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Performance Analysis of Bayesian Filtering and Smoothing Algorithms for Underwater Passive Target Tracking

机译:水下无源目标跟踪贝叶斯滤波和平滑算法性能分析

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Passive target tracking deals with nonlinear filtering in which dynamics of the system are considered to be linear, while the target state is built on nonlinear measurements. In this paper, a comparative study is conducted for accurate state estimation of an underwater far-field moving target by exploiting the strength of well known nonlinear variant of Bayesian filter, i.e., extended Kalman filter (EKF) with discrete-time Kalman smoother, called Rauch Tung Striebel (RTS) smoother. Analysis is performed with two key parameters in target tracking by mean of variation in the number of sensors and different standard deviations of measured noise in the context of underwater bearings-only tracking technology. Exhaustive experiments are performed for finding the least root-mean square error between true and estimated position of target movement in the trajectory at every time instant. Relatively accurate estimation of the target state is observed from noisy measurements of sensors in case of RTS smoother than that of EKF for each scenario.
机译:无源目标跟踪处理非线性滤波,其中系统的动态被认为是线性的,而目标状态是基于非线性测量的。在本文中,通过利用贝叶斯滤波器的众所周知的非线性变体的强度进行了对比较研究,即通过离散时间卡尔曼的较大卡尔曼滤波器(EKF)的众所周知的非线性变体的强度进行了精确的水下远场移动目标。 Rauch Tung Striebel(RTS)更平稳。通过在水下轴承的背景下的传感器数量的变化和测量噪声的不同标准偏差的变化来执行分析。在每次瞬间,执行用于在轨迹中找到目标运动的真实和估计位置之间的最小根均方误差的穷举实验。在RTS对每个场景的情况下比EKF更顺畅的情况下,从传感器的嘈杂测量观察到目标状态的相对准确的估计。

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