Abstract

Soil pollution is a big issue caused by anthropogenic activities. The spatial distribution of potentially toxic elements (PTEs) varies in most urban and peri-urban areas. As a result, spatially predicting the PTEs content in such soil is difficult. A total number of 115 samples were obtained from Frydek Mistek in the Czech Republic. Calcium (Ca), magnesium (Mg), potassium (K), and nickel (Ni) concentrations were determined using Inductively Coupled Plasma Optical Emission Spectroscopy. The response variable was Ni, while the predictors were Ca, Mg, and K. The correlation matrix between the response variable and the predictors revealed a satisfactory correlation between the elements. The prediction results indicated that support vector machine regression (SVMR) performed well, although its estimated root mean square error (RMSE) (235.974 mg/kg) and mean absolute error (MAE) (166.946 mg/kg) were higher when compared with the other methods applied. The hybridized model of empirical bayesian kriging-multiple linear regression (EBK-MLR) performed poorly, as evidenced by a coefficient of determination value of less than 0.1. The empirical bayesian kriging-support vector machine regression (EBK-SVMR) model was the optimal model, with low RMSE (95.479 mg/kg) and MAE (77.368 mg/kg) values and a high coefficient of determination (R2 = 0.637). EBK-SVMR modelling technique output was visualized using a self-organizing map. The clustered neurons of the hybridized model CakMg-EBK-SVMR component plane showed a diverse colour pattern predicting the concentration of Ni in the urban and peri-urban soil. The results proved that combining EBK and SVMR is an effective technique for predicting Ni concentrations in urban and peri-urban soil.

Highlights

  • Soil pollution is a big issue caused by anthropogenic activities

  • The spatial distribution map corroborates with the component plane spatial distribution exhibited by EBK_SVMR

  • The results indicated that the support vector machine regression model (Ca Mg K-SVMR) predicted the concentration of Ni in the soil as a unitary model, but validation and accuracy evaluation parameters revealed that the error in terms of root mean square error (RMSE) and mean absolute error (MAE) was very high

Read more

Summary

Introduction

The spatial distribution of potentially toxic elements (PTEs) varies in most urban and peri-urban areas. The clustered neurons of the hybridized model CakMg-EBK-SVMR component plane showed a diverse colour pattern predicting the concentration of Ni in the urban and peri-urban soil. The results proved that combining EBK and SVMR is an effective technique for predicting Ni concentrations in urban and peri-urban soil. Spatial prediction of potentially toxic elements (PTEs) such as Ni in the soil using conventional means has been laborious and time-consuming. McBratney et al.[17] outlined that DSM or PSM in contemporary time is the utmost effective technique to foretell or map the spatial distribution of PTEs, types of soil and soil properties. On the basis of these concepts, numerous interpolation techniques including as universal kriging, cokriging, ordinary kriging, empirical bayesian kriging, simple kriging, and other well-known interpolation techniques are employed within geostatistics to map or predict PTEs, soil characteristics, and soil types

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call