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Rank-One Semidefinite Programming Solutions for Mobile Source Localization in Sensor Networks

机译:传感器网络中移动源定位的秩一级微型编程解决方案

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摘要

In this paper, we introduce a rank-one Semi-Definite Programming (SDP) solution method for mobile source localization in sensor networks. The position and velocity of mobile source are jointly estimated using Time Delay (TD) measurements. To obtain the position and velocity of mobile source, a Relaxed Semi-Definite Programming (RSDP) algorithm is firstly designed by dropping the rank-one constraint. However, dropping the rank-one constraint leads to produce a suboptimal solution. To improve the performance, we further put forward the Penalty Function Semi-Definite Programming (PF-SDP) method to obtain the rank-one solution of the estimation problem by introducing the penalty terms. By adaptively choosing the penalty coefficient, an Adaptive Penalty Function Semi-Definite Programming (APF-SDP) algorithm is also proposed to avoid the excessive penalty. We also conduct experiments in both a simulated environment and a real system to demonstrate the effectiveness of the proposed methods. The results have demonstrated that the proposed APF-SDP outperforms the PF-SDP in terms of the position and velocity estimation whether the noise level is large or not.
机译:在本文中,我们介绍了传感器网络中的移动源定位的等级 - 一个半定编程(SDP)解决方案方法。使用时间延迟(TD)测量来联合估计移动源的位置和速度。为了获得移动源的位置和速度,首先通过丢弃秩一约束来设计轻松的半定编程(RSDP)算法。但是,降低秩一约束导致产生次优解。为了提高性能,我们进一步提出了惩罚功能半定规范(PF-SDP)方法,通过引入惩罚术语来获得估算问题的秩一解决方案。通过自适应地选择惩罚系数,还提出了一种自适应惩罚函数半定编程(APF-SDP)算法以避免过度罚款。我们还在模拟环境和实际系统中进行实验,以证明所提出的方法的有效性。结果表明,所提出的APF-SDP在位置和速度估计方面优于PF-SDP,但噪声水平是否大。

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