重新审视纯轴承过滤问题

M. Mallick, Xiaoqing Tian, Radhika Mandya Nagaraju, Z. Duan
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引用次数: 0

摘要

针对实际数据处理场景,分析了非机动目标纯方位滤波(BOF)问题中的滤波器初始化问题。我们假设目标在XY -平面上以几乎恒定的速度运动。所有权,也在XY平面上移动,执行机动来观察目标的状态。目标的状态是一个具有二维位置和速度分量的四维笛卡尔状态向量。虽然相对笛卡儿状态向量的动态模型被广泛用于BOF问题的状态估计,但我们认为用绝对笛卡儿状态向量代替相对笛卡儿状态向量更简单,计算效率更高。本文采用了笛卡尔无气味卡尔曼滤波器(CUKF)、笛卡尔cubature卡尔曼滤波器(CCKF)和笛卡尔PF滤波器(CPF)。传感器技术和实时信号处理算法有望在未来得到显著改进。分析了这些滤波器在高测量精度和高数据速率下的性能。结果表明,在此范围内,所有滤波器的状态估计精度基本相同。因此,像CCKF这样的简单滤波器具有较低的计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting the Bearings-only Filtering Problem
We analyze the filter initialization problem in the bearings-only filtering (BOF) problem of a non-maneuvering target for the scenario where real data is processed. We assume that the target moves with the nearly constant velocity motion in the XY−plane. The ownship, also moving in the XY−plane, performs a maneuver to observe the state of the target. The state of the target is a four-dimensional Cartesian state vector with 2D position and velocity components. Although the dynamic model for the relative Cartesian state vector is widely used for state estimation in the BOF problem, we argue that it is simpler and computationally efficient to use the absolute Cartesian state vector in place of the relative Cartesian state vector. The Cartesian unscented Kalman filter (CUKF), Cartesian cubature Kalman filter (CCKF), and Cartesian PF (CPF) are used in this study. Sensor technology and real-time signal processing algorithms are expected to improve significantly in future. We analyze the performance of these filters in the high measurement accuracy and high data-rate regime. Our results show that the state estimation accuracy of all the filters in this regime are nearly the same. Therefore, a simple filter such as the CCKF is suitable with a low computational cost.
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