基于最坏情况公式和凸逼近的鲁棒椭圆定位

Wenxin Xiong, H. So, C. Schindelhauer, Johannes Wendeberg
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引用次数: 3

摘要

由于椭圆定位在多输入多输出雷达、多基地声呐等系统中的广泛应用,近年来椭圆定位的研究得到了迅速的发展。然而,大多数算法都是在视距传播下设计的,而现有的一些椭圆定位的非视距(NLOS)缓解方案是高度依赖于实例的。本文在不考虑误差分布/统计和NLOS状态的情况下,研究了不利环境下的椭圆定位问题。为了实现对NLOS偏差的鲁棒性,我们采用最坏情况最小二乘公式,该公式只需要误差的一个界。然后,我们对由此产生的难以解决的约束极大极小优化问题应用某些近似,最后将其松弛为易于求解的凸优化问题。仿真结果表明,该方法在定位精度方面优于现有的几种非鲁棒估计方法,并以较低的计算成本获得与鲁棒估计器相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Elliptic Localization Using Worst-Case Formulation and Convex Approximation
Recent years have seen a rapid growth in research on elliptic localization, due to its widespread usage in systems such as multiple-input multiple-output radar and multistatic sonar. However, most of the algorithms are devised under line-of-sight propagation, while a number of those existing non-line-of-sight (NLOS) mitigation schemes for elliptic localization are highly case-dependent. This paper addresses the problem of elliptic localization in adverse environments without assumptions about distribution/statistics of errors and NLOS status. To achieve robustness towards NLOS bias, we resort to the worst-case least squares formulation which requires only a bound on the errors. We then apply certain approximations to the resultant intractable constrained minimax optimization problem, and finally relax it into a readily solvable convex optimization problem. Simulation results show that our method can outperform several existing non-robust approaches in terms of positioning accuracy, and achieve comparable performance to a robust estimator with a lower computational cost.
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