Multi-decision Making Based PSO Optimization in Airborne Mobile Sensor Network Deployment

Airborne mobile sensor network, which is composed of sensor nodes integrated airborne vehicles, draws the attention of many interesting topics in multifarious areas, such as environmental monitoring, battlefield surveillance or disaster management. In this function specific network, some application based rules should be obeyed completely, such as signal jamming, collision avoiding, formation matching and flock centering. Different principles treat the overall arrangement as dissimilar coverage problems fromdifferent perspectives. In this paper, considering the above factors, we give a modeling under some new restrictions, measure each candidate solution and do a multi-decision making process, thus solving coverage requirement. In the end the simulation proves our mechanism.

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