Metaheuristic algorithms and their applications in wireless sensor networks: review, open issues, and challenges

Essam H. Houssein, Mohammed R. Saad, Youcef Djenouri, Gang Hu, Abdelmgeid A. Ali, Hassan Shaban
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Abstract

Metaheuristic algorithms have wide applicability, particularly in wireless sensor networks (WSNs), due to their superior skill in solving and optimizing many issues in different domains. However, WSNs suffer from several issues, such as deployment, localization, sink node placement, energy efficiency, and clustering. Unfortunately, these issues negatively affect the already limited energy of the WSNs; therefore, the need to employ metaheuristic algorithms is inevitable to alleviate the harm imposed by these issues on the lifespan and performance of the network. Some associated issues regarding WSNs are modelled as single and multi-objective optimization issues. Single-objective issues have one optimal solution, and the other has multiple desirable solutions that compete, the so-called non-dominated solutions. Several optimization strategies based on metaheuristic algorithms are available to address various types of optimization concerns relating to WSN deployment, localization, sink node placement, energy efficiency, and clustering. This review reports and discusses the literature research on single and multi-objective metaheuristics and their evaluation criteria, WSN architectures and definitions, and applications of metaheuristics in WSN deployment, localization, sink node placement, energy efficiency, and clustering. It also proposes definitions for these terms and reports on some ongoing difficulties linked to these topics. Furthermore, this review outlines the open issues, challenge paths, and future trends that can be applied to metaheuristic algorithms (single and multi-objective) and WSN difficulties, as well as the significant efforts that are necessary to improve WSN efficiency.

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元哲算法及其在无线传感器网络中的应用:综述、开放性问题和挑战
元启发式算法在解决和优化不同领域的许多问题方面具有卓越的能力,因此具有广泛的适用性,尤其是在无线传感器网络(WSN)中。然而,WSN 存在几个问题,如部署、定位、汇节点放置、能效和聚类。不幸的是,这些问题对 WSN 本已有限的能量产生了负面影响;因此,为了减轻这些问题对网络寿命和性能造成的危害,采用元启发式算法是不可避免的。与 WSN 相关的一些问题被模拟为单目标和多目标优化问题。单目标问题有一个最优解,而另一个问题则有多个理想解相互竞争,即所谓的非主导解。目前有几种基于元启发式算法的优化策略可用于解决与 WSN 部署、定位、汇节点放置、能效和聚类有关的各类优化问题。本综述报告和讨论了有关单目标和多目标元启发式算法及其评估标准、WSN 架构和定义以及元启发式算法在 WSN 部署、定位、汇节点放置、能效和聚类中的应用的文献研究。本综述还提出了这些术语的定义,并报告了与这些主题相关的一些当前难题。此外,本综述还概述了可应用于元搜索算法(单目标和多目标)和 WSN 难题的开放性问题、挑战路径和未来趋势,以及提高 WSN 效率所需的重大努力。
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