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Bio-inspired low-complexity clustering in large-scale dense wireless sensor networks

机译:大规模密集无线传感器网络中受生物启发的低复杂度集群

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To enhance network scalability and increase network lifetime in large-scale wireless sensor networks (WSNs), clustering has been recognized as an effective solution for hierarchical routing, topology control and data aggregation. Inspired by the collective behavior of flocks and schools, we propose a Bio-inspired self-organizing Low-Complexity Clustering (B-LCC) algorithm for large-scale dense WSNs. The B-LCC algorithm does not require sensor locations, time synchronization nor any priori knowledge of the network. It is completely distributed and can achieve a well-distributed cluster heads. The processing time complexity of the B-LCC algorithm is O(1) per cluster, which outperforms most of the existing clustering algorithms as they have processing time complexity of O(n) per node in the worst case. Additionally, the B-LCC algorithm has a stable performance in topology control and the formed topology is robust to node failure.
机译:为了增强网络的可伸缩性并延长大规模无线传感器网络(WSN)的网络寿命,群集已被认为是分层路由,拓扑控制和数据聚合的有效解决方案。受羊群和学校集体行为的启发,我们提出了一种适用于大规模密集无线传感器网络的生物启发式自组织低复杂度聚类(B-LCC)算法。 B-LCC算法不需要传感器位置,时间同步或任何网络先验知识。它是完全分布式的,并且可以实现分布良好的簇头。 B-LCC算法的处理时间复杂度为每个群集O(1),这优于大多数现有的聚类算法,因为它们在最坏的情况下每个节点的处理时间复杂度为O(n)。另外,B-LCC算法在拓扑控制中具有稳定的性能,并且所形成的拓扑对于节点故障具有鲁棒性。

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