Machine Learning Approach: Recommendation of Suitable Crop for Land Using Meteorological Factors

S. A, M. K, G. K
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引用次数: 1

Abstract

Increasing population increases the need for food. As most population migrates towards cities for employment, the cultivable lands are turning into factories and apartments. The landlords are selling the plots due to the loss they face after cultivation. This loss occurs due to improper selection of crop for the particular field. The loss could be rectified if they are suggested with a suitable crop, based on the meteorological factors over the land area like testing soil quality, humidity, pH, etc. The farmers in interior places face difficulty in consulting with the experts for selection or rotation of crop. To overcome this problem, ANN came to play a role and also gave an effective solution. After knowing the suitable crop for the field, it is getting easier to decide the fertilizers and intercrop alongside. The profit rate will be considerably high using this method. It is also cost-efficient. This paper discusses the model for crop prediction using Machine learning algorithms. The model is compared with different approaches such as random forest, decision tree and SVM aiming to get a complete solution for the crop prediction and recommendation problem.
机器学习方法:利用气象因子推荐土地适宜作物
不断增长的人口增加了对食物的需求。随着大多数人口移居到城市就业,可耕地正在变成工厂和公寓。由于耕种后的损失,地主们正在出售土地。这种损失是由于对特定田地的作物选择不当造成的。如果根据土地上的气象因素,如测试土壤质量、湿度、pH值等,建议他们选择合适的作物,就可以弥补损失。内陆地区的农民在与专家协商选择或轮作作物时面临困难。为了克服这一问题,人工神经网络开始发挥作用,并给出了有效的解决方案。在了解了适合该地区的作物后,确定肥料和间作就变得容易了。使用这种方法,利润率将相当高。它也具有成本效益。本文讨论了利用机器学习算法进行作物预测的模型。将该模型与随机森林、决策树和支持向量机等方法进行比较,以期完整解决作物预测和推荐问题。
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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