2022
DOI: 10.3390/molecules27134220
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Geochemical and Spatial Distribution of Topsoil HMs Coupled with Modeling of Cr Using Chemometrics Intelligent Techniques: Case Study from Dammam Area, Saudi Arabia

Abstract: Unconsolidated earthen surface materials can retain heavy metals originating from different sources. These metals are dangerous to humans as well as the immediate environment. This danger leads to the need to assess various geochemical conditions of the materials. In this study, the assessment of topsoil materials’ contamination with heavy metals (HMs) was conducted. The material’s representative spatial samples were taken from various sources: agricultural, industrial, and residential areas. The materials inc… Show more

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Cited by 12 publications
(5 citation statements)
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“…Data characteristics such as linearity, correlation, normality, and data size have major effects on model performance [41]. In fact, there is no single model that is optimal for all datasets.…”
Section: Error Ensemble Learning Resultsmentioning
confidence: 99%
“…Data characteristics such as linearity, correlation, normality, and data size have major effects on model performance [41]. In fact, there is no single model that is optimal for all datasets.…”
Section: Error Ensemble Learning Resultsmentioning
confidence: 99%
“…This is crucial for evaluating the performance of a model and fine-tuning its hyperparameters before it is deployed in a real-world setting. 38,39 The models were evaluated using several performance criteria such as RMSE (root mean square error), MSE (mean square error), MAE (mean absolute error), R 2 (determination coefficient), percent bias (PBAIS) and PCC (Pearson correlation coefficient), as shown in eqn (2)–(7), respectively.where the normalised data are represented as y , the measured data as x , the mean data are calculated as x̄ , x max is the maximum value of the data, and x min is the minimum value.…”
Section: Experimental Methodologymentioning
confidence: 99%
“…This is crucial for evaluating the performance of a model and ne-tuning its hyperparameters before it is deployed in a real-world setting. 38,39 The models were evaluated using several performance criteria such as RMSE (root mean square error), MSE (mean square error), MAE (mean absolute error), R 2 (determination coefficient), percent bias (PBAIS) and 2)-( 7), respectively.…”
Section: Proposed Ai-based Methodologymentioning
confidence: 99%
“…Linear regression is widely used for various applications, including predicting sales based on advertising spending, estimating housing prices, and analysing the impact of independent variables on a dependent variable [54]. It is a foundation for more complex regression techniques and a valuable tool for statistical analysis and machine learning [24,[55][56][57].…”
Section: Gpr Machine Learning-based Approachesmentioning
confidence: 99%