DocumentCode :
755376
Title :
Online INS/GPS integration with a radial basis function neural network
Author :
Sharaf, Rashad ; Noureldin, Aboelmagd ; Osman, Ahmed ; El-Sheimy, Naser
Author_Institution :
R. Mil. Coll. of Canada, Kingston, Ont., Canada
Volume :
20
Issue :
3
fYear :
2005
fDate :
3/1/2005 12:00:00 AM
Firstpage :
8
Lastpage :
14
Abstract :
Most of the present navigation systems rely on Kalman filtering to fuse data from global positioning system (GPS) and the inertial navigation system (INS). In general, INS/GPS integration provides reliable navigation solutions by overcoming each of their shortcomings, including signal blockage for GPS and growth of position errors with time for INS. Present Kalman filtering INS/GPS integration techniques have some inadequacies related to the stochastic error models of inertial sensors, immunity to noise, and observability. This paper aims to introduce a multi-sensor system integration approach for fusing data from INS and GPS utilizing artificial neural networks (ANN). A multi-layer perceptron ANN has been recently suggested to fuse data from INS and differential GPS (DGPS). Although being able to improve the positioning accuracy, the complexity associated with both the architecture of multi-layer perceptron networks and its online training algorithms limit the real-time capabilities of this technique. This article, therefore, suggests the use of an alternative ANN architecture. This architecture is based on radial basis function (RBF) neural networks, which generally have simpler architecture and faster training procedures than multi-layer perceptron networks. The INS and GPS data are first processed using wavelet multi-resolution analysis (WRMA) before being applied to the RBF network. The WMRA is used to compare the INS and GPS position outputs at different resolution levels. The RBF-ANN module is then trained to predict the INS position errors and provide accurate positioning of the moving platform. Field-test results have demonstrated that substantial improvement in INS/GPS positioning accuracy could be obtained by applying the combined WRMA and RBF-ANN modules.
Keywords :
Global Positioning System; Kalman filters; computerised instrumentation; computerised navigation; learning (artificial intelligence); multilayer perceptrons; neural nets; radial basis function networks; sensor fusion; Kalman filtering INS/GPS integration; RBF neural networks; artificial neural networks; differential GPS; global positioning system; inertial navigation system; multilayer perceptron ANN; multilayer perceptron network; multisensor system integration; online INS/GPS integration; online training algorithm; radial basis function neural network; wavelet multiresolution analysis; Artificial neural networks; Filtering; Fuses; Global Positioning System; Inertial navigation; Kalman filters; Multilayer perceptrons; Observability; Radial basis function networks; Stochastic resonance;
fLanguage :
English
Journal_Title :
Aerospace and Electronic Systems Magazine, IEEE
Publisher :
ieee
ISSN :
0885-8985
Type :
jour
DOI :
10.1109/MAES.2005.1412121
Filename :
1412121
Link To Document :
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