This document discusses analysis of inertial navigation system (INS) derived Doppler effects on carrier tracking loops in GPS receivers. It begins by explaining that integrating an INS with GPS allows reducing carrier tracking loop bandwidths, improving accuracy under dynamic conditions by using INS-derived Doppler to aid loops. However, INS errors can cause offsets in aiding Doppler, creating correlations that degrade loop performance. The document then presents a mechanism to model and remove biases from Doppler offsets, improving tracking loop performance. Simulations show the proposed modeling approach can effectively address biases from aiding Doppler errors.
DOTNET 2013 IEEE MOBILECOMPUTING PROJECT Adaptive position update for geograp...IEEEGLOBALSOFTTECHNOLOGIES
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology.
Beam steering in smart antennas by using low complex adaptive algorithmseSAT Journals
Abstract Array antenna systems are often used to enhance the received signal to interference and noise ratio when the signal operates in heavily jammed environment. Proper modeling of the received data at different antenna elements is important when evaluating the performance of this system, especially when both the signal and interference have wide frequency bands.. The antenna output is the linear combination of data from all the antenna elements. In conventional narrowband beam forming, time sequences at different antenna elements are related by some fixed phase shift. The phase shift is determined by the wave forms direction of arrival (DOA). In this paper, an efficient method for the pattern synthesis of the linear antenna arrays with the prescribed nulling and steering lobe is presented. The proposed method is based on Least Mean Square (LMS) algorithm provide a comprehensive and detailed treatment of the signal model used for beam forming, as well as, describing adaptive algorithms to adjust the weights of an array. In order to improve the convergence rate of LMS algorithm in smart antenna system, in this paper we proposes a new normalized LMS (NLMS) algorithm, This new algorithm can be treated as a block based simplification of NLMS algorithm which gives satisfactory performance in certain applications in comparison with conventional NLMS recursion, i.e., BBNLMS algorithm. By taking advantage of spatial filtering, the proposed scheme promises to reduce the bandwidth required for transmitting data by improving convergence rate. The performance of the BBNLMS algorithm in the presence of Multi-path effects and multiple users is analyzed using MATLAB simulations. The simulations when compared to that of the LMS algorithm, the results suggest that BBNLMS algorithm can improve the convergence rate and lead to better system efficiency. Keywords: BBNLMS, Convergence Rate, DOA, LMS, NLMS, Smart antenna.
Investigations on real time RSSI based outdoor target tracking using kalman f...IJECEIAES
Target tracking is essential for localization and many other applications in Wireless Sensor Networks (WSNs). Kalman filter is used to reduce measurement noise in target tracking. In this research TelosB motes are used to measure Received Signal Strength Indication (RSSI). RSSI measurement doesn‟t require any external hardware compare to other distance estimation methods such as Time of Arrival (TOA), Time Difference of Arrival (TDoA) and Angle of Arrival (AoA). Distances between beacon and non-anchor nodes are estimated using the measured RSSI values. Position of the nonanchor node is estimated after finding the distance between beacon and nonanchor nodes. A new algorithm is proposed with Kalman filter for location estimation and target tracking in order to improve localization accuracy called as MoteTrack InOut system. This system is implemented in real time for indoor and outdoor tracking. Localization error reduction obtained in an outdoor environment is 75%.
A SURVEY ON OPTIMIZATION BASED SPECTRUM SENSING TECHNIQUES TO REDUCE ISI AND ...IJNSA Journal
Cognitive radio is emerging technologies in OFDM based wireless systems which are very important for spectrum sensing. By using cognitive radio (CR) high data can be transferred with low bit error rate. The key idea of OFDM is to split the total transmission bandwidth into the subcarriers which further reduce the intersymbol interference (ISI) and peak to average power ratio(PAPR) in the signal. There are many optimization based spectrum sensing techniques are existing for efficient sensing purpose but each has its own advantages and disadvantages. This leads to start the comprehensive study for reducing PAPR and ISI(Intersymbol interference) in terms of FPGA based partial configuration. In the first part of review OFDM characteristics of the signal has compared with several optimizations based ISI reduction techniques. The second part is to compare the various spectrum sensing techniques in cognitive radio engine and its application in FPGA.
DOTNET 2013 IEEE MOBILECOMPUTING PROJECT Adaptive position update for geograp...IEEEGLOBALSOFTTECHNOLOGIES
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology.
Beam steering in smart antennas by using low complex adaptive algorithmseSAT Journals
Abstract Array antenna systems are often used to enhance the received signal to interference and noise ratio when the signal operates in heavily jammed environment. Proper modeling of the received data at different antenna elements is important when evaluating the performance of this system, especially when both the signal and interference have wide frequency bands.. The antenna output is the linear combination of data from all the antenna elements. In conventional narrowband beam forming, time sequences at different antenna elements are related by some fixed phase shift. The phase shift is determined by the wave forms direction of arrival (DOA). In this paper, an efficient method for the pattern synthesis of the linear antenna arrays with the prescribed nulling and steering lobe is presented. The proposed method is based on Least Mean Square (LMS) algorithm provide a comprehensive and detailed treatment of the signal model used for beam forming, as well as, describing adaptive algorithms to adjust the weights of an array. In order to improve the convergence rate of LMS algorithm in smart antenna system, in this paper we proposes a new normalized LMS (NLMS) algorithm, This new algorithm can be treated as a block based simplification of NLMS algorithm which gives satisfactory performance in certain applications in comparison with conventional NLMS recursion, i.e., BBNLMS algorithm. By taking advantage of spatial filtering, the proposed scheme promises to reduce the bandwidth required for transmitting data by improving convergence rate. The performance of the BBNLMS algorithm in the presence of Multi-path effects and multiple users is analyzed using MATLAB simulations. The simulations when compared to that of the LMS algorithm, the results suggest that BBNLMS algorithm can improve the convergence rate and lead to better system efficiency. Keywords: BBNLMS, Convergence Rate, DOA, LMS, NLMS, Smart antenna.
