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Data-Driven Feature Extraction for Analog Circuit Fault Diagnosis Using 1-D Convolutional Neural Network

机译:使用1-D卷积神经网络的模拟电路故障诊断数据驱动特征提取

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摘要

The present study applies the one-dimensional convolutional neural network (1D-CNN) to propose an intelligent approach of the feature extraction for the analog circuit diagnosis. The raw signals based on various soft faults from the output terminal of the circuit under test (CUT) are collected with appropriate data acquisition system to implement a data-driven fault diagnosis. The data-driven diagnosis process is typically encapsulated in two distinct blocks, including the feature extraction and the classification. In this study, the designed 1D-CNN model efficiently combines the aforementioned two phases into a single diagnosis body with fast learning rate and accurate classification. The main advantages of the 1D-CNN are: 1) it can be directly established to the raw signal with proper training so that it is more applicable in real applications; 2) its compact architecture and configuration has reasonable applicability in complex analog circuits; 3) convolutional kernels guarantee that the hierarchical features can be extracted from raw data with better anti-interference performance. Moreover, since the method can extract high-level features of raw signals, it resolves the necessity to employ other per-processing methods for the hand-crafted feature transformation. The performance of the proposed 1D-CNN model is evaluated through three benchmark circuits on the SIMULINK platform. Obtained results are compared with other intelligent fault diagnosis methods. The experimental results show that the 1D-CNN can be utilized effectively as the feature exactor and faults classifier for analog circuits.
机译:本研究适用于一维卷积神经网络(1D-CNN),提出一种模拟电路诊断的特征提取的智能方法。通过适当的数据采集系统收集基于来自电路的输出端子的各种软故障的原始信号,以实现数据驱动的故障诊断。数据驱动的诊断过程通常在两个不同的块中封装,包括特征提取和分类。在该研究中,设计的1D-CNN模型有效地将上述两相结合到具有快速学习率和准确分类的单个诊断体中。 1D-CNN的主要优点是:1)可以直接建立到具有适当训练的原始信号,以便在真实应用中更适用; 2)其紧凑的架构和配置在复杂的模拟电路中具有合理的适用性; 3)卷积内核保证可以通过具有更好的抗干扰性能的原始数据中提取分层特征。此外,由于该方法可以提取原始信号的高级别特征,因此它解决了用于手工制作的特征转换的其他每处理方法的必要性。所提出的1D-CNN模型的性能通过Simulink平台上的三个基准电路进行评估。将得到的结果与其他智能故障诊断方法进行比较。实验结果表明,1D-CNN可以用作模拟电路的特征精象和故障分类器有效地使用。

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