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How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies

[Image: see text] There is a growing realization that the complexity of model ensemble studies depends not only on the models used but also on the experience and approach used by modelers to calibrate and validate results, which remain a source of uncertainty. Here, we applied a multi-criteria decis...

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Autores principales: Albanito, Fabrizio, McBey, David, Harrison, Matthew, Smith, Pete, Ehrhardt, Fiona, Bhatia, Arti, Bellocchi, Gianni, Brilli, Lorenzo, Carozzi, Marco, Christie, Karen, Doltra, Jordi, Dorich, Christopher, Doro, Luca, Grace, Peter, Grant, Brian, Léonard, Joël, Liebig, Mark, Ludemann, Cameron, Martin, Raphael, Meier, Elizabeth, Meyer, Rachelle, De Antoni Migliorati, Massimiliano, Myrgiotis, Vasileios, Recous, Sylvie, Sándor, Renáta, Snow, Val, Soussana, Jean-François, Smith, Ward N., Fitton, Nuala
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9494747/
https://www.ncbi.nlm.nih.gov/pubmed/36052879
http://dx.doi.org/10.1021/acs.est.2c02023
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author Albanito, Fabrizio
McBey, David
Harrison, Matthew
Smith, Pete
Ehrhardt, Fiona
Bhatia, Arti
Bellocchi, Gianni
Brilli, Lorenzo
Carozzi, Marco
Christie, Karen
Doltra, Jordi
Dorich, Christopher
Doro, Luca
Grace, Peter
Grant, Brian
Léonard, Joël
Liebig, Mark
Ludemann, Cameron
Martin, Raphael
Meier, Elizabeth
Meyer, Rachelle
De Antoni Migliorati, Massimiliano
Myrgiotis, Vasileios
Recous, Sylvie
Sándor, Renáta
Snow, Val
Soussana, Jean-François
Smith, Ward N.
Fitton, Nuala
author_facet Albanito, Fabrizio
McBey, David
Harrison, Matthew
Smith, Pete
Ehrhardt, Fiona
Bhatia, Arti
Bellocchi, Gianni
Brilli, Lorenzo
Carozzi, Marco
Christie, Karen
Doltra, Jordi
Dorich, Christopher
Doro, Luca
Grace, Peter
Grant, Brian
Léonard, Joël
Liebig, Mark
Ludemann, Cameron
Martin, Raphael
Meier, Elizabeth
Meyer, Rachelle
De Antoni Migliorati, Massimiliano
Myrgiotis, Vasileios
Recous, Sylvie
Sándor, Renáta
Snow, Val
Soussana, Jean-François
Smith, Ward N.
Fitton, Nuala
author_sort Albanito, Fabrizio
collection PubMed
description [Image: see text] There is a growing realization that the complexity of model ensemble studies depends not only on the models used but also on the experience and approach used by modelers to calibrate and validate results, which remain a source of uncertainty. Here, we applied a multi-criteria decision-making method to investigate the rationale applied by modelers in a model ensemble study where 12 process-based different biogeochemical model types were compared across five successive calibration stages. The modelers shared a common level of agreement about the importance of the variables used to initialize their models for calibration. However, we found inconsistency among modelers when judging the importance of input variables across different calibration stages. The level of subjective weighting attributed by modelers to calibration data decreased sequentially as the extent and number of variables provided increased. In this context, the perceived importance attributed to variables such as the fertilization rate, irrigation regime, soil texture, pH, and initial levels of soil organic carbon and nitrogen stocks was statistically different when classified according to model types. The importance attributed to input variables such as experimental duration, gross primary production, and net ecosystem exchange varied significantly according to the length of the modeler’s experience. We argue that the gradual access to input data across the five calibration stages negatively influenced the consistency of the interpretations made by the modelers, with cognitive bias in “trial-and-error” calibration routines. Our study highlights that overlooking human and social attributes is critical in the outcomes of modeling and model intercomparison studies. While complexity of the processes captured in the model algorithms and parameterization is important, we contend that (1) the modeler’s assumptions on the extent to which parameters should be altered and (2) modeler perceptions of the importance of model parameters are just as critical in obtaining a quality model calibration as numerical or analytical details.
