论文标题

关于机器故障诊断中卷积神经网络的全面综述

A comprehensive review on convolutional neural network in machine fault diagnosis

论文作者

Jiao, Jinyang, Zhao, Ming, Lin, Jing, Liang, Kaixuan

论文摘要

随着制造业的快速发展,机器故障诊断已经变得越来越重要,以确保安全设备的运行和生产。因此,在过去几年中探索和开发了多种方法,智能算法的发展特别迅速。作为智能诊断模型的典型代表,卷积神经网络已在近五年中进行了广泛的研究和应用,并且已经在学术期刊和会议记录中发表了大量文献。但是,没有进行系统的审查来涵盖这些研究并为进一步的研究带来前景。为了填补这一空白,这项工作试图全面审查和总结基于卷积网络的故障诊断(CNFD)方法的开发。通常,典型的CNFD框架由以下步骤组成,即数据收集,模型构建以及功能学习和决策制定,因此通过遵循此流来组织本文。首先,描述了数据收集过程,其中引入了几个流行的数据集。然后,详细阐述了从基本卷积神经网络到其变体的基本理论。之后,根据三个主流方向(即分类,预测和转移诊断)审查了CNFD的应用。最后,提出了结论和前景,以指出当前发展的特征,面临挑战和未来趋势。最后但并非最不重要的一点是,这项工作将提供便利并激发该领域研究人员的进一步探索。

With the rapid development of manufacturing industry, machine fault diagnosis has become increasingly significant to ensure safe equipment operation and production. Consequently, multifarious approaches have been explored and developed in the past years, of which intelligent algorithms develop particularly rapidly. Convolutional neural network, as a typical representative of intelligent diagnostic models, has been extensively studied and applied in recent five years, and a large amount of literature has been published in academic journals and conference proceedings. However, there has not been a systematic review to cover these studies and make a prospect for the further research. To fill in this gap, this work attempts to review and summarize the development of the Convolutional Network based Fault Diagnosis (CNFD) approaches comprehensively. Generally, a typical CNFD framework is composed of the following steps, namely, data collection, model construction, and feature learning and decision making, thus this paper is organized by following this stream. Firstly, data collection process is described, in which several popular datasets are introduced. Then, the fundamental theory from the basic convolutional neural network to its variants is elaborated. After that, the applications of CNFD are reviewed in terms of three mainstream directions, i.e. classification, prediction and transfer diagnosis. Finally, conclusions and prospects are presented to point out the characteristics of current development, facing challenges and future trends. Last but not least, it is expected that this work would provide convenience and inspire further exploration for researchers in this field.

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