处理预测小农农业分析的异常值

M. Srikanth, R. Mohan, M. Naik
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引用次数: 1

摘要

农业在一个国家的经济和国内生产总值中起着重要作用。大多数农民仍然遵循旧的和传统的耕作方式,这可能导致作物歉收。他们依赖经纪人/中间商。给农民造成了巨大损失,自杀率因此上升。提供准确的结果,因为它考虑了各种因素,如土壤和天气条件,以确定最佳作物和预测产量。政府得到了每块土地的总产量的估计。在农民和买家之间提供点对点的环境,消除了中介的需要,使农民能够直接从买家那里获得利润。作物歉收的原因是种植作物时没有充分了解气候和土壤条件,而把货物卖给经纪人则会造成更大的损失。目标是开发一个系统,使农民能够收到作物建议和产量预测,并在没有中间商参与的情况下直接向政府出售他们的收成。作物产量取决于土壤和气象因素,如pH值、氮磷钾水平、温度、降雨量和湿度。在此基础上,该系统向农民建议哪种作物最适合、最有利可图,以及潜在的产量。为了使用最优点、值、使用多元线性回归的作物预测回归和逻辑回归来解决小农作物分类问题,我们采用了监督机器学习模型。它消除了中间商向买家出售农产品的需要,使农民能够直接获利
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tackle Outliers for Predictive Small Holder Farming Analysis
Agriculture plays a major role in a country's economy and GDP. Most of the farmers still follow old and conventional farming practices which may lead to crop failure. They depend on brokers/middlemen. Create a huge loss for the farmers due to which suicidal rates have increased. Provides accurate results as it considers various factors like soil and weather conditions for determining the best crop and for predicting the yield. The government gets an estimation of the total yield per area. Provides a Peer- To-Peer environment between farmers and buyers removing the need for brokerage, which enables farmers to get profit directly from buyers. Crop failures result from planting a crop without adequate knowledge of climatic and soil conditions, and selling goods to a broker result in even more losses. The goal is to develop a system that allows farmers to receive crop proposals and yield forecasts, as well as sell their harvest directly to the government without the involvement of middlemen. Crop yield is determined by soil and meteorological factors such as pH, NPK levels, temperature, rainfall, and humidity. Based on this, the system advises farmers on which crop is the most suitable and profitable, as well as the potential yield. To tackle the Small Holders' Crop Classification using Optimal Points, Values, Crop Prediction Regression Using Multiple Linear Regression, and Logistic Regression are supervised machine learning models. It eliminates the need for an intermediary to sell to buyers, allowing farmers to earn directly
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