Fault detection and isolation in an inertial navigation system using a bank of unscented H∞ filters

I. Vitanov, N. Aouf
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引用次数: 4

Abstract

In order to ensure safe operation and meet reliability standards at a safety-critical level, instrument failures have to be robustly handled through effective fault diagnosis. A popular approach to fault detection for non-linear systems is the extended Kalman filter (EKF). It has, however, been shown to lack robustness in the face of non-Gaussian noise disturbances and modelling errors. An alternative to the EKF, the extended H∞ (EHF) filter is capable of robust estimation even in the presence of coloured noise; though, modelled on the EKF, it does inherit certain of its shortcomings. A recent addition to the H∞ family of filters, the unscented H∞ filter (UHF) promises both robustness and excellent estimation performance in non-linear, non-Gaussian settings. This paper presents arguably the first application of the UHF to an FDI task: sensor fault detection and isolation (FDI) in a strap-down inertial navigation system (INS) of the type commonly mounted on smaller unmanned aircraft. We apply the UHF in a bank of dedicated observers within an analytical redundancy framework. Results are comparable to the EKF under a Gaussianity assumption.
基于一组无嗅H∞滤波器的惯性导航系统故障检测与隔离
为了保证仪表的安全运行和达到安全临界级别的可靠性标准,必须通过有效的故障诊断对仪表故障进行稳健处理。扩展卡尔曼滤波(EKF)是一种常用的非线性系统故障检测方法。然而,它已被证明在面对非高斯噪声干扰和建模误差时缺乏鲁棒性。作为EKF的替代方案,扩展H∞(EHF)滤波器即使在存在彩色噪声的情况下也能够进行鲁棒估计;不过,以EKF为模型,它确实继承了它的某些缺点。作为H∞滤波器家族的最新成员,unscented H∞滤波器(UHF)承诺在非线性,非高斯设置中具有鲁棒性和出色的估计性能。本文提出了UHF在FDI任务中的首次应用:通常安装在小型无人机上的捷联惯性导航系统(INS)中的传感器故障检测和隔离(FDI)。我们在分析冗余框架内将超高频应用于一组专门的观测者。结果与高斯假设下的EKF相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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