将离群点类型的先验知识整合到基于注意力机制的卷积神经网络中以进行故障诊断

IF 8.6 1区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Systems Man Cybernetics-Systems Pub Date : 2024-09-24 DOI:10.1109/TSMC.2024.3461668
Ting Huang;Qiang Zhang;Xiaonong Lu;Shuangyao Zhao;Shanlin Yang
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引用次数: 0

摘要

卷积神经网络(CNN)因其在特征提取方面的优势而被广泛应用于故障诊断。传统的卷积神经网络是一种封闭式技术,可解释性不强,当故障机制和模式极其复杂时,其有效性会受到很大影响。针对这一问题,本文提出了一种基于注意力机制的将离群值类型先验知识集成到 CNN 中的方法,用于故障诊断。首先,将通过滑动窗口处理从原始数据中获取的类图像数据的离群值正式定义为先验知识。然后,通过无参数注意机制将定义的异常值类型先验知识集成到 CNN 的任意层中。与现有的类似方法相比,该方案实现了对先验知识新颖而灵活的定义,并以较低的计算成本实现了先验知识与 CNN 的深度融合。该方案在田纳西州伊士曼工艺数据集和真实风力涡轮机叶片结冰数据集上进行了性能评估,结果表明该方案不仅能实现精确的结果,而且在实现高精度方面具有良好的模型可解释性。此外,还讨论了离群值类型先验知识的获取问题,结果证明了所提出的先验知识整合方法的有效性。
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Integrating Outlier-Type Prior Knowledge Into Convolutional Neural Networks Based on an Attention Mechanism for Fault Diagnosis
Convolutional neural networks (CNNs) have been widely used in fault diagnosis due to their superiority in feature extraction. Traditional CNNs are a type of closed-box techniques with little interpretability, and their effectiveness is greatly affected when fault mechanisms and modes are extremely complex. To cope with such issue, this article presents a way to integrate outlier-type prior knowledge into CNNs based on an attention mechanism for fault diagnosis. First, outliers of the image-like data obtained by a sliding window processing from the raw data are formally defined as prior knowledge. Then, the defined outlier-type prior knowledge is integrated into any layer of CNNs by a parameter-free attention mechanism. Compared with existing similar methods, the proposal realizes a novel and flexible definition of prior knowledge and achieves deep fusion of prior knowledge and CNNs with low computational cost. The performance of the proposal was evaluated on the Tennessee Eastman process dataset and the real wind turbine blade icing dataset, which indicates that the proposal could not only realize accurate results but also had good model interpretability in terms of achieving high accuracy. The acquisition of outlier-type prior knowledge was discussed and the results demonstrate the effectiveness of the proposed prior knowledge integration method.
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来源期刊
IEEE Transactions on Systems Man Cybernetics-Systems
IEEE Transactions on Systems Man Cybernetics-Systems AUTOMATION & CONTROL SYSTEMS-COMPUTER SCIENCE, CYBERNETICS
CiteScore
18.50
自引率
11.50%
发文量
812
审稿时长
6 months
期刊介绍: The IEEE Transactions on Systems, Man, and Cybernetics: Systems encompasses the fields of systems engineering, covering issue formulation, analysis, and modeling throughout the systems engineering lifecycle phases. It addresses decision-making, issue interpretation, systems management, processes, and various methods such as optimization, modeling, and simulation in the development and deployment of large systems.
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