多传感器环境下水下目标运动分析与动态传感器选择

V. Dubey, Rohit Kumar Singh, S. Bhaumik
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引用次数: 0

摘要

我们的工作目标是使用分布在海面上的被动声呐浮标的多传感器网络跟踪在3D空间中移动的水下目标。所有浮标都配备了被动声纳来测量目标的方位和仰角。跟踪器位于远离传感器的位置,来自声纳浮标的测量数据被发送到一个共同的中央跟踪器进行进一步处理。但由于一些物理限制,并非总是可以将所有传感器的数据一起发送。为了选择一组传感器,我们利用估计目标状态的Fisher信息矩阵(FIM)设计了代价函数。这个代价函数的最优解给出了期望的传感器子集。从这些选定的传感器获得的测量值用于使用各种非线性估计器执行目标状态估计。从目标状态的均方根误差(RMSE)和轨迹偏离百分比两方面比较了这些估计器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Underwater Target Motion Analysis with Dynamic Sensor Selection in Multi-Sensor Environment
The objective of our work is to track an underwater target moving in 3D space using a multi-sensor network of passive sonobuoys spread over the sea surface. All the buoys are equipped with passive SONAR that measures the bearing and elevation angles of the target. The tracker is located remotely from the sensors, and the measurements from the sonobuoys are sent to a common central tracker for further processing. But due to some physical constraints, it is not always possible to send the data from all the sensors together. To select a set of sensors, we have designed a cost function by utilizing the Fisher information matrix (FIM) of the estimated target states. The optimum solution for this cost function gives the desired sensor subset. The measurements obtained from these selected sensors are used to perform the target state estimation using various non-linear estimators. The performances of these estimators are compared in terms of root mean square (RMSE) error of target states and percentage track divergence.
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