Investigations on real time RSSI based outdoor target tracking using kalman f...IJECEIAES
Target tracking is essential for localization and many other applications in Wireless Sensor Networks (WSNs). Kalman filter is used to reduce measurement noise in target tracking. In this research TelosB motes are used to measure Received Signal Strength Indication (RSSI). RSSI measurement doesn‟t require any external hardware compare to other distance estimation methods such as Time of Arrival (TOA), Time Difference of Arrival (TDoA) and Angle of Arrival (AoA). Distances between beacon and non-anchor nodes are estimated using the measured RSSI values. Position of the nonanchor node is estimated after finding the distance between beacon and nonanchor nodes. A new algorithm is proposed with Kalman filter for location estimation and target tracking in order to improve localization accuracy called as MoteTrack InOut system. This system is implemented in real time for indoor and outdoor tracking. Localization error reduction obtained in an outdoor environment is 75%.
A SURVEY ON OPTIMIZATION BASED SPECTRUM SENSING TECHNIQUES TO REDUCE ISI AND ...IJNSA Journal
Cognitive radio is emerging technologies in OFDM based wireless systems which are very important for spectrum sensing. By using cognitive radio (CR) high data can be transferred with low bit error rate. The key idea of OFDM is to split the total transmission bandwidth into the subcarriers which further reduce the intersymbol interference (ISI) and peak to average power ratio(PAPR) in the signal. There are many optimization based spectrum sensing techniques are existing for efficient sensing purpose but each has its own advantages and disadvantages. This leads to start the comprehensive study for reducing PAPR and ISI(Intersymbol interference) in terms of FPGA based partial configuration. In the first part of review OFDM characteristics of the signal has compared with several optimizations based ISI reduction techniques. The second part is to compare the various spectrum sensing techniques in cognitive radio engine and its application in FPGA.
In this paper, an adaptive control system is employed in a novel implementation technique of feedforward linearization system for optical analog communication systems’ laser transmitter. The adaptive control system applies the Newton trust-region dogleg algorithm, which is a numerical optimization algorithm, to automatically tune the adjustment parameters in the feedforward loops to optimize the feedforward system performance and adapt to process variations. At the end of the paper, significant reductions of over 20 dBm in the third-order intermodulation distortion products have been achieved for operating frequencies from 5.0 to 5.8 GHz.
Enhanced Mobile Node Tracking With Received Signal Strength in Wireless Senso...IOSR Journals
Abstract : Node localization is important parameter in WSN. Node localization is required to report origin of
events which makes it one of the important challenges in WSN. Received signal strength (RSS) is used to
calculate distance between mobile node and reference node. The position of the mobile node is calculated using
multilateration algorithm (MA). Extended Kalman filter (EKF) is utilized to estimate the actual position. In this
paper, the implementation and enhancement of a tracking system based on RSS indicator with the aid of an
Extended Kalman Filter (EKF) is described and an adaptive filter is derived.
Keywords - Extended Kalman filter (EKF), mobile node tracking, multilateration algorithm (MA), received
signal strength (RSS), Wireless sensor networks (WSN)
Enhanced Mobile Node Tracking With Received Signal Strength in Wireless Senso...IOSR Journals
Node localization is important parameter in WSN. Node localization is required to report origin of
events which makes it one of the important challenges in WSN. Received signal strength (RSS) is used to
calculate distance between mobile node and reference node. The position of the mobile node is calculated using
multilateration algorithm (MA). Extended Kalman filter (EKF) is utilized to estimate the actual position. In this
paper, the implementation and enhancement of a tracking system based on RSS indicator with the aid of an
Extended Kalman Filter (EKF) is described and an adaptive filter is derived.
Inertial Navigation for Quadrotor Using Kalman Filter with Drift Compensation IJECEIAES
The main disadvantage of an Inertial Navigation System is a low accuracy due to noise, bias, and drift error in the inertial sensor. This research aims to develop the accelerometer and gyroscope sensor for quadrotor navigation system, bias compensation, and Zero Velocity Compensation (ZVC). Kalman Filter is designed to reduce the noise on the sensor while bias compensation and ZVC are designed to eliminate the bias and drift error in the sensor data. Test results showed the Kalman Filter design is acceptable to reduce the noise in the sensor data. Moreover, the bias compensation and ZVC can reduce the drift error due to integration process as well as improve the position estimation accuracy of the quadrotor. At the time of testing, the system provided the accuracy above 90 % when it tested indoor.
Analysis of Near-Far Problem using Power Control Technique for GNSS based App...inventy
Research Inventy : International Journal of Engineering and Science is published by the group of young academic and industrial researchers with 12 Issues per year. It is an online as well as print version open access journal that provides rapid publication (monthly) of articles in all areas of the subject such as: civil, mechanical, chemical, electronic and computer engineering as well as production and information technology. The Journal welcomes the submission of manuscripts that meet the general criteria of significance and scientific excellence. Papers will be published by rapid process within 20 days after acceptance and peer review process takes only 7 days. All articles published in Research Inventy will be peer-reviewed.
Different GNSS (Global Navigation Satellite System) Receiver’s combination an...IJMTST Journal
The greater part of the modern GNSS receiver are able to guarantee a fair positioning performance almost
everywhere. The aim is to investigate the effective potentialities of GNSS sensor such as GPS, GLONASS and
to make a statistical analysis of these receivers. The continuous increase of the number of GNSS multiconstellation
station will give a good opportunity to improve accuracy and precision levels. The system is
based on sensors, Arm cortex, and personal computer. Positioning data which includes both longitude and
latitude is extracted using NMEA protocol of the receiver. The extracted data will be displayed and saved on
personal computer and retrieved later. Each receiver sensor is analyzed, statistically characterized and its
error probabilities are obtained.
