Crop and Fertilizer Recommendation System

B. L. Rajeswari, SK. Abdul Muheeth, SK. Vaseem Naazleen, T. P. Kumar, V. Phanindraamouli
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引用次数: 1

Abstract

Being a source of food, raw resources, and jobs, agriculture is essential to the global economy. However, with a growing population, the demand for food production has increased, making it imperative to improve crop yield and sustainability. Since agriculture is greatly influenced by the surrounding natural conditions, we face many challenges in actual agriculture practices. one of the biggest challenges faced by farmers in determining the right crop and fertilizer to use for optimal yield. Efficient technology can be used to increase yields and reduce possible challenges in this area. One approach is to use machine learning techniques to propose crops and fertilizers to farmers based on their unique needs. In this article, we present a crop and fertilizer recommendation system developed using efficient ML models. We link our model with a web application that allows users to input their data and receive personalized recommendations in multiple regional languages. Our system aims to provide farmers with an easy-to-use tool that can help optimize their crop yield and increase sustainability.
作物和肥料推荐系统
作为食物、原材料和就业的来源,农业对全球经济至关重要。然而,随着人口的增长,对粮食生产的需求增加,提高作物产量和可持续性势在必行。由于农业受周围自然条件的影响很大,我们在实际农业实践中面临许多挑战。农民面临的最大挑战之一是确定正确的作物和肥料,以获得最佳产量。可以使用高效的技术来提高产量并减少该领域可能面临的挑战。一种方法是使用机器学习技术,根据农民的独特需求向他们推荐作物和肥料。在本文中,我们提出了一个利用高效机器学习模型开发的作物和肥料推荐系统。我们将模型与一个web应用程序连接起来,该应用程序允许用户输入他们的数据并接收多种地区语言的个性化推荐。我们的系统旨在为农民提供一个易于使用的工具,帮助他们优化作物产量,提高可持续性。
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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