Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009
This nested dataset provide the results from the generalized boosted modelling (GBMs) (also referred to as boosted regression tree (BRT) modelling) from Young et al. (2017). These models are designed to predict the spatial probability of fire occurrence at 4-km 2 spatial resolution and 30-yr tempora...
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2015
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dataone:doi:10.18739/A22F7JQ7B 2023-11-08T14:15:00+01:00 Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 Adam M. Young UNITED STATES OF AMERICA > ALASKA ENVELOPE(-171.62962,-134.80273,71.51642,57.871124) BEGINDATE: 1950-01-01T00:00:00Z ENDDATE: 2009-12-31T00:00:00Z 2015-12-07T00:00:00Z https://doi.org/10.18739/A22F7JQ7B unknown Arctic Data Center EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE MODELS EARTH SCIENCE > AGRICULTURE > FOREST SCIENCE > FOREST FIRE SCIENCE EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE OCCURRENCE EARTH SCIENCE > BIOSPHERE > TERRESTRIAL ECOSYSTEMS > ALPINE/TUNDRA OTHER GRID 1 KILOMETER TO 10 KILOMETERS DECADAL biota climatologyMeteorologyAtmosphere geoscientificInformation Dataset 2015 dataone:urn:node:ARCTIC https://doi.org/10.18739/A22F7JQ7B 2023-11-08T13:41:19Z This nested dataset provide the results from the generalized boosted modelling (GBMs) (also referred to as boosted regression tree (BRT) modelling) from Young et al. (2017). These models are designed to predict the spatial probability of fire occurrence at 4-km 2 spatial resolution and 30-yr temporal resolution in Alaskan boreal forest and tundra ecosystems. Within this nested dataset are five zip files. Together, the contents of these zip files provide the data and tools necessary to run the GBM models and recreate the results from Young et al. (2017). Further details on the specific contents in each zip file are provided in the README file for this nested dataset. Citation: Young, A.M., P. E. Higuera, P. A. Duffy, and F. S. Hu. 2017. Climatic thresholds shape northern high-latitude fire regimes and imply vulnerability to future climate change. Ecography 40:606-617. doi: 10.1111/ecog.02205. Dataset Tundra Alaska Arctic Data Center (via DataONE) ENVELOPE(-171.62962,-134.80273,71.51642,57.871124) |
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Open Polar |
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Arctic Data Center (via DataONE) |
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dataone:urn:node:ARCTIC |
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unknown |
topic |
EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE MODELS EARTH SCIENCE > AGRICULTURE > FOREST SCIENCE > FOREST FIRE SCIENCE EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE OCCURRENCE EARTH SCIENCE > BIOSPHERE > TERRESTRIAL ECOSYSTEMS > ALPINE/TUNDRA OTHER GRID 1 KILOMETER TO 10 KILOMETERS DECADAL biota climatologyMeteorologyAtmosphere geoscientificInformation |
spellingShingle |
EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE MODELS EARTH SCIENCE > AGRICULTURE > FOREST SCIENCE > FOREST FIRE SCIENCE EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE OCCURRENCE EARTH SCIENCE > BIOSPHERE > TERRESTRIAL ECOSYSTEMS > ALPINE/TUNDRA OTHER GRID 1 KILOMETER TO 10 KILOMETERS DECADAL biota climatologyMeteorologyAtmosphere geoscientificInformation Adam M. Young Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 |
topic_facet |
EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE MODELS EARTH SCIENCE > AGRICULTURE > FOREST SCIENCE > FOREST FIRE SCIENCE EARTH SCIENCE > BIOSPHERE > ECOLOGICAL DYNAMICS > FIRE ECOLOGY > FIRE OCCURRENCE EARTH SCIENCE > BIOSPHERE > TERRESTRIAL ECOSYSTEMS > ALPINE/TUNDRA OTHER GRID 1 KILOMETER TO 10 KILOMETERS DECADAL biota climatologyMeteorologyAtmosphere geoscientificInformation |
description |
This nested dataset provide the results from the generalized boosted modelling (GBMs) (also referred to as boosted regression tree (BRT) modelling) from Young et al. (2017). These models are designed to predict the spatial probability of fire occurrence at 4-km 2 spatial resolution and 30-yr temporal resolution in Alaskan boreal forest and tundra ecosystems. Within this nested dataset are five zip files. Together, the contents of these zip files provide the data and tools necessary to run the GBM models and recreate the results from Young et al. (2017). Further details on the specific contents in each zip file are provided in the README file for this nested dataset. Citation: Young, A.M., P. E. Higuera, P. A. Duffy, and F. S. Hu. 2017. Climatic thresholds shape northern high-latitude fire regimes and imply vulnerability to future climate change. Ecography 40:606-617. doi: 10.1111/ecog.02205. |
format |
Dataset |
author |
Adam M. Young |
author_facet |
Adam M. Young |
author_sort |
Adam M. Young |
title |
Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 |
title_short |
Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 |
title_full |
Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 |
title_fullStr |
Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 |
title_full_unstemmed |
Generalized Boosted Models and analysis scripts for fire occurrence, Alaska, 1950-2009 |
title_sort |
generalized boosted models and analysis scripts for fire occurrence, alaska, 1950-2009 |
publisher |
Arctic Data Center |
publishDate |
2015 |
url |
https://doi.org/10.18739/A22F7JQ7B |
op_coverage |
UNITED STATES OF AMERICA > ALASKA ENVELOPE(-171.62962,-134.80273,71.51642,57.871124) BEGINDATE: 1950-01-01T00:00:00Z ENDDATE: 2009-12-31T00:00:00Z |
long_lat |
ENVELOPE(-171.62962,-134.80273,71.51642,57.871124) |
genre |
Tundra Alaska |
genre_facet |
Tundra Alaska |
op_doi |
https://doi.org/10.18739/A22F7JQ7B |
_version_ |
1782011736002396160 |