Dimensionality reducing Gaussian mixture-based reconstruction for fault detection in multimode processes

IF 1.6 4区 工程技术 Q3 ENGINEERING, CHEMICAL Canadian Journal of Chemical Engineering Pub Date : 2024-05-09 DOI:10.1002/cjce.25308
Yanfeng Cui, Wei Fan, Yongzan Zhou
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Abstract

Modern industrial processes increasingly prioritize demands for safety and reliability, spurring substantial research on process monitoring models. Among existing research subjects, concurrent multimode operating conditions are vital for effective process monitoring. This work proposes an efficient dimensionality-reducing Gaussian mixture-based reconstruction approach for multimode industrial process monitoring. The t-SNE method is first employed to transform high-dimensional data into a lower-dimensional space that retains critical operational information. Using these reduced dimensions, a robust Gaussian mixture model is established to partition the operation data into different modes. Furthermore, the original data are assigned to the corresponding operating modes, and local variational autoencoder (VAE) reconstruction models are established, respectively. For each VAE model, two statistics are designed, termed T 2 and SPE, to detect abnormalities. The proposed method is applied to a three-phase flow facility, and the superiority over the comparison methods is proved.

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基于降维高斯混合物重建的多模过程故障检测
现代工业流程对安全性和可靠性的要求越来越高,从而推动了对流程监控模型的大量研究。在现有的研究课题中,并发多模式运行条件对于有效的过程监控至关重要。本研究为多模式工业过程监控提出了一种基于高斯混合物的高效降维重建方法。首先采用 t-SNE 方法将高维数据转换为保留关键运行信息的低维空间。利用这些降低的维度,建立稳健的高斯混合模型,将运行数据划分为不同的模式。此外,将原始数据分配到相应的运行模式,并分别建立局部变异自动编码器(VAE)重建模型。为每个 VAE 模型设计了两个统计量,分别称为 和 ,用于检测异常。将所提出的方法应用于三相流设备,证明其优于比较方法。
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来源期刊
Canadian Journal of Chemical Engineering
Canadian Journal of Chemical Engineering 工程技术-工程:化工
CiteScore
3.60
自引率
14.30%
发文量
448
审稿时长
3.2 months
期刊介绍: The Canadian Journal of Chemical Engineering (CJChE) publishes original research articles, new theoretical interpretation or experimental findings and critical reviews in the science or industrial practice of chemical and biochemical processes. Preference is given to papers having a clearly indicated scope and applicability in any of the following areas: Fluid mechanics, heat and mass transfer, multiphase flows, separations processes, thermodynamics, process systems engineering, reactors and reaction kinetics, catalysis, interfacial phenomena, electrochemical phenomena, bioengineering, minerals processing and natural products and environmental and energy engineering. Papers that merely describe or present a conventional or routine analysis of existing processes will not be considered.
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