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<record>
  <title>Prediction of Moisture Content of Bergamot Fruit During Thin-Layer Drying Using Artificial Neural Networks</title>
  <journal>Journal of E-Technology</journal>
  <author>Mohammad Sharifi, Shahin Rafiee, Hojjat Ahmadi, Masoud Rezaee</author>
  <volume>3</volume>
  <issue>1</issue>
  <year>2012</year>
  <doi></doi>
  <url>http://www.dline.info/jet/fulltext/v3n1/1.pdf</url>
  <abstract>In this study thin-layer drying of bergamot was modelled using artificial neural network. An experimental dryer was used. Thin-layer of bergamot slices at five air temperatures (40, 50, 60, 70 &amp; 80 ÂºC), one thickness (6 mm) and three air velocities (0.5, 1 &amp; 2 m/s) were artificially dried. Initial moisture content (M.C.) during all experiments was between 5.2 to 5.8 (g.g) (d.b.). Mass of samples were recorded and saved every 5 sec. using a digital balance connected to a PC. MLP with momentum and levenberg-marquardt (LM) were used to train the ANNS. In order to develop ANNâ€™s models, temperatures, air velocity and time are used as input vectors and moisture ration as the output. Results showed a 3-8-1 topology for thickness of 6 mm, with LM algorithm and TANSIG activation function was able to predict moisture ratio with R2 of 0.99936. The corresponding MSE for this topology was 0.00006.</abstract>
</record>