Bit error rate analysis of miso system in rayleigh fading channeleSAT Publishing House
IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology
Channel Overlapping Between IMT-Advanced Users and Fixed Satellite ServiceEECJOURNAL
The Novel technique to modulate the nulls in the radiation pattern of IMT-Advanced base station (BS) towards the fixed satellite service is (FSS) affirmed in this paper. Designing a new algorithm to extract the nulls in the forbidding area and other base on MUSIC algorithm to estimate the direction of mobile user and control the handover technique is our major concern. A scenario of two mobile users (MS) moving around one FSS had been exclusively studied and simulated. Calculating the shortest separation distance after identifying the critical point and compare the result with the recent recommendation had shown how magnificent coexistence and spectrum sharing we can get.
A SEMI BLIND CHANNEL ESTIMATION METHOD BASED ON HYBRID NEURAL NETWORKS FOR UP...ijwmn
The paper describes how to improve channel estimation in Single Carrier Frequency Division Multiple
Access (SC-FDMA) system, using a Hybrid Artificial Neural Networks (HANN). The 3rd Generation
Partnership Project (3GPP) standards for uplink Long Term Evolution Advanced (LTE-A) uses pilot based
channel estimation technique. This kind of channel estimation method suffers from a considerable loss
ofbitrate due to pilot insertion; all data frame sent contains reference signal. The HANN converts data
aided channel estimator to semi blind channel estimator. To increase convergence speed, HANN uses some
channel propagation Fuzzy Rules to initialize Neural Network parameters before learning instead of a
random initialization, so its learning phase ismore rapidly compared to classic ANN.HANN allows more
bandwidth efficient and less complexity. Simulation results show that HANN has better computational
efficiency than the Minimum Mean Square Error (MMSE) estimator and has faster convergence than
classic Neural Networks estimators.
The journal publishes original works with practical significance and academic value. Authors are invited to submit theoretical or empirical papers in all aspects of management, including strategy, human resources, marketing, operations, technology, information systems, finance and accounting, business economics, and public sector management. IJMRR is an international forum for research that advances the theory and practice of management. All papers submitted to IJMRR are subject to a double-blind peer review process.
In this paper, an adaptive control system is employed in a novel implementation technique of feedforward linearization system for optical analog communication systems’ laser transmitter. The adaptive control system applies the Newton trust-region dogleg algorithm, which is a numerical optimization algorithm, to automatically tune the adjustment parameters in the feedforward loops to optimize the feedforward system performance and adapt to process variations. At the end of the paper, significant reductions of over 20 dBm in the third-order intermodulation distortion products have been achieved for operating frequencies from 5.0 to 5.8 GHz.
Enhanced Mobile Node Tracking With Received Signal Strength in Wireless Senso...IOSR Journals
Abstract : Node localization is important parameter in WSN. Node localization is required to report origin of
events which makes it one of the important challenges in WSN. Received signal strength (RSS) is used to
calculate distance between mobile node and reference node. The position of the mobile node is calculated using
multilateration algorithm (MA). Extended Kalman filter (EKF) is utilized to estimate the actual position. In this
paper, the implementation and enhancement of a tracking system based on RSS indicator with the aid of an
Extended Kalman Filter (EKF) is described and an adaptive filter is derived.
Keywords - Extended Kalman filter (EKF), mobile node tracking, multilateration algorithm (MA), received
signal strength (RSS), Wireless sensor networks (WSN)
Enhanced Mobile Node Tracking With Received Signal Strength in Wireless Senso...IOSR Journals
Node localization is important parameter in WSN. Node localization is required to report origin of
events which makes it one of the important challenges in WSN. Received signal strength (RSS) is used to
calculate distance between mobile node and reference node. The position of the mobile node is calculated using
multilateration algorithm (MA). Extended Kalman filter (EKF) is utilized to estimate the actual position. In this
paper, the implementation and enhancement of a tracking system based on RSS indicator with the aid of an
Extended Kalman Filter (EKF) is described and an adaptive filter is derived.
Inertial Navigation for Quadrotor Using Kalman Filter with Drift Compensation IJECEIAES
The main disadvantage of an Inertial Navigation System is a low accuracy due to noise, bias, and drift error in the inertial sensor. This research aims to develop the accelerometer and gyroscope sensor for quadrotor navigation system, bias compensation, and Zero Velocity Compensation (ZVC). Kalman Filter is designed to reduce the noise on the sensor while bias compensation and ZVC are designed to eliminate the bias and drift error in the sensor data. Test results showed the Kalman Filter design is acceptable to reduce the noise in the sensor data. Moreover, the bias compensation and ZVC can reduce the drift error due to integration process as well as improve the position estimation accuracy of the quadrotor. At the time of testing, the system provided the accuracy above 90 % when it tested indoor.
Analysis of Near-Far Problem using Power Control Technique for GNSS based App...inventy
Research Inventy : International Journal of Engineering and Science is published by the group of young academic and industrial researchers with 12 Issues per year. It is an online as well as print version open access journal that provides rapid publication (monthly) of articles in all areas of the subject such as: civil, mechanical, chemical, electronic and computer engineering as well as production and information technology. The Journal welcomes the submission of manuscripts that meet the general criteria of significance and scientific excellence. Papers will be published by rapid process within 20 days after acceptance and peer review process takes only 7 days. All articles published in Research Inventy will be peer-reviewed.
Different GNSS (Global Navigation Satellite System) Receiver’s combination an...IJMTST Journal
The greater part of the modern GNSS receiver are able to guarantee a fair positioning performance almost
everywhere. The aim is to investigate the effective potentialities of GNSS sensor such as GPS, GLONASS and
to make a statistical analysis of these receivers. The continuous increase of the number of GNSS multiconstellation
station will give a good opportunity to improve accuracy and precision levels. The system is
based on sensors, Arm cortex, and personal computer. Positioning data which includes both longitude and
latitude is extracted using NMEA protocol of the receiver. The extracted data will be displayed and saved on
personal computer and retrieved later. Each receiver sensor is analyzed, statistically characterized and its
error probabilities are obtained.
