Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach

The present study investigated the possible use of artificial neural networks (ANN) to classify five chestnut (Castanea sativa Mill.) varieties. For chestnut classification, back-propagation neural networks were framed on the basis of physical and mechanical parameters. Seven physical and mechanical...

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Main Authors: Yeşim Benal ÖZTEKİN, Alper TANER, Hüseyin DURAN
Format: Article
Language:English
Published: AcademicPres 2020-03-01
Series:Notulae Botanicae Horti Agrobotanici Cluj-Napoca
Subjects:
Online Access:https://www.notulaebotanicae.ro/index.php/nbha/article/view/11752
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spelling doaj-ae43290f9d5c4eda91fd0c7e57d5d3782021-05-02T17:29:24ZengAcademicPresNotulae Botanicae Horti Agrobotanici Cluj-Napoca0255-965X1842-43092020-03-0148110.15835/nbha48111752Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach Yeşim Benal ÖZTEKİN0Alper TANER1Hüseyin DURAN2Ondokuz Mayis University, Faculty of Agriculture, Department of Agricultural Machinery and Technologies Engineering, 55139, SamsunOndokuz Mayis University, Faculty of Agriculture, Department of Agricultural Machinery and Technologies Engineering, 55139, SamsunOndokuz Mayis University, Faculty of Agriculture, Department of Agricultural Machinery and Technologies Engineering, 55139, SamsunThe present study investigated the possible use of artificial neural networks (ANN) to classify five chestnut (Castanea sativa Mill.) varieties. For chestnut classification, back-propagation neural networks were framed on the basis of physical and mechanical parameters. Seven physical and mechanical characteristics (geometric mean diameter, sphericity, volume of nut, surface area, shell thickness, shearing force and strength) of chestnut were determined. It was found that these characteristics were statistically different and could be used in the classification of species. In the developed ANN model, the design of the network is 7-(5-6)-1 and it consists of 7 input, 2 hidden and 1 output layers. Tansig transfer functions were used in both hidden layers, while linear transfer functions were used in the output layer. In ANN model, R2 value was obtained as 0.99999 and RMSE value was obtained as 0.000083 for training. For testing, R2 value was found as 0.99999 and RMSE value was found as 0.00031. In the approximation of values obtained with ANN model to the values measured, average error was found as 0.011%. It was found that the results found with ANN model were very compatible with the measured data. It was found that the ANN model obtained can classify chestnut varieties in a fast and reliable way. https://www.notulaebotanicae.ro/index.php/nbha/article/view/11752back propagation; chestnut classification; feed forward neural network; mechanical properties; physical properties; shape feature
collection DOAJ
language English
format Article
sources DOAJ
author Yeşim Benal ÖZTEKİN
Alper TANER
Hüseyin DURAN
spellingShingle Yeşim Benal ÖZTEKİN
Alper TANER
Hüseyin DURAN
Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach
Notulae Botanicae Horti Agrobotanici Cluj-Napoca
back propagation; chestnut classification; feed forward neural network; mechanical properties; physical properties; shape feature
author_facet Yeşim Benal ÖZTEKİN
Alper TANER
Hüseyin DURAN
author_sort Yeşim Benal ÖZTEKİN
title Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach
title_short Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach
title_full Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach
title_fullStr Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach
title_full_unstemmed Chestnut (Castanea sativa Mill.) cultivar classification: an artificial neural network approach
title_sort chestnut (castanea sativa mill.) cultivar classification: an artificial neural network approach
publisher AcademicPres
series Notulae Botanicae Horti Agrobotanici Cluj-Napoca
issn 0255-965X
1842-4309
publishDate 2020-03-01
description The present study investigated the possible use of artificial neural networks (ANN) to classify five chestnut (Castanea sativa Mill.) varieties. For chestnut classification, back-propagation neural networks were framed on the basis of physical and mechanical parameters. Seven physical and mechanical characteristics (geometric mean diameter, sphericity, volume of nut, surface area, shell thickness, shearing force and strength) of chestnut were determined. It was found that these characteristics were statistically different and could be used in the classification of species. In the developed ANN model, the design of the network is 7-(5-6)-1 and it consists of 7 input, 2 hidden and 1 output layers. Tansig transfer functions were used in both hidden layers, while linear transfer functions were used in the output layer. In ANN model, R2 value was obtained as 0.99999 and RMSE value was obtained as 0.000083 for training. For testing, R2 value was found as 0.99999 and RMSE value was found as 0.00031. In the approximation of values obtained with ANN model to the values measured, average error was found as 0.011%. It was found that the results found with ANN model were very compatible with the measured data. It was found that the ANN model obtained can classify chestnut varieties in a fast and reliable way.
topic back propagation; chestnut classification; feed forward neural network; mechanical properties; physical properties; shape feature
url https://www.notulaebotanicae.ro/index.php/nbha/article/view/11752
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