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Set-Membership Based Hybrid Kalman Filter for Nonlinear State Estimation under Systematic Uncertainty

机译:系统不确定性下基于集成员关系的非线性卡尔曼滤波用于非线性状态估计

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摘要

This paper presents a new set-membership based hybrid Kalman filter (SM-HKF) by combining the Kalman filtering (KF) framework with the set-membership concept for nonlinear state estimation under systematic uncertainty consisted of both stochastic error and unknown but bounded (UBB) error. Upon the linearization of the nonlinear system model via a Taylor series expansion, this method introduces a new UBB error term by combining the linearization error with systematic UBB error through the Minkowski sum. Subsequently, an optimal Kalman gain is derived to minimize the mean squared error of the state estimate in the KF framework by taking both stochastic and UBB errors into account. The proposed SM-HKF handles the systematic UBB error, stochastic error as well as the linearization error simultaneously, thus overcoming the limitations of the extended Kalman filter (EKF). The effectiveness and superiority of the proposed SM-HKF have been verified through simulations and comparison analysis with EKF. It is shown that the SM-HKF outperforms EKF for nonlinear state estimation with systematic UBB error and stochastic error.
机译:本文通过将卡尔曼滤波(KF)框架与集合成员概念相结合,提出了一种新的基于集合成员的混合卡尔曼滤波器(SM-HKF),用于在随机误差和未知但有界(UBB)组成的系统不确定性下进行非线性状态估计)错误。在通过泰勒级数展开对非线性系统模型进行线性化后,该方法通过通过Minkowski和将线性化误差与系统性UBB误差相结合,引入了新的UBB误差项。随后,通过考虑随机误差和UBB误差,得出最佳卡尔曼增益,以最小化KF框架中状态估计的均方误差。所提出的SM-HKF可同时处理系统UBB误差,随机误差以及线性化误差,从而克服了扩展卡尔曼滤波器(EKF)的局限性。通过仿真和与EKF的比较分析,验证了所提出的SM-HKF的有效性和优越性。结果表明,在非线性状态估计中,SM-HKF的性能优于EKF,具有系统性UBB误差和随机误差。

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