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Neural Network Based Sensor Validation Scheme Demonstrated on an Unmanned Air Vehicle (UAV) Model.

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conference contribution
posted on 2009-10-26, 14:48 authored by Ihab Samy, Ian Postlethwaite, Da-Wei Gu
Nowadays model-based fault detection and isolation (FDI) systems have become a crucial step towards autonomy in aerospace engineering. However few publications consider FDI applications to unmanned air vehicles (UAV) where full-autonomy is obligatory. In this paper we demonstrate a sensor fault detection and accommodation (SFDA) system, which makes use of analytical redundancy between flight parameters, on a UAV model. A Radial-Basis Function (RBF) neural network (NN) trained online with Extended Minimum Resource Allocating Network (EMRAN) algorithms is chosen for modelling purposes due to its ability to adapt well to nonlinear environments while maintaining high computational speeds. Furthermore, in an attempt to reduce false alarms (FA) and missed faults (MF) in current SFDA systems, we introduce a novel residual generator. After 47 minutes (CPU running time) of NN offline training, the SFDA scheme is able to detect additive and constant bias sensor faults with zero FA and MF. It also shows good global approximation capabilities, essential for fault accommodation, with an average pitch gyro estimation error of 0.0075 rad/s.

History

Citation

Decision and Control, 2008. CDC 2008. 47th IEEE Conference on, Proceedings of, pp. 1237-1242.

Published in

Decision and Control

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

issn

0191-2216

isbn

9781424431236

Copyright date

2008

Available date

2009-10-26

Publisher version

http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=4738703

Language

en

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