使用机器学习进行作物推荐

Akshita Waldia, Pragati Garg, Priyanka Garg, Rachna Tewani, A. Dubey, Anurag Agrawal, Great Learning India Data Scientist
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引用次数: 4

摘要

印度人口超过10亿。印度近65%的人口生活在以农业为主要职业的农村。该国多样的气候条件导致了大量农产品的生产。许多调查已经证明,由于选择错误的作物导致产量下降,农民的自杀率逐年上升。在一些地区,农民缺乏关于土壤成分和天气条件的信息,可能会选择错误的作物播种,从而导致产量下降。农作物的产量取决于地理参数,如湿度、降雨量和土壤特性,如pH值和氮磷钾含量。技术与农业的结合有助于农民提高产量。农业规划的主要目标是利用有限的土地资源,实现作物的最大产量。本文主要侧重于根据土壤组成和天气条件,使用ML算法(决策树,朴素贝叶斯,随机森林)推荐合适的作物,以最大限度地提高农场产量,提高印度农民的经济状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop Recommendation Using Machine Learning
The population of India is over one billion. Nearly 65 percent of the population of India lives in villages with the main occupation being agriculture. The diverse climatic conditions in the country result in the production of a large number of agricultural items. Many surveys have proved that the suicide rate of farmers is proliferating over years due to the selection of the wrong crop resulting in less yield. In some areas, farmers lack information about the composition of soil and weather conditions and may choose the wrong crop to sow which results in lesser yield. Production of crops depends on geographical parameters like humidity, rainfall and properties of soil such as pH, and NPK content. Integration of technology with agriculture helps the farmer to improve his production. The main goal of agricultural planning is to achieve the maximum yield rate of crops by using a limited number of land resources. This paper mainly focuses on recommending the appropriate crop using ML Algorithms ( Decision Tree, Naive Bayes, Random Forest ) based on soil composition and weather conditions to maximize the yield of the farm and increase the economic condition of India’s farmers.
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