Multimode Process Monitoring Based on the Density-Based Support Vector Data Description

被引:0
作者
郭红杰
王帆
宋冰
侍洪波
谭帅
机构
[1] KeyLaboratoryofAdvancedControlandOptimizationforChemicalProcessesofMinistryofEducation,EastChinaUniversityofScienceandTechnology
关键词
multimode process monitoring; Gaussian mixture model(GMM); density-based support vector data description(DBSVDD);
D O I
10.19884/j.1672-5220.2017.03.002
中图分类号
TP277 [监视、报警、故障诊断系统];
学科分类号
0804 ; 080401 ; 080402 ;
摘要
Complex industry processes often need multiple operation modes to meet the change of production conditions. In the same mode,there are discrete samples belonging to this mode. Therefore,it is important to consider the samples which are sparse in the mode.To solve this issue,a new approach called density-based support vector data description( DBSVDD) is proposed. In this article,an algorithm using Gaussian mixture model( GMM) with the DBSVDD technique is proposed for process monitoring. The GMM method is used to obtain the center of each mode and determine the number of the modes. Considering the complexity of the data distribution and discrete samples in monitoring process,the DBSVDD is utilized for process monitoring. Finally,the validity and effectiveness of the DBSVDD method are illustrated through the Tennessee Eastman( TE) process.
引用
收藏
页码:342 / 348
页数:7
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