Adaptive target tracking using multistatic sensor with unknown moving transmitter positions

Rong Yang, Y. Bar-Shalom
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引用次数: 1

Abstract

It is desirable for a sensor to keep silent to avoid being detected. Passive tracking is therefore preferred as it estimates target trajectories through “listening” to the signals emitted by others without any emission. The multistatic concept can be used for this application, where the receiver (or the listener) is considered as own sensor, and the transmitters can be emitters deployed on stationary or moving platforms. Such a multistatic system requires the positions of the transmitters to be known by the receiver. Unfortunately, this is not always true for non-cooperative transmitters (especially for moving transmitters), who do not inform the receiver their positions timely. This paper proposes a multistatic configuration with a receiver and two transmitters with unknown position. This configuration can provide good observability for the trajectories of the transmitters and targets based on the measured bearings and the time-difference-of-arrival (TDOA) of the direct and indirect path signals. A two-stage unscented Kalman filter (UKF) is developed to track the transmitters and target simultaneously. Unlike the algorithms from the literature which assume known transmitter positions, the algorithm of this paper estimates the state of the target while adapting itself to the moving transmitters' locations. Simulation tests are conducted to show the filter performance.
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未知移动发射机位置的多静态传感器自适应目标跟踪
为了避免被检测到,传感器最好保持沉默。因此,被动跟踪是首选的,因为它通过“倾听”其他发射的信号来估计目标轨迹,而没有任何发射。多静态概念可用于此应用,其中接收器(或侦听器)被视为自己的传感器,发射器可以是部署在固定或移动平台上的发射器。这样的多静态系统要求接收器知道发射机的位置。不幸的是,对于不合作的发射机(特别是移动的发射机),这并不总是正确的,因为它们不及时通知接收器它们的位置。本文提出了一种位置未知的接收机和发射机多静态结构。基于测量的方位和直接和间接路径信号的到达时间差(TDOA),该配置可以为发射机和目标的轨迹提供良好的可观测性。提出了一种两级无嗅卡尔曼滤波器(UKF),用于同时跟踪发射机和目标。与文献中假设已知发射机位置的算法不同,本文算法在适应移动发射机位置的同时估计目标的状态。通过仿真实验验证了该滤波器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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