An Efficient Machine Learning Approaches for Crop Recommendation based on Soil Characteristics

Sivanandam K, P. M, Naveen B, S. S
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引用次数: 1

Abstract

Farming is a major industry in most poor nations. Modern agriculture is continually progressing in terms of farming methods and agricultural innovations. Farmers may find it difficult to adjust to ever-evolving market, consumer, and policy demands. Among the challenges that farmers face, (i) Fixing the climate crisis brought on by deforestation and factory emissions (ii) Crop development may be hampered by deficiencies in soil nutrients brought on by a lack of minerals including potassium, N, and phosphorus. (iii) Farmers should avoid planting the same crops year after year without experimenting with anything new. They just throw on a bunch of fertilizers, regardless of how much or how good a quality they are. The purpose of this research is to determine which crop prediction model is the most effective at helping farmers make informed decisions about which crops to grow given a variety of environmental and agronomic variables. In this article, Selection Model is used to analyze the well-known algorithms including K-Nearest Neighbor.
基于土壤特征的高效作物推荐机器学习方法
农业是大多数贫穷国家的主要产业。现代农业在耕作方式和农业创新方面不断进步。农民可能会发现很难适应不断变化的市场、消费者和政策需求。农民面临的挑战包括:(1)解决森林砍伐和工厂排放带来的气候危机;(2)钾、氮和磷等矿物质缺乏导致土壤养分不足,可能会阻碍作物生长。农民应避免年复一年地种植同样的作物而不试验任何新的作物。他们只是扔了一堆肥料,不管它们的质量有多好。这项研究的目的是确定哪种作物预测模型最有效地帮助农民在各种环境和农艺变量的情况下做出明智的决定,决定种植哪种作物。本文采用选择模型对包括k -最近邻算法在内的知名算法进行了分析。
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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