智能农业作物季节产量和成本预测的机器学习方法

M. Nandaraj, A. Roshan Raj, M. Uma Maheshwari, R. Sathiyaraj, K. Tejasvi
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引用次数: 0

摘要

在我们的经济中,农业起着关键的作用。目前的情况使农业部门陷入巨大损失,导致大量粮食短缺和农民自杀事件。这可以通过机器学习、深度学习和物联网等先进科学方法的实施来解决。使用季节产量和成本预测(SYCP)的拟议框架使用机器学习来预测基于特定季节种植的理想作物或一组作物。该模型还分析当前的市场趋势,并预测该季节和地理区域作物的大致价格,农民可以根据这些价格做出相应的决定。随机森林已被发现适合于作物和价格的预测。该框架已经在一个农业数据集上进行了实验,结果发现比现有方法更有效。这将是一个有效的解决方案,它提供了季节性产量和价格预测,以改善农民的经济状况,并推动他们增长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach For Predicting Crop Seasonal Yield and Cost For Smart Agriculture
In our economy, agriculture plays a key component. Current scenario has plunged the agricultural sector into extensive losses leading to a lot of food shortages and cases of farmer suicides. This can be solved through the implementation of advanced scientific methods like Machine learning, Deep Learning, and Internet of Things. The Proposed framework Smart Agriculture using Seasonal Yield and Cost Prediction (SYCP) uses Machine Learning to predict the ideal crop or set of crops to be grown based on a particular season. The Model also analyzes the current market trends and predicts the approximate price of the crop for that season and geographic region based on which the farmer can decide accordingly. Random forest has been found to be suitable for both crop and price prediction. The framework has been experimented with an agricultural dataset and the results were found to be more efficient than the existing methods. This would be an efficient solution, where it offers a seasonal yield along with price prediction to improve the economy of farmers and to push them to grow.
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