SmdaNet: A hierarchical hard sample mining and domain adaptation neural network for fault diagnosis in industrial process

IF 3.7 3区 工程技术 Q2 ENGINEERING, CHEMICAL
Zhenhua Yu, Zongyu Yao, Weijun Wang, Qingchao Jiang, Zhixing Cao
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Abstract

Fault diagnosis in industrial process is essential for ensuring production safety and efficiency. However, existing methods exhibit limited capability in recognizing hard samples and struggle to maintain consistency in feature distributions across domains, resulting in suboptimal performance and robustness. Therefore, this paper proposes a fault diagnosis neural network for hard sample mining and domain adaptive (SmdaNet). First, the method uses deep belief networks (DBN) to build a diagnostic model. Hard samples are mined based on the loss values, dividing the data set into hard and easy samples. Second, elastic weight consolidation (EWC) is used to train the model on hard samples, effectively preventing information forgetting. Finally, the feature space domain adaptation is introduced to optimize the feature space by minimizing the Kullback–Leibler divergence of the feature distributions. Experimental results show that the proposed SmdaNet method outperforms existing approaches in terms of classification accuracy, robustness and interpretability on the penicillin simulation and Tennessee Eastman process datasets.

Abstract Image

SmdaNet:一种用于工业过程故障诊断的分层硬样本挖掘和领域自适应神经网络
工业过程故障诊断是保证生产安全、高效的重要手段。然而,现有方法在识别硬样本方面表现出有限的能力,并且难以保持跨域特征分布的一致性,从而导致性能和鲁棒性不理想。为此,本文提出了一种用于硬样本挖掘和域自适应的故障诊断神经网络(SmdaNet)。首先,该方法利用深度信念网络(DBN)建立诊断模型。根据损失值挖掘硬样本,将数据集分为硬样本和易样本。其次,采用弹性权重巩固(elastic weight consolidation, EWC)在硬样本上训练模型,有效防止信息遗忘。最后,引入特征空间域自适应,通过最小化特征分布的Kullback-Leibler散度来优化特征空间。实验结果表明,SmdaNet方法在青霉素模拟和田纳西伊士曼工艺数据集上的分类精度、鲁棒性和可解释性均优于现有方法。
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来源期刊
Chinese Journal of Chemical Engineering
Chinese Journal of Chemical Engineering 工程技术-工程:化工
CiteScore
6.60
自引率
5.30%
发文量
4309
审稿时长
31 days
期刊介绍: The Chinese Journal of Chemical Engineering (Monthly, started in 1982) is the official journal of the Chemical Industry and Engineering Society of China and published by the Chemical Industry Press Co. Ltd. The aim of the journal is to develop the international exchange of scientific and technical information in the field of chemical engineering. It publishes original research papers that cover the major advancements and achievements in chemical engineering in China as well as some articles from overseas contributors. The topics of journal include chemical engineering, chemical technology, biochemical engineering, energy and environmental engineering and other relevant fields. Papers are published on the basis of their relevance to theoretical research, practical application or potential uses in the industry as Research Papers, Communications, Reviews and Perspectives. Prominent domestic and overseas chemical experts and scholars have been invited to form an International Advisory Board and the Editorial Committee. It enjoys recognition among Chinese academia and industry as a reliable source of information of what is going on in chemical engineering research, both domestic and abroad.
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