Prognostic of Soil Nutrients and Soil Fertility Index Using Machine Learning Classifier Techniques

B. Swapna, S. Manivannan, M. Kamalahasan
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Abstract

Soil testing is a unique tool for finding the available soil reaction (pH), organic carbon, and nutrients status of the soil. It helps to select the suitable crops concerning available pH and soil nutrients level to increase crop production. In this current approach, the soil test prediction is used to differentiate several soil features like soil fertility indices of available pH, organic carbon, electrical conductivity, macro nutrients, and micro nutrients. The Classification and prediction of the soil parameters lead to reduce the artificial fertilizer inputs, increasing crop yield, improves soil health and crop growth and increase profitability. These problems are solved by using fast learning and classification techniques known as machine learning (ML) classifier techniques such as random forest, Gaussian naïve Bayes, logistic Regression, decision tree, k-nearest neighbour and support vector machine. After the analysis decision tree classifier attains the maximum performance to solve all problems which goes above 80% followed by other classifiers.
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利用机器学习分类器技术预测土壤养分和土壤肥力指数
土壤测试是一种独特的工具,用于发现可用的土壤反应(pH),有机碳和土壤的营养状况。根据有效pH值和土壤养分水平选择适宜作物,提高作物产量。在目前的方法中,土壤试验预测用于区分几种土壤特征,如土壤肥力指数的有效pH值、有机碳、电导率、宏观营养和微观营养。土壤参数的分类和预测可以减少人工施肥投入,提高作物产量,改善土壤健康和作物生长,提高效益。这些问题是通过使用快速学习和分类技术来解决的,这些技术被称为机器学习(ML)分类器技术,如随机森林、高斯naïve贝叶斯、逻辑回归、决策树、k近邻和支持向量机。经过分析,决策树分类器对所有问题的解决性能达到最高,达到80%以上,其次是其他分类器。
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