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Performance Analysis and Enhancement of Deep Convolutional Neural Network: Application to Gearbox Condition Monitoring

机译:深度卷积神经网络的性能分析与增强:齿轮箱状况监测的应用

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摘要

Convolutional neural network has been widely investigated for machinery condition monitoring, but its performance is highly affected by the learning of input signal representation and model structure. To address these issues, this paper presents a comprehensive deep convolutional neural network (DCNN) based condition monitoring framework to improve model performance. First, various signal representation techniques are investigated for better feature learning of the DCNN model by transforming the time series signal into different domains, such as the frequency domain, the time-frequency domain, and the reconstructed phase space. Next, the DCNN model is customized by taking into account the dimension of model, the depth of layers, and the convolutional kernel functions. The model parameters are then optimized by a mini-batch stochastic gradient descendent algorithm. Experimental studies on a gearbox test rig are utilized to evaluate the effectiveness of presented DCNN models, and the results show that the one-dimensional DCNN model with a frequency domain input outperforms the others in terms of fault classification accuracy and computational efficiency. Finally, the guidelines for choosing appropriate signal representation techniques and DCNN model structures are comprehensively discussed for machinery condition monitoring.
机译:卷积神经网络已被广泛调查用于机械状况监测,但其性能受到输入信号表示和模型结构的学习的影响。为解决这些问题,本文提出了一个全面的深度卷积神经网络(DCNN)条件监测框架,以提高模型性能。首先,通过将时间序列信号转换为不同的域,例如频域,时频域和重建的相空间来研究各种信号表示技术以更好地学习DCNN模型。接下来,通过考虑模型的维度,层次的尺寸和卷积内核功能来定制DCNN模型。然后通过迷你批量随机梯度后期降级算法进行了模型参数。用于齿轮箱试验台的实验研究用于评估所呈现的DCNN模型的有效性,结果表明,在故障分类精度和计算效率方面,具有频域输入的一维DCNN模型优于其他DCNN模型。最后,讨论了用于选择合适的信号表示技术和DCNN模型结构的指导。

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