基于改进树结构parzen估计的轻量网络旋转机械故障智能诊断

IF 2.5 Q2 ENGINEERING, INDUSTRIAL
Jingkang Liang, Yixiao Liao, Zhuyun Chen, Huibin Lin, Gang Jin, Konstantinos Gryllias, Weihua Li
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引用次数: 3

摘要

基于深度学习的方法在旋转机械故障诊断领域得到了广泛的应用。在保证精度的前提下提高模型的计算速度,从而实现实时故障诊断,具有重要的现实意义。然而,设计一个高效、轻量级的故障诊断网络需要专家知识来确定网络结构和调整网络的超参数,这既耗时又费力。为了方便地设计同时考虑时间和精度的故障诊断网络,提出了一种基于改进树结构parzen估计器的轻型旋转机械故障智能诊断网络。首先,提出了基于全局平均池化和群卷积的轻量级框架,并利用基于贝叶斯优化的树结构parzen估计器超参数优化方法自动搜索故障诊断任务的最优超参数。HPO算法的目标是对精度和计算时间进行加权,从而找到平衡时间和精度的模型。对比实验结果表明,nn - mt在可训练参数少、计算时间短的情况下具有较高的故障诊断精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Intelligent fault diagnosis of rotating machinery using lightweight network with modified tree-structured parzen estimators

Intelligent fault diagnosis of rotating machinery using lightweight network with modified tree-structured parzen estimators

Deep learning-based methods have been widely used in the field of rotating machinery fault diagnosis. It is of practical significance to improve the calculation speed of the model on the premise of ensuring accuracy, so as to realise real-time fault diagnosis. However, designing an efficient and lightweight fault diagnosis network requires expert knowledge to determine the network structure and adjust the hyperparameters of the network, which is time-consuming and laborious. In order to design fault diagnosis networks considering both time and accuracy effortlessly, a novel lightweight network with modified tree-structured parzen estimators (LN-MT) is proposed for intelligent fault diagnosis of rotating machinery. Firstly, a lightweight framework based on global average pooling and group convolution is proposed, and a hyperparameter optimisation (HPO) method based on Bayesian optimisation called tree-structured parzen estimator is utilised to automatically search the optimal hyperparameters for the fault diagnosis task. The objective of the HPO algorithm is the weighting of accuracy and calculating time, so as to find models that balance both time and accuracy. The results of comparison experiments indicate that LN-MT can achieve superior fault diagnosis accuracies with few trainable parameters and less calculating time.

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来源期刊
IET Collaborative Intelligent Manufacturing
IET Collaborative Intelligent Manufacturing Engineering-Industrial and Manufacturing Engineering
CiteScore
9.10
自引率
2.40%
发文量
25
审稿时长
20 weeks
期刊介绍: IET Collaborative Intelligent Manufacturing is a Gold Open Access journal that focuses on the development of efficient and adaptive production and distribution systems. It aims to meet the ever-changing market demands by publishing original research on methodologies and techniques for the application of intelligence, data science, and emerging information and communication technologies in various aspects of manufacturing, such as design, modeling, simulation, planning, and optimization of products, processes, production, and assembly. The journal is indexed in COMPENDEX (Elsevier), Directory of Open Access Journals (DOAJ), Emerging Sources Citation Index (Clarivate Analytics), INSPEC (IET), SCOPUS (Elsevier) and Web of Science (Clarivate Analytics).
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