Bit error rate analysis of miso system in rayleigh fading channeleSAT Publishing House
IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology
Channel Overlapping Between IMT-Advanced Users and Fixed Satellite ServiceEECJOURNAL
The Novel technique to modulate the nulls in the radiation pattern of IMT-Advanced base station (BS) towards the fixed satellite service is (FSS) affirmed in this paper. Designing a new algorithm to extract the nulls in the forbidding area and other base on MUSIC algorithm to estimate the direction of mobile user and control the handover technique is our major concern. A scenario of two mobile users (MS) moving around one FSS had been exclusively studied and simulated. Calculating the shortest separation distance after identifying the critical point and compare the result with the recent recommendation had shown how magnificent coexistence and spectrum sharing we can get.
A SEMI BLIND CHANNEL ESTIMATION METHOD BASED ON HYBRID NEURAL NETWORKS FOR UP...ijwmn
The paper describes how to improve channel estimation in Single Carrier Frequency Division Multiple
Access (SC-FDMA) system, using a Hybrid Artificial Neural Networks (HANN). The 3rd Generation
Partnership Project (3GPP) standards for uplink Long Term Evolution Advanced (LTE-A) uses pilot based
channel estimation technique. This kind of channel estimation method suffers from a considerable loss
ofbitrate due to pilot insertion; all data frame sent contains reference signal. The HANN converts data
aided channel estimator to semi blind channel estimator. To increase convergence speed, HANN uses some
channel propagation Fuzzy Rules to initialize Neural Network parameters before learning instead of a
random initialization, so its learning phase ismore rapidly compared to classic ANN.HANN allows more
bandwidth efficient and less complexity. Simulation results show that HANN has better computational
efficiency than the Minimum Mean Square Error (MMSE) estimator and has faster convergence than
classic Neural Networks estimators.
The journal publishes original works with practical significance and academic value. Authors are invited to submit theoretical or empirical papers in all aspects of management, including strategy, human resources, marketing, operations, technology, information systems, finance and accounting, business economics, and public sector management. IJMRR is an international forum for research that advances the theory and practice of management. All papers submitted to IJMRR are subject to a double-blind peer review process.
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Analysis Of INS Derived Doppler Effects On Carrier Tracking Loop
1. Analysis of INS Derived Doppler Effects on
Carrier Tracking Loop
Ravindra Babu, Jinling Wang
School of Surveying and Spatial Information Systems
The University of New South Wales,
Sydney, NSW 2052
Australia
Email: s.ravi@.unsw.edu.au
Ph: +61-2-9385 4206
Fax: +61-2-9313 7493
Tracking dynamics on the GPS signal is still a big challenge to the receiver designer as the
operating conditions are becoming more volatile. Optimizing the stand-alone system for
dynamics, generally, degrades the accuracy of measurements. Therefore, an INS is integrated
with GPS to address this issue. Doppler derived from INS can be used to aid the carrier tracking
loop for improving the performance under dynamic conditions. However, the derived doppler
does not truly reflect the GPS signal doppler due to errors in inertial sensors. As the tracking
loop bandwidth is reduced significantly in Ultra-tightly integrated systems, any offsets in the
aiding doppler creates undesired correlations in the tracking loop resulting in sub-optimal
performance of the loop. The paper addresses this issue and also provides a mitigating
mechanism to reduce the effects of incorrect estimates of the doppler. It is shown that doppler
offsets resulting in a bias in the tracking loop can be appropriately modeled and removed.
Mathematical algorithms pertaining to this are provided and the results are summarized.
Simulations show that the bias due to aiding doppler offsets could be effectively addressed by
appropriate modelling.
KEY WORDS
1. INS derived Doppler 2. Correlations 3. Stochastic Modelling
1. INTRODUCTION. Continuous tracking of GPS signals in dynamic scenarios pose a
significant challenge for the design of the tracking loops. Optimizing a design to suit a particular
scenario will degrade its performance in other scenarios. For instance, increasing the carrier
tracking loop bandwidth to receive dynamic signals will inadvertently affect the accuracy of the
raw measurements (Jwo, 2001; Cox, 1982). Therefore, in a stand-alone GPS receiver, a trade-off
design is required to perform optimally in all the scenarios. External sensor integration with the
GPS is considered as an alternative to improve upon this, and INS is the ideal choice as it is not
only autonomous but also provides attitude at higher data rates.
Traditionally, the integration of GPS and INS were carried out in loosely and tightly coupled
configuration (Brown & Hwang, 1997). While these systems offer significant advantages over
the stand-alone GPS, nevertheless, it is imperative to improve the performance wherever
possible. With this point of view, the development of integration presently culminated in Ultra-
Tight Systems. This type of integration, also called deep level tracking, integrates the I (in-
phase) and Q (quadrature) signals from the tracking loops of the GPS receiver with the Position
and Velocity from INS (Sennott & Senffner, 1997). The primary advantage of this configuration,
in addition to the benefits of loosely and tightly coupled systems, is a significant reduction of the
carrier tracking loop bandwidth, as the doppler signal derived from INS aids the tracking loop to
remove the dynamics from the GPS signals. Two important advantages stem from the reduction
of the bandwidth: accuracy of the raw measurements, and immunity to jamming signals (Alban,
2003; Beser, 2002; Poh, et al., 2002; Kreye et al., 2000).
2. Unlike the loosely and tightly coupled systems, which are considered to be feed forward, ultra-
tight systems are feedback systems, i.e., a feedback signal in the form of doppler derived from the
INS also drives the tracking loops. For the successful implementation of this system, the
accuracy of the doppler signal is very critical. The errors that degrade the doppler accuracy are
the residual biases in the estimates of integration Kalman filter. It is well known that inertial
sensors comprises of systematic and stochastic biases, which degrade the navigation solution
(Titterton & Weston, 1997). Though the systematic bias is effectively removed by the integration
Kalman filter by incorporating the GPS measurements, nevertheless, the stochastic component
needs a different treatment. Appropriate modelling techniques, like Gauss Markov, Random-
Walk and Autoregression effectively mitigate this noise (Nassar, 2003).
