Distributed algorithm of subgradient optimization for localization based on received signal strength in wireless network

P. Tsai, Ching-Hsien Wang
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Abstract

In this paper, we propose a subgradient optimization method for pedestrian localization based on received signal strength in wireless network. The objective function of weighted least-squares estimation is adopted, which shows good convexity and has immunity to shadowing effect. We also approximate the subgradient of the objective function by a recursive form so that it can be implemented in a decentralized manner within each sensing node. A variable step size is proposed to take into consideration both the subgradient and minimum adjustment to accelerate convergence. Furthermore, the convergence analysis is also given to show the feasibility of our design for the step size. From simulation results, we can see the proposed algorithm has better accuracy and convergence rate than the conventional decentralized algorithms to localize a stationary or moving target in wireless network.
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无线网络中基于接收信号强度的分布式亚梯度定位优化算法
本文提出了一种基于无线网络接收信号强度的行人定位亚梯度优化方法。采用加权最小二乘估计的目标函数,具有良好的凸性和抗阴影效应。我们还通过递归形式近似目标函数的子梯度,以便它可以在每个传感节点内以分散的方式实现。为了加速收敛,提出了一种同时考虑次梯度和最小调整的变步长方法。最后,通过收敛性分析证明了该步长设计的可行性。仿真结果表明,该算法对无线网络中静止或运动目标的定位精度和收敛速度均优于传统的分散算法。
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