effect Percolation effects ©David Garner
  • 47. Summary Motivation to Improve Facies – additional points • Electrofacies: Generating reliable inputs to geomodeling results in • Quality: Description misinterpretations, bed boundaries, depth errors are corrected • Coverage: Facies in uncored intervals and uncored wells. • Consistency: Petrophysical consistency in electrofacies model fidelity • Electrofacies application to analogue fields ensures a reliability with asset comparisons • Accelerates subsurface project cycle times • Rapid assimilation of delineation results Fast-track Decision Analysis Static Models represent heterogeneities: Define important ones ©David Garner
  • 48. Introduction to Geomodelling practice (1) (online) 5 half days, Jan 18 -22 (half day each) [To be repeated: Tentative dates Mar 29-April 2] Register@petro-teach.com Course Overview: A key goal in the Geomodelling practice is to provide images of reservoir heterogeneities critical to better understanding the physical hydrocarbon extraction processes. Geomodels help reveal the impact of the various reservoir multi-scale features on dynamic behaviour. Challenges exist to adapt workflows and build efficiencies for subsurface modelling needs. The course intent is to provide grounding in geomodelling thought process, and to place high level topics into their basic integrated context. By the end of the course, each topic will have been defined and discussed and related to general workflows with examples. Learning Objectives: Grounding in: • Essential Geostatistical theory and application • Geomodelling thought process in workflows and key algorithms • Best practices and Trade Craft Course price (Euro): • 20% DISCOUNT for Ph.D. students, Group (≥ 3 person) and early bird registrants (4 weeks before) 48
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