Conventional tracking loops get their feedback from within the channel. The Costas phase
discriminator, which is the central part of the carrier-tracking loop, generates the corrections from
I and Q measurements. These corrections, after filtering, drive the NCO (Numerically Controlled
Oscillator), which generates the quadrature signals to reduce the error with the incoming signals.
This configuration is suitable for a system with low dynamics. However, as the dynamics
increase, the phase error transcends the threshold thereby loosing lock. Therefore, in the case of
Ultra-tight receivers, the NCO gets its correction signal not only from within the channel, but also
from the INS. This additional signal from the INS removes the dynamics from the GPS signal
and subsequently keeps the loop in lock. The feedback from the INS is the key to the Ultra-tight
receiver’s performance.
Though the inertial aiding of the tracking loops seems to be attractive, if the aiding signal does
not properly represent the true doppler, it results in a tracking loop bias, which degrades the
phase output of the Costas discriminator. This phenomenon, which is unseen in stand-alone
systems, is prevalent in ultra-tight receivers or receivers with doppler aiding. Ultimately, the
challenge lies in removing any of the undesired effects created by the aiding signal. The paper
discusses such effects and the remedial methods.
Figure 1 shows the block diagram of the Ultra-Tight Integrated System. The GPS receiver is
Software based, and therefore, the acquisition and tracking loops entirely reside in Software.
Though the Software receivers are comparatively slower than hardware based systems, they are
still valuable, especially for development due to their flexibility (Brown, et al., 2000 &
Chakravarthy et al., 2001; Tsui, 2000).
Figure 1 Block Diagram of Ultra-Tight Integration System
P,V,
Attitude
RF front
end
Acquisiti
on Loops
Tracking
Loops
Integration
Kalman filter
IMU
Strapdown
Mechanization
I,Q
Gyro/Accelerometer
Bias / ScaleFactor
P,V,Attitude
Doppler
Estimation
Interpolator
Satellite
Ephemeris
P,V
,
v θ
∇ ∇
3. 2. ULTRA-TIGHT CARRIER TRACKING LOOP ARCHITECTURE. Conventional
receivers use two types of tracking loops to extract navigation data: code and carrier loop. Code
loop despreads the incoming PRN code by multiplying with the locally generated code leaving
only the data modulated carrier. Subsequently, the carrier-tracking loop, Costas Phase Locked
Loop (CPLL), tracks on to the dynamics on the carrier and demodulates the data bits. The ability
of the receiver to track dynamics depends on the bandwidth of the filter in CPLL. Increase in
receiver dynamics results in an increase in doppler frequency on the carrier, and if the rate of
change of doppler is more than the tracking loop bandwidth, then, eventually the PLL looses
lock. To counteract this effect, if a redundant sensor such as an INS can measure and remove
dynamics from GPS signals, then the CPLL can maintain lock even in dynamic scenarios. This is
the method adopted in Ultra-tightly integrated GPS/INS receivers.
Typical unaided GPS receivers use a 2nd
order carrier-tracking loop with a loop bandwidth of
about 12 to 18Hz to receive a moderate dynamic signal. Excessive dynamics require the loop
order to be increased to 3 to reduce the dynamic stress errors (Cahn, 1977; Ward, 1998; Irsigler et
al., 2002; Jwo, 2001). However, a 3rd order filter design is quite complex and also has potential
stability problems. In ultra-tight systems, as dynamics from the GPS signal are removed by INS
aiding, the filter order can be reduced to 2 and the bandwidth can still be maintained at about
3Hz. Further reduction in bandwidth is possible if an accurate receiver clock and a navigation-
grade INS are used, but they are too expensive to be used in many commercial applications,
forcing a limit on the bandwidth reduction. Figure 2 shows the block diagram of an inertially
aided tracking loop. Unlike the conventional receivers, where the NCO is driven only by the
phase discriminator output, in ultra-tight systems, the NCO is driven by two signals: phase
discriminator output and the aiding signal. The distinguishing feature of Ultra-tight receiver is
the feedback signal from the INS.
IF
(carrier+data)
Integrate &
Dump
Integrate &
Dump
Discrimi
nator
Loop
Filter
NCO
Doppler
Estimate
INS
Kalman Filter
90º
P,V,Att
I
Q P,V, Att
Figure 2. Carrier-Tracking Loop with Inertial Aiding
2.1. Tracking Loop Performance. The tracking performance of the ultra-tight loop is
compared with a conventional loop in this section. The conventional loops have a limitation on
the dynamics to be handled, and when the dynamics exceed the bandwidth, they switch back to
wideband PLL or narrowband FLL (frequency lock loop) temporarily relinquishing the
measurements for the navigation algorithm. However, ultra-tight tracking loops remain in the
narrowband PLL mode even during high dynamics. Figure 3 shows the plot comparing the two
loops with a constant velocity trajectory. While the conventional loops increase in frequency
4. with the input, the ultra-tight loops with a bandwidth of only 3Hz maintain almost a constant
doppler. This property of maintaining a stable doppler irrespective of the input dynamics makes
the ultra-tight systems attractive in dynamic applications.
Figure 3 Conventional (BW = 13Hz) and Ultra-tight (BW = 3Hz) Doppler tracking performance
The feedback doppler signal removes most of the dynamics from GPS signals rendering the GPS
signal to be ‘almost’ dynamic-free. So, any residual dynamics on GPS signals to be tracked is
only due to the local oscillator. As the doppler due to oscillator is much less, carrier bandwidth
can be reduced significantly to improve the accuracy of raw measurements. However, the quality
of the aiding doppler signal is very important in such an integration mechanism, as any bias on
this signal degrades the I and Q measurements. Figure 4 shows the components that contribute to
the conventional and ultra-tight receiver bandwidths. In the case of conventional receivers, it is
the receiver dynamics that occupies most part of the bandwidth; while in ultra-tight receivers, it is
only the residual biases from the integration filter and the doppler from local oscillator that
occupies the bandwidth.
