Extended Binary Particle Swarm Optimization Approach for Disjoint Set Covers Problem in Wireless Sensor Networks

Zhi-hui Zhan, Jun Zhang, Ke-Jing Du, Jing Xiao
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引用次数: 12

Abstract

This paper proposes to use the binary particle swarm optimization (BPSO) approach to solve the disjoint set covers (DSC) problem in the wireless sensor networks (WSN). The DSC problem is to divide the sensor nodes into different disjoint sets and schedule them to work one by one in order to save energy while at the same time meets the surveillance requirement, e.g., the full coverage. The objective of DSC is to maximal the number of disjoint sets. As different disjoint sets form and work successively, only the sensors from the current set are responsible for monitoring the area, while nodes from other sets are sleeping to save energy. Therefore the DSC is a fundamental problem in the WSN and is significant for the network lifetime. In the literature, BPSO has been successfully applied to solve the optimal coverage problem (OCP) which is to find a subset of sensors with the minimal number of sensors to fully monitor the area. In this paper, we extend the BPSO approach to solve the DSC problem by solving the OCP again and again to find the disjoint subsets as many as possible. Once finding the minimal number of sensors for the OCP to fully monitor the area, we mark these sensors as unavailable and repeatedly find another subset of sensors in the remained WSN for the OCP. This way, BPSO can find disjoint subsets of the WSN as many as possible, which is the solution to the DSC problem. Simulations have been conducted to evaluate the performance of the proposed BPSO approach. The experimental results show that BPSO has very good performance in maximizing the disjoint sets number when compared with the traditional heuristic and the genetic algorithm approaches.
无线传感器网络不相交集覆盖问题的扩展二元粒子群优化方法
提出了一种基于二元粒子群算法的无线传感器网络不相交集覆盖问题的求解方法。DSC问题是将传感器节点划分为不同的不相交的集合,并将它们逐个调度工作,以节省能量,同时满足监控要求,如全覆盖。DSC的目标是使不相交集的数目最大化。由于不同的不相交集合形成并先后工作,只有当前集合的传感器负责该区域的监控,其他集合的节点处于休眠状态以节省能量。因此,DSC是无线传感器网络中的一个基本问题,对网络的生存期具有重要意义。在文献中,BPSO已成功地应用于解决最优覆盖问题(OCP),即寻找具有最少数量传感器的传感器子集来完全监控该区域。在本文中,我们扩展了BPSO方法来解决DSC问题,通过反复求解OCP来找到尽可能多的不相交子集。一旦找到OCP能够完全监控该区域的最小传感器数量,我们将这些传感器标记为不可用,并在OCP的剩余WSN中重复寻找另一个传感器子集。这样,BPSO可以尽可能多地找到WSN的不相交子集,从而解决了DSC问题。通过仿真来评估所提出的BPSO方法的性能。实验结果表明,与传统的启发式和遗传算法相比,该算法在最大不相交集数方面具有很好的性能。
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