Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA

Abstract Background Forests are an important component of the global carbon balance, and climate sensitive growth and yield models are an essential tool when predicting future forest conditions. In this study, we used the dynamic climate capability of the Forest Vegetation Simulator (FVS) to simulat...

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Main Authors: Patrick A. Fekety, Nicholas L. Crookston, Andrew T. Hudak, Steven K. Filippelli, Jody C. Vogeler, Michael J. Falkowski
Format: Article
Language:English
Published: BMC 2020-03-01
Series:Carbon Balance and Management
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13021-020-00140-9
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spelling doaj-9f3358c85a574e118c1daf465bc52cb22020-11-25T02:28:23ZengBMCCarbon Balance and Management1750-06802020-03-0115111410.1186/s13021-020-00140-9Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USAPatrick A. Fekety0Nicholas L. Crookston1Andrew T. Hudak2Steven K. Filippelli3Jody C. Vogeler4Michael J. Falkowski5Natural Resources Ecology Laboratory, Colorado State UniversityForestry Research ConsultantUnited States Forest Service, Rocky Mountain Research StationNatural Resources Ecology Laboratory, Colorado State UniversityNatural Resources Ecology Laboratory, Colorado State UniversityNatural Resources Ecology Laboratory, Colorado State UniversityAbstract Background Forests are an important component of the global carbon balance, and climate sensitive growth and yield models are an essential tool when predicting future forest conditions. In this study, we used the dynamic climate capability of the Forest Vegetation Simulator (FVS) to simulate future (100 year) forest conditions on four National Forests in the northwestern USA: Payette National Forest (NF), Ochoco NF, Gifford Pinchot NF, and Siuslaw NF. Using Forest Inventory and Analysis field plots, aboveground carbon estimates and species compositions were simulated with Climate-FVS for the period between 2016 and 2116 under a no climate change scenario and a future climate scenario. We included a sensitivity analysis that varied calculated disturbance probabilities and the dClim rule, which is one method used by Climate-FVS to introduce climate-related mortality. The dClim rule initiates mortality when the predicted climate change at a site is greater than the change in climate associated with a predetermined shift in elevation. Results Results of the simulations indicated the dClim rule influenced future carbon projections more than estimates of disturbance probability. Future aboveground carbon estimates increased and species composition remained stable under the no climate change scenario. The future climate scenario we tested resulted in less carbon at the end of the projections compared to the no climate change scenarios for all cases except when the dClim rule was disengaged on the Payette NF. Under the climate change scenario, species compositions shifted to climatically adapted species or early successional species. Conclusion This research highlights the need to consider climate projections in long-term planning or future forest conditions may be unexpected. Forest managers and planners could perform similar simulations and use the results as a planning tool when analyzing climate change effects at the National Forest level.http://link.springer.com/article/10.1186/s13021-020-00140-9Climate-FVSClimate changedClim ruleForest carbon planningForest Inventory and Analysis (FIA)Forest Vegetation Simulator (FVS)
collection DOAJ
language English
format Article
sources DOAJ
author Patrick A. Fekety
Nicholas L. Crookston
Andrew T. Hudak
Steven K. Filippelli
Jody C. Vogeler
Michael J. Falkowski
spellingShingle Patrick A. Fekety
Nicholas L. Crookston
Andrew T. Hudak
Steven K. Filippelli
Jody C. Vogeler
Michael J. Falkowski
Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA
Carbon Balance and Management
Climate-FVS
Climate change
dClim rule
Forest carbon planning
Forest Inventory and Analysis (FIA)
Forest Vegetation Simulator (FVS)
author_facet Patrick A. Fekety
Nicholas L. Crookston
Andrew T. Hudak
Steven K. Filippelli
Jody C. Vogeler
Michael J. Falkowski
author_sort Patrick A. Fekety
title Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA
title_short Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA
title_full Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA
title_fullStr Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA
title_full_unstemmed Hundred year projected carbon loads and species compositions for four National Forests in the northwestern USA
title_sort hundred year projected carbon loads and species compositions for four national forests in the northwestern usa
publisher BMC
series Carbon Balance and Management
issn 1750-0680
publishDate 2020-03-01
description Abstract Background Forests are an important component of the global carbon balance, and climate sensitive growth and yield models are an essential tool when predicting future forest conditions. In this study, we used the dynamic climate capability of the Forest Vegetation Simulator (FVS) to simulate future (100 year) forest conditions on four National Forests in the northwestern USA: Payette National Forest (NF), Ochoco NF, Gifford Pinchot NF, and Siuslaw NF. Using Forest Inventory and Analysis field plots, aboveground carbon estimates and species compositions were simulated with Climate-FVS for the period between 2016 and 2116 under a no climate change scenario and a future climate scenario. We included a sensitivity analysis that varied calculated disturbance probabilities and the dClim rule, which is one method used by Climate-FVS to introduce climate-related mortality. The dClim rule initiates mortality when the predicted climate change at a site is greater than the change in climate associated with a predetermined shift in elevation. Results Results of the simulations indicated the dClim rule influenced future carbon projections more than estimates of disturbance probability. Future aboveground carbon estimates increased and species composition remained stable under the no climate change scenario. The future climate scenario we tested resulted in less carbon at the end of the projections compared to the no climate change scenarios for all cases except when the dClim rule was disengaged on the Payette NF. Under the climate change scenario, species compositions shifted to climatically adapted species or early successional species. Conclusion This research highlights the need to consider climate projections in long-term planning or future forest conditions may be unexpected. Forest managers and planners could perform similar simulations and use the results as a planning tool when analyzing climate change effects at the National Forest level.
topic Climate-FVS
Climate change
dClim rule
Forest carbon planning
Forest Inventory and Analysis (FIA)
Forest Vegetation Simulator (FVS)
url http://link.springer.com/article/10.1186/s13021-020-00140-9
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