Investigation of Extreme Learning Machine-Based Fault Diagnosis to Identify Faulty Components in Analog Circuits

被引:0
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作者
Suman Biswas
Gautam Kumar Mahanti
Nilanjan Chattaraj
机构
[1] National Institute of Technology,Department of Electronics and Communication Engineering
关键词
Extreme learning machine (ELM); Fault diagnosis; Analog circuit; Time-domain response;
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学科分类号
摘要
Due to the growing complexities in electronic circuits, it is important to find the faults in a circuit and also diagnose since it is a crucial part during integrated circuit design process. In the whole process, it takes a lot of manual effort to extract and select features. Here we have investigated the scope of the extreme learning machine (ELM)-based fault diagnosis technique in the identification of the faulty component in the analog signal conditioning circuits. The fault diagnosis has been done without feature selection and extraction ELM method. As a case study, we have considered a Sallen–Key bandpass filter and a circuit with four-opamp biquad high-pass filter to investigate the proposed methodology. We have used a single pulse as input and collected the raw data for training and testing purpose. The result from the computation experiment gave 100% and 99.82% average accuracy.
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页码:711 / 728
页数:17
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