视觉传感器网络成本部署的自适应粒子群优化

Mehdi Rouan-Serik, Mejdi Kaddour
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摘要

视觉传感器网络(VSN)在现实场景中有着广泛的应用。因此,部署、覆盖、能量收集和许多其他挑战都很难处理。本研究探讨了部署vns覆盖具有特定约束条件的目标的成本,如目标覆盖、屏障墙和捕获质量。对于一个混合整数数学公式,给出了精确解和近似解。准确地解决适当大小的实例是困难的,因为这是一个np困难问题。一些研究试图通过提供近似方法、启发式和元启发式来解决这些问题。粒子群优化(PSO)元启发式算法是本文采用的一种知名的基于元启发式算法。在处理困难的优化问题时,该技术提供了极好的结果。实验和结果表明,所提出的粒子群算法无论在大实例还是小实例中都能有效地解决问题。
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Adaptive Particle Swarm Optimization of Cost Deployment in Visual Sensor Networks
Visual sensor networks (VSN) have a wide range of applications in real-world scenarios. As a result, deployment, coverage, energy harvesting, and many other challenges are tough to deal with. The cost of deploying VSNs to cover targets with particular constraints, such as targets coverage, barrier walls and capture quality, are explored in this study. For a Mixed Integer mathematical formulation, an exact and an approximation solution were presented. Exact resolution of appropriate size instances is difficult because this is an NP-hard problem. Several studies attempt to solve these issues by providing approximation methods, heuristics, and metaheuristics. The Particle Swarm Optimization (PSO) metaheuristic is a well-known based metaheuristic which we adopt in this paper. While dealing with difficult optimization problems, this technique provided excellent results. According to experiments and results, the proposed PSO method performed efficiently in both small and large instances of the problem.
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