Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0
We explore coupling to a configurable subsurface reactive transport code as a flexible and extensible approach to biogeochemistry in land surface models. A reaction network with the Community Land Model carbon–nitrogen (CLM-CN) decomposition, nitrification, denitrification, and plant uptake is used...
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doaj-6e68e03d5a364dcbbf4d70207adfed992020-11-25T00:05:24ZengCopernicus PublicationsGeoscientific Model Development1991-959X1991-96032016-03-019392794610.5194/gmd-9-927-2016Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0G. Tang0F. Yuan1G. Bisht2G. E. Hammond3P. C. Lichtner4J. Kumar5R. T. Mills6X. Xu7B. Andre8F. M. Hoffman9S. L. Painter10P. E. Thornton11Oak Ridge National Laboratory, Oak Ridge, Tennessee, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USAPacific Northwest National Laboratory, Richland, Washington, USAOFM Research–Southwest, Santa Fe, New Mexico, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USAIntel Corporation, Hillsboro, Oregon, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USALawrence Berkeley National Laboratory, Berkeley, California, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USAOak Ridge National Laboratory, Oak Ridge, Tennessee, USAWe explore coupling to a configurable subsurface reactive transport code as a flexible and extensible approach to biogeochemistry in land surface models. A reaction network with the Community Land Model carbon–nitrogen (CLM-CN) decomposition, nitrification, denitrification, and plant uptake is used as an example. We implement the reactions in the open-source PFLOTRAN (massively parallel subsurface flow and reactive transport) code and couple it with the CLM. To make the rate formulae designed for use in explicit time stepping in CLMs compatible with the implicit time stepping used in PFLOTRAN, the Monod substrate rate-limiting function with a residual concentration is used to represent the limitation of nitrogen availability on plant uptake and immobilization. We demonstrate that CLM–PFLOTRAN predictions (without invoking PFLOTRAN transport) are consistent with CLM4.5 for Arctic, temperate, and tropical sites.<br><br>Switching from explicit to implicit method increases rigor but introduces numerical challenges. Care needs to be taken to use scaling, clipping, or log transformation to avoid negative concentrations during the Newton iterations. With a tight relative update tolerance (STOL) to avoid false convergence, an accurate solution can be achieved with about 50 % more computing time than CLM in point mode site simulations using either the scaling or clipping methods. The log transformation method takes 60–100 % more computing time than CLM. The computing time increases slightly for clipping and scaling; it increases substantially for log transformation for half saturation decrease from 10<sup>−3</sup> to 10<sup>−9</sup> mol m<sup>−3</sup>, which normally results in decreasing nitrogen concentrations. The frequent occurrence of very low concentrations (e.g. below nanomolar) can increase the computing time for clipping or scaling by about 20 %, double for log transformation. Overall, the log transformation method is accurate and robust, and the clipping and scaling methods are efficient. When the reaction network is highly nonlinear or the half saturation or residual concentration is very low, the allowable time-step cuts may need to be increased for robustness for the log transformation method, or STOL may need to be tightened for the clipping and scaling methods to avoid false convergence.<br><br>As some biogeochemical processes (e.g., methane and nitrous oxide reactions) involve very low half saturation and thresholds, this work provides insights for addressing nonphysical negativity issues and facilitates the representation of a mechanistic biogeochemical description in Earth system models to reduce climate prediction uncertainty.http://www.geosci-model-dev.net/9/927/2016/gmd-9-927-2016.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
G. Tang F. Yuan G. Bisht G. E. Hammond P. C. Lichtner J. Kumar R. T. Mills X. Xu B. Andre F. M. Hoffman S. L. Painter P. E. Thornton |
spellingShingle |
G. Tang F. Yuan G. Bisht G. E. Hammond P. C. Lichtner J. Kumar R. T. Mills X. Xu B. Andre F. M. Hoffman S. L. Painter P. E. Thornton Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0 Geoscientific Model Development |
author_facet |
G. Tang F. Yuan G. Bisht G. E. Hammond P. C. Lichtner J. Kumar R. T. Mills X. Xu B. Andre F. M. Hoffman S. L. Painter P. E. Thornton |
author_sort |
G. Tang |
title |
Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0 |
title_short |
Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0 |
title_full |
Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0 |
title_fullStr |
Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0 |
title_full_unstemmed |
Addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with CLM–PFLOTRAN 1.0 |
title_sort |
addressing numerical challenges in introducing a reactive transport code into a land surface model: a biogeochemical modeling proof-of-concept with clm–pflotran 1.0 |
publisher |
Copernicus Publications |
series |
Geoscientific Model Development |
issn |
1991-959X 1991-9603 |
publishDate |
2016-03-01 |
description |
We explore coupling to a configurable subsurface reactive transport
code as a flexible and extensible approach to biogeochemistry in land
surface models.
A reaction network with
the Community Land Model carbon–nitrogen (CLM-CN) decomposition, nitrification, denitrification, and plant
uptake is used as an example. We implement the reactions in the
open-source PFLOTRAN (massively parallel subsurface flow and reactive transport) code and couple it with the CLM. To make the
rate formulae designed for use in explicit time stepping in CLMs
compatible with the implicit time stepping used in PFLOTRAN, the Monod
substrate rate-limiting function with a residual concentration is used
to represent the limitation of nitrogen availability on plant uptake
and immobilization.
We demonstrate that CLM–PFLOTRAN predictions (without invoking PFLOTRAN
transport) are consistent with CLM4.5 for Arctic, temperate, and tropical
sites.<br><br>Switching from explicit to implicit method increases rigor but introduces
numerical challenges.
Care needs to be taken to use scaling, clipping,
or log transformation to avoid negative concentrations during the
Newton iterations.
With a tight relative update tolerance (STOL) to avoid
false convergence, an accurate solution can be achieved with about
50 % more computing time than CLM in point mode site simulations
using either the scaling or clipping methods. The log transformation
method takes 60–100 % more computing time than CLM. The
computing time increases slightly for clipping and scaling; it
increases substantially for log transformation for half saturation
decrease from 10<sup>−3</sup> to 10<sup>−9</sup> mol m<sup>−3</sup>, which
normally results in decreasing nitrogen concentrations. The frequent
occurrence of very low concentrations (e.g. below nanomolar) can
increase the computing time for clipping or scaling by about 20 %,
double for log transformation.
Overall, the log transformation method is accurate and robust, and the
clipping and scaling methods are efficient. When the
reaction network is highly nonlinear or the half saturation or residual
concentration is very low, the allowable time-step cuts may
need to be increased for robustness for the log transformation method, or
STOL may need to be tightened for the clipping and
scaling methods to avoid false convergence.<br><br>As some biogeochemical processes
(e.g., methane and nitrous oxide reactions) involve
very low half saturation and thresholds, this work
provides insights for addressing nonphysical negativity issues and
facilitates the representation of a mechanistic biogeochemical
description in Earth system models to reduce climate prediction
uncertainty. |
url |
http://www.geosci-model-dev.net/9/927/2016/gmd-9-927-2016.pdf |
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