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Indexed by:期刊论文
Date of Publication:2021-02-01
Journal:INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH
Volume:58
Issue:16
Page Number:6476-6485
ISSN No.:0888-5885
Key Words:Fluidized bed process; Forecasting; Granulation; Infrared devices; Infrared drying; Least squares approximations; Model buildings; Moisture control; Moisture determination; Monte Carlo methods; Near infrared spectroscopy; Regression analysis; Silica; Silica gel, Comparative studies; Fluidized bed drying; In-situ measurement; K fold cross validations; Leave-one-out cross-validation (LOOCV); Partial least-squares regression; Prediction accuracy; Spectral calibration, Fluidized beds
Abstract:For monitoring the granule moisture content during a fluidized bed drying (FBD) process, a calibration model building method is proposed for in situ measurement using the near-infrared (NIR) spectroscopy. It is found that the FBD operating conditions such as the chamber temperature and heating power have a nonnegligible impact on the NIR model prediction of granule moisture. By combining these operating variables with the measured NIR spectra for model calibration, the prediction accuracy for online measurement of the granule moisture content under different process conditions could be evidently improved compared to only using the measured NIR spectra for model calibration. To determine the optimal number of factors for establishing a partial-least-squares (PLS) regression model for predicting the granule moisture content, it is proposed to combine the leave-one-out cross validation (LOOCV) approach with the median absolute percentage error (MdAPE) index to deal with measurement outliers often involved with practical applications, based on a comparative study with the well-known K-fold cross validation (KCV) and Monte Carlo cross validation (MCCV) methods. Experimental results on monitoring the silica gel granule moisture under different FBD operating conditions demonstrate the effectiveness of the proposed spectral calibration method.