使用机器学习算法预测不同干燥时间香蕉的甜度

IF 1.3 Q4 ENGINEERING, ENVIRONMENTAL Journal of Ecological Engineering Pub Date : 2024-06-01 DOI:10.12911/22998993/187789
Sufyan A. Al-Mashhadany, Haider Ali Hasan, M. A. J. Al-Sammarraie
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引用次数: 1

摘要

由于香蕉含有人体必需的营养成分,香蕉干的消费量越来越大。为了更长久地保存香蕉,人们对香蕉进行了干燥处理,使其成为一种不会很快变质的清淡零食。另一方面,机器学习算法可用于预测香蕉干的甜度。文章旨在研究使用空气干燥器进行不同干燥时间(6、8 和 10 小时)对香蕉一些物理和化学特性的影响,包括 CIE-L*a*b、含水量、碳水化合物和甜度。此外,还使用机器学习算法 RF、SVM、LDA、KNN 和 CART,根据 CIE-L*a*b 比率预测香蕉干的甜度。结果表明,增加干燥时间会导致碳水化合物、甜度和 CIE-L*a*b 含量的增加,同时会导致干香蕉片中水分含量的减少。因此,CIE-L*a*b 水平与甜度之间存在直接关系。另一方面,RF 算法和 CART 算法的预测准确率最高,分别为 86% 和 0.8(Kappa 值)。其他算法(SVM、LDA、KNN)的预测准确率为 80%,Kappa 值为 0.7。在检验统计显著性方面,接受了零假设(H0),因为所用算法的度量分布之间没有关系。
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Using Machine Learning Algorithms to Predict the Sweetness of Bananas at Different Drying Times
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. 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 CART algorithms gave the highest prediction accuracy of 86% and 0.8 on the Kappa measure. While the other algorithms (SVM, 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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来源期刊
Journal of Ecological Engineering
Journal of Ecological Engineering ENGINEERING, ENVIRONMENTAL-
CiteScore
2.60
自引率
15.40%
发文量
379
审稿时长
8 weeks
期刊介绍: - Industrial and municipal waste management - Pro-ecological technologies and products - Energy-saving technologies - Environmental landscaping - Environmental monitoring - Climate change in the environment - Sustainable development - Processing and usage of mineral resources - Recovery of valuable materials and fuels - Surface water and groundwater management - Water and wastewater treatment - Smog and air pollution prevention - Protection and reclamation of soils - Reclamation and revitalization of degraded areas - Heavy metals in the environment - Renewable energy technologies - Environmental protection of rural areas - Restoration and protection of urban environment - Prevention of noise in the environment - Environmental life-cycle assessment (LCA) - Simulations and computer modeling for the environment
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