Literature DB >> 35104413

Community Data Mining Approach for Surface Complexation Database Development.

Mavrik Zavarin1, Elliot Chang1, Haruko Wainwright2,3, Nicholas Parham1, Rahul Kaukuntla1, Jadallah Zouabe1,4, Amanda Deinhart1, Victoria Genetti1, Sam Shipman1, Frank Bok5, Vinzenz Brendler5.   

Abstract

This paper presents a comprehensive data-to-model workflow, including a findable, accessible, interoperable, reusable (FAIR) community sorption database (newly developed LLNL Surface Complexation/Ion Exchange (L-SCIE) database) along with a data fitting workflow to efficiently optimize surface complexation reaction constants with multiple surface complexation model (SCM) constructs. This workflow serves as a universal framework to mine, compile, and analyze large numbers of published sorption data as well as to estimate reaction constants for parameterizing reactive transport models. The framework includes (1) data digitization from published papers, (2) data unification including unit conversions, and (3) data-model integration and reaction constant estimation using geochemical software PHREEQC coupled with the universal parameter estimation code PEST. We demonstrate our approach using an analysis of U(VI) sorption to quartz based on a first L-SCIE implementation, concluding that a multisite SCM construct with carbonate surface species yielded the best fit to community data. Surface complexation reaction constants extracted from this approach captured all available sorption data available in the literature and provided insight into previously published reaction constants and surface complexation model constructs. The L-SCIE sorption database presented herein allows for automating this approach across a wide range of metals and minerals and implementing novel machine learning approaches to reactive transport in the future.

Entities:  

Keywords:  adsorption; community data; database; sorption; surface complexation modeling

Mesh:

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Year:  2022        PMID: 35104413     DOI: 10.1021/acs.est.1c07109

Source DB:  PubMed          Journal:  Environ Sci Technol        ISSN: 0013-936X            Impact factor:   9.028


  1 in total

1.  PyLEnM: A Machine Learning Framework for Long-Term Groundwater Contamination Monitoring Strategies.

Authors:  Aurelien O Meray; Savannah Sturla; Masudur R Siddiquee; Rebecca Serata; Sebastian Uhlemann; Hansell Gonzalez-Raymat; Miles Denham; Himanshu Upadhyay; Leonel E Lagos; Carol Eddy-Dilek; Haruko M Wainwright
Journal:  Environ Sci Technol       Date:  2022-04-15       Impact factor: 11.357

  1 in total

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