Sustainable Food Development Based on Ensemble Machine Learning Assisted Crop and Fertilizer Recommendation System

Komala Devi K, Josephine Prem Kumar
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Abstract

Agriculture is the most vital sector for the global food supply, and it also provides raw materials for other types of industries. A crop recommendation system is essential for farmers who want to get the most out of their crop-choosing decisions. Over the last several decades, the world's ability to produce food has grown substantially owing to the extensive usage of fertilizers. Therefore, there has to be a more eco-friendly and effective way to utilize fertilizers that include nitrogen (N), phosphorous (P), and potassium (K) to ensure food security. For the reason, this study proposes an ensemble machine learning–assisted crop and fertilizer recommendation system (EML–CFRS) to maximize agricultural output while ensuring the correct use of mineral resources. The research used a dataset obtained from the Kaggle repository like that people can assess several distinct ML algorithms. The databases include data on three climate variables—temperature, rainfall, and humidity—and information on NPK and soil pH. The yields agricultural crops were used to train these models, including Decision Tree, KNN, XGBoost, Support Vector Machine, and Random Forest. Depending on the current weather and soil conditions, the trained model may then recommend the optimal fertiliser for a certain crop. Predicting the ideal kind and quantity of fertilizer for different crops was accomplished with a 96.5% accuracy rate by our suggested strategy.
基于集合机器学习辅助作物和肥料推荐系统的可持续粮食开发
农业是全球粮食供应最重要的部门,同时也为其他类型的工业提供原材料。对于希望从作物选择决策中获得最大收益的农民来说,作物推荐系统是必不可少的。过去几十年来,由于化肥的广泛使用,世界粮食生产能力大幅提高。因此,必须有一种更环保、更有效的方法来利用包括氮(N)、磷(P)和钾(K)在内的肥料,以确保粮食安全。为此,本研究提出了一种集合机器学习辅助作物和肥料推荐系统(EML-CFRS),在确保正确使用矿产资源的同时,最大限度地提高农业产量。研究使用了从 Kaggle 数据库中获得的数据集,以便人们评估几种不同的 ML 算法。数据库包括三个气候变量的数据--温度、降雨量和湿度,以及氮磷钾和土壤酸碱度的信息。农作物产量被用于训练这些模型,包括决策树、KNN、XGBoost、支持向量机和随机森林。根据当前的天气和土壤条件,经过训练的模型可以为某种作物推荐最佳肥料。通过我们建议的策略,为不同作物预测理想肥料种类和数量的准确率达到了 96.5%。
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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