Optimized Multi-Objective Clustering using Fuzzy Based Genetic Algorithm for Lifetime Maximization of WSN

S. Pandey, Buddha Singh
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Abstract

Wireless Sensor Networks (WSNs) have gained significant attention due to their diverse applications, including border area security, earthquake detection, and fire detection. WSNs utilize compact sensors to detect environmental events and transmit data to a Base Station (BS) for analysis. Energy consumption during data transmission is a critical issue, which has led to the exploration of additional energy-saving techniques, such as clustering. The primary objective is to propose an algorithm that selects optimal Cluster Heads (CHs) through a fuzzy-based genetic approach. This algorithm aims to address energy consumption concerns, enhance load balancing, and improve routing efficiency within WSNs. The proposed algorithm employs a fuzzy-based genetic approach to optimize the selection of CHs for data transmission. Four key parameters are considered: the average remaining energy of CHs, the average distance between CHs and the BS, the average distance between member nodes and CHs, and the standard deviation of the distance between member nodes and CHs. The algorithm's effectiveness is demonstrated through simulation results. When compared to popular models like LEACH, MOEES, and FEEC, it demonstrates an 8-20% improvement in the lifetime of WSNs. The proposed approach achieves enhanced efficiency, lifetime extension, and improved performance in CH selection, load balancing, and routing. In conclusion, this study introduces a novel algorithm that utilizes fuzzy-based genetic techniques to optimize CH selection in WSNs. By considering four key parameters and addressing energy consumption challenges, the proposed algorithm offers significant improvements in efficiency, lifespan, and overall network performance, as validated through simulation results.
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使用基于模糊遗传算法的优化多目标聚类,实现 WSN 的寿命最大化
无线传感器网络(WSN)因其多样化的应用而备受关注,包括边境地区安全、地震探测和火灾探测。WSN 利用小型传感器检测环境事件,并将数据传输到基站(BS)进行分析。数据传输过程中的能耗是一个关键问题,这促使人们探索更多的节能技术,如聚类技术。该算法旨在解决能耗问题,加强负载平衡,并提高 WSN 的路由效率。拟议算法采用基于模糊的遗传方法来优化数据传输的簇头选择。考虑了四个关键参数:CHs 的平均剩余能量、CHs 与 BS 之间的平均距离、成员节点与 CHs 之间的平均距离以及成员节点与 CHs 之间距离的标准偏差。通过仿真结果证明了该算法的有效性。与 LEACH、MOEES 和 FEEC 等流行模型相比,该算法将 WSN 的寿命提高了 8-20%。总之,本研究介绍了一种利用基于模糊的遗传技术优化 WSN 中 CH 选择的新型算法。通过考虑四个关键参数和解决能耗挑战,所提出的算法在效率、寿命和整体网络性能方面都有显著改善,仿真结果也验证了这一点。
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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