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Using Machine Learning Algorithms to Predict the Sweetness of Bananas at Different Drying Times
 
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Department of Agricultural Machinery and Equipment, University of Baghdad, College of Agricultural Engineering Sciences, Baghdad, Iraq
 
 
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Mustafa A. J. Al-Sammarraie   

Department of Agricultural Machinery and Equipment, University of Baghdad, College of Agricultural Engineering Sciences, Baghdad, Iraq
 
 
J. Ecol. Eng. 2024; 25(6):231-238
 
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ABSTRACT
The consumption of dried bananas has increased because they contain essential nutrients. In order to preserve bananas for a longer period, a drying process is carried out, which makes them a light snack that does not spoil quickly. On the other hand, machine learning algorithms can be used to predict the sweetness of dried bananas. These applications can help improve the quality, safety, and nutritional value of dried bananas. The article aimed to study the effect of different drying times (6, 8, and 10 hours) using an air dryer on some physical and chemical characteristics of bananas, including CIE-L*a*b, water content, carbohydrates, and sweetness. Also predicting the sweetness of dried bananas based on the CIE-L*a*b ratios using machine learning algorithms RF, SVM, LDA, KNN, and CART. The results showed that increasing the drying time led to an increase in carbohydrates, sweetness, and CIE-L*a*b levels, while it led to a decrease in the moisture content in dried banana slices. Therefore, there is a direct relationship between CIE-L*a*b levels and sweetness. On the other hand, the RF and SVM algorithms gave the highest prediction accuracy of 86% and 0.8 on the Kappa measure. While the other algorithms (CART, LDA, KNN) gave a prediction accuracy of 80% and 0.7 on the Kappa measure. In terms of testing statistical significance, the null hypothesis (H0) was accepted because there is no relationship between the metric distributions of the algorithms used.
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