PKG-DTSFLN: Process Knowledge-guided Deep Temporal–spatial Feature Learning Network for anode effects identification

IF 3.3 2区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS Journal of Process Control Pub Date : 2024-04-19 DOI:10.1016/j.jprocont.2024.103221
Weichao Yue , Jianing Chai , Xiaoxue Wan , Yongfang Xie , Xiaofang Chen , Weihua Gui
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Abstract

In the aluminum electrolysis process, the accurate identification of anode effect (AE) can improve production efficiency. However, the existing methods fail to effectively capture the features of the anode current signal (ACS) due to its complex dynamic characteristics and temporal–spatial dependence. To address this issue, we propose a Process Knowledge-guided Deep Temporal–spatial Feature Learning Network (PKG-DTSFLN). We believe that knowledge and production data are complementary. Knowledge has potential to deduce beyond observational conditions. Data can be used to detect unexpected patterns. The combination of data and knowledge is potential to improve the performance. Specifically, knowledge is utilized to construct the adjacency matrix to represent the spatial structure of ACS. Then, a deep learning model is constructed by integrating the 1D-CNN and GAT, which is used to capture the temporal–spatial features of ACS. The experimental results on ACS dataset show that the accuracy is more than 99% with low computational cost.

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PKG-DTSFLN:用于阳极效应识别的过程知识指导的深度时空特征学习网络
在铝电解过程中,准确识别阳极效应(AE)可以提高生产效率。然而,由于阳极电流信号(ACS)具有复杂的动态特性和时空依赖性,现有方法无法有效捕捉其特征。为解决这一问题,我们提出了过程知识引导的深度时空特征学习网络(PKG-DTSFLN)。我们认为,知识和生产数据是相辅相成的。知识具有超越观察条件的推断潜力。数据可用于检测意想不到的模式。数据和知识的结合有可能提高性能。具体来说,利用知识来构建邻接矩阵,以表示 ACS 的空间结构。然后,通过整合 1D-CNN 和 GAT,构建一个深度学习模型,用于捕捉 ACS 的时空特征。在 ACS 数据集上的实验结果表明,其准确率超过 99%,且计算成本较低。
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来源期刊
Journal of Process Control
Journal of Process Control 工程技术-工程:化工
CiteScore
7.00
自引率
11.90%
发文量
159
审稿时长
74 days
期刊介绍: This international journal covers the application of control theory, operations research, computer science and engineering principles to the solution of process control problems. In addition to the traditional chemical processing and manufacturing applications, the scope of process control problems involves a wide range of applications that includes energy processes, nano-technology, systems biology, bio-medical engineering, pharmaceutical processing technology, energy storage and conversion, smart grid, and data analytics among others. Papers on the theory in these areas will also be accepted provided the theoretical contribution is aimed at the application and the development of process control techniques. Topics covered include: • Control applications• Process monitoring• Plant-wide control• Process control systems• Control techniques and algorithms• Process modelling and simulation• Design methods Advanced design methods exclude well established and widely studied traditional design techniques such as PID tuning and its many variants. Applications in fields such as control of automotive engines, machinery and robotics are not deemed suitable unless a clear motivation for the relevance to process control is provided.
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