A New Bayesian Inference Methodology for Modeling Geochemical Elements in Soil with Covariates. Characterization of Lithium in South Iberian Range (Spain)
Keywords:
bayesian inference, iberian range, lithium, soil
Abstract
When the scientific need to model geochemical elements in soil is using geostatistical methodologies for instance krigings but we can use a new possibility with Bayesian Inference The models for the analysis were specified by the authors and estimated using Bayesian inference for Gaussian Markov Random Field GMRF through the Integrated Nested Laplace Approximation INLA algorithm The results allow us to quantify and assess possible spatial relationships between the distribution of lithium and other possible explanatory elements Are these other elements significant to the study We believe the methods outlined here may help to find elements such as lithium as well as contributing to the prediction and management of new extractions or prospection in a region in order to find each chemical element The application for the modeling is to study the spatial variation in the distribution of lithium and its relationship to other geochemical elements is analyzed in terms of the different possibilities offered by geographical and environmental factors All in all Lithium presents many important and meaningful uses and applications such as ceramics and glass electrical and electronics standing out lithium ion batteries as well as a lubricator for greases in metallurgy pyrotechnics air purification optics organic and polymer chemistry and medicine This study aims to examine the distribution of lithium in sediments from the area of Beceite in the Iberian Range and the Catalan Coastal Range Catal nids within the geological context of the Iberian Plate The Atlas Geoqu mico de Espa a IGME 2012 was used as the main geochemical data bank in order to carry out a statistical analysis study
Downloads
- Article PDF
- TEI XML Kaleidoscope (download in zip)* (Beta by AI)
- Lens* NISO JATS XML (Beta by AI)
- HTML Kaleidoscope* (Beta by AI)
- DBK XML Kaleidoscope (download in zip)* (Beta by AI)
- LaTeX pdf Kaleidoscope* (Beta by AI)
- EPUB Kaleidoscope* (Beta by AI)
- MD Kaleidoscope* (Beta by AI)
- FO Kaleidoscope* (Beta by AI)
- BIB Kaleidoscope* (Beta by AI)
- LaTeX Kaleidoscope* (Beta by AI)
How to Cite
Published
2016-01-15
Issue
Section
License
Copyright (c) 2016 Authors and Global Journals Private Limited

This work is licensed under a Creative Commons Attribution 4.0 International License.