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Nonlinear Dynamic Process Monitoring Based on Two-Step Dynamic Local Kernel Principal Component Analysis

Hairong Fang, Wenhua Tao, Shan Lu, Zhijiang Lou, Yonghui Wang, Yuanfei Xue

2022Processes18 citationsDOIOpen Access PDF

Abstract

Nonlinearity may cause a model deviation problem, and hence, it is a challenging problem for process monitoring. To handle this issue, local kernel principal component analysis was proposed, and it achieved a satisfactory performance in static process monitoring. For a dynamic process, the expectation value of each variable changes over time, and hence, it cannot be replaced with a constant value. As such, the local data structure in the local kernel principal component analysis is wrong, which causes the model deviation problem. In this paper, we propose a new two-step dynamic local kernel principal component analysis, which extracts the static components in the process data and then analyzes them by local kernel principal component analysis. As such, the two-step dynamic local kernel principal component analysis can handle the nonlinearity and the dynamic features simultaneously.

Topics & Concepts

Kernel principal component analysisKernel (algebra)Principal component analysisProcess (computing)Computer scienceComponent (thermodynamics)Nonlinear systemMathematicsMathematical optimizationKernel methodArtificial intelligenceSupport vector machinePhysicsOperating systemCombinatoricsQuantum mechanicsThermodynamicsFault Detection and Control SystemsAdvanced Data Processing TechniquesMineral Processing and Grinding
Nonlinear Dynamic Process Monitoring Based on Two-Step Dynamic Local Kernel Principal Component Analysis | Litcius