Adaptive Wind Driven Optimization based Energy Aware Clustering Scheme for Wireless Sensor Networks

K. Muthulakshmi, Sundar Prakash Balaji, S. Stephe, J. Vijayalakshmi, PhD SUNDAR PRAKASH BALAJI
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Abstract

: Wireless Sensor Networks (WSNs) are utilised in a variety of applications due to their capacity to capture and transmit environmental data. Clustering has emerged as an efficient method for improving energy efficiency in WSNs. To resolve these issues, we propose an Adaptive Wind Driven Optimisation based Energy Aware Clustering Scheme (AWDO-EACS) for WSNs. The AWDO-EACS model presents an extended form of the Wind Driven Optimisation (WDO) algorithm, designated AWDO, with optimised inherent term values. The proposed model takes into account multiple objectives, such as energy consumption, distance, and end-to-end latency, in order to achieve superior energy efficiency and an extended network lifetime. To validate the efficacy of the AWDO-EACS model, extensive experiments with varying node counts were carried out. In terms of network stability, energy efficiency, end-to-end latency, packet delivery ratio, throughput, packet loss rate, and network lifetime, the results demonstrate that the AWDO-EACS outperforms contemporary clustering strategies. Specifically, the AWDO-EACS obtained a significant increase in energy efficiency, with a 27.35 percent improvement over existing clustering techniques for 20 nodes and an 83.41 percent improvement for 100 nodes. In addition, the end-to-end latency was considerably reduced, with a 96-round lifetime for 20 nodes and a 74-round lifetime for 100 nodes, compared to 37 and 20 rounds, respectively, for GA-LEACH and MW-LEACH. In addition, the AWDO-EACS demonstrated superior packet delivery performance, with a 99.32% delivery ratio for 100 nodes, eclipsing the 76.90% and 82.65% of GA-LEACH and MW-LEACH, respectively. Moreover, the AWDO-EACS model demonstrated a remarkably low packet loss rate of 0.68 percent for 100 nodes, compared to 23.10 percent for GA-LEACH and 17.35 percent for MW-LEACH. The effectiveness of the proposed AWDO-EACS model in enhancing the overall performance of WSNs is demonstrated.
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基于自适应风力驱动优化的无线传感器网络能量感知聚类方案
:无线传感器网络(WSN)具有捕捉和传输环境数据的能力,因此被广泛应用于各种领域。聚类已成为提高 WSN 能源效率的有效方法。为了解决这些问题,我们为 WSNs 提出了一种基于自适应风驱动优化的能量感知聚类方案(AWDO-EACS)。AWDO-EACS 模型是风驱动优化(WDO)算法的扩展形式,被命名为 AWDO,具有优化的固有项值。所提出的模型考虑了多个目标,如能耗、距离和端到端延迟,以实现卓越的能效并延长网络寿命。为了验证 AWDO-EACS 模型的有效性,我们进行了大量不同节点数的实验。在网络稳定性、能源效率、端到端延迟、数据包传送率、吞吐量、数据包丢失率和网络寿命方面,实验结果表明 AWDO-EACS 优于当代的聚类策略。具体而言,AWDO-EACS 的能效显著提高,20 个节点的能效比现有聚类技术提高了 27.35%,100 个节点的能效比现有聚类技术提高了 83.41%。此外,端到端延迟也大大减少,20 个节点的生命周期为 96 轮,100 个节点的生命周期为 74 轮,而 GA-LEACH 和 MW-LEACH 分别为 37 轮和 20 轮。此外,AWDO-EACS 还表现出卓越的数据包传送性能,100 个节点的传送率高达 99.32%,超过了 GA-LEACH 和 MW-LEACH 分别为 76.90% 和 82.65% 的传送率。此外,AWDO-EACS 模型在 100 个节点的数据包丢失率低至 0.68%,而 GA-LEACH 为 23.10%,MW-LEACH 为 17.35%。这证明了所提出的 AWDO-EACS 模型在提高 WSN 整体性能方面的有效性。
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