Optimization of 3D WSN coverage based on equilibrium optimization algorithm

Shuang Shan
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Abstract

: Coverage optimization is one of the basic problems in wireless sensor networks. Coverage reflects the service quality provided by wireless sensor networks. Swarm intelligence algorithm is an optimization method inspired by natural organisms. Node coverage optimization is also an optimization problem. Swarm intelligence algorithm can solve the coverage problem of wireless sensor networks. Therefore, this paper focuses on the application of swarm intelligence algorithm in coverage optimization of wireless sensor networks, and proposes a coverage optimization strategy based on swarm intelligence algorithm: coverage optimization of three-dimensional wireless sensor networks based on equilibrium optimization algorithm. In this algorithm, the principle is to control the volume and mass balance model, the particle concentration update according to the equilibrium candidate solution, and finally reach the equilibrium state, which mainly consists of three stages: population initialization, equilibrium pool and concentration update. In the simulation, the equilibrium optimization algorithm has higher effective coverage than the particle swarm optimization algorithm.
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基于平衡优化算法的三维无线传感器网络覆盖优化
覆盖优化是无线传感器网络的基本问题之一。覆盖范围反映了无线传感器网络提供的服务质量。群体智能算法是一种受自然生物启发的优化方法。节点覆盖优化也是一个优化问题。群智能算法可以解决无线传感器网络的覆盖问题。因此,本文重点研究了群智能算法在无线传感器网络覆盖优化中的应用,提出了一种基于群智能算法的覆盖优化策略:基于均衡优化算法的三维无线传感器网络覆盖优化。该算法的原理是控制体积和质量平衡模型,根据平衡候选解对粒子浓度进行更新,最终达到平衡状态,该过程主要包括种群初始化、平衡池和浓度更新三个阶段。仿真结果表明,平衡优化算法比粒子群优化算法具有更高的有效覆盖率。
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