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A sustainable data gathering technique based on nature inspired optimization in WSNs

机译:WSN中基于自然启发式优化的可持续数据收集技术

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Proficient clustering method helps in decreasing the battery consumption of the resources in wireless sensor networks (WSNs). Election of an appropriate sensor for Cluster Head (CH) can be an effective way to increase the efficiency of the clustering process. In the last two decades, the number of clustering methods have been proposed. However, most of the methods are suffering from uneven variation in the number of CH, irregular energy consumption by nodes, transmission of the redundant data, and an unequal load on the CHs. This paper resolves these problems by proposing a sustainable data gathering technique based on nature inspired optimization for both homogeneous and heterogeneous networks. It considers a fitness function by integrating four fitness parameters namely: energy efficiency, cluster node density, average distance of sensors to the CH, and distance from CH to Base Station (BS). This method considers a chain-based data gathering and transmission process for intra and inter-cluster communication. A data aggregation process is also introduced for removing the redundant data which helps in decreasing the transmission cost and overhead of networks. The performance of the proposed method is evaluated against the state-of-the-art protocols by considering the different performance matrices like network lifetime, stability period, total energy consumption, throughput, number of CHs etc. The experimental results show the network lifetime and throughput of GSA-DEEC, GSA-DEEC-CA, and GSA-DEEC-CA-DA are increased by 08.37%, 39.36%, & 44.72% and 18.77%, 49.53%, & 77.29% in respect of the DEEC for 100 J network energy in case of tier-3 heterogeneity, respectively. (C) 2019 Elsevier Inc. All rights reserved.
机译:熟练的群集方法有助于减少无线传感器网络(WSN)中资源的电池消耗。选择适合簇头(CH)的传感器可能是提高簇化过程效率的有效方法。在最近的二十年中,提出了许多聚类方法。但是,大多数方法都遭受CH数量的不均匀变化,节点的能耗不规则,冗余数据的传输以及CH上不平等的负载。本文通过针对同类和异构网络提出一种基于自然启发式优化的可持续数据收集技术,从而解决了这些问题。它通过集成四个适应性参数来考虑适应性函数,这些参数包括:能源效率,群集节点密度,传感器到CH的平均距离以及CH到基站(BS)的距离。此方法考虑了用于集群内和集群间通信的基于链的数据收集和传输过程。还引入了数据聚合过程以去除冗余数据,这有助于降低传输成本和网络开销。通过考虑不同的性能矩阵(如网络寿命,稳定期,总能耗,吞吐量,CH数量等),针对最新协议评估了该方法的性能。实验结果表明,网络寿命和100 J的DEEC的GSA-DEEC,GSA-DEEC-CA和GSA-DEEC-CA-DA的吞吐量分别增加了08.37%,39.36%和44.72%和18.77%,49.53%和77.29%分别在第3层异构性情况下的网络能量。 (C)2019 Elsevier Inc.保留所有权利。

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