机器学习在预测南非新鲜农产品批发市场水果浪费中的应用

IF 4.8 Q1 AGRICULTURE, MULTIDISCIPLINARY
Ikechukwu Kingsley Opara , Douglas Chinenye Divine , Yardjouma Silue , Umezuruike Linus Opara , Jude A. Okolie , Olaniyi Amos Fawole
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引用次数: 0

摘要

机器学习通常用于食品价值链中的预测和分类任务。然而,它在食物垃圾研究中的应用一直受到限制。因此,本研究以南非的一个新鲜农产品批发市场为例,探讨了在食品价值链批发层面预测水果浪费的潜力。该研究旨在开发一种机器学习模型来预测营销过程中的水果浪费。使用2021年至2023年案例研究市场的历史数据,应用了不同的机器学习算法,如随机森林、梯度增强、决策树、XGBoost、额外树和堆叠模型。结果显示,瓜类和柑橘类水果对市场上的水果浪费贡献更大,而春夏两季浪费最多,2022年浪费最多。决策树和额外树模型是训练数据集中最有前途的机器学习模型,MAE均为112.19。同时,在测试数据集上,XGBoost以232.32的MAE优于其他模型。该研究为该领域的未来研究提供了坚实的基础,并建议整合各种数据以建立更稳健和准确的模型。随着进一步的研究和实施,所开发的机器学习模型有可能帮助市场决策和政策制定,以减少水果在市场上的采后浪费,从而提高盈利能力和可持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of machine learning in predicting fruit waste in a South African fresh produce wholesale market
Machine learning has been generally used for prediction and classification tasks in the food value chain. However, its application in the study of food waste has been limited. Therefore, this study explored the potential of predicting fruit waste at a wholesale level of the food value chain, using a fresh produce wholesale market in South Africa as a case study. The study aimed to develop a machine learning model to predict fruit waste during marketing. Using historical data at the case study market from 2021 to 2023, different machine learning algorithms such as Random Forest, Gradient boosting, Decision tree, XGBoost, Extra tree and a Stacked Model were applied. The results revealed that fruits in the category of melons and citrus contributed more to fruit waste at the market, while the most waste was during spring and summer seasons, with the highest waste occurring in 2022. The decision tree and extra tree models were the most promising among the machine learning models in the training dataset, with an MAE of 112.19 each. At the same time, the XGBoost outperformed other models for the testing dataset with an MAE of 232.32. The study provided a solid baseline for future studies in this area and recommended integrating varied data for a more robust and accurate model. With further research and implementation, the developed machine learning model has the potential to aid market decisions and policymaking to reduce postharvest waste of fruits at the market, thereby enhancing profitability and sustainability.
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来源期刊
CiteScore
5.40
自引率
2.60%
发文量
193
审稿时长
69 days
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