Crop Recommendation and Yield Estimation Using Machine Learning

A. Ashwitha, C. Latha
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引用次数: 5

Abstract

In most developing countries like India, Agriculture is seen as one of the most widely followed habitations and contributes majorly to the country’s economy. Agriculture provides the primary source of food, income, livelihood and employment to the majority of rural populations in India. Many crops are destroyed every year due to a lack of technical knowledge and unpredictable weather patterns such as temperature, rainfall, and other atmospheric parameters, which play a massive role in deciding the crop yield and profit. Therefore, choosing the right crop to grow and enhancing crop yield is an essential aspect of improving real-life farming scenarios. One of the motives is to collect and integrate the agricultural data from specific regions that may be used to analyse the optimal crop and estimate the crop yield. This script is novel by using simple crop, soil and weather parameters like crop, the area under cultivation, nitrogen, phosphorus and potassium content of the soil, season, average rainfall and temperature of a district in Karnataka, India. The user can predict the most suitable crop and its estimated yield for a chosen year. This model uses primary classification, techniques like the random forest, k-NN, logistic regression, decision tree, XGBoost, SVM and gradient boosting classifier for determining the most suitable crop and regression algorithms like Linear Regression, k-NN, DBSCAN, Random Forest and ANN algorithm to estimate the yield of the most optimal crop identified earlier. The algorithm that has the least mean error is chosen for prediction and estimation and thus gives better results than the particular machine learning algorithm domain. There is a web interface for ease of use for end-users. Therefore, this project assists the farmers in choosing the suitable crop that can be grown in a particular region during a specific season or specific period and estimate its yield and predict if the recommended crop is profitable. Hence this project helps the farmers in preserving their time by assisting them in the decision-making process.
利用机器学习进行作物推荐和产量估计
在印度等大多数发展中国家,农业被视为最受欢迎的行业之一,对国家经济做出了主要贡献。农业为印度大多数农村人口提供了粮食、收入、生计和就业的主要来源。由于缺乏技术知识和不可预测的天气模式(如温度、降雨和其他大气参数),每年都有许多作物被摧毁,这些天气模式在决定作物产量和利润方面发挥着巨大作用。因此,选择合适的作物种植和提高作物产量是改善现实农业环境的一个重要方面。其中一个动机是收集和整合来自特定地区的农业数据,这些数据可用于分析最佳作物和估计作物产量。这个脚本是新颖的,它使用了简单的作物、土壤和天气参数,如作物、种植面积、土壤的氮、磷和钾含量、季节、印度卡纳塔克邦一个地区的平均降雨量和温度。用户可以预测选定年份最适合的作物及其估计产量。该模型使用初级分类、随机森林、k-NN、逻辑回归、决策树、XGBoost、SVM和梯度增强分类器等技术来确定最合适的作物,并使用线性回归、k-NN、DBSCAN、随机森林和ANN算法等回归算法来估计前面确定的最优作物的产量。选择平均误差最小的算法进行预测和估计,从而获得比特定机器学习算法域更好的结果。有一个便于最终用户使用的web界面。因此,该项目帮助农民选择在特定季节或特定时期在特定地区种植的合适作物,并估计其产量,预测推荐作物是否有利可图。因此,该项目帮助农民在决策过程中节省时间。
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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