带有未知故障偏置的INS-GPS松耦合系统自适应两级EKF

K. Kim, Jang-Gyu Lee, Chan Gook Park
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引用次数: 23

摘要

本文提出了一种自适应两级扩展卡尔曼滤波器(ATEKF),用于估计INS-GPS松耦合系统中的未知故障偏置。卡尔曼滤波技术要求对系统的动态模型参数和统计模型参数都有完整的说明。然而,在许多实际情况下,这些模型可能包含参数,这些参数可能由于未知的随机偏差而偏离其标称值。这种未知的随机偏差可能会严重降低滤波器的性能或导致滤波器的发散。两级扩展卡尔曼滤波器(TEKF)考虑了非线性系统中的这一问题,长期以来受到了广泛的关注。到目前为止,TEKF建议假设随机偏差的信息是已知的。但随机偏差的信息通常是未知的或部分已知的。为了解决这一问题,本文首先提出了一种适用于不完全信息非线性系统的自适应衰落扩展卡尔曼滤波器(AFEKF)。其次,提出了利用AFEKF估计未知随机偏差的ATEKF。对于未知随机偏差的估计,所提出的ATEKF比TEKF更有效。将ATEKF应用于故障偏差未知的INS-GPS松耦合系统。
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Adaptive Two-Stage EKF for INS-GPS Loosely Coupled System with Unknown Fault Bias
This paper proposes an adaptive two-stage extended Kalman filter (ATEKF) for estimation of unknown fault bias in an INS-GPS loosely coupled system. The Kalman filtering technique requires complete specifications of both dynamical and statistical model parameters of the system. However, in a number of practical situations, these models may contain parameters, which may deviate from their nominal values by unknown random bias. This unknown random bias may seriously degrade the performance of the filter or cause a divergence of the filter. The two-stage extended Kalman filter (TEKF), which considers this problem in nonlinear system, has received considerable attention for a long time. The TEKF suggested until now assumes that the information of a random bias is known. But the information of a random bias is unknown or partially known in general. To solve this problem, this paper firstly proposes a new adaptive fading extended Kalman filter (AFEKF) that can be used for nonlinear system with incomplete information. Secondly, it proposes the ATEKF that can estimate unknown random bias by using the AFEKF. The proposed ATEKF is more effective than the TEKF for the estimation of the unknown random bias. The ATEKF is applied to the INS-GPS loosely coupled system with unknown fault bias.
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