• 제목/요약/키워드: NIR diesel fuel spectra

검색결과 1건 처리시간 0.014초

데이터 추출 과정을 적용한 Block-wise Adaptive Predictive PLS (Block-wise Adaptive Predictive PLS using Block-wise Data Extraction)

  • 김성영;정창복;최수형;이범석
    • 제어로봇시스템학회논문지
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    • 제12권7호
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    • pp.706-712
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    • 2006
  • Recursive Partial Least Squares(RPLS) method has been used for processing the on-line available multivariate chemical process data and modeling adaptive prediction model for process changes. However, RPLS method is unstable in PLS model updating because RPLS method updates PLS model by merging past PLS model and new data. In this study, Adaptive Predictive Partial Least Squres(APPLS) method is suggested for more sensitive adaptation to process changes. By expanding APPLS method, block-wise Adaptive Predictive Partial Least Squares(block-wise APPLS) method is suggested for a lager scale data of chemical processes. APPLS method has been applied to predict the reactor properties and the product quality of a direct esterification reactor for polyethylene terephthalate(PTT), and block-wise APPLS method has been applied to predict the cetane number using NIR Diesel Spectra data. APPLS and block-wise APPLS methods show better prediction and updating performance than RPLS method.