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An adaptive UKF for nonlinear state estimation via maximum likelihood principle

机译:基于最大似然原理的非线性状态估计的自适应UKF

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For the purpose of improving the performance of unscented Kalman filter (UKF) under the condition without accurate system noise statistics, this paper presents a new adaptive UKF based on the maximum likelihood principle. According to the maximum likelihood principle, the estimation of system noise statistics is determined by minimizing the negative of log likelihood function of innovation sequences. Subsequently, the estimated system noise statistics are fed back to the standard UKF to overcome its limitation. The proposed adaptive UKF can enhance the adaptive capability of standard UKF through the online estimation of system noise statistics. The effectiveness and advantage of the proposed algorithm are verified by the numerical simulations and comparison analysis.
机译:为了在没有精确的系统噪声统计的情况下提高无味卡尔曼滤波器(UKF)的性能,本文提出了一种基于最大似然原理的自适应UKF。根据最大似然原理,通过最小化创新序列的对数似然函数的负值来确定系统噪声统计量的估计值。随后,将估计的系统噪声统计信息反馈给标准UKF,以克服其局限性。所提出的自适应UKF可以通过在线估计系统噪声统计信息来增强标准UKF的自适应能力。通过数值仿真和比较分析,验证了所提算法的有效性和优势。

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