Robust INS/GPS Coupled Navigation Based on Minimum Error Entropy Kalman Filtering

H. Benzerrouk, R. Landry, Vladimir Nebylov, A. Nebylov
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引用次数: 4

Abstract

This paper addresses the results showing the expanded use or improvement of the accuracy, availability, and/or integrity performance of multisensory navigation systems. In addition, Processing algorithms and methods for multisensory systems are significantly improved when noises are non-Gaussian. In the literature, different modified linear and nonlinear Kalman filters (KFs) were derived under the Gaussian assumption and the well-known minimum mean square error (MMSE) criterion. In order to improve their robustness with respect to impulsive non-Gaussian noises, different algorithms and techniques based on Gaussian sum filtering, Huber based estimators and recently introduced maximum Correntropy criterion (MCC) have recently been used to counter the weakness of the MMSE criterion in developing different versions of robust Kalman filters.
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基于最小误差熵卡尔曼滤波的稳健INS/GPS耦合导航
本文讨论了显示多感官导航系统的准确性、可用性和/或完整性性能的扩展使用或改进的结果。此外,在非高斯噪声条件下,多感官系统的处理算法和方法也得到了显著改进。在文献中,在高斯假设和众所周知的最小均方误差(MMSE)准则下,推导了不同的修正线性和非线性卡尔曼滤波器(KFs)。为了提高它们对脉冲非高斯噪声的鲁棒性,最近在开发不同版本的鲁棒卡尔曼滤波器时,使用了基于高斯和滤波、基于Huber估计和最近引入的最大相关熵准则(MCC)的不同算法和技术来克服MMSE准则的弱点。
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