Repository of Research and Investigative Information

Repository of Research and Investigative Information

Rafsanjan University of Medical Sciences

Assessing the Performance of a Machine Learning System to Predict Geometrical Properties of Ahmad Aghaei Pistachio Kernels

(2022) Assessing the Performance of a Machine Learning System to Predict Geometrical Properties of Ahmad Aghaei Pistachio Kernels. Pistachio and Health Journal. pp. 22-29. ISSN 2588-5529

[img] Text
PHJ_Volume 5_Issue 1_Pages 22-29.pdf - Published Version

Download (695kB)

Official URL: http://phj.rums.ac.ir/article_149024.html

Abstract

Background: The use of machine learning techniques such as artificial neural networks (ANN) improves the performance and speed of prediction processes as well as their reliability in the design of agricultural processing machines. Machine learning as a subset of artificial intelligence makes it possible to develop a unique way to create a predictive model system in the form of a known dataset by developing machine learning models (MLM). Materials and Methods: In this study, first the geometric properties of pistachio kernels including the major diameter (L), intermediate diameter (T), minor diameter (W), geometric mean diameter (Dg), and surface area (S) were calculated at four moisture levels of 4.33, 22.64, 29.11, and 41.35% (w.b). Then, the data obtained in this step were used as the input values (L, W & T) and the output value (S) into the machine learning system. Multi-layer perceptron (MLP) and radial basis functions (RBF) were used as two machine learning models to predict the surface area of pistachio kernel during rehydration. Results: The data analysis revealed that the neural network model of RBF with 42 neurons in the hidden layer (N1st=42) had the lowest mean relative error (MRE=0.01414), and the highest coefficient of determination (R2=0.954) and chosen as the best model for predicting the surface area of pistachio kernel. Conclusion: Following the findings of this study, it can be concluded that the MLM as one of new forecasting techniques can be used to estimate the engineering properties of agricultural products

Item Type: Article
Keywords: Pistachio (Pistacia Vera L.),Artificial Neural Network,Machine Learning System,Modeling and Predicting Engineering Properties
Divisions: Research Vice-Chancellor Department > Pistachio and Health Journal
Page Range: pp. 22-29
Journal or Publication Title: Pistachio and Health Journal
Journal Index: Not Index
Volume: 5
Number: 1
Publisher: Rafsanjan University of Medical Sciences
Identification Number: https://doi.org/10.22123/phj.2022.324121.1120
ISSN: 2588-5529
Depositing User: خانم مهتاب اکبری
URI: http://eprints.rums.ac.ir/id/eprint/29826

Actions (login required)

View Item View Item