Mobile localization via high-degree cubature Kalman filter with sensor position uncertainties

Xiaomei Qu
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Abstract

This paper investigates the passive localization of a mobile source based on time difference of arrival (TDOA) measurements when the sensor positions suffer from random uncertainties. In the formulation of the dynamic system, the nonlinear measurement function contains random parameters, so the classical high-degree cubature Kalman filtering (CKF) method is unrealizable. We develop an augmented high-degree CKF method to deal with the random parameters, where the system is augmented by incorporating the random sensor positions into the state vector and the number of cubature points is enlarged. Although the proposed augmented high-degree CKF method requires more computational complexity, its estimation accuracy is improved in comparison with that of the classical high-degree CKF method which ignores the sensor position uncertainties. Monte Carlo simulations are used to illustrate the good performance of the proposed method.
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基于传感器位置不确定性的高度数卡尔曼滤波移动定位
研究了在传感器位置存在随机不确定性的情况下,基于到达时间差(TDOA)测量的移动源被动定位问题。在动态系统的表述中,非线性测量函数中含有随机参数,因此经典的高次稳态卡尔曼滤波(CKF)方法无法实现。我们开发了一种增强的高阶CKF方法来处理随机参数,其中通过将随机传感器位置纳入状态向量来增强系统,并扩大了培养点的数量。本文提出的增广高阶CKF方法虽然计算复杂度较高,但与忽略传感器位置不确定性的经典高阶CKF方法相比,其估计精度有所提高。通过蒙特卡罗仿真验证了所提方法的良好性能。
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