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Application of Data Analytics in Agriculture Sector for Soil Health Analysis: Literature Review

机译:数据分析在农业部门土壤健康分析中的应用:文献综述

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Soil is the most important part of agriculture. This paper compares different prediction models for factors which effects on soil health. Soil moisture, nitrogen, phosphorus, potassium, organic matter, heavy metals content is important for farmers to determine how much irrigation is required, which type of crops can be grown in such soil, which fertilizers to use for better yield from soil. High content of heavy metal can degrade the quality of soil. Such type of soil is also less useful for crops. This paper compares Prediction of heavy metals present in soil with SVM, RF, ELM. Among these three RF is found out to be most accurate and stable. SVM gives best accuracy for prediction of soil moisture and predicting the soil nutrients like N, P, K.
机译:土壤是农业最重要的部分。本文比较了影响土壤健康的不同预测模型。土壤水分,氮,磷,钾,有机质,重金属的含量对于农民确定需要多少灌溉,在这种土壤中可以种植哪种农作物,使用哪种肥料以提高土壤产量至关重要。重金属含量高会降低土壤质量。这种类型的土壤对农作物的用处也较小。本文比较了用SVM,RF,ELM对土壤中重金属的预测。在这三个RF中,发现最精确和稳定。支持向量机(SVM)为预测土壤湿度和预测土壤养分(例如N,P,K)提供了最佳准确性。

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