Identifying Prominent Environmental Covariates Using Variable Selection Methodologies for Digital Soil Mapping of Tamil Nadu, India

T. Tarun Kshatriya *

Department of Soil Science and Agricultural Chemistry, Tamil Nadu Agricultural University, Coimbatore, India.

R. Kumaraperumal

Department of Remote Sensing and GIS, Tamil Nadu Agricultural University, Coimbatore, India.

D. Muthumanickam

Department of Remote Sensing and GIS, Tamil Nadu Agricultural University, Coimbatore, India.

S. Pazhanivelan

Centre for Water and Geospatial Studies, Tamil Nadu Agricultural University, Coimbatore, India.

K. P. Ragunath

Centre for Water and Geospatial Studies, Tamil Nadu Agricultural University, Coimbatore, India.

M. Nivas Raj

Department of Remote Sensing and GIS, Tamil Nadu Agricultural University, Coimbatore, India.

*Author to whom correspondence should be addressed.


Abstract

High dimensional datasets that depict intricate spatial variations are necessary to predict complex landscape structures and the corresponding soil properties taking into account the size of the research region in addition to the data attributes. The number and quality of the input datasets taken into consideration essentially determine the quantity and quality of the soil properties that may be predicted thanks to data-driven learning algorithms.  The use of variable selection strategies both before and after the prediction can have a significant impact on the outcome and can lower the related computing load. The majority of commonly used variable selection techniques such as correlation analysis, stepwise regression and recursive feature elimination, among others perform recursive statistical/mathematical comparison to identify the significant covariates that improve the effectiveness of the algorithm proposed. In order to identify the effective environmental variables in predicting the soil attribute, this article investigated a widely used recursive ranking method called recursive feature elimination. The covariate layer that produced the lowest RMSE was placed first according to the rankings of the covariates provided by recursive feature elimination. The findings showed that among other factors physiography, mean rainfall, rock outcrop difference ratio, elevation and mean temperature will be effective in predicting the soil properties required for digital soil mapping.

Keywords: Digital soil mapping, variable selection techniques, environmental covariates, recursive feature elimination


How to Cite

Kshatriya , T. Tarun, R. Kumaraperumal, D. Muthumanickam, S. Pazhanivelan, K. P. Ragunath, and M. Nivas Raj. 2023. “Identifying Prominent Environmental Covariates Using Variable Selection Methodologies for Digital Soil Mapping of Tamil Nadu, India”. International Journal of Environment and Climate Change 13 (9):2358-76. https://doi.org/10.9734/ijecc/2023/v13i92469.