4.7 Article

Computational intelligence and mathematical modelling in chanterelle mushrooms' drying process under heat pump dryer

期刊

BIOSYSTEMS ENGINEERING
卷 212, 期 -, 页码 143-159

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.biosystemseng.2021.10.002

关键词

Chanterelle mushrooms; Computational intelligence; Conventional modelling; Drying kinetics; Heat pump; Pearson universal kernel

资金

  1. Jiangsu Special Fund for Innovation and Extension of Agricultural Science and Technology [NJ2019-15]

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The study introduced a novel method for predictive modeling of chanterelle mushrooms' drying kinetics, employing computational techniques and mathematical modeling. Different drying air temperatures were investigated, showing a decrease in moisture ratio and an increase in moisture diffusivities with temperature rise. Statistical analysis revealed the most superior thin-layer drying model and the best computational intelligence models for predicting the drying kinetics of chanterelle mushrooms under heat pump dryer.
The paper presents a novel method for predictive modelling of chanterelle mushrooms' drying kinetics. Use of computational techniques and mathematical modelling for chanterelle mushrooms were employed in analysing the drying process using heat pump dryer. Mushrooms were sliced into 20 mm x 20 mm x 30 mm cuboids and 20 mm x circle divide 40 mm cylinders. Drying air temperatures of 40 degrees C, 48 degrees C, and 56 degrees C were studied. Determination of the best mushrooms' drying process using selected thin layer and computational intelligence models was examined. Drying curves showed a falling rate period while moisture ratio decreased with temperature rise from 40 degrees C to 56 degrees C. Mushrooms' moisture diffusivities rose from 23.709 x 10(-8)m(2)s(-1) to 41.035 x 10(-8)m(2)s(-1) as temperature rose from 40 degrees C to 56 degrees C for the cuboid slices. Similarly, diffusivities for cylindrical mushrooms rose from 9.322 x 10(-8) m(2)s(-1) to 12.1585 x 10(-8) m(2)s(-1). The activation energy of cuboidal mushrooms was 29.3908 kJmol(-1) while that of cylindrical sample was 14.2856 kJmol(-1). Statistical parameters used showed that Midilli et al. was the most superior thin-layer drying model in predicting drying kinetics of chanterelle mushrooms. 1-3 ANN architecture was the best architectures in predicting drying process of chanterelle mushrooms. Standardized Pearson universal kernel was the best SVM filter. A k = 5 value was the best kNN values tested in predicting the chanterelle mushrooms drying process. However, tested data for standardized Pearson universal kernel was the most superior among conventional and intelligent models used. Consequently, computational intelligence modelling especially the standardized Pearson universal kernel was recommendable in modelling drying kinetics of chanterelle mushrooms under heat pump dryer. (C) 2021 IAgrE. Published by Elsevier Ltd. All rights reserved.

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