一种基于监督机器学习的作物产量预测混合方法

M. Patil, M. Roshini, Matimpati Chitrarupa, B. Laxmaiah, S. Arun, R. Thiagarajan
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引用次数: 0

摘要

农业生产一直是经济发展的重要因素,对我国经济的繁荣产生了巨大的影响。此外,随着科学的迅速发展,农业已成为农业中面临的最关键问题之一,如土地、地下水流动、灾难性事件、除草剂和杀虫剂。在产量发展的所有阶段,观测到的可接受降水量对农业产量的发展至关重要。在某些情况下,良好的季风季节不足以帮助农业生产,了解它可以帮助农民确定只有通过灌溉农业才能获得的水分量。预测可行的降水量、收获量和需水量是一项艰巨的任务,需要对一长组变量(如相对湿度和温度)进行彻底而可靠的审查。在早期,可行季风是通过考虑3个重要方面来计算的:水分、热量和降雨。分析历史上的几个研究机制,并调查大雨中相当大的比例。在研究设计中,我们采用混合方法,结合逻辑回归和随机森林(LRRF)来预测与年降雨量相关的作物产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Approach for Crop Yield Prediction using Supervised Machine Learning
Agricultural production has always been a vital factor in economic development, and it has had an enormous impact on our economic prosperity. Also, as science progresses rapidly, the farming industry has become one of the most critical segments to face issues in farming, such as land, groundwater flow, catastrophic events, herbicides, and pesticides. Throughout all stages of yield development, the amount of acceptable precipitation observed is critical to the development of harvests in farming. There will be occasions when the excellent monsoon season is insufficient to aid agricultural production, and understanding it can assist farmers in determining the volume of moisture that can only be made available via irrigated agriculture. Forecasting feasible precipitation and harvest and water requirements is a difficult task requiring a thorough and reliable scrutiny of a long set of variables, such as relative humidity and temperature. In the earlier period, the viable monsoon was calculated by factoring in 3 significant aspects: moisture, heat, and rain. Analyze several research mechanisms throughout history, and investigate a considerable proportion in heavy rains. We employ a hybrid approach that combines logistic regression and random forest (LRRF) to anticipate crop production concerning annual rainfall as in the research design.
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