The purpose of this study was to develop a calibration model to evaluate the moisture content of tapioca starch using the near-infrared (NIR) spectral data in conjunction with partial least square (PLS) regression. The prediction ability was assessed using a separate prediction data set. Three groups of tapioca starch samples were used in this study: tapioca starch cake, dried tapioca starch and combined tapioca starch. The optimum model obtained from the baseline-o®set spectra of dried tapioca starch samples at the outlet of the factory drying process provided a coe±cient of determination (R 2 ), standard error of prediction (SEP), bias and residual prediction deviation (RPD) of 0.974, 0.16%, À0.092% and 7.4, respectively. The NIR spectroscopy protocol developed in this study could be a rapid method for evaluation of the moisture content of the tapioca starch in factory laboratories. It indicated the possibility of real-time online monitoring and control of the tapioca starch cake feeder in the drying process. In addition, it was determined that there was a stronger in°uence of the NIR absorption of both water and starch on the prediction of moisture content of the model.
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