Adaptive fuzzy-based node communication performance prediction with hybrid heuristic Cluster Head selection framework in WSN using enhanced K-means clustering mechanism

Asha Ayyappan, Rajesh Arunachalam, Manivel Lenin Kumar
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Abstract

The “Wireless Sensor Networks (WSN)” has gained a lot of interest among research scholars and has been utilized in various advanced applications in distinct fields. Along with the load balancing techniques, the clustering scheme also prolongs the network’s overall lifespan. The “Cluster Head (CH)” performs the task of load balancing between the nodes in the “Clustering algorithm”; hence, the CH selection procedure is regarded as a critical task in the case of the clustering algorithms. Depending on the CH selection and cluster nodes, the rate of energy consumed by these CHs will be reduced in the wireless sensor. CH selection is a promising solution for the transmission of information within various parameters. Thus, CH selection leads to an increase in the duration of the system and a reduction in the energy utilization by the nodes. Therefore, an “optimization-based CH selection” mechanism in WSN is developed in this paper along with an enhanced node communication performance prediction strategy to provide better communication between the “Sensor Nodes (SNs)” with limited energy expenditure. The node’s communication performance is predicted using the Adaptive Fuzzy, in which metrics such as bit rate, latency, throughput, loss, and packet delivery ratio are specified as the input to the network. Here, the parameters within the fuzzy network are tuned with the help of the recommended “Hybrid Position of Heap and African Buffalo Optimization (HP-HABO)”. Then, to perform efficient node clustering, the “Optimal K-Means Clustering (OKMC)” approach is executed and the CHs are formed using the developed HP-HABO. The objective function depends on the constraints like energy, distance, and predicted communication performance attained by forming these CHs. The performance of the developed CH selection mechanism is verified by analyzing the experimental outcome of the proposed technique with different optimization algorithms and previous works concerning the objective constraints.
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利用增强型 K-means 聚类机制,在 WSN 中使用混合启发式簇头选择框架进行基于模糊的自适应节点通信性能预测
无线传感器网络(WSN)"已引起研究学者们的极大兴趣,并被用于不同领域的各种高级应用中。除了负载平衡技术,聚类方案还能延长网络的整体寿命。在 "聚类算法 "中,"簇首(CH)"在节点之间执行负载平衡任务;因此,在聚类算法中,CH 选择程序被视为一项关键任务。根据 CH 选择和集群节点,这些 CH 消耗的能量将在无线传感器中减少。CH 选择是在各种参数范围内传输信息的一种有前途的解决方案。因此,CH 选择会延长系统的持续时间,降低节点的能量利用率。因此,本文在 WSN 中开发了一种 "基于优化的 CH 选择 "机制和一种增强型节点通信性能预测策略,以便在有限的能量消耗下为 "传感器节点(SN)"之间提供更好的通信。节点的通信性能采用自适应模糊预测,其中比特率、延迟、吞吐量、损耗和数据包交付率等指标被指定为网络的输入。在这里,模糊网络中的参数是在推荐的 "堆和非洲水牛混合位置优化(HP-HABO)"的帮助下调整的。然后,为了执行高效的节点聚类,执行了 "最优 K-Means 聚类(OKMC)"方法,并使用开发的 HP-HABO 形成 CH。目标函数取决于能量、距离等约束条件,以及通过组建这些 CH 达到的预测通信性能。通过分析所提技术与不同优化算法的实验结果以及以前有关目标约束条件的著作,验证了所开发的 CH 选择机制的性能。
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