基于距离的目标定位技术中最优雷达部署设计的鲁棒框架

A. Aubry, P. Babu, A. De Maio, Ghania Fatima, Nitesh Sahu
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引用次数: 0

摘要

本文研究了组成多平台网络的单站雷达的最优位置设计问题。利用基于雷达距离测量的目标位置的CRB,考虑了两种不同的优值(与实际目标位置无关)。与现有技术通常依赖于目标位于传感区域中心的限制性假设并研究节点最佳角度方向的确定不同,本文提出了一种不知道目标位置的最优雷达部署设计方法。具体地说,考虑目标可能存在的区域,然后在采样监视区域的网格点上平均CRB的轨迹(短期平均CRB),或者最小化上述网格点上CRB的最大轨迹(短期最坏情况CRB)。在此基础上,提出了一种基于块最大化的优化框架(block- mm)来处理所制定的资源分配问题。值得注意的是,无论所考虑的价值数字如何,设计目标都沿着所提出算法的迭代步骤单调降低。该方法还能有效地处理非均匀测量噪声的情况。最后,通过数值仿真验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Robust Framework to Design Optimal Radar Deployment for Range-Based Target Localization Technique
In this paper, the problem of designing the optimal positions of monostatic radars composing a multiplatform network is pursued. Leveraging the CRB of the target position based on radar range measurements, two different figures of merit (independent of the actual target location) are considered. Unlike the state-of-the-art techniques, which usually rely on the restrictive assumption that the target is at the center of the sensing region and study the determination of the optimal angular orientation of the nodes, a new approach to design the optimal radar deployment (without knowing target location) is developed. Specifically, a region where the target is likely to be present is considered and either the trace of the CRB averaged over the grid points sampling the surveillance area (shortly average CRB), or the maximum trace of CRB over the mentioned grid points (shortly worst-case CRB) is minimized. Hence, an optimization framework based on block majorization-minimization (referred to as block-MM) is proposed to deal with the formulated resource allocation problems. Remarkably, regardless of the considered figures of merit, the design objective decreases monotonically along the iteration steps of the proposed algorithm. The developed methodology can also efficiently handle the case of nonuniform measurement noise. Finally, via numerical simulations, the effectiveness of the developed methods is shown.
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