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一种面向闭环过程监测的潜在特征字典学习方法。

A latent feature oriented dictionary learning method for closed-loop process monitoring.

作者信息

Huang Keke, Zhang Li, Sun Bei, Liang Xiaojun, Yang Chunhua, Gui Weihua

机构信息

School of Automation, Central South University, Changsha 410083, China; Peng Cheng Laboratory, Shenzhen 518055, China.

School of Automation, Central South University, Changsha 410083, China.

出版信息

ISA Trans. 2022 Dec;131:552-565. doi: 10.1016/j.isatra.2022.04.032. Epub 2022 Apr 26.

Abstract

Industrial cyber-physical system (ICPS), by its powerful computing, communication, precise control and remote operation functions, has become the mainstream of modern industrial process. The observed variables of the closed-loop process in ICPS are subject to the degradation of equipment and other factors, resulting in exhibiting a stationary/nonstationary mixture feature and dynamic feature. Moreover, due to the frequent change of working conditions in the closed-loop process, the traditional open-loop process monitoring method always triggers false alarms, which will impose a negative impact on the safety and trustworthiness of ICPS. Therefore, for the closed-loop process in ICPS, a latent feature oriented dictionary learning (LFDL) method is proposed, which realizes the precise separation of latent features of raw data through three stages. First, closed-loop process variables are separated into stationary and nonstationary variables to mine the local information spatially. Then, from the temporal viewpoint, the static and dynamic features were extracted for stationary and nonstationary variables on the basis of the slow feature analysis method and cointegration analysis for local monitoring. Finally, the global monitoring results are obtained by utilizing the dictionary learning method to fuse respectively the local monitoring results of the static and dynamic features. Since the proposed method has taken the feature of the close-loop process from temporal and spatial viewpoints simultaneously, it can distinguish the normal change of operating conditions and actual faults accurately. Extensive experiments including the three-phase flow, the Tennessee Eastman process and an industrial roasting process are conducted to demonstrate the feasibility and effectiveness of the proposed method.

摘要

工业网络物理系统(ICPS)凭借其强大的计算、通信、精确控制和远程操作功能,已成为现代工业过程的主流。ICPS中闭环过程的观测变量会受到设备老化等因素的影响,从而呈现出平稳/非平稳混合特征和动态特征。此外,由于闭环过程中工况频繁变化,传统的开环过程监测方法总是触发误报,这将对ICPS的安全性和可信度产生负面影响。因此,针对ICPS中的闭环过程,提出了一种面向潜在特征的字典学习(LFDL)方法,该方法通过三个阶段实现了对原始数据潜在特征的精确分离。首先,将闭环过程变量分离为平稳变量和非平稳变量,以在空间上挖掘局部信息。然后,从时间角度出发,基于慢特征分析方法和协整分析对平稳变量和非平稳变量进行局部监测,提取静态和动态特征。最后,利用字典学习方法分别融合静态和动态特征的局部监测结果,得到全局监测结果。由于所提方法同时从时间和空间角度考虑了闭环过程的特征,因此能够准确区分工况的正常变化和实际故障。进行了包括三相流、田纳西伊士曼过程和工业焙烧过程在内的大量实验,以证明所提方法的可行性和有效性。

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