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spelling pubmed-94947472022-09-23 How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies Albanito, Fabrizio McBey, David Harrison, Matthew Smith, Pete Ehrhardt, Fiona Bhatia, Arti Bellocchi, Gianni Brilli, Lorenzo Carozzi, Marco Christie, Karen Doltra, Jordi Dorich, Christopher Doro, Luca Grace, Peter Grant, Brian Léonard, Joël Liebig, Mark Ludemann, Cameron Martin, Raphael Meier, Elizabeth Meyer, Rachelle De Antoni Migliorati, Massimiliano Myrgiotis, Vasileios Recous, Sylvie Sándor, Renáta Snow, Val Soussana, Jean-François Smith, Ward N. Fitton, Nuala Environ Sci Technol [Image: see text] There is a growing realization that the complexity of model ensemble studies depends not only on the models used but also on the experience and approach used by modelers to calibrate and validate results, which remain a source of uncertainty. Here, we applied a multi-criteria decision-making method to investigate the rationale applied by modelers in a model ensemble study where 12 process-based different biogeochemical model types were compared across five successive calibration stages. The modelers shared a common level of agreement about the importance of the variables used to initialize their models for calibration. However, we found inconsistency among modelers when judging the importance of input variables across different calibration stages. The level of subjective weighting attributed by modelers to calibration data decreased sequentially as the extent and number of variables provided increased. In this context, the perceived importance attributed to variables such as the fertilization rate, irrigation regime, soil texture, pH, and initial levels of soil organic carbon and nitrogen stocks was statistically different when classified according to model types. The importance attributed to input variables such as experimental duration, gross primary production, and net ecosystem exchange varied significantly according to the length of the modeler’s experience. We argue that the gradual access to input data across the five calibration stages negatively influenced the consistency of the interpretations made by the modelers, with cognitive bias in “trial-and-error” calibration routines. Our study highlights that overlooking human and social attributes is critical in the outcomes of modeling and model intercomparison studies. While complexity of the processes captured in the model algorithms and parameterization is important, we contend that (1) the modeler’s assumptions on the extent to which parameters should be altered and (2) modeler perceptions of the importance of model parameters are just as critical in obtaining a quality model calibration as numerical or analytical details. American Chemical Society 2022-09-02 2022-09-20 /pmc/articles/PMC9494747/ /pubmed/36052879 http://dx.doi.org/10.1021/acs.est.2c02023 Text en © 2022 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by/4.0/Permits the broadest form of re-use including for commercial purposes, provided that author attribution and integrity are maintained (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Albanito, Fabrizio
McBey, David
Harrison, Matthew
Smith, Pete
Ehrhardt, Fiona
Bhatia, Arti
Bellocchi, Gianni
Brilli, Lorenzo
Carozzi, Marco
Christie, Karen
Doltra, Jordi
Dorich, Christopher
Doro, Luca
Grace, Peter
Grant, Brian
Léonard, Joël
Liebig, Mark
Ludemann, Cameron
Martin, Raphael
Meier, Elizabeth
Meyer, Rachelle
De Antoni Migliorati, Massimiliano
Myrgiotis, Vasileios
Recous, Sylvie
Sándor, Renáta
Snow, Val
Soussana, Jean-François
Smith, Ward N.
Fitton, Nuala
How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies
title How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies
title_full How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies
title_fullStr How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies
title_full_unstemmed How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies
title_short How Modelers Model: the Overlooked Social and Human Dimensions in Model Intercomparison Studies
title_sort how modelers model: the overlooked social and human dimensions in model intercomparison studies
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9494747/
https://www.ncbi.nlm.nih.gov/pubmed/36052879
http://dx.doi.org/10.1021/acs.est.2c02023
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