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Fault diagnosis in wireless sensor network using clonal selection principle and probabilistic neural network approach

机译:基于克隆选择原理和概率神经网络的无线传感器网络故障诊断

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摘要

The fault diagnosis in wireless sensor networks is one of the most important topics in the recent years of research work. The problem of fault diagnosis in wireless sensor network can be resembled with artificial immune system in many different ways. In this paper, a detection algorithm has been proposed to identify faulty sensor nodes using clonal selection principle of artificial immune system, and then the faults are classified into permanent, intermittent, and transient fault using the probabilistic neural network approach. After the actual fault status is detected, the faulty nodes are isolated in the isolation phase. The performance metrics such as detection accuracy, false alarm rate, false-positive rate, fault classification accuracy, false classification rate, diagnosis latency, and energy consumption are used to evaluate the performance of the proposed algorithm. The simulation results show that the proposed algorithm gives superior results as compared with existing algorithms in terms of the performance metrics. The fault classification performance is measured by fault classification accuracy and false classification rate. It has also seen that the proposed algorithm provides less diagnosis latency and consumes less energy than that of the existing algorithms proposed by Mohapatra et al, Panda et al, and Elhadef et al for wireless sensor network.
机译:无线传感器网络中的故障诊断是近年来研究工作中最重要的主题之一。无线传感器网络中的故障诊断问题可以通过多种方式类似于人工免疫系统。本文提出了一种基于人工免疫系统克隆选择原理的故障传感器节点识别算法,然后运用概率神经网络方法将故障分为永久性,间歇性和瞬时性故障。检测到实际故障状态后,在隔离阶段将故障节点隔离。利用检测精度,误报率,误报率,故障分类精度,错误分类率,诊断潜伏期和能耗等性能指标来评价所提出算法的性能。仿真结果表明,与现有算法相比,该算法在性能指标上具有更好的效果。故障分类性能通过故障分类精度和错误分类率来衡量。还已经看到,与由Mohapatra等人,Panda等人和Elhadef等人针对无线传感器网络提出的现有算法相比,所提出的算法提供了更少的诊断等待时间并且消耗了更少的能量。

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