引用本文:董洁,孙瑞琪,彭开香,唐鹏.自动编码器与典型相关分析方法联合驱动的工业过程质量监测[J].控制理论与应用,2019,36(9):1493~1500.[点击复制]
DONG Jie,SUN Rui-qi,PENG Kai-xiang,TANG Peng.Industrial process quality monitoring method and application jointdriven by automatic encoder and canonical correlation analysis method[J].Control Theory and Technology,2019,36(9):1493~1500.[点击复制]
自动编码器与典型相关分析方法联合驱动的工业过程质量监测
Industrial process quality monitoring method and application jointdriven by automatic encoder and canonical correlation analysis method
摘要点击 1955  全文点击 764  投稿时间:2018-07-25  修订日期:2018-12-26
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DOI编号  10.7641/CTA.2019.80554
  2019,36(9):1493-1500
中文关键词  故障诊断  质量监测  CCA  AE-CCA  带钢热连轧
英文关键词  fault diagnosis  quality monitoring  CCA  AE-CCA  HSMP
基金项目  国家自然科学基金
作者单位邮编
董洁 北京科技大学 自动化学院 100083
孙瑞琪 北京科技大学 自动化学院 100083
彭开香* 北京科技大学 自动化学院 
唐鹏 北京科技大学 自动化学院 
中文摘要
      摘要:随着工业生产规模的扩大及复杂性增加,生产过程的质量安全日益受到重视,而质量监测是保证生产安全和产品质量的重要手段。为了有效的分析利用高维工业大数据,特征提取作为一种有效的降维方法,被逐步应用到工业过程中。 本文将自动编码器(AE)特征提取方法和典型相关分析方法(CCA)有机结合,提出了一种联合驱动的质量监测模型及其质量相关的故障检测方法。首先,利用AE算法对输入样本进行无监督自动学习和重构,实现数据的特征提取和降维;其次,利用CCA算法实现特征与质量变量关联最大化,建立质量变量与特征变量的关系模型;根据监测模型的潜结构投影,构建T2统计量和SPE统计量及其相应控制限。将提出的方法用于分析带钢热连轧过程现场实际数据,结果表明,基于AE-CCA的质量监测方法能够准确的检测出故障,并且检测效果优于传统的核典型相关分析(KCCA)算法。
英文摘要
      Abstract: With the expansion of industrial production scale and the increase of complexity, the quality and safety of the production process are increasingly valued. Quality monitoring is an important method which ensures product safety and quality. Feature extraction, which is an effective dimension reduction method, is applied to industrial processes gradually to analyze and utilize the high-dimensional industrial big data. In this paper, the feature extraction method of automatic encoder (AE) and canonical correlation analysis method (CCA) are organically combined, and a joint-driven quality monitoring model and quality-related fault detection method are proposed. Firstly, AE algorithm is used to automatically learn and reconstruct the input samples to complete the feature extraction and dimensionality reduction of the data. Secondly, CCA algorithm is used to maximize the correlation between the feature and the quality variables to establish the monitoring model of quality variables and characteristics. According to the latent structure projection of the monitoring model, T2statistics and SPE statistics and their control limits are constructed. The proposed method was applied to the actual data of hot strip mill process (HSMP). The result shows that the quality monitoring method based on AE-CCA can detect faults accurately, and the effect of detection is significantly better than that of traditional kernel canonical correlation analysis (KCCA) algorithm.