期刊文献+

Soft sensor modeling based on Gaussian processes 被引量:2

Soft sensor modeling based on Gaussian processes
下载PDF
导出
摘要 In order to meet the demand of online optimal running, a novel soft sensor modeling approach based on Gaussian processes was proposed. The approach is moderately simple to implement and use without loss of performance. It is trained by optimizing the hyperparameters using the scaled conjugate gradient algorithm with the squared exponential covariance function employed. Experimental simulations show that the soft sensor modeling approach has the advantage via a real-world example in a refinery. Meanwhile, the method opens new possibilities for application of kernel methods to potential fields. In order to meet the demand of online optimal running, a novel soft sensor modeling approach based on Gaussian processes was proposed. The approach is moderately simple to implement and use without loss of performance. It is trained by optimizing the hyperparameters using the scaled conjugate gradient algorithm with the squared exponential covariance function employed. Experimental simulations show that the soft sensor modeling approach has the advantage via a real-world example in a refinery. Meanwhile, the method opens new possibilities for application of kernel methods to potential fields.
出处 《Journal of Central South University of Technology》 EI 2005年第4期469-471,共3页 中南工业大学学报(英文版)
基金 Project(2002AA412010 2004AA412050)supportedbytheNationalHighTechnologyResearchandDevelopmentProgramofChina
关键词 传感器 工业流程 实时控制 自动控制 Gaussian processes, soft sensor, modeling, kernel methods
  • 相关文献

同被引文献28

  • 1刘靖明,韩丽川,侯立文.基于粒子群的K均值聚类算法[J].系统工程理论与实践,2005,25(6):54-58. 被引量:122
  • 2JIN Yao-chu,OLHOFER M,SENDHOFF B.A framework for evolutionary optimization with approximate fitness functions[J].IEEETransactions on Evolutionary Computation,2002,6(5): 481-494.
  • 3SCHMIDT M D,LIPSON H.Coevolution of fitness predictors[J].IEEE Transactions on Evolutionary Computation,2008,12(6): 736- 749.
  • 4VO C,PANAIT L,LUKE S,Cooperative coevolution and univariate estimation of distribution algorithms[C]//Proceedings of the10th ACM SIGEVO Conference on Foundations of Genetic Algorithms,Association for Computing Machinery.Orlando,Florida,USA:2009:141-150.
  • 5POTTER M A,DEJONG K A.A cooperative coevolutionary approach to function optimization[C]//DAVIDOR Y,SCHWEFEL H,M-NNER R.TheThird Parallel Problem Solving from Nature.Springer Berlin/Heidelberg,1994:249-257.
  • 6PANAIT L.Theoretical convergence guarantees for cooperative coevolutionary algorithms[J].Evolutionary Computation,2010,18(4):581-615.
  • 7JANSEN T,WIEGAND R P.The cooperative coevolutionary(1+1) EA[J].Evolutionary Computation,2004,12(4):405-434.
  • 8BERGH F V D,ENGELBRECHT A P.A cooperative approach to particle swarm optimization[J].IEEE Transactions on EvolutionaryComputation,2004,8(3):225-239.
  • 9YANG Z Y,TANGA K,YAO X.Large scale evolutionary optimization using cooperative coevolution[J].Information Sciences,2008,178(15):2985-2999.
  • 10EL-BELTAGY M A,KEANE A J.Evolutionary optimization for computationally expensive problems using gaussian processes[C]//Proceedings of the International Conference on Artificial Intelligence.Las Vegas:CSREA Press,2001:708-714.

二级引证文献15

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