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Hybrid Continuous Density Hmm-Based Ensemble Neural Networks for Sensor Fault Detection and Classification in Wireless Sensor Network

机译:基于混合连续密度基于Hmm的集成神经网络用于无线传感器网络中的传感器故障检测和分类

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摘要

Sensor devices in wireless sensor networks are vulnerable to faults during their operation in unmonitored and hazardous environments. Though various methods have been proposed by researchers to detect sensor faults, only very few research studies have reported on capturing the dynamics of the inherent states in sensor data during fault occurrence. The continuous density hidden Markov model (CDHMM) is proposed in this research to determine the dynamics of the state transitions due to fault occurrence, while neural networks are utilized to classify the faults based on the state transition probability density generated by the CDHMM. Therefore, this paper focuses on the fault detection and classification using the hybridization of CDHMM and various neural networks (NNs), namely the learning vector quantization, probabilistic neural network, adaptive probabilistic neural network, and radial basis function. The hybrid models of each NN are used for the classification of sensor faults, namely bias, drift, random, and spike. The proposed methods are evaluated using four performance metrics which includes detection accuracy, false positive rate, F1-score, and the Matthews correlation coefficient. The simulation results show that the learning vector quantization NN classifier outperforms the detection accuracy rate when compared to the other classifiers. In addition, an ensemble NN framework based on the hybrid CDHMM classifier is built with majority voting scheme for decision making and classification. The results of the hybrid CDHMM ensemble classifiers clearly indicates the efficacy of the proposed scheme in capturing the dynamics of change of statesm which is the vital aspect in determining rapidly-evolving instant faults that occur in wireless sensor networks.
机译:无线传感器网络中的传感器设备在不受监控和危险的环境中运行时容易受到故障的影响。尽管研究人员已经提出了各种方法来检测传感器故障,但是只有很少的研究报告报道了在故障发生期间捕获传感器数据中固有状态的动态。该研究提出了一种连续密度隐马尔可夫模型(CDHMM)来确定由于故障发生而引起的状态转变的动力学,同时利用神经网络根据由CDHMM产生的状态转变概率密度来对故障进行分类。因此,本文着重研究利用CDHMM和各种神经网络(NN)的混合进行故障检测和分类,即学习矢量量化,概率神经网络,自适应概率神经网络和径向基函数。每个NN的混合模型用于传感器故障的分类,即偏差,漂移,随机和尖峰。所提出的方法是使用四个性能指标进行评估的,其中包括检测精度,假阳性率,F1得分和Matthews相关系数。仿真结果表明,与其他分类器相比,学习矢量量化NN分类器的检测准确率更高。另外,构建了基于混合CDHMM分类器的集成NN框架,该框架具有多数表决方案,用于决策和分类。混合CDHMM集成分类器的结果清楚地表明了所提出方案在捕获状态变化动态方面的功效,这是确定无线传感器网络中发生的快速发展的即时故障的重要方面。

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