主动-被动雷达传感器网络中的学习资源分配

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Zenon Mathews , Luca Quiriconi, Christof Schüpbach, P. Weber
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引用次数: 2

摘要

无源相干定位(PCL)系统的最新进展使得有源和无源雷达传感器网络在军事和民用空中监视中都非常有吸引力。PCL系统似乎很有希望成为主动雷达覆盖的经济有效的空隙填充物,特别是在高山地形,也可以作为隐蔽的预警传感器。然而,PCL系统对机会变送器(ToO)的变化很敏感。针对有源雷达传感器网络,提出了多种节能目标检测方法。然而,到目前为止,对实际情况下联合主-无源雷达传感器网络的能效和拓扑优化研究甚少。在此,我们提出了一种无监督学习方法,用于组合主-被动雷达传感器网络的拓扑优化和节能检测。网络中主动和被动传感器的相互依赖以及给定的目标场景自然地被我们的方法所解释。随着时间的推移,同时学习有源雷达的最佳功率预算和检测扇区以及每个PCL传感器最有用的工具。这是最小化有源雷达功率预算和PCL计算资源需求的关键贡献。使有源雷达的功率预算最小化,从而使PCL传感器的附加价值得到充分利用。我们还演示了当PCL传感器的ToO发生变化时,我们的方法如何动态重新学习以实现鲁棒性能。我们在一个模拟套件中测试了我们的方法,该套件使用真实世界的空气监测数据和真实世界地形条件下的ToOs,用于主动被动雷达传感器网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Resource Allocation in Active-Passive Radar Sensor Networks
Recent advances in Passive Coherent Location (PCL) systems make combined active and passive radar sensor networks very attractive for both military and civilian air surveillance. PCL systems seem promising as cost-effective gap fillers of active radar coverage especially in alpine terrain and also as covert early warning sensors. However, PCL systems are sensitive to changes of Transmitters of Opportunity (ToO). Many approaches for energy-efficient target detection have been proposed for active radar sensor networks. However, energy-efficiency and topology optimization of combined active-passive radar sensor networks in realistic scenarios have been poorly studied until today. We here propose an unsupervised learning approach for topology optimization and energy-efficient detection in combined active-passive radar sensor networks. The interdependence of active and passive sensors in the network and the given target scenario is naturally accounted for by our approach. Optimal power budget and detection sectors of active radars and the most useful ToOs for each PCL sensor are simultaneously learned over time. This is a critical contribution for minimizing the need for active radar power budget and PCL computational resources. The power budget of active radars is minimized in a way that the added value of PCL sensors is fully exploited. We also demonstrate how our approach dynamically relearns to achieve robust performance when changes in the ToO of PCL sensors occur. We test our approach in a simulation suite for active-passive radar sensor networks using real-world air surveillance data and ToOs under real-world topographical conditions.
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