Adaptive Clustering Strategy Based on Capacity Weight

Xingchun Liu, Zhipeng Feng, Jingjing Yu, Ying Tao, Shubo Ren
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引用次数: 3

Abstract

With the rapid development of Internet of Things (IoT) technology, the number of nodes in wireless sensor networks (WSNs) is explosively increasing, and the scale of network is increased gradually. Traditional single-layer non-clustering network is no longer suitable for current WSNs, which results in high maintenance cost and fast deterioration of network performance. By analyzing the impact of existing static and dynamic clustering schemes on network performance, it is concluded that additional factors need to be considered to improve the overall performance of the network, such as residual energy of nodes, number of neighbor nodes and load balancing. Therefore, an adaptive multi-layer clustering networking strategy based on capability weights is proposed. Based on the real-time changes of each cluster density, node load and residual energy, the node capacity weights are updated dynamically according to the actual network performance, then the cluster heads are renewed adaptively. By comparing the performance metrics in the experiments, proposed strategy can effectively reduce the load of key nodes such as cluster head, and improves the network performance metrics such as average transmission delay, average transmission hops and load balancing.
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基于容量权重的自适应聚类策略
随着物联网(IoT)技术的快速发展,无线传感器网络(WSNs)中的节点数量呈爆炸式增长,网络规模逐渐增大。传统的单层非聚类网络已不适合当前的无线传感器网络,其维护成本高,网络性能下降快。通过分析现有的静态和动态聚类方案对网络性能的影响,得出提高网络整体性能需要考虑节点剩余能量、邻居节点数量、负载均衡等因素的结论。为此,提出了一种基于能力权重的自适应多层聚类组网策略。基于各簇密度、节点负载和剩余能量的实时变化,根据实际网络性能动态更新节点容量权重,自适应更新簇头。通过对实验性能指标的比较,所提策略能够有效降低簇头等关键节点的负载,提高平均传输时延、平均传输跳数和负载均衡等网络性能指标。
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