基于仿射聚类、高斯过程和贝叶斯决策的多模型软测量建模(英文)

被引:31
作者
李修亮
苏宏业
褚健
机构
[1] NationalKeyLaboratoryofIndustrialControlTechnology,InstituteofCyber-SystemsandControl,ZhejiangUniversity,Hangzhou,China
关键词
multiple model; soft sensor; affinity propagation; Gaussian process; Bayesian committee machine;
D O I
暂无
中图分类号
TQ018 [数学模型及放大];
学科分类号
摘要
Presented is a multiple model soft sensing method based on Affinity Propagation(AP),Gaussian process(GP) and Bayesian committee machine(BCM).AP clustering arithmetic is used to cluster training samples according to their operating points.Then,the sub-models are estimated by Gaussian Process Regression(GPR).Finally,in order to get a global probabilistic prediction,Bayesian committee machine is used to combine the outputs of the sub-estimators.The proposed method has been applied to predict the light naphtha end point in hydrocracker fractionators.Practical applications indicate that it is useful for the online prediction of quality monitoring in chemical processes.
引用
收藏
页码:95 / 99
页数:5
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