Figure 4 Conventional vs. Ultra-tight tracking loop bandwidth
O scilla to r D yn am ics
G P S d ynam ics
O scillato r D yn am ics
R esid ual ine rtia l
sen sor d yn am ics
C on ven tion al
R e ceive r
B an dw idth
U ltra -tigh t
rece ive r
ba nd w id th
C arrier tra ckin g
loo p
B a nd w id th
1 to 2 H z
1 0 to 15 H z
1 to 2 H z
1 to 5 H z
5. 3. BANDWIDTH AND DYNAMIC ANALYSIS. Consistent tracking of the doppler signal
requires the bandwidth to be optimized continuously as the receiver passes through different
environments. For instance, low dynamic environments require a carrier bandwidth of about 5 to
12 Hz, whereas high dynamic environments require a bandwidth greater than 18Hz. As the
dynamics on the pseudorandom code is far less than on the carrier (code doppler is 1540 times
less than on the carrier), the code tracking loop requires little optimization. At higher
bandwidths, thermal noise degrades the accuracy of measurements. Unfortunately, both these
requirements, higher bandwidth to receive high dynamics and low bandwidth to reduce the
thermal error, cannot be optimized simultaneously for a stand-alone system. Therefore, a system
designer should consider both thermal and dynamics effects in the tracking loop design.
However, external sensors can be integrated with the tracking loop for simultaneous
optimization. Of the many possible sensors, INS (Inertial Navigation System) is the optimal
choice, as not only it is autonomous, but it also provides attitude at higher data rates. Doppler
information from INS can therefore be used to aid the tracking loops for removing dynamic stress
from the GPS signal. With the extraction of receiver dynamics, the only component that remains
to be tracked is the oscillator dynamics and this can be achieved with a considerably lower
bandwidth.
Detecting a signal in the tracking loop requires a threshold to be set based on the statistical
properties of the signal and thermal noise. Any degradation in the signal, caused by either
excessive dynamics or reduction in signal strength, causes it to go below the threshold, and
eventually lose lock. Therefore, a threshold should be set based on the loop bandwidth and
expected dynamics on the signal. The 3-sigma errors that a carrier tracking loop can tolerate are
deg
45
3
3 <
+
= e
t
PLL θ
σ
σ (1)
where
t
σ = the 1-sigma phase error due to thermal noise
e
θ = dynamic stress error
45 deg is the threshold below which the signal is assumed to be lost.
According to Kaplan (1996), the thermal noise and dynamic stress errors are given as
(2)
(3)
where
n
B = loop bandwidth in Hz
0
/ n
c = carrier to noise ratio
T = pre-detection integration time (1msec)
a
r
= line-of-sight acceleration (m/s2)
Table 1 illustrates the errors at different dynamics and signal strengths. It is evident that as the
dynamics increases the bandwidth required to reduce the errors also increases. For instance, at
0.1g the bandwidth can be maintained at 6Hz, whereas at 1g the bandwidth should be greater than
15Hz. The shaded blocks in the table represent the fact that the errors exceed the threshold and
the tracking loop cannot maintain lock. Also, it can be inferred that the dynamics have a greater
effect on the bandwidth than the thermal noise. Figure 5 shows the plot with 0.5g dynamics and
signal strength of 27.5 dB-Hz.
)
/
2
1
1
(
/
2
360
0
0 n
Tc
n
c
Bn
t +
=
π
σ
(deg)
2809
.
0 2
n
e
B
a
r
=
θ
6. Band
width
(Hz)
0.1g @ 30dB-Hz
Thermal Dynamic Total
Noise Error Error
0.5g @ 27.5dB-Hz
Thermal Dynamic Total
Noise Error Error
1g @ 25dB-Hz
Thermal Dynamic Total
Noise Error Error
3 3.84 57.86 61.7 5.75 289.31 295.06 8.96 578.62 587.58
6 5.43 14.46 19.89 8.13 72.32 80.45 12.67 144.65 157.32
9 6.65 6.42 13.07 9.96 32.14 42.10 15.52 64.29 79.81
12 7.68 3.61 11.29 11.50 18.08 29.58 17.93 36.16 54.09
15 8.59 2.31 10.9 12.86 11.57 24.43 20.04 23.14 43.18
18 9.41 1.60 11.1 14.08 8.03 22.11 21.96 16.07 38.03
Table 1. PLL Tracking Errors
Figure 5 Thermal and Dynamic stress errors
4. DOPPLER ANALYSIS. As doppler is critical for ultra-tight systems, the doppler on both
GPS carrier frequency and INS-derived are analysed here. Doppler, relative velocity between the
transmitter and receiver, reflects the relative dynamics on the received RF (Radio frequency)
carrier. As the dynamics of the GPS satellites are known accurately, velocity/acceleration
information of the receiver can be extracted from the received doppler signal. The acquisition
loops are almost immune to the doppler effects due to their higher bandwidth (+/- 500Hz for
1msec pre-detection integration), while the tracking loops are sensitive owing to their low
bandwidth.
For simplified analysis, only the carrier with dynamics is considered; the pseudo-random code is
assumed to be tracked and therefore can be ignored. The signal at the carrier-tracking loop is
given as:
y (t) = Asin (2π( vel
rel
f _ + rxclk
f ) t +ϕ) (4)
where
A = amplitude of the GPS signal
vel
rel
f _ = Doppler frequency due to receiver dynamics
rxclk
f = Doppler frequency due to clock
ϕ = carrier phase at the phase detector
7. To track the signal shown in equation (4), the NCO generates two signals in quadrature. In a
stand-alone receiver, corrections to the NCO are generated within the channel by a phase
discriminator. However, in an aided configuration, corrections are generated from both the INS
and the individual channel with a major contribution from INS. Let dopp
INS
f
ˆ be the doppler
generated by the INS, and the NCO frequencies that drive the phase detector can be given as:
y I (t) = sin (2π dopp
INS
f
ˆ t +θ) (5)
y Q (t) = sin (2π dopp
INS
f
ˆ t +90º+θ) (6)
In equations (5) and (6), dopp
INS
f
ˆ is not the true doppler measured by the INS, but which is
contaminated by the residual biases from the integration filter.
resBias
INS
dopp
INS
dopp
INS f
f
f +
=
ˆ and (7)
−
=
c
a
v
f
f rel
tx
dopp
INS
r
1 (8)
= _
rel vel
f
where resBias
INS
f is the residual bias from the navigation/integration filter, tx
f is the transmitted GPS
frequency, rel
v is the relative velocity between the satellite and the INS, a
r
is the unit vector, and
c is the velocity of light.
