4.7 Article

Element enrichment factor calculation using grain-size distribution and functional data regression

Journal

CHEMOSPHERE
Volume 119, Issue -, Pages 1192-1199

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.chemosphere.2014.10.024

Keywords

Functional regression; Regularization; Pollutant concentration; Normalization

Funding

  1. Prometeo Program (SENESCYT, Ecuador)

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In environmental geochemistry studies it is common practice to normalize element concentrations in order to remove the effect of grain size. Linear regression with respect to a particular grain size or conservative element is a widely used method of normalization. In this paper, the utility of functional linear regression, in which the grain-size curve is the independent variable and the concentration of pollutant the dependent variable, is analyzed and applied to detrital sediment. After implementing functional linear regression and classical linear regression models to normalize and calculate enrichment factors, we concluded that the former regression technique has some advantages over the latter. First, functional linear regression directly considers the grain-size distribution of the samples as the explanatory variable. Second, as the regression coefficients are not constant values but functions depending on the grain size, it is easier to comprehend the relationship between grain size and pollutant concentration. Third, regularization can be introduced into the model in order to establish equilibrium between reliability of the data and smoothness of the solutions. (C) 2014 Elsevier Ltd. All rights reserved.

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