AI-Powered Predictive Modelling of Legume Crop Yields in a Changing Climate

Myung Hwan Na, In Seop Na
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Abstract

Background: This study utilized advanced Artificial Intelligence (AI) techniques to develop predictive models for legume crop yields in the context of climate change scenarios. With the escalating challenges posed by climate change, accurately forecasting agricultural outcomes is imperative for sustainable food production. Methods: Utilizing an extensive dataset comprising legume crop yields, climate change forecasts and relevant environmental factors, this study employs advanced machine learning techniques such as XGBoost to create strong predictive models. The analysis encompasses diverse climate change scenarios to assess the resilience of legume crops under varying environmental conditions. Result: Results indicate a significant enhancement in predictive accuracy compared to conventional models, demonstrating the efficacy of AI in anticipating legume crop yields amidst climatic uncertainties. The presented work not only improves the precision of agricultural predictive modeling but also underscores the vital role of AI in mitigating the detrimental effects of climate change on food security. The agriculture industry faces changing weather patterns, thus using AI-powered prediction models becomes essential for making well-informed decisions and implementing sustainable farming methods.
人工智能驱动的气候变化下豆科作物产量预测模型
背景:本研究利用先进的人工智能(AI)技术开发了气候变化情景下豆科作物产量的预测模型。随着气候变化带来的挑战不断升级,准确预测农业成果对于可持续粮食生产来说势在必行。方法:本研究利用由豆类作物产量、气候变化预测和相关环境因素组成的大量数据集,采用 XGBoost 等先进的机器学习技术创建了强大的预测模型。分析包括各种气候变化情景,以评估豆类作物在不同环境条件下的恢复能力。结果:结果表明,与传统模型相比,预测准确性大幅提高,证明了人工智能在气候不确定情况下预测豆科作物产量的功效。这项工作不仅提高了农业预测建模的精确度,还强调了人工智能在减轻气候变化对粮食安全的不利影响方面的重要作用。农业面临着不断变化的天气模式,因此使用人工智能驱动的预测模型对于做出明智决策和实施可持续农业方法至关重要。
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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