IQL-OCDA: An intelligent Q-learning-based for optimal clustering and data-aggregation for wireless sensor networks

IF 0.9 Q4 TELECOMMUNICATIONS
Arwa N. Aledaily
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引用次数: 0

Abstract

Wireless sensor networks (WSNs) can suffer from low battery life due to the energy consumption of the routing protocol. Small sensor nodes are often difficult to recharge after deployment. In a WSN, data aggregation is generally used to reduce or eliminate data redundancy between nodes in order to save energy. In the proposed algorithm, sensor nodes are deployed in appropriate clusters and cluster heads are elected using Q-learning techniques. Nodes are clustered based on the mean values computed during the clustering phase. Lastly, a performance evaluation and comparison of existing clustering algorithms are performed based on Intelligent Q-learning. The proposed IQL-OCDA model reduces end-to-end delay by 10.11%, increases throughput by 4.15%, and increases network lifetime by 5.1%.

由于路由协议的能量消耗,无线传感器网络(WSN)的电池寿命可能很短。小型传感器节点通常很难在部署后重新充电。在 WSN 中,数据聚合通常用于减少或消除节点间的数据冗余,以节省能量。在所提出的算法中,传感器节点被部署在适当的簇中,并使用 Q-learning 技术选出簇头。根据聚类阶段计算出的平均值对节点进行聚类。最后,基于智能 Q-learning 对现有的聚类算法进行了性能评估和比较。所提出的 IQL-OCDA 模型将端到端延迟降低了 10.11%,吞吐量提高了 4.15%,网络寿命延长了 5.1%。
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