Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020
This dataset includes 30 meter (m) resolution gridded estimates of live aboveground biomass (AGB) for five common plant functional types (PFTs; deciduous shrubs, evergreen shrubs, forbs, graminoids and lichens) within Alaska and northwest Canada. Estimates were produced for single years, every five...
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Arctic Data Center
2022
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dataone:urn:uuid:e912fabb-1547-491a-8f4b-0daa59464d28 2024-11-03T19:44:59+00:00 Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 Kathleen Orndahl Eastern Alaska and northwest Yukon ENVELOPE(-149.81879,-132.48643,70.1662,60.82564) BEGINDATE: 1985-01-01T00:00:00Z ENDDATE: 2020-01-01T00:00:00Z 2022-01-01T00:00:00Z https://search.dataone.org/view/urn:uuid:e912fabb-1547-491a-8f4b-0daa59464d28 unknown Arctic Data Center Landsat remote sensing tundra unmanned aerial vehicle fire plant functional type aboveground biomass Arctic boreal Dataset 2022 dataone:urn:node:ARCTIC 2024-11-03T19:18:35Z This dataset includes 30 meter (m) resolution gridded estimates of live aboveground biomass (AGB) for five common plant functional types (PFTs; deciduous shrubs, evergreen shrubs, forbs, graminoids and lichens) within Alaska and northwest Canada. Estimates were produced for single years, every five years from 1985 to 2020. To model AGB we used a multi-scale approach, scaling from field harvest data and unmanned aerial vehicle (UAV)-based biomass predictions. Estimates were produced using linear mixed effects models with LASSO (Least Absolute Shrinkage and Selection Operator) regularization and were based on gridded climatological, topographic, phenological, PFT cover, and Landsat spectral predictors. A Monte Carlo approach with 100 iterations was used to propagate uncertainty. For each PFT and each year, this dataset provides the 2.5th percentile estimates (lower bound), 50th percentile estimates (best estimate) and 97.5th percentile estimates (upper bound) from the Monte Carlo analysis. These maps capture vegetation changes occurring within the Arctic/boreal region, including increasing shrub biomass and decreasing lichen and graminoid biomass. They also demonstrate the role of disturbances such as wildfire in shaping vegetation change trajectories. Dataset Arctic Tundra Alaska Yukon Arctic Data Center (via DataONE) Arctic Canada Yukon ENVELOPE(-149.81879,-132.48643,70.1662,60.82564) |
institution |
Open Polar |
collection |
Arctic Data Center (via DataONE) |
op_collection_id |
dataone:urn:node:ARCTIC |
language |
unknown |
topic |
Landsat remote sensing tundra unmanned aerial vehicle fire plant functional type aboveground biomass Arctic boreal |
spellingShingle |
Landsat remote sensing tundra unmanned aerial vehicle fire plant functional type aboveground biomass Arctic boreal Kathleen Orndahl Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 |
topic_facet |
Landsat remote sensing tundra unmanned aerial vehicle fire plant functional type aboveground biomass Arctic boreal |
description |
This dataset includes 30 meter (m) resolution gridded estimates of live aboveground biomass (AGB) for five common plant functional types (PFTs; deciduous shrubs, evergreen shrubs, forbs, graminoids and lichens) within Alaska and northwest Canada. Estimates were produced for single years, every five years from 1985 to 2020. To model AGB we used a multi-scale approach, scaling from field harvest data and unmanned aerial vehicle (UAV)-based biomass predictions. Estimates were produced using linear mixed effects models with LASSO (Least Absolute Shrinkage and Selection Operator) regularization and were based on gridded climatological, topographic, phenological, PFT cover, and Landsat spectral predictors. A Monte Carlo approach with 100 iterations was used to propagate uncertainty. For each PFT and each year, this dataset provides the 2.5th percentile estimates (lower bound), 50th percentile estimates (best estimate) and 97.5th percentile estimates (upper bound) from the Monte Carlo analysis. These maps capture vegetation changes occurring within the Arctic/boreal region, including increasing shrub biomass and decreasing lichen and graminoid biomass. They also demonstrate the role of disturbances such as wildfire in shaping vegetation change trajectories. |
format |
Dataset |
author |
Kathleen Orndahl |
author_facet |
Kathleen Orndahl |
author_sort |
Kathleen Orndahl |
title |
Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 |
title_short |
Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 |
title_full |
Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 |
title_fullStr |
Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 |
title_full_unstemmed |
Gridded estimates of aboveground biomass by plant functional type within Alaska and Yukon, 1985-2020 |
title_sort |
gridded estimates of aboveground biomass by plant functional type within alaska and yukon, 1985-2020 |
publisher |
Arctic Data Center |
publishDate |
2022 |
url |
https://search.dataone.org/view/urn:uuid:e912fabb-1547-491a-8f4b-0daa59464d28 |
op_coverage |
Eastern Alaska and northwest Yukon ENVELOPE(-149.81879,-132.48643,70.1662,60.82564) BEGINDATE: 1985-01-01T00:00:00Z ENDDATE: 2020-01-01T00:00:00Z |
long_lat |
ENVELOPE(-149.81879,-132.48643,70.1662,60.82564) |
geographic |
Arctic Canada Yukon |
geographic_facet |
Arctic Canada Yukon |
genre |
Arctic Tundra Alaska Yukon |
genre_facet |
Arctic Tundra Alaska Yukon |
_version_ |
1814733384350433280 |