Can machine learning models predict soil moisture evaporation rates? An investigation via novel feature selection techniques and model comparisons
Priyanka Priyanka,
Praveen Kumar,
Sucheta Panda
et al.
Abstract:Extreme weather events and global climate change have exacerbated the problem of evaporation rates. Thus, accurately predicting soil moisture evaporation rates affecting soil cracking becomes crucial. However, less is known about how novel feature engineering techniques and machine-learning predictions may account for estimating the soil moisture evaporation rate. This research focuses on predicting the evaporation rate of soil using machine learning (ML) models. The dataset comprised twenty-one ground-based p… Show more
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