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Nonlinear fault detection for batch processes via improved chordal kernel tensor locality preserving projections

机译:通过改进的Chordal Kernel Tensor位置保存投影的非线性故障检测批处理过程

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摘要

The quality and stability of products are seriously influenced by the process conditions. A large number of modern production processes can be considered as batch processes, with nonlinear relationships between the process variables. How to troubleshoot batch processes has attracted considerable attention in the literature. The research object of batch processes is expressed as the third-order tensor data of batch x variable x time. The traditional methods convert the tensors into second-order forms through matrix expansion. A novel method named improved chordal kernel tensor locality preserving projections (ICK-TLPP) is proposed for fault detection of batch processes. First, the chordal distance is introduced as a measurement of the similarity of matrix, and an improved method is proposed for describing the variation of time series data. Then, the chordal kernel function is introduced to preserve the spatial structure of the tensor data without the information loss caused by vectorization, and describe the nonlinear correlation during the multivariate control system. Next, the locality preserving projections algorithm is applied to detect the intrinsic manifold structure. Parallel analysis is applied to optimize the hyper-parameters in the model. Finally, Granger causality analysis is performed to locate the root cause of the process fault. The proposed method is validated on two datasets, penicillin fermentation process and the hot strip rolling process. The best results of false alarm rate and fault detection rate are 16% and 94% respectively. The proposed method performs better compared with the traditional algorithms.
机译:产品的质量和稳定性受到过程条件的严重影响。大量现代生产过程可以被视为批处理过程,具有过程变量之间的非线性关系。如何解决批处理过程在文献中引起了相当大的关注。批处理过程的研究对象表示为批次X变量X时间的三阶张量数据。传统方法通过矩阵扩展将张量转换为二阶形式。提出了一种名为改进的Chordal Kernel TensoR位置保留投影的新方法(ICK-TLPP),用于故障检测批处理过程。首先,将十字距离引入作为矩阵相似性的测量,并且提出了一种改进的方法,用于描述时间序列数据的变化。然后,引入了曲线内核功能以保留张量数据的空间结构而不通过矢量化引起的信息丢失,并描述多元控制系统期间的非线性相关性。接下来,应用局部保留投影算法来检测内在歧管结构。应用并行分析以优化模型中的超参数。最后,进行格兰杰因果关系分析以找到过程故障的根本原因。所提出的方法在两种数据集,青霉素发酵过程和热带轧制过程中验证。误报率和故障检测率的最佳结果分别为16%和94%。与传统算法相比,该方法的表现更好。

著录项

  • 来源
    《Control Engineering Practice》 |2020年第8期|104514.1-104514.14|共14页
  • 作者

    Yujie Zhou; Ke Xu; Fei He; Di He;

  • 作者单位

    Collaborative Innovation Center of Steel Technology University of Science and Technology Beijing 100083 Beijing China;

    Collaborative Innovation Center of Steel Technology University of Science and Technology Beijing 100083 Beijing China;

    Collaborative Innovation Center of Steel Technology University of Science and Technology Beijing 100083 Beijing China;

    Collaborative Innovation Center of Steel Technology University of Science and Technology Beijing 100083 Beijing China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Batch processes; Fault detection; Tensor space; Chordal kernel; Locality preserving projections; Parallel analysis;

    机译:批处理;故障检测;张量空间;Chordal Kernel;位置保存投影;并行分析;
  • 入库时间 2022-08-18 21:21:23

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