{"title":"Cross-Modality Manifold Adaptive Network for Industrial Multimode Processes and Its Applications","authors":"Xiao-Lu Song;Ning Zhang;Yan-Lin He;Yuan Xu;Qun-Xiong Zhu","doi":"10.1109/TASE.2024.3472051","DOIUrl":null,"url":null,"abstract":"In actual industrial scenarios, different operating modes and workloads can lead to multiple modes of working conditions, resulting in significantly diverse feature spaces. However, the heterogeneity and complexity among these modes pose a challenge to traditional data processing methods. Therefore, this paper proposes the cross-modality manifold adaptive Network (CMAN) to facilitate cross-modal information transmission for addressing multi-modal prediction issues. Specifically, CMAN divides the prediction process into two steps. Firstly, the manifold discriminative autoencoder (MDAE) is proposed to extract both local and global manifold geometric structures. The loss function of the designed MDAE in mode recognition is formulated to minimize the ratio between within-modal and between-modal features. In this way, the autoencoder not only learns data representations but also learns to differentiate between data from different classes. This lays the foundation for determining fusion strategies between modes in subsequent steps. Secondly, in the process of multimode prediction, to assist the model in learning and understanding the mutual influences and dependencies between different modes, CMAN shares features between modes through cross connections. It can adaptively preserve task specificity while also utilizing between-task correlations. The effectiveness of the proposed method is validated in the Tennessee Eastman (TE) case and an actual power plant case. Note to Practitioners—The use of soft sensors to monitor key variables of multimode processes is essential for optimizing and controlling chemical processes. However, it is difficult for conventional methods to accurately and comprehensively utilize within- and between-modal information of multimode processes to build robust and powerful soft sensors. In addition, it is difficult to obtain mode-indicating variables in real-world processes. To address these issues, CMAN is proposed in this paper. Firstly, the historical data of each mode in a multimode industrial process are collected, and the CMAN utilizes the manifold discrimination idea to build a mode recognition model. Then, when modeling the specific modes, CMAN utilizes cross-connections to migrate knowledge between modes, which not only considers the information of the modes themselves, but also makes the features between modes cross-transferred. The gating mechanism enables adaptive optimal combination between various types of features. Finally, two sets of cases show that the proposed method has excellent prediction performance.","PeriodicalId":51060,"journal":{"name":"IEEE Transactions on Automation Science and Engineering","volume":"22 ","pages":"7845-7854"},"PeriodicalIF":6.4000,"publicationDate":"2024-10-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEE Transactions on Automation Science and Engineering","FirstCategoryId":"94","ListUrlMain":"https://ieeexplore.ieee.org/document/10711247/","RegionNum":2,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"AUTOMATION & CONTROL SYSTEMS","Score":null,"Total":0}
引用次数: 0
Abstract
In actual industrial scenarios, different operating modes and workloads can lead to multiple modes of working conditions, resulting in significantly diverse feature spaces. However, the heterogeneity and complexity among these modes pose a challenge to traditional data processing methods. Therefore, this paper proposes the cross-modality manifold adaptive Network (CMAN) to facilitate cross-modal information transmission for addressing multi-modal prediction issues. Specifically, CMAN divides the prediction process into two steps. Firstly, the manifold discriminative autoencoder (MDAE) is proposed to extract both local and global manifold geometric structures. The loss function of the designed MDAE in mode recognition is formulated to minimize the ratio between within-modal and between-modal features. In this way, the autoencoder not only learns data representations but also learns to differentiate between data from different classes. This lays the foundation for determining fusion strategies between modes in subsequent steps. Secondly, in the process of multimode prediction, to assist the model in learning and understanding the mutual influences and dependencies between different modes, CMAN shares features between modes through cross connections. It can adaptively preserve task specificity while also utilizing between-task correlations. The effectiveness of the proposed method is validated in the Tennessee Eastman (TE) case and an actual power plant case. Note to Practitioners—The use of soft sensors to monitor key variables of multimode processes is essential for optimizing and controlling chemical processes. However, it is difficult for conventional methods to accurately and comprehensively utilize within- and between-modal information of multimode processes to build robust and powerful soft sensors. In addition, it is difficult to obtain mode-indicating variables in real-world processes. To address these issues, CMAN is proposed in this paper. Firstly, the historical data of each mode in a multimode industrial process are collected, and the CMAN utilizes the manifold discrimination idea to build a mode recognition model. Then, when modeling the specific modes, CMAN utilizes cross-connections to migrate knowledge between modes, which not only considers the information of the modes themselves, but also makes the features between modes cross-transferred. The gating mechanism enables adaptive optimal combination between various types of features. Finally, two sets of cases show that the proposed method has excellent prediction performance.
期刊介绍:
The IEEE Transactions on Automation Science and Engineering (T-ASE) publishes fundamental papers on Automation, emphasizing scientific results that advance efficiency, quality, productivity, and reliability. T-ASE encourages interdisciplinary approaches from computer science, control systems, electrical engineering, mathematics, mechanical engineering, operations research, and other fields. T-ASE welcomes results relevant to industries such as agriculture, biotechnology, healthcare, home automation, maintenance, manufacturing, pharmaceuticals, retail, security, service, supply chains, and transportation. T-ASE addresses a research community willing to integrate knowledge across disciplines and industries. For this purpose, each paper includes a Note to Practitioners that summarizes how its results can be applied or how they might be extended to apply in practice.