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Improved CNN for the diagnosis of engine defects of 2-wheeler vehicle using wavelet synchro-squeezed transform (WSST)

机译:使用小波同步挤压变换(WSST)改进了2轮车辆发动机缺陷的CNN

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摘要

In this work, deep learning based diagnostic procedure is developed for the identification of engine defects of 2-wheeler vehicle. The process starts with acquisition of vibration data. Second, time domain signals are converted into angular domain. Third, random distribution of angular domain signals is done to have training and test data. Further, processing of training and test data is carried out using wavelet synchro-squeezed transform (WSST) to form time-frequency images. Then, cost function of convolution neural network (CNN) is modified by introducing a new entropy-based regularization function in the existing cost function which can meaningfully reduce the activation in the hidden layer of CNN so as to make the learning really deep. Thereafter, training of improved CNN is carried out using WSST images of training samples. In the next step, WSST images of test data are applied to tuned CNN for the identification of defects. A comparison of proposed method has been carried by existing deep learning solutions and the method proposed in the state-of-artwork. The comparison shows that the proposed method is at least 3.8 % more superior in terms of accuracy than the existing defect diagnosis methods while diagnosing defects of internal combustion (IC) engine of 2-wheeler vehicle. (C) 2020 Elsevier B.V. All rights reserved.
机译:在这项工作中,开发了基于深度学习的诊断程序,用于识别2轮车车辆的发动机缺陷。该过程从获取振动数据开始。其次,将时域信号转换为角域。第三,完成角度域信号的随机分布,以具有培训和测试数据。此外,使用小波同步挤压的变换(WST)来形成训练和测试数据的处理以形成时频图像。然后,通过在现有成本函数中引入新的基于熵的正则化功能来修改卷积神经网络(CNN)的成本函数,这可以有意义地减少CNN隐藏层中的激活,以便使学习非常深。此后,使用训练样本的WSST图像进行改进的CNN的训练。在下一步中,将测试数据的WSST图像应用于调谐CNN以识别缺陷。所提出的方法的比较是由现有的深度学习解决方案和艺术品中提出的方法进行的。比较表明,在准确性方面,所提出的方法比现有的缺陷诊断方法在诊断2轮毂车辆的内燃(IC)发动机的缺陷的情况下,至少3.8%。 (c)2020 Elsevier B.v.保留所有权利。

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