Square-root algorithms for maximum correntropy estimation of linear discrete-time systems in presence of non-Gaussian noise
Maria V. Kulikova

TL;DR
This paper improves the maximum correntropy Kalman filter (MCC-KF) for non-Gaussian noise, providing a more stable, efficient, and accurate square-root implementation with demonstrated superior performance in numerical tests.
Contribution
It revises and enhances the MCC-KF equations, introduces more stable square-root algorithms in array form, and demonstrates improved estimation and computational efficiency.
Findings
Enhanced MCC-KF estimator with better accuracy.
Square-root algorithms offer increased numerical stability.
New variants outperform previous MCC-KF in tests.
Abstract
Recent developments in the realm of state estimation of stochastic dynamic systems in the presence of non-Gaussian noise have induced a new methodology called the maximum correntropy filtering. The filters designed under the maximum correntropy criterion (MCC) utilize a similarity measure (or correntropy) between two random variables as a cost function. They are shown to improve the estimators' robustness against outliers or impulsive noises. In this paper we explore the numerical stability of linear filtering technique proposed recently under the MCC approach. The resulted estimator is called the maximum correntropy criterion Kalman filter (MCC-KF). The purpose of this study is two-fold. First, the previously derived MCC-KF equations are revise and the related Kalman-like equality conditions are proved. Based on this theoretical finding, we improve the MCC-KF technique in the sense…
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