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Distributed Decision-Making in Wireless Sensor Networks for Online Structural Health Monitoring  

Ling, Qing (Department of Electrical and Computer Engineering, Michigan Technological University)
Tian, Zhi (Department of Electrical and Computer Engineering, Michigan Technological University)
Li, Yue (Department of Civil and Environmental Engineering, Michigan Technological University)
Publication Information
Abstract
In a wireless sensor network (WSN) setting, this paper presents a distributed decision-making framework and illustrates its application in an online structural health monitoring (SHM) system. The objective is to recover a damage severity vector, which identifies, localizes, and quantifies damages in a structure, via distributive and collaborative decision-making among wireless sensors. Observing the fact that damages are generally scarce in a structure, this paper develops a nonlinear 0-norm minimization formulation to recover the sparse damage severity vector, then relaxes it to a linear and distributively tractable one. An optimal algorithm based on the alternating direction method of multipliers (ADMM) and a heuristic distributed linear programming (DLP) algorithm are proposed to estimate the damage severity vector distributively. By limiting sensors to exchange information among neighboring sensors, the distributed decision-making algorithms reduce communication costs, thus alleviate the channel interference and prolong the network lifetime. Simulation results in monitoring a steel frame structure prove the effectiveness of the proposed algorithms.
Keywords
Distributed decision-making; structural health monitoring (SHM); wireless sensor networks (WSNs);
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