Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses
Quantifying fire regimes in the boreal forest ecosystem is crucial for understanding the past and present dynamics, as well as for predicting its future dynamics. Survival analyses have often been used to estimate the fire cycle in eastern Canada because they make it possible to take into account th...
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doaj-0a8be995bec34c9ca877d6be981985392020-11-24T21:56:02ZengMDPI AGForests1999-49072016-06-017713110.3390/f7070131f7070131Quantifying Fire Cycle from Dendroecological Records Using Survival AnalysesDominic Cyr0Sylvie Gauthier1Yan Boulanger2Yves Bergeron3Canadian Forest Service-Laurentian Forestry Centre, Quebec, QC G1V 4C7, CanadaCanadian Forest Service-Laurentian Forestry Centre, Quebec, QC G1V 4C7, CanadaCanadian