Cross-Modality Manifold Adaptive Network for Industrial Multimode Processes and Its Applications

IF 6.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Automation Science and Engineering Pub Date : 2024-10-09 DOI:10.1109/TASE.2024.3472051
Xiao-Lu Song;Ning Zhang;Yan-Lin He;Yuan Xu;Qun-Xiong Zhu
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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.
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用于工业多模式过程的跨模式 Manifold 自适应网络及其应用
在实际工业场景中,不同的工作模式和工作量会导致多种工作状态模式,从而导致特征空间的显著差异。然而,这些模式之间的异质性和复杂性对传统的数据处理方法提出了挑战。因此,本文提出了跨模态流形自适应网络(CMAN),以方便跨模态信息传输,解决多模态预测问题。具体来说,CMAN将预测过程分为两个步骤。首先,提出了流形判别自编码器(MDAE),用于提取局部和全局流形几何结构。在模态识别中,设计了MDAE的损失函数,以最小化模态内与模态间特征的比值。通过这种方式,自动编码器不仅学习数据表示,还学习区分来自不同类的数据。这为后续步骤中确定模式间融合策略奠定了基础。其次,在多模态预测过程中,为了帮助模型学习和理解不同模态之间的相互影响和依赖关系,CMAN通过交叉连接在模态之间共享特征。它可以自适应地保持任务特异性,同时也利用任务间的相关性。通过田纳西伊士曼公司(Tennessee Eastman, TE)和某电厂实例验证了该方法的有效性。从业人员注意:使用软传感器监测多模式过程的关键变量对于优化和控制化学过程至关重要。然而,传统方法难以准确、全面地利用多模态过程的模内和模间信息来构建鲁棒、强大的软传感器。此外,在实际过程中很难获得指示模式的变量。为了解决这些问题,本文提出了CMAN。首先,采集多模式工业过程中各模式的历史数据,利用流形识别思想建立模式识别模型;然后,在建模特定模态时,CMAN利用交叉连接在模态之间迁移知识,不仅考虑了模态本身的信息,而且使模态之间的特征交叉传递。门控机制使各种类型的特征之间的自适应优化组合。最后,两组算例表明,该方法具有良好的预测性能。
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来源期刊
IEEE Transactions on Automation Science and Engineering
IEEE Transactions on Automation Science and Engineering 工程技术-自动化与控制系统
CiteScore
12.50
自引率
14.30%
发文量
404
审稿时长
3.0 months
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.
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