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Computational intelligence-based connectivity restoration in wireless sensor and actor networks

机译:无线传感器和演员网络中基于计算的基于智能的连接恢复

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Network failure is categorized into the two types of software and hardware (physical layer) failure. This paper focuses on the physical layer failure in the wireless sensor and actor networks (WSANs). Actors play an important role in data processing, decision-making, and performing appropriate reactions. Single or multiple nodes failure of actors due to the explosion, energy depletion, or harsh environments, can cause multiple disjoint partitions. This paper has proposed a new computational intelligence-based connectivity restoration (CICR) method. It uses a combination of advanced computational intelligence methods to solve restoration problem. The proposed algorithm applies the novel enhanced Lagrangian relaxation with a novel metaheuristic sequential improved grey wolf optimizer (SIGWO) search space algorithm in simultaneous selection of k sponsor and p pathway nodes. The reactive proposed method aims to reduce the travel distance or moving cost and communication cost. As a result, the restored network has minimum of topology change and energy consumption. In terms of total traveled distance, CICR has 37.19%, 71.47%, and 44.71% improvement in the single-node failure averagely in comparison with HCR, HCARE, and CMH, respectively. Also, it has an average of 61.54%, 40.1%, and 57.76% improvement in comparison with DCR, PRACAR, and RTN in multiple partitions resulted from multiple nodes failure, respectively. The reliability of CICR method has improved averagely by 35.85%, 38.46%, 22.03% over HCR, CMH, and HCARE in single-node failure. In multiple nodes failure, reliability of CICR has averagely 61.54% and 20% over DCR and PRACAR, respectively.
机译:网络故障分为两种类型的软件和硬件(物理层)故障。本文侧重于无线传感器和演员网络(WSAN)中的物理层故障。演员在数据处理,决策和执行适当的反应中发挥着重要作用。由于爆炸,能量耗尽或恶劣环境,actors的单个或多个节点故障可能导致多个不相交的分区。本文提出了一种新的基于计算智能的连接恢复(CICR)方法。它使用高级计算智能方法的组合来解决恢复问题。该算法在同时选择K赞助商和P路节点时,该算法应用了一种新颖的成群质顺序改进的灰狼优化器(Sigwo)搜索空间算法。反应性提出的方法旨在降低行程距离或移动成本和通信成本。因此,恢复的网络具有最小的拓扑变化和能耗。在总旅行距离方面,CICR分别具有37.19%,71.47%和44.71%,平均分别与HCR,HCARE和CMH相比平均值。此外,与多个节点故障的DCR,Pracar和RTN相比,平均分别与DCR,PRACAR和RTN相比平均为61.54%,40.1%和57.76%。 CICR方法的可靠性平均在单节点故障中提高了35.85%,38.46%,22.03%,22.03%,在单节点故障中的HCARE。在多个节点故障中,CICR的可靠性分别在DCR和Pracar中平均为61.54%和20%。

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