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De Gruyter Open, International Agrophysics, 1(29), p. 39-46, 2015

DOI: 10.1515/intag-2015-0012

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Prediction of moisture content uniformity using hyperspectral imaging technology during the drying of maize kernel

Journal article published in 2015 by Min Huang, Weiyan Zhao, Qingguo Wang, Min Zhang ORCID, Qibing Zhu
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Abstract Moisture content uniformity is one of critical parameters to evaluate the quality of dried products and the drying technique. The potential of the hyperspectral imaging technique for evaluating the moisture content uniformity of maize kernels during the drying process was investigated. Predicting models were established using the partial least squares regression method. Two methods, using the prediction value of moisture content to calculate the uniformity (indirect) and predicting the moisture content uniformity directly, were investigated. Better prediction results were achieved using the direct method (with correlation coefficients RP = 0.848 and root-mean-square error of prediction RMSEP = 2.73) than the indirect method (RP = 0.521 and RMSEP = 10.96). The hyperspectral imaging technique showed significant potential in evaluating moisture content uniformity of maize kernels during the drying process.