期刊文献+

高斯过程及其在软测量建模中的应用 被引量:22

Gaussian process and its application to soft-sensor modeling
在线阅读 下载PDF
导出
摘要 结合工业萘初馏塔关键质量指标估计问题,提出了采用高斯过程(GP)建立复杂工业过程软测量方法。将自动相关确定(ARD)原理与GP模型结合进行软测量模型辅助变量选择,通过建立GP软测量模型,同时得到关键质量指标估计值和相应的预测不确定度,有效解决了现有软测量建模方法不能给出估计值的测量不确定度的问题。研究表明,GP软测量模型不仅能自动选择辅助变量,而且还具有较高的估计精度和较小的测量不确定度,能够更好地满足工业现场对测量可靠性的要求。 With the estimation of key quality index in an industrial naphthalene distillation column, a novel soft-sensor modeling method based on Gaussian process (GP) was proposed for complex industrial processes. The principle of automatic relevance determination, implemented with GP model, was proposed to determine the secondary variables for the soft-sensor. To overcome the shortcomings existing in present methods, which can not determine the measurement uncertainty of soft-sensors, the GP based soft-sensor was developed to get both the prediction of key quality index and its measurement uncertainty simultaneously. Application studies showed that the GP soft sensor model not only determined the secondary variable automatically, but also possessed both high accuracy and small measurement uncertainty, which met the demands for reliable measurements in industrial application.
作者 王华忠
出处 《化工学报》 EI CAS CSCD 北大核心 2007年第11期2840-2845,共6页 CIESC Journal
关键词 高斯过程 测量不确定度 软测量 建模 Gaussian process measurement uncertainty soft-sensor modeling
  • 相关文献

参考文献15

  • 1Brosillow C B. Inferential control of process. AIChE J. , 1978, 24 (3): 485-509.
  • 2Kresta J V, Martin T E, MacGregor J F. Development of inferential process models using PLS. Computers and Chemical Engineering, 1994, 18 (7): 597-611.
  • 3王华忠,俞金寿.基于混合SVR-PLS方法的丙烯腈收率软测量建模[J].控制与决策,2005,20(5):549-552. 被引量:10
  • 4Willis M J, Montague G A, Massimo D C, etal. Artificial neural networks in process estimation and control. Automatica, 1992, 28 (6): 1181-1187.
  • 5Liu Ruilan, Su Hongye, etal. Fuzzy neural network model of 4-CBA concentration for industrial PTA oxidation process. Chinese Journal of Chemical Engineering, 2004, 12 (2): 234-239.
  • 6颜学峰,余娟,钱锋.优选优生进化算法及4-CBA软测量模型参数估计[J].高校化学工程学报,2005,19(2):238-243. 被引量:5
  • 7罗健旭,邵惠鹤.应用多神经网络建立动态软测量模型[J].化工学报,2003,54(12):1770-1773. 被引量:34
  • 8马勇,黄德先,金以慧.动态软测量建模方法初探[J].化工学报,2005,56(8):1516-1519. 被引量:28
  • 9Fortuna L, Graziani S, Xibilia M G. Soft sensors for product quality monitoring in debutanizer distillation columns. Control Engineering Practice, 2005, 13 (4) : 499-508.
  • 10Desai K, Badhe Y, Tamble S S, et al. Soft sensordevelopment for fed-batch bioreactors using support vectorregression. Biochemical Engineering Journal, 2006, 27 (3):225-239.

二级参考文献31

  • 1Brosilow C B, Joseph B. Inferential control of process [J]. AIChE J., 1978, 24(3): 485-509.
  • 2Feng R, Shen W, Shao H. A soft sensor modeling approach using support vector machines [A]. Proceedings of the American Control Conference [C]. 2003, 3702-3707.
  • 3.[EB/OL].http://www.clopinet.com/isabelle/Projects/SVM/applist.html.[EB/OL],.
  • 4Luo J, Shao H. Soft sensing modeling using neurofuzzy system based on rough set theory [A]. Proceedings of the American Control Conference [C]. 2002, 543-548.
  • 5MacKay D J C. Introduction to Gaussian processes [R]. Technical Report, Cambridge University, UK, 1998.
  • 6McAvoy T J. Contemplative stance for chemical process [J]. Automatica, 1992, 28(2): 441-442.
  • 7Scholkopf B, Smola A J. Learning with kernels [M]. Cambridge: MIT Press, 2002.
  • 8Smola A J, Scholkopf B. A tutorial on support vector regression [R]. Produced as part of the ESPRIT Working Group in Neural and Computation LearningⅡ, NeuroCOLT2 Technical Report Series NC2-TR-1998-030, 1998.
  • 9Wang X, Luo R, Shao H. Designing a soft sensor for distillation column with the fuzzy distributed radial basis function neural networks [A]. Proceedings of the 35th IEEE Conference on Decision and Control [C]. 1996, 2, 1714-1719.
  • 10Williams C K I. Prediction with Gaussian processes: from the linear regression to linear prediction and beyond [A]. In M.I. Jordan (Ed.), Learning and Inference in Graphical Models [C]. Cambridge: MIT Press, 1999, 599-621.

共引文献94

同被引文献236

引证文献22

二级引证文献212

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