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Joint path planning and sensor subset selection for multistatic sensor networks

机译:多静态传感器网络的联合路径规划和传感器子集选择

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Since inexpensive passive sensors have become available, it is possible to deploy a large number of them for tracking purposes in Anti-Submarine Warfare (ASW). However, modern submarines are quiet and difficult to track with passive sensors alone. Multistatic sensor networks, which have few transmitters (e.g., dipping sonars) in addition to passive receivers (e.g., sonobouys), have the potential to improve the tracking performance. The performance can be improved further by moving the transmitters according to existing target states and any possible new target states. Even though a large number of passive sensors are available, due to frequency, processing power and other physical limitations, only a few of them can be used at any one time. Then the problems are to decide the path of the transmitters and select a subset from the available passive sensors in order to optimize the tracking performance. In this paper, the Posterior Crame´r-Rao Lower Bound (PCRLB), which gives a lower bound on estimation uncertainty, is used as the performance measure. An algorithm is presented to decide jointly the optimal path of the movable transmitters, by considering transmitters'' operational constraints, and the optimal subset of passive sensors that should be used at each time steps for tracking multiple, possibly time-varying, number of targets. The effect of sensor location uncertainties, due to deployment error and possible sensor drifting, on the tracking performance is addressed in the sensor management algorithm. Simulation results illustrating the performance of the proposed algorithm are presented.
机译:由于已经有了廉价的无源传感器,因此有可能在反潜战(ASW)中将大量传感器用于跟踪目的。但是,现代潜艇安静且难以单独使用无源传感器进行跟踪。除了无源接收器(例如,声纳波)以外,几乎没有发射器(例如,声纳)的多基地传感器网络有可能改善跟踪性能。通过根据现有目标状态和任何可能的新目标状态移动发射机,可以进一步提高性能。即使有大量的无源传感器,由于频率,处理能力和其他物理限制,一次只能使用其中几个。然后,问题在于确定发射机的路径并从可用的无源传感器中选择一个子集,以优化跟踪性能。在本文中,使用后方Crame´r-Rao下界(PCRLB)作为性能度量,该后界给出估计不确定性的下限。提出了一种算法,通过考虑发射机的操作约束以及在每个时间步长上应使用的无源传感器的最佳子集来共同确定可移动发射机的最佳路径,以跟踪多个可能随时间变化的目标数量。由于部署错误和可能的传感器漂移,传感器位置不确定性对跟踪性能的影响已在传感器管理算法中解决。仿真结果说明了所提出算法的性能。

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