Advances in forest fire research 2014 / / Domingos Xavier Viegas [editor].

Crown fires in forest ecosystems can pose a major threat to life and property due to their high intensities and rapid rates of spread. However, research into the prediction of crown fire dynamics in the Eucalyptus forests of Australia is limited. Previous studies have focused on coarse temporal scal...

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Place / Publishing House:Portugal : : Coimbra University Press,, 2014
Year of Publication:2014
Language:English
Physical Description:1 online resource (1919 pages) :; digital, PDF file(s).
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spelling Advances in forest fire research 2014 / Domingos Xavier Viegas [editor].
Portugal : Coimbra University Press, 2014
1 online resource (1919 pages) : digital, PDF file(s).
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Open access Unrestricted online access star
Crown fires in forest ecosystems can pose a major threat to life and property due to their high intensities and rapid rates of spread. However, research into the prediction of crown fire dynamics in the Eucalyptus forests of Australia is limited. Previous studies have focused on coarse temporal scales, utilised low resolution weather based predictors, and disregard the spatial nature of crown fires. Our study aimed to use observations from large wildfires in eucalypt forests to develop an empirical model to predict the likelihood of crown fire events using environmental predictors at an hourly scale. Our study was conducted in south-eastern Australia using data from fifteen large wildfires that occurred between 2009 and 2015. Fire severity maps were created for each fire at a 30 m resolution using Landsat imagery from which we calculated the proportion of 30m pixels experiencing crown fire within a 150 x 150 m window (2.25 ha). Predictor variables were chosen to represent the four key environmental drivers of fire behaviour, namely fuel moisture (i.e. live and dead fuel),fuel load and structure (i.e. surface, elevated and bark fuels, tree height), fire weather (i.e. vapour-pressure deficit, wind speed, relative wind direction) and topography (i.e. slope and ruggedness). Random Forests were used to model the effect of environmental drivers on the proportion of crown fire. Fuel moisture content variables were the best predictors of probability of crown consumption. Topographic variables and fire weather had only an intermediate influence and fuel load and structure had the lowest influence. Crown fire runs largely occurred when thresholds in vapour-pressure deficit (<4 kPa) and dead fuel moisture content(<7%) were exceeded. Predictions from the model showed a high degree of agreement with the raw fire severity maps. The proposed models have the potential to provide guidance on the likelihood of crown fire during fire events.
English.
Forest fires Prevention and control.
Viegas, Domingos Xavier, editor.
language English
format Software
eBook
author2 Viegas, Domingos Xavier,
author_facet Viegas, Domingos Xavier,
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author2_role TeilnehmendeR
title Advances in forest fire research 2014 /
spellingShingle Advances in forest fire research 2014 /
title_full Advances in forest fire research 2014 / Domingos Xavier Viegas [editor].
title_fullStr Advances in forest fire research 2014 / Domingos Xavier Viegas [editor].
title_full_unstemmed Advances in forest fire research 2014 / Domingos Xavier Viegas [editor].
title_auth Advances in forest fire research 2014 /
title_new Advances in forest fire research 2014 /
title_sort advances in forest fire research 2014 /
publisher Coimbra University Press,
publishDate 2014
physical 1 online resource (1919 pages) : digital, PDF file(s).
callnumber-first S - Agriculture
callnumber-subject SD - Forestry
callnumber-label SD421
callnumber-sort SD 3421 A383 42014
illustrated Not Illustrated
dewey-hundreds 600 - Technology
dewey-tens 630 - Agriculture
dewey-ones 634 - Orchards, fruits & forestry
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dewey-sort 3634.9618
dewey-raw 634.9618
dewey-search 634.9618
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