Analysis of soil suitability for agricultural needs using machine learning methods
Sergei Kurashkin,
Kirill Kravtsov,
Anatoly Kukartsev
et al.
Abstract:This study explores the application of machine learning methods to assess soil suitability for agricultural purposes, focusing on identifying and analysing key factors that influence soil productivity under drought conditions. A classification model was developed based on data from diverse U.S. regions, which included critical soil parameters such as root condition, nutrient availability, soil toxicity, and oxygen accessibility for plant roots. Correlation analysis identified the most significant factors impac… Show more
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