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Journal ArticleDOI

Ultra-tight GPS/INS/PL integration: a system concept and performance analysis

Ravindra Babu, +1 more
- 01 Jan 2009 - 
- Vol. 13, Iss: 1, pp 75-82
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TLDR
It is shown in this paper that phase and frequency errors are the variables that relate the measurements and the states in the Kalman filter and to show explicitly how the system error states are related to the GPS/PL signals.
Abstract
The architecture of the ultra-tight GPS/INS/PL integration is the key to its successful performance; the main feature of this architecture is the Doppler feedback to the GPS receiver tracking loops. This Doppler derived from INS, when integrated with the carrier tracking loops, removes the Doppler due to vehicle dynamics from the GPS/PL signal thereby achieving a significant reduction in the carrier tracking loop bandwidth. The bandwidth reduction provides several advantages such as: improvement in anti-jamming performance, and increase in post correlated signal strength which in turn increases the dynamic range and accuracy of measurements. Therefore, any degradation in the derived Doppler estimates will directly affect the tracking loop bandwidth and hence its performance. The quadrature signals from the receiver correlator, I (in-phase) and Q (quadrature), form the measurements, whereas the inertial sensor errors, position, velocity and attitude errors form the states of the complementary Kalman filter. To specify a reliable measurement model of the filter for this type of integrated system, a good understanding of GPS/PL signal characteristics is essential. It is shown in this paper that phase and frequency errors are the variables that relate the measurements and the states in the Kalman filter. The main focus of this paper is to establish the fundamental mathematical relationships that form the measurement model, and to show explicitly how the system error states are related to the GPS/PL signals. The derived mathematical relationships encapsulated in a Kalman filter, are tested by simulation and shown to be valid.

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Citations
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Journal ArticleDOI

Performance enhancement for ultra-tight GPS/INS integration using a fuzzy adaptive strong tracking unscented Kalman filter

TL;DR: The proposed FASTUKF algorithm can be considered as an alternative approach for designing the ultra tightly coupled GPS/INS integrated navigation system.
Journal ArticleDOI

Analysis of a robust Kalman filter in loosely coupled GPS/INS navigation system

TL;DR: In this article, the robust Kalman filter with recursive form by solving two Riccati equations is proposed to address system uncertainties, which guarantees a estimation variance bound for all the admissible uncertainties, and can evolve into the conventional filter if no uncertainties are considered.
Journal ArticleDOI

A Review of Advanced Localization Techniques for Crowdsensing Wireless Sensor Networks.

TL;DR: Recent advances in the field of wireless positioning with focus on cooperation, mobility, and advanced array processing are reviewed, which are key enablers for the design of novel localization solutions for crowdsensing WSNs.
Journal ArticleDOI

Implementation and Performance of a GPS/INS Tightly Coupled Assisted PLL Architecture Using MEMS Inertial Sensors

TL;DR: A GPS/INS Tightly Coupled Ass PLL (TCAPLL) architecture is proposed, and most of the associated challenges that need to be addressed when dealing with very-low-performance MEMS inertial sensors are presented.
Journal ArticleDOI

Adaptive robust ultra-tightly coupled global navigation satellite system/inertial navigation system based on global positioning system/BeiDou vector tracking loops

TL;DR: An adaptive robust ultra-tightly coupled GNSS/INS system based on a novel vector tracking strategy for combining both global positioning system L1 and BeiDou B1 signals' tracking together can obtain a higher accuracy than Kalman filtering in a simultaneous weak-signal and large manoeuvring environment.
References
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Book

Understanding GPS : principles and applications

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TL;DR: In this paper, the Discrete Kalman Filter (DFL) is used for smoothing and prediction linearization in the Global Positioning System (GPS) and a case study is presented.
Journal ArticleDOI

Theory and Performance of Narrow Correlator Spacing in a GPS Receiver

TL;DR: This paper presents the derivation of these narrow correlator spacing improvements, verified by simulated and tested performance.