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An Improved Unscented Kalman Filter for Discrete Nonlinear Systems with Random Parameters

机译:用于随机参数的离散非线性系统的改进的无需卡尔曼滤波器

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摘要

This paper investigates the nonlinear unscented Kalman filtering (UKF) problem for discrete nonlinear dynamic systems with random parameters. We develop an improved unscented transformation by incorporating the random parameters into the state vector to enlarge the number of sigma points. The theoretical analysis reveals that the approximated mean and covariance via the improved unscented transformation match the true values correctly up to the third order of Taylor series expansion. Based on the improved unscented transformation, an improved UKF method is proposed to expand the application of the UKF for nonlinear systems with random parameters. An application to the mobile source localization with time difference of arrival (TDOA) measurements and sensor position uncertainties is provided where the simulation results illustrate that the improved UKF method leads to a superior performance in comparison with the normal UKF method.
机译:本文调查了随机参数的离散非线性动态系统的非线性Uncented Kalman滤波(UKF)问题。通过将随机参数结合到状态向量以扩大Sigma点的数量,我们通过将随机参数进行改进的无编号转换。理论分析揭示了通过改进的无容改造的近似平均值和协方差与真正的值正确匹配到泰勒序列扩展的三阶。基于改进的无契转换,提出了一种改进的UKF方法,以扩展UKF与随机参数的非线性系统的应用。提供到到达时间差(TDOA)测量和传感器位置不确定性的移动源定位的应用,其中模拟结果说明改进的UKF方法导致与正常UKF方法相比的卓越性能。

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