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Support Vector Neural Network and Principal Component Analysis for Fault Diagnosis of Analog Circuits

机译:支持向量神经网络和主成分分析在模拟电路故障诊断中的应用

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Fault diagnosis of the analog circuits is the trending research area as the analog circuits holds a lot of applications in military, automatic control, household appliances, communication, and so on. Even though the researchers presented various methods for fault diagnosis, still there is a lack of reliable techniques for analog fault detection and diagnosis. Keeping this mind, this paper presents the Support Vector Neural Network (SVNN) for identifying the faulty and the fault-free analog circuit. At first, the pre-processing is carried out using the Principle component analysis (PCA) that serves as the best way for solving the dimensional complexities. Then, the weights of SVNN are optimally tuned using the Genetic Algorithm (GA) that enables the optimal classification of the analog circuits. The GA-based SVNN is an optimization approach for classifying the analog circuits that enable the comprehensive diagnosis of the faults in the analog circuits. The experimentation is performed using the triangular wave generator and the simulation results highlight that SVNN classifier attained a classification percentage of 99.54 % and low False Alarm Rate of 0.68%.
机译:由于模拟电路在军事,自动控制,家用电器,通信等领域具有许多应用,因此,模拟电路的故障诊断是研究的趋势。尽管研究人员提出了各种故障诊断方法,但仍缺乏可靠的模拟故障检测和诊断技术。牢记这一点,本文提出了一种用于识别故障和无故障模拟电路的支持向量神经网络(SVNN)。首先,使用主成分分析(PCA)进行预处理,这是解决尺寸复杂性的最佳方法。然后,使用能够对模拟电路进行最佳分类的遗传算法(GA)对SVNN的权重进行优化调整。基于GA的SVNN是一种用于对模拟电路进行分类的优化方法,可以对模拟电路中的故障进行全面诊断。使用三角波发生器进行了实验,仿真结果表明,SVNN分类器的分类百分比为99.54%,误报率较低,为0.68%。

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