随机卷积层:提高故障诊断性能的辅助方法

IF 5.9 2区 工程技术 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Intelligent Manufacturing Pub Date : 2024-08-20 DOI:10.1007/s10845-024-02458-4
Zhiqian Zhao, Runchao Zhao, Yinghou Jiao
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引用次数: 0

摘要

在实际工业中,通常很难获得大规模的标注数据。现有的基于卷积神经网络(CNN)的故障诊断方法往往由于标注数据的稀缺而难以实现对机器状况的准确诊断,阻碍了模型形成强归纳偏差的能力。我们提出了一种即插即用的辅助方法--随机卷积层(RCL),以提高故障诊断模型的泛化性能。该方法深入研究了不同任务和不同网络结构之间的基本共性,从而增强了样本的多样性,建立了更稳健的源域环境。RCL 保留了时域数据的维度特性,同时在卷积操作过程中随机改变核大小,从而在不损害全局信息的情况下生成新数据。在训练过程中,新生成的数据与原始数据混合,并输入故障诊断模型。RCL 作为一个模块被纳入不同故障诊断模型的输入中,其有效性在三个公共数据集和自建的测试平台上得到了验证。结果表明,本辅助方法提高了基线的领域泛化性能,并能提高相应故障诊断模型的准确性。我们的代码见 https://github.com/zhiqan/Random-convolution-layer。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Random convolution layer: an auxiliary method to improve fault diagnosis performance

In real industry, it is often difficult to obtain large-scale labeled data. Existing Convolutional Neural Network (CNN)-based fault diagnosis methods often struggle to achieve accurate diagnoses of machine conditions due to the scarcity of labeled data, hindering the ability of models to develop strong inductive biases. We propose a plug-and-play auxiliary method, random convolution layer (RCL), to improve the generalization performance of the fault diagnosis models. This method delves into the fundamental commonalities across diverse tasks and varying network structures, thereby enhancing the diversity of samples to establish a more robust source domain environment. The RCL preserves the dimensional nature of the data in the time domain while randomly altering the kernel sizes during convolution operations, thus generating new data without compromising global information. During the training process, the newly generated data is mixed with the original data and fed into the fault diagnosis model. RCL is incorporated as a module into the inputs of different fault diagnosis models, and its effectiveness is validated on three public datasets as well as a self-built testbed. The results show that the present auxiliary method improves the domain generalization performance of the baselines, and can improve the accuracy of the corresponding fault diagnosis models. Our code is available at https://github.com/zhiqan/Random-convolution-layer.

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来源期刊
Journal of Intelligent Manufacturing
Journal of Intelligent Manufacturing 工程技术-工程:制造
CiteScore
19.30
自引率
9.60%
发文量
171
审稿时长
5.2 months
期刊介绍: The Journal of Nonlinear Engineering aims to be a platform for sharing original research results in theoretical, experimental, practical, and applied nonlinear phenomena within engineering. It serves as a forum to exchange ideas and applications of nonlinear problems across various engineering disciplines. Articles are considered for publication if they explore nonlinearities in engineering systems, offering realistic mathematical modeling, utilizing nonlinearity for new designs, stabilizing systems, understanding system behavior through nonlinearity, optimizing systems based on nonlinear interactions, and developing algorithms to harness and leverage nonlinear elements.
期刊最新文献
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