期刊文献+

Soft-Sensing Method with Online Correction Based on Semi-Supervised Learning 被引量:1

Soft-Sensing Method with Online Correction Based on Semi-Supervised Learning
原文传递
导出
摘要 Soft sensing has been widely used in chemical industry to build an online monitor of the variables which are unmeasurable online or measurable online but with a high cost. One inherent difficulty is insufficiency of the training samples because the labeled data are limited. Besides, the traditional soft-sensing structure has no online correction mechanism. The forecasting result may be incorrect if the working condition is changed. In this work, a semi-supervised learning(SSL) method is proposed to build the soft-sensing model by use of the unlabeled data. Meanwhile, an online correction mechanism is proposed to establish a soft-sensing approach. The mechanism estimates the input variables at each step by a prediction model and calibrates the output variables by a compensation model. The experimental results show that the proposed method has better prediction accuracy and generalization ability than other approaches. Soft sensing has been widely used in chemical industry to build an online monitor of the variables which are unmeasurable online or measurable online but with a high cost. One inherent difficulty is insufficiency of the training samples because the labeled data are limited. Besides, the traditional soft-sensing structure has no online correction mechanism. The forecasting result may be incorrect if the working condition is changed. In this work, a semi-supervised learning(SSL) method is proposed to build the soft-sensing model by use of the unlabeled data. Meanwhile, an online correction mechanism is proposed to establish a soft-sensing approach. The mechanism estimates the input variables at each step by a prediction model and calibrates the output variables by a compensation model. The experimental results show that the proposed method has better prediction accuracy and generalization ability than other approaches.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2015年第2期171-176,共6页 上海交通大学学报(英文版)
基金 the National Natural Science Foundation of China(Nos.61374110 and 61074060) the Specialized Research Fund for the Doctoral Program of Higher Education of China(No.20120073110017)
关键词 soft-sensing semi-supervised learning(SSL) online correction neural network soft-sensing,semi-supervised learning(SSL),online correction,neural network
  • 相关文献

参考文献2

二级参考文献19

  • 1宋凯,王海清,李平.基于递推部分最小二乘自适应质量监控策略及其在橡胶混炼过程中的应用[J].化工学报,2007,58(2):410-416. 被引量:3
  • 2李修亮,苏宏业,褚健.基于在线聚类的多模型软测量建模方法[J].化工学报,2007,58(11):2834-2839. 被引量:28
  • 3Petr Kadlec,Ratko Grbic,Bogdan Gabrys. Review of adaptation mechanisms for data-driven soft sensors[J].Computers and Chemical Engineering,2011,(01):1-24.doi:10.1124/dmd.109.030668.
  • 4Li W,Yue H H,Valle-Cervantes S. Recursive PCA for adaptive process monitoring[J].Journal of Process Control,2000,(05):471-486.doi:10.1016/S0959-1524(00)00022-6.
  • 5Koichi Fujiwara,Manabu Kano,Shinji Hasebe,Akitoshi Takinami. Soft-sensor development using correlation-based just-in-time modeling[J].AICHE Journal,2009,(07):1754-1765.doi:10.1002/aic.11791.
  • 6Petr Kadlec,Bogdan Gabrys. Local learning-based adaptive soft sensor for catalyst activation prediction[J].AICHE Journal,2001,(05):1288-1301.
  • 7De Moor B L R. Data from an industrial evaporator (DaISy:Database for the identification of systems)[EB/OL].http://homes.esat.kuleuven.be/~ smc/daisy/,2011.
  • 8Ma Ming-Da,Ko Jing-Wei,Wang San-Jang,Wu MingFeng Jang Shi Shang Shieh Shyan-Shu Wong David Shan-Hill. Development of adaptive soft sensor based on statistical identification of key variables[J].Control Engineering Practice,2009,(09):1026-1034.doi:10.1016/j.conengprac.2009.03.004.
  • 9Hiromasa Kaneko,Masamoto Arakawa,Kimito Funatsu. Development of a new soft sensor method using independent component analysis and partial least squares[J].AICHE Journal,2009,(01):87-98.doi:10.1002/aic.11648.
  • 10Lee Young-Hak,Kim Minjin,Chu Young-Hwan,Han Chonghu. Adaptive multivariate regression modeling based on model performance assessment[J].Chemometrics and Intelligent Laboratory Systems,2005,(1/2):63-73.

共引文献5

同被引文献4

引证文献1

二级引证文献10

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部