Machine learning for coverage optimization in wireless sensor networks: a comprehensive review
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Abstract
In the context of wireless sensor networks (WSNs), the utilization of artificial intelligence
(AI)-based solutions and systems is on the ascent. These technologies offer significant potential for optimizing services in today’s interconnected world. AI and nature-inspired algorithms
have emerged as promising approaches to tackle various challenges in WSNs, including
enhancing network lifespan, data aggregation, connectivity, and achieving optimal coverage of the targeted area. Coverage optimization poses a significant problem in WSNs, and
numerous algorithms have been proposed to address this issue. However, as the number of
sensor nodes within the sensor range increases, these algorithms often encounter difficulties
in escaping local optima. Hence, exploring alternative global metaheuristic and bio-inspired
algorithms that can be adapted and combined to overcome local optima and achieve global
optimization in resolving wireless sensor network coverage problems is crucial. This paper
provides a comprehensive review of the current state-of-the-art literature on wireless sensor
networks, coverage optimization, and the application of machine learning and nature-inspired
algorithms to address coverage problems in WSNs. Additionally, we present unresolved
research questions and propose new avenues for future investigations. By conducting bibliometric analysis, we have identified that binary and probabilistic sensing model are widely
employed, target and k-barrier coverage are the most extensively studied coverage scenarios
in WSNs, and genetic algorithm and particle swarm optimization are the most commonly
used nature-inspired algorithms for coverage problem analysis. This review aims to assist
researchers in exploring coverage problems by harnessing the potential of nature-inspired
and machine-learning algorithms. It provides valuable insights into the existing literature,
identifies research gaps, and offers guidance for future studies in this field.
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Egwuche, O.S., Singh, A., Ezugwu, A.E. et al. Machine learning for coverage optimization in wireless sensor networks: a comprehensive review. Ann Oper Res (2023). https://doi.org/10.1007/s10479-023-05657-z
