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Fast Machine Fault Diagnosis Using Marginalized Denoising Autoencoders Based on Acoustic Signal

机译:基于声学信号的边缘化去噪自动化器快速机器故障诊断

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Recently, an increasing popularity of data-driven deep learning research in the field of machine fault diagnosis has been observed. Stacked Denoising Autoencoder (SDA), as a classic type of deep learning method, has been successfully used to learn effective representations for machine fault diagnosis. However, those previous studies always encounter with the inherent limitations of SDA: high computational cost, time-consuming training, and lack of scalability to high-dimensional data. Unfortunately, those limitations can restrict the applicability of those studies in real-world applications, which require timely model upgrade and fast real-time diagnosis. Besides, most previous studies concentrate on the vibration signal, and thus lack the attention towards other kinds of sensor data like acoustical signal. Therefore, to address the two problems above, inspired by the marginalized Stacked Denoising Autoencoder (mSDA), we adopt a variant of SDA for fast fault diagnosis on sound signal. In this way, the required stochastic gradient descent based on back propagation in traditional deep learning methods is replaced by a forward closed-form solution. Opposite to the time-consuming works which demand training thousands of parameters during optimization, this deep architecture only needs to determine a few hyper parameters in advance. To verify the effectiveness and efficiency of the proposal on sound signal, extensive empirical evaluation on a publicly available sound signal dataset of gear fault is carried on. Thorough comparisons with some state-of-the-art faulty diagnosis approaches, confirm the superiority of the proposal in high diagnostic accuracy and lower computational cost.
机译:最近,已经观察到在机器故障诊断领域的数据驱动深度学习研究的日益普及。作为一种经典的深度学习方法的堆叠去噪(SDA)已成功用于学习机器故障诊断的有效陈述。然而,以前的研究总是遇到SDA的固有限制:高计算成本,耗时训练,以及对高维数据的可扩展性缺乏可扩展性。不幸的是,这些限制可以限制这些研究在现实世界应用中的适用性,需要及时升级和快速实时诊断。此外,最先前的研究专注于振动信号,从而缺乏对声学信号等其他类型的传感器数据的关注。因此,为了解决上述两个问题,灵感来自边缘化的堆积的脱色自动化器(MSDA),我们采用SDA的变体进行声音信号的快速故障诊断。以这种方式,基于在传统的深度学习方法中基于反向传播的所需随机梯度下降由前向闭合液溶液代替。与耗时的作品相反,需要在优化期间培训数千个参数,这种深度架构只需要提前确定几个超参数。为了验证对声音信号的提案的有效性和效率,对齿轮故障的公开声音信号数据集进行了广泛的实证评估。对某些最先进的故障诊断方法进行彻底的比较,以高诊断准确性和降低的计算成本确认提案的优势。

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