Krishi-Stats:使用机器学习方法的基于web的农作物价格预测系统

Dakhole Dipali
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引用次数: 0

摘要

农业是印度的主要生计。大多数人通过农业赚取面包和黄油,但农民没有获得足够的利润,而且由于降雨不规律、农产品价格高度波动和生产不确定,该领域面临增长下降。本研究的目的是设计和实现一个采用最合适的机器学习技术的自动农作物价格预测系统,并在Krishi-Stats网站上显示预测结果,以方便农民理解。本研究将ARIMA、VAR和XGBoost三种机器学习算法应用于政府网站收集的大量历史数据。将ML算法与它们的均方根误差值(RMSE)进行比较。由于XGBoost给出的最优RMSE值为0.94,我们选择XGBoost作为Krishi-Stats网站的预测系统引擎。在网站上,作物预测价格是为所有12种选定作物绘制的,并使用预测图进行可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Krishi-Stats: A Web-based System for Crop Price Prediction using Machine Learning Approach
Agriculture is the main livelihood in India. Most of the people earn bread and butter through farming, but the farmers are not getting enough profit and the field is facing growth downward due to irregular rainfall, high volatility in agriculture commodity prices and uncertainties in production. The objective of this study is to design and implement an automated crop price prediction system with best suitable machine learning technique, as well as displaying prediction results on website Krishi-Stats designed for easy understanding for Farmers. In this study, three machine-learning (ML) algorithms, ARIMA, VAR and XGBoost are applied on large historical data collected from government website. The ML algorithms compared with their root mean square error values (RMSE). As XGBoost has given optimum RMSE value of 0.94, has been selected as the prediction system engine of our website Krishi-Stats. On website, the crop prediction prices are plotted for all twelve selected crops and visualized using prediction graphs.
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