Sensor-Target Geometry for Hybrid Bearing/Range Underwater Localization

M. Zhou, Z. Zhong, Xinpeng Fang
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引用次数: 3

Abstract

Abstract In this paper, the influence of sensor-target relative geometry on the potential performance of underwater target localization with hybrid bearing/range sensors is investigated. The optimality criterion function is built on the knowledge of Fisher information matrix (FIM), and another analysis on the mean squared error (MSE) is also presented. For a fixed distance between the sensors to the underwater target, the MSE is minimized if and only if the determinant of the FIM is maximized. The main contribution in this paper is the dependence of the range measurement error on the acoustic propagation distance because of the complex underwater environment, which result in a different FIM expression compared to the ideal assumption case. Simulation results are provided to show the effectiveness of the algorithms presented.
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混合方位/距离水下定位的传感器-目标几何
摘要本文研究了传感器-目标相对几何形状对混合方位/距离传感器水下目标定位潜在性能的影响。在Fisher信息矩阵(FIM)知识的基础上建立了最优性准则函数,并对均方误差(MSE)进行了分析。对于传感器与水下目标之间的固定距离,当且仅当FIM的行列式最大时,MSE最小。本文的主要贡献是由于复杂的水下环境导致距离测量误差与声传播距离的依赖,从而导致与理想假设情况不同的FIM表达式。仿真结果表明了所提算法的有效性。
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