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Evolutionary-Based Coverage Control Mechanism for Clustered Wireless Sensor Networks

机译:集群无线传感器网络的基于进化的覆盖控制机制

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Many clustering protocols have been proposed for Wireless Sensor Networks (WSNs). However, most of these protocols focus on selecting the optimal set of Cluster Heads (CHs) in order to reduce or balance the network's energy consumption and unfortunately, how to effectively cover the network area is often overlooked. Coverage optimization in WSNs is a well-known Non-deterministic Polynomial (NP)-hard optimization problem. In this paper, we propose a Genetic Algorithm (GA)-based Coverage Control Mechanism (GA-CCM) for clustered WSNs. GA-CCM provides an add-on mechanism that is designed to be integrated with any centralized clustering protocol to enhance its energy efficiency. GA-CCM finds the optimal set of active nodes that provides full area coverage and puts the redundant sensors into sleep mode to save energy. Extensive simulations of GA-CCM on 25 different WSNs topologies are conducted. Performance results are evaluated and compared against several well-known clustering protocols as well as a coverage-aware clustering protocol. Results show that GA-CCM always achieves full area coverage while minimizing the redundancy degree and the number of active nodes. To further evaluate the performance of GA-CCM as an add-on to existing clustering protocols, we integrate it with a Particle Swarm Optimization based CH selection protocol (PSO-CH), a comprehensive clustering protocol that considers many clustering objectives. To the best of our knowledge, PSO-CH has the lowest overall energy consumption among well-known clustering protocols. Experimental results show that this integration of GA-CCM to PSO-CH further improves its performance in terms of energy efficiency and packets delivery rate.
机译:已经针对无线传感器网络(WSN)提出了许多群集协议。但是,这些协议中的大多数协议都专注于选择最佳的簇头(CH)集,以减少或平衡网络的能耗,但不幸的是,如何有效地覆盖网络区域常常被忽略。 WSN中的覆盖范围优化是众所周知的非确定性多项式(NP)-硬性优化问题。在本文中,我们提出了一种基于遗传算法(GA)的群集WSN覆盖控制机制(GA-CCM)。 GA-CCM提供了一种附加机制,旨在与任何集中式群集协议集成以提高其能源效率。 GA-CCM可以找到可提供全部区域覆盖的最佳活动节点集,并将冗余传感器置于睡眠模式以节省能源。在25种不同的WSN拓扑上进行了GA-CCM的广泛仿真。对性能结果进行了评估,并将其与几种众所周知的群集协议以及可识别覆盖范围的群集协议进行了比较。结果表明,GA-CCM始终能够实现全区域覆盖,同时将冗余度和活动节点数降至最低。为了进一步评估GA-CCM作为现有聚类协议的附件的性能,我们将其与基于粒子群优化的CH选择协议(PSO-CH)集成在一起,该协议是考虑了许多聚类目标的综合性聚类协议。据我们所知,PSO-CH在众所周知的群集协议中具有最低的总体能耗。实验结果表明,GA-CCM与PSO-CH的这种集成在能量效率和数据包传输率方面进一步提高了其性能。

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