The phase detector multiplies the incoming signal in (4) with quadrature signals (5) & (6)
generated by the NCO to give:
yy I (t) = cos (2π ( dopp
carr
GPS
f _
- dopp
INS
f
ˆ ) t) (9)
yy Q (t) = cos (2π ( dopp
carr
GPS
f _
- dopp
INS
f
ˆ ) t + 90°) (10)
In equations (9) and (10)
dopp
carr
GPS
f _
= vel
rel
rxclk f
f _
+ (11)
where rxclk
f is the receiver clock offset, and vel
rel
f _ is the relative velocity between the satellite
and the receiver. The higher frequency components generated in the mixing process are
subsequently removed by the loop filter and therefore not mentioned here.
Substituting equations (7) and (11) into equations (9) and (10) gives the output of the phase
detector:
yy I (t) = cos (2π ( rxclk
f - resBias
INS
f ) t) (12)
yy Q (t) = cos (2π ( rxclk
f - resBias
INS
f ) t + 90°) (13)
Integrating equations (12) and (13) over the integration period T gives the I and Q measurements:
E [I] = { }
)
cos(
)
)
1
(
cos(
2
kT
f
T
k
f
f
A
err
err
err
−
+ (14)
E [Q] = { }
)
sin(
)
)
1
(
sin(
2
kT
f
T
k
f
f
A
err
err
err
−
+ (15)
where err
f = rxclk
f - resBias
INS
f and E is the expectation operator.
8. Therefore, the effective doppler for the tracking loop to track is err
f , which is comparatively
much lesser than the doppler on the signal (4) suggesting the fact that lesser bandwidth can be
adopted if aiding is used. However, this is feasible only if the clock and the inertial sensors are
accurate and stable. With lower accuracy clock and higher bias inertial sensors, the ultra-tight
receivers loose their advantage. Moreover, err
f also affects the I and Q signals which are the
measurements for the Kalman filter. These measurements, when integrated with the Position,
Velocity and Attitude from INS in a Kalman filter, result in a sub-optimal performance. As the
error from the clock is usually less, the doppler estimates from INS become a critical factor.
5. DISCRIMINATOR PHASE ERROR MODEL. Traditionally, carrier discriminator output
is passed through a low-pass filter which drives the NCO (Kaplan, 1996; Tsui, 2000). The low-
pass filter attenuates high frequency components and noise that result from the mixing process as
mentioned before. This system architecture ensures optimal tracking as long as the
measurements (I and Q) are not distorted. However, when correlation-induced biases distort the
measurements, tracking performance starts to degrade (Sennott, 1992). This situation occurs in
ultra-tight integration when the difference between the INS estimated Doppler and GPS Doppler
exceed the loop bandwidth which is typically about 3 to 5Hz. To reduce this undesired effect a
Kalman filter based approach, discussed in the next section, is proposed.
A Costas tracking loop is used as a discriminator due to its insensitivity to 180º phase reversals in
the I and Q data. It computes the phase error that is required to align internally generated signals
to the incoming signal. The phase error generated by the discriminator is given by:
carr
ϕ = tan
1
−
(
P
P
I
Q
) (16)
where P
I and P
Q are in-phase and quadrature phase prompt channel outputs defined as (Kim et al,
2003, Sennott, 1999):
I P = A R (τ ) D (t) sin ( ω
∆ t +θ ) (17)
Q P = A R (τ ) D (t) cos ( ω
∆ t+φ ) (18)
where
R (τ ) = Autocorrelation function of the PRN code
D (t) = Navigation Data
ω
∆ = Frequency Variations
θ ,φ = Phase components
ω
∆ in equations (17) & (18) represent the difference between the GPS and INS derived doppler.
When this difference exceeds the bandwidth n
B (in equations 2 and 3), undesired correlation
results in the phase error carr
ϕ . These correlations can be reasonably approximated with a
random-walk process. The discrete time model for this is given by:
carr
ϕ [n] = carr
ϕ [n-1] + ε [n] (19)
where ε [n] is a zero mean Guassian random noise, and ‘n’ is the present epoch. The phase error
model is shown in Figure 6.
Figure 6 Discriminator Error Model
[ ]
n
ε 1
1
1 z −
−
[ ]
n
carr
ϕ
9. The discriminator output defined in equation (16) is plotted in figure 7 (a). After an initial
transient, the phase error converges to a steady state value, which is a necessary criterion for the
loop to be in lock. The autocorrelation plot shown in figure 7 (b) indicates that the signal is white
and does not contain any correlations.
Figure 7 a) Phase Discriminator output b) Autocorrelation of discriminator output
6. A KALMAN FILTER BASED TRACKING LOOP. The proposed new signal tracking
loop structure is shown in Figure 8. Instead of directly passing the loop filter’s output to the
NCO, the signal is first corrected for any correlations in a Kalman filter. As shown in the figure,
there are two inputs to the carrier NCO: one from within the channel generated by the phase
discriminator, and other from the INS. The doppler estimate from INS is directly integrated with
NCO output. As mentioned in the previous section, the INS estimated doppler offset induces a
slowly changing bias in the tracking loop measurements which can be modeled as a random walk
process.
Figure 8 Kalman Filter based Tracking Loop
The correlations induced bias in the phase error can be represented as
carr
carr
E ϕ
ϕ ≠
]
[ (20)
The state model of the Kalman filter implies that driving noise to the measurement and process
models are Gaussian in nature. However, non-gaussian signals, like the phase discriminator in
equation (20), can be modeled in the filter by augmenting the state vector. Therefore, in this
problem, the two states considered are )}
(
),
(
ˆ
{
)
( k
k
k
x carr
carr ϕ
ϕ
= . While the first state
represents the carrier phase, the second indicates the augmented random-walk.
