<b>Convective drying of regular mint leaves: analysis based on fitting empirical correlations, response surface methodology and neural networks<b>

Authors

  • Ariany Binda Silva Costa Universidade Federal de São Carlos
  • Fábio Bentes Freire Universidade Federal de São Carlos
  • Maria do Carmo Ferreira Universidade Federal de São Carlos
  • José Teixeira Freire Universidade Federal de São Carlos

DOI:

https://doi.org/10.4025/actascitechnol.v36i2.19238

Keywords:

Mentha x villosa H, kinetic parameters, convective drying, moisture content

Abstract

In the present work, an analysis of drying of peppermint (Menta x villosa H.) leaves has been made using empirical correlations, response surface models and a neural network model. The main goal was to apply different modeling approaches to predict moisture content and drying rates in the drying of leaves, and obtaining an overview on the subject. Experiments were carried out in a convective horizontal flow dryer in which samples were placed parallel to the air stream under operating conditions of air temperatures from 36 to 64°C, air velocities from 1.0 to 2.0 m s-1 and sample loads from 18 to 42 g, corresponding to sample heights of 1.4, 1.7 and 3.5 cm respectively. A complete 33 experimental design was used. Results have shown that the three methodologies employed in this work were complementary in the sense that they simultaneously provided a better understanding of leaves drying.

 

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Author Biographies

Ariany Binda Silva Costa, Universidade Federal de São Carlos

Aluna do PPg-EQ/UFSCar

Fábio Bentes Freire, Universidade Federal de São Carlos

Professor do DEQ/UFSCar

Maria do Carmo Ferreira, Universidade Federal de São Carlos

Professor do DEQ/UFSCar

José Teixeira Freire, Universidade Federal de São Carlos

Professor do DEQ/UFSCar

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Published

2014-04-04

How to Cite

Costa, A. B. S., Freire, F. B., Ferreira, M. do C., & Freire, J. T. (2014). <b>Convective drying of regular mint leaves: analysis based on fitting empirical correlations, response surface methodology and neural networks<b>. Acta Scientiarum. Technology, 36(2), 270–278. https://doi.org/10.4025/actascitechnol.v36i2.19238

Issue

Section

Chemical Engineering