基于机器学习算法的精准农业作物推荐系统综合研究

Vutukuru Keerthi Reddy, Vanmalli Varshini, N. Gireesh, M. Venkata Naresh
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引用次数: 0

摘要

作物推荐是精准农业领域最关键的组成部分之一。作物建议是在考虑了广泛的不同因素后制定的。“精准农业”一词指的是一种现代农业方法,它利用土壤特征、土壤种类和其他因素(如作物产量和天气条件)的信息,向农民提供关于最有利于在农场种植的作物类型的建议,以实现最高的产量和利润水平。作物推荐系统目前正在使用机器学习方法构建,包括随机森林、梯度增强、XG增强、Light GBM、SVM和决策树。确定最佳作物生产的过程是由钾(K)、磷(P)和氮(N)等品质以及温度、湿度、pH值和降雨量等信息组成的。这种应用将有助于农民提高农业产量,尽量减少耕地土壤的退化,减少农业生产中使用的化学品的数量,并利用现有的水资源提高耕地的生产力。此外,该应用程序还向农民推荐5种最优先的作物。在本文使用的所有分类器中,XG Boost达到了99.500的最佳准确率。它还获得了最高的召回分数99.545455,精度分数99.564935,F1分数99.545669。
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A Comprehensive Study on Crop Recommendation System for Precision Agriculture Using Machine Learning Algorithms
Crop recommendation is among the most crucial components of the field known as precision agriculture. The crop recommendations were formulated after considering a wide range of distinct considerations. The term "precision agriculture" refers to a method of contemporary farming that makes use of information on soil features, soil kinds, and other factors, such as crop yields, and weather conditions to provide farmers with recommendations regarding the types of crops that would be most beneficial to grow on their farms to achieve the highest possible levels of both yield and profit. The crop recommendation system is currently being built with the use of machine learning methods including Random Forest, Gradient Boosting, XG Boost, Light GBM, SVM, and decision tree. The process of identifying the best crop to produce is aided by the information that consists of qualities such as potassium (K), phosphorous (P), and nitrogen (N) as well as temperature, humidity, pH, and rainfall. This application will be of assistance to farmers in enhancing agricultural output, minimizing the deterioration of soil on the cultivated ground, reducing the number of chemicals used in agricultural production, and increasing the productivity of cultivated land with available water resources. Also, this application recommends the top 5 prioritized crops to farmers. XG Boost achieved the best accuracy of 99.500 out of all these classifiers that were utilized in this paper. It also achieved the highest recall score of 99.545455, a precision score of 99.564935, and an F1 score of 99.545669.
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