基于l1最小化的大型传感器系统状态估计器冗余度量算法

V. Vijayaraghavan, Kiavash Kianfar, Yu Ding, H. Parsaei
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引用次数: 0

摘要

在传感器网络中,线性模型已被成功地用于建立传感器测量与系统状态之间的联系。构造线性系统的冗余度是np困难的。先前的绑定分解、0-1混合整数规划和在绑定分解框架内嵌入0-1混合整数可行性检验的混合算法都已在文献中提出并进行了比较。在本文中,我们利用线性规划的计算效率,提出了一种新的启发式算法,该算法在特定框架中求解一系列的11范数最小化问题,从而在非常小的运行时间内找到该问题的极好的解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An L1-minimization based algorithm to measure the redundancy of state estimators in large sensor systems
Linear models have been successfully used to establish the connections between sensor measurements and system states in sensor networks. Finding the degree of redundancy for structured linear systems is proven to be NP-hard. Previously bound-and-decompose, 0–1 mixed integer programming and hybrid algorithms embedding 0–1 mixed integer feasibility checking within a bound-and-decompose framework have all been proposed and compared in the literature. In this paper, we exploit the computational efficiency of linear programs to present a novel heuristic algorithm which solves a series of l1-norm minimization problems in a specific framework to find extremely good solutions to this problem in remarkably small runtime.
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