Carrier
Discriminator
Loop Filter Kalman filter NCO
INS
Doppler Estimate
10. Now, to optimally solve for the carr
ϕ̂ , the process and measurement models are defined as below.
Process Model:
x[n] = Fx[n-1] + W carr [n] (21)
Measurement Model:
carr
ϕ [n] = Hx[n] + carr
γ [n] (22)
where W carr [n] and carr
γ [n] are the process and measurement noises respectively. The noise
models that drive the process and measurment models are Q and R are:
Q = E[W carr [n] W carr [n]T
] (23)
R = E[ carr
γ [n] carr
γ [n]T
] (24)
The propagation time in equation (21) is 1msec, and as the measurement and the state vector are
the same, i.e. discriminator output, H=1. The process noise matrix W carr [n] is modeled with a
random-walk driving process. Once the covariance matrix P and the state vector carr
ϕ̂ are
initialized, the Kalman filter optimally estimates the discriminator signal. The flowchart for
phase error model using the Kalman filter algorithm is shown in Figure 9
Figure 9 Kalman filter Model
7. SIMULATIONS & RESULTS. To evaluate the performance of the proposed tracking loop,
simulations were carried out. The carrier tracking bandwidth is set at 3Hz, and a trajectory with
known dynamics was given as input to both the Software Receiver and INS. Normally, due to
systematic residual biases and any stochastic errors in the integration Kalman filter, the INS-
estimated Doppler will not represent the true value. Based on the grade of INS, error in the
Time Update
1. State Propagation
carr
ϕ̂
-
[n] = F carr
ϕ̂ [n-1]
2. Covariance Propagation
P-
[n+1] = FP[n] FT
+ Q
Measurement
Update
1. Kalman Gain
K = P-
HT
(HP-
[n] HT+R)-
2. State Update
carr
ϕ̂ [n] = carr
ϕ̂
-
[n] + K ( carr
ϕ
[n] -
H carr
ϕ̂
-
[n])
3. Covariance Update
P [n] = (I-KH) P-
[n]
Initial Estimates
carr
ϕ̂
-
, P-
4
0
.
5
))
(
var(
)
(
0
0
0
−
=
= e
k
w
with
k
w
11. estimated Doppler can vary significantly. Two scenarios are presented to illustrate the
performance: a 5 Hz offset, and a 10 Hz offset in the INS derived Doppler. Each experiment was
carried out twice; once with a conventional Ultra-tight tracking loop, and with the modified
tracking loop (with the inclusion of Kalman filter) during the subsequent run.
Test 1:
The first experiment was carried out with the INS estimated Doppler within 5 Hz of the true
Doppler. This level of accuracy can be achieved with a tactical grade INS with a gyro bias better
than 1deg/hr. Due to the doppler offset, the phase discriminator output shows correlations. A
correlation analysis was also performed to check for any trend due to the bias in the estimated
Doppler frequency, and the results are plotted in Figure 10. Figure 10 (a) shows the phase
discriminator output, which drives the NCO via a loop filter. The autocorrelation plot in figure
10 (b) shows the correlations in the discriminator output.
Figure 10 Ultra-tight tracking loop performance a) Phase Discriminator Output b)
Autocorrelation
The same experiments were carried out with a Kalman filter introduced in the tracking loop
modeled with a random walk, and the results are plotted in Figure 11. The phase error and
correlation plot indicates that the filter effectively removes the correlations.
Figure 11 Modified Ultra-tight tracking loop performance a) Discriminator Output b)
Autocorrelation
Test 2:
The next set of experiments was carried out with an INS estimated Doppler error about 10 Hz
offset from the true value and the discriminator output and its autocorrelation are plotted in
Figure 12. As the doppler differences increases, so do the correlations as shown in Figure 12 (b).
However, when the same experiment was carried out with the Kalman filter included, these
correlations were mitigated as shown in figure 13.
12. Figure 12 Ultra-tight tracking loop performance a) Discriminator Output b) Autocorrelation
Figure 13 Modified Ultra-tight tracking loop performance a) Discriminator Output b)
Autocorrelation
From the above two tests, it can be concluded that offsets in the aiding signal within a reasonable
limits (<10Hz) can be successfully mitigated using the modified tracking loop approach. The
correlogram analysis proves this supposition. However, the same methodology cannot be
adopted if the offsets exceed 10 Hz.
8. CONCLUDING REMARKS
The standard tracking loop structure was shown to exhibit correlations due to inaccuracies in the
INS derived doppler signal. This, in turn, biases the phase discriminator output and subsequently
the I and Q outputs. When these I and Q measurements are incorporated in the integration
Kalman filter, it results in a sub-optimal performance. Though the bias can be modeled in the
state space of the integration filter, it nevertheless increases the system complexity. Two options
were suggested to address this issue: using a high grade INS and a better than 0.1ppm oscillator,
or modeling techniques. As the latter is cost-effective and also a flexible approach, a Kalman
filter modeling approach was chosen to mitigate the undesired effects due to aiding in the
tracking loops.
The performance of the standard ultra-tight tracking loop was compared with the modified
structure and the results are summarized. The proposed loop shows a significant improvement by
effectively removing the correlations. In addition, with less number of state variables the
computation load is not much and this algorithm can be implemented in real-time with minimal
computational load. The concepts of ultra-tight integration and the algorithms for the proposed
tracking loop structure have been described. The results of preliminary investigations are
encouraging and this method may prove to be an attractive solution, especially when using low
cost inertial sensors.
13. ACKNOWLEDGEMENTS
This research is supported by an ARC (Australian Research Council) – Discovery Research
Project on ‘Robust Positioning Based on Ultra-tight integration of GPS, Pseudolites and inertial
sensors’.
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