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On improving training time of neural networks in mixed signal circuit fault diagnosis applications

机译:关于提高神经网络训练时间在混合信号电路故障诊断中的应用

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摘要

Testing issues are becoming more and more important with the quick development of both digital and analog circuit industry. Analog-to-digital converters (ADCs) are becoming more and more widespread owing to their fundamental capacity of interfacing analog physical world to digital processing systems. In this paper, we study the use of neural networks in fault diagnosis of ADCs and compare the results with other ADC testing approaches such as histogram, FFT and sinewave curve fit test techniques. In this paper, we introduced the idea of separation of neural network's output matrix to improve the training phase time, called 'index-separation' approach. Finally, we concluded that training time in this method is about 0.25 times as much as that in the normal training method. We also concluded that this approach does not affect network's decision strength. Besides, we concluded that if the complexity of the circuit increases, this method will still be effective. Therefore, this method is a robust way for fault diagnosis of mixed signal circuits.
机译:随着数字和模拟电路行业的快速发展,测试问题变得越来越重要。模数转换器(ADC)由于其将模拟物理世界与数字处理系统接口的基本能力而变得越来越广泛。在本文中,我们研究了神经网络在ADC故障诊断中的应用,并将结果与​​其他ADC测试方法进行比较,例如直方图,FFT和正弦波曲线拟合测试技术。在本文中,我们介绍了分离神经网络的输出矩阵以改善训练阶段时间的想法,称为“索引分离”方法。最后,我们得出结论,这种方法的训练时间约为普通训练方法的0.25倍。我们还得出结论,这种方法不会影响网络的决策强度。此外,我们得出的结论是,如果电路的复杂性增加,则该方法仍然有效。因此,该方法是混合信号电路故障诊断的可靠方法。

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