AI-Farm:作物推荐系统

Abhinav Sharma, Muskaan Bhargava, A. Khanna
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引用次数: 7

摘要

农作物种植或农业占印度GDP总量的17%左右,为超过60%的净人口提供就业机会,在印度经济中发挥着至关重要的作用。随着垂直农业等技术的出现,这一领域的发展已经相当明显。但是,即使农业在这个国家有如此巨大的影响力,印度农民仍然依靠传统的方法和信仰来开发他们的土地。例如,依靠天气来适应他们的耕作方法,而不是相反,这是每个农民的特点。我们研究的目的是通过分析土壤中氮、磷、钾的组成、pH值、湿度和降雨量等影响因素,使用决策树、高斯朴素贝叶斯、逻辑回归、随机森林和XGBoost等各种模型,为农民预测最适合他们的情况和环境的作物,从而为农民提供可能的作物建议,这些模型属于机器学习领域。使用TensorFlow Lite在Android应用程序上进行了部署,以确保所有农民都可以轻松访问和使用。
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AI-Farm: A crop recommendation system
Contributing to about 17% of India’s total GDP and providing employment to more than 60% of net population, crop cultivation or agriculture plays an essential role in Indian economy. With the advent of technologies like vertical farming etc, evolution in this domain has been pretty evident. But, even when farming has such a massive command over the country, Indian farmers still rely on conventional methods and beliefs in order to exploit their land. Depending on the weather to comply with their farming method, for instance, and not vice versa is something which is found in every farmer’s trait. The intent of our research is to make possible crop suggestions for farmers by predicting which crop suits their situation and surroundings the best through an analysis of influential factors such as composition of Nitrogen, Phosphorous and Potassium in the soil, its pH value, humidity and rain fall using various models namely Decision tree, Gaussian Naive Bayes, Logistic Regression, Random Forests and XGBoost which fall under the domain of Machine Learning. Deployment has been done on an Android Application using TensorFlow Lite to ensure accessibility and ease of use for all the farmers at their fingertips.
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