Hybrid Interval Type-2 Fuzzy AHP and COPRAS-G-based trusted neighbour node Discovery in Wireless Sensor Networks

Jyothi Kiranmayi E, R. N.V., Nayanathara K.S.
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Abstract

In Wireless Sensor Networks (WSNs), reliable and rapid neighbour node discovery is considered as the crucial operation which frequently needs to be executed over the entire lifecycle. Several neighbour node discovery mechanisms are proposed for reducing the latency or extending the sensor nodes’ lifetime. But majority of the existing neighbour node discovery mechanisms failed in addressing the critical issues of real WSNs related to energy consumptions, constraints of latency, uncertainty of node behaviors, and communication collisions. In this paper, Hybrid Interval Type-2 Fuzzy Analytical Hierarchical Process (AHP) and Complex Proportional Assessment using Grey Theory (COPRAS-G)-based trusted neighbour node discovery scheme (FAHPCG) is proposed for better data dissemination process. In specific, Interval Type 2 Fuzzy AHP is applied for determining the weight of the evaluation criteria considered for neighbour node discovery, and then Grey COPRAS method is adopted for prioritizing the sensor nodes of the routing path established between the source and destination. It adopted the merits of fuzzy theory for handling the uncertainty and vagueness involved in the change in the behavior of sensor nodes during the process of neighbour discovery. It is proposed with the capability of exploring maximized number of factors that aids in exploring the possible dimensions of sensor nodes packet forwarding potential during the process of neighbour node discovery. The simulation results of the proposed FAHPCG scheme confirmed an improved neighbour node discovery rate of 23.18% and prolonged the sensor nodes lifetime to the maximum of 7.12 times better than the baseline approaches used for investigation.
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基于混合区间2型模糊层次分析法和copras - g的无线传感器网络可信邻居节点发现
在无线传感器网络(WSNs)中,可靠、快速的邻居节点发现被认为是整个生命周期中频繁需要执行的关键操作。为了减少延迟或延长传感器节点的生存期,提出了几种邻居节点发现机制。但是,现有的大多数邻居节点发现机制都无法解决真实wsn的能耗、时延约束、节点行为不确定性和通信冲突等关键问题。本文提出了基于混合区间2型模糊分析层次过程(AHP)和基于灰色理论的复比例评估(COPRAS-G)的可信邻居节点发现方案(FAHPCG),以改善数据传播过程。其中,采用区间2型模糊层次分析法确定邻居节点发现所考虑的评价标准的权重,然后采用灰色COPRAS方法对在源和目的之间建立的路由路径的传感器节点进行优先级排序。它利用模糊理论的优点来处理邻居发现过程中传感器节点行为变化所涉及的不确定性和模糊性。它具有探索最大数量因素的能力,有助于在邻居节点发现过程中探索传感器节点数据包转发潜力的可能维度。仿真结果表明,所提出的FAHPCG方案的邻居节点发现率提高了23.18%,并将传感器节点寿命延长到比基线方法高7.12倍的最大值。
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