Fault diagnosis for MEMS INS using unscented Kalman filter enhanced by Gaussian process adaptation

I. Vitanov, N. Aouf
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引用次数: 9

Abstract

Miniature unmanned aerial vehicles (UAVs) such as quadrotors are increasingly in demand due to their small size and cost. The base navigation solution for such systems is typically a micro electro mechanical system (MEMS) based strap-down inertial navigation system (INS). To allow safe operation, navigation instrument failures need to be robustly handled through effective fault diagnosis. A popular approach to fault diagnosis in non-linear systems is the extended Kalman filter (EKF), which may, however, prove sub-optimal in the presence of greater non-linearity. In this paper, we instead adopt an unscented Kalman filter (UKF), which relies on a more accurate stochastic approximation - the unscented transform - rather than a Taylor series expansion. A downside to MEMS inertial navigation is an attendant time-dependent drift, which can distort estimation quality. Hence, MEMS INS sensors characteristically result in large biases in the navigation solution. To mitigate this problem we employ Gaussian Processes to approximate a time-dependent offset which can be utilised during on-line operation in an adaptive fashion, as a compensatory mechanism. We apply the enhanced GP-UKF by means of a bank of dedicated observers within an analytical redundancy framework. The results are competitive with the EKF and represent arguably the first application of an enhanced GP-UKF filter in the context of fault detection and isolation.
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高斯过程自适应增强无气味卡尔曼滤波的MEMS INS故障诊断
微型无人机(uav),如四旋翼机,由于其体积小和成本越来越多的需求。此类系统的基本导航解决方案通常是基于微机电系统(MEMS)的捷联惯性导航系统(INS)。为了保证导航仪表的安全运行,需要通过有效的故障诊断对导航仪表故障进行稳健处理。在非线性系统中,一种常用的故障诊断方法是扩展卡尔曼滤波器(EKF),然而,在较大的非线性存在下,它可能被证明是次优的。在本文中,我们采用了unscented卡尔曼滤波器(UKF),它依赖于更精确的随机逼近- unscented变换-而不是泰勒级数展开。MEMS惯性导航的一个缺点是伴随的随时间漂移,这可能会扭曲估计质量。因此,MEMS INS传感器通常会在导航解决方案中产生较大的偏差。为了缓解这个问题,我们使用高斯过程来近似时间相关的偏移量,该偏移量可以在在线操作期间以自适应的方式作为补偿机制使用。我们通过在分析冗余框架内的专门观察员银行应用增强型GP-UKF。结果与EKF具有竞争力,并且可以说是增强型GP-UKF滤波器在故障检测和隔离方面的首次应用。
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