Predictive Analysis of Market trends in Agriculture using ML/AI Techniques

Vishwash Tetarwal, K. Dashora, Dharmaraja Selvamuthu
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Abstract

The paper aims to predict crop prices to create a system that recommends crop choices, reduces price-related risks, and suggests optimal planting times. This paper approaches the problem of predicting crop prices by employing Time Series Fore-casting with a focus on ARIMA modeling. Our main objectives are to cut down on risks associated with price fluctuations and provide practical decision support for farmers, aiding in optimal crop choices and planting times. Starting with a detailed exploration of agricultural trends, we identify key factors influencing crop prices. We then dive into the application of advanced Time Series Forecasting techniques, specifically ARIMA modeling, to analyze historical monthly data for accurate predictions. The reliability of our models is ensured through thorough checks for stationarity. The paper emphasizes the crucial role of precise price forecasts in effective risk management for farmers. By integrating these insights into decision-making processes, farmers gain the ability to navigate market uncertainties and optimize their agricultural practices.
利用 ML/AI 技术预测分析农业市场趋势
本文旨在预测作物价格,以创建一个系统,推荐作物选择、降低价格相关风险并建议最佳种植时间。本文采用时间序列预测法来解决农作物价格预测问题,重点是 ARIMA 模型。我们的主要目标是降低与价格波动相关的风险,为农民提供实用的决策支持,帮助他们选择最佳作物和播种时间。我们首先对农业趋势进行详细探讨,找出影响作物价格的关键因素。然后,我们深入应用先进的时间序列预测技术,特别是 ARIMA 模型,分析历史月度数据,以进行准确预测。通过对静态性的彻底检查,我们确保了模型的可靠性。本文强调了精确价格预测在农民有效风险管理中的关键作用。通过将这些见解纳入决策过程,农民获得了驾驭市场不确定性和优化农业实践的能力。
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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