AI and Machine Learning for Optimal Crop Yield Optimization in the USA

Md Rokibul Hasan
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Abstract

The agricultural sector plays a paramount role in the economy of the United States, contributing significantly to the GDP and affirming sustainability for American residents. This study explored the application of Artificial Intelligence and Machine Learning techniques in maximizing crop yields in America. This research employed various software tools, comprising Python programming language, Pandas library for data manipulation and analysis, Scikit-learn library for machine learning models and evaluation metrics, and LIME library for explainable AI. The crop yield datasets for the current research were sourced from Kaggle. This dataset provided substantial insights regarding crop cultivation practices within the USA context. This study proposes the "XAI-CROP" algorithm, which is a novel explainable artificial intelligence (XAI) model developed particularly to reinforce the interpretability, transparency and trustworthiness of crop recommendation systems (CRS). From the experimentation, the XAI-CROP model excelled at forecasting crop yield, as demonstrated by its lowest MSE value of 0.9412, suggesting minimal errors.  Besides, Its MAE of 0.9874 suggests an average error of less than 1 unit in forecasting crop yield. Furthermore, the R2 value of 0.94152 suggests that the algorithm accounts for 94.15% of the data's variability.
用人工智能和机器学习优化美国农作物产量
农业部门在美国经济中发挥着至关重要的作用,为国内生产总值做出了巨大贡献,并为美国居民的可持续发展提供了保障。本研究探讨了人工智能和机器学习技术在美国作物产量最大化中的应用。本研究采用了多种软件工具,包括 Python 编程语言、用于数据操作和分析的 Pandas 库、用于机器学习模型和评估指标的 Scikit-learn 库以及用于可解释人工智能的 LIME 库。本次研究的作物产量数据集来自 Kaggle。该数据集提供了有关美国农作物种植实践的大量见解。本研究提出的 "XAI-CROP "算法是一种新颖的可解释人工智能(XAI)模型,专门用于加强作物推荐系统(CRS)的可解释性、透明度和可信度。实验结果表明,XAI-CROP 模型在预测作物产量方面表现出色,其最低 MSE 值为 0.9412,表明误差极小。 此外,其 MAE 值为 0.9874,表明预测作物产量的平均误差小于 1 个单位。此外,其 R2 值为 0.94152,表明该算法可解释 94.15%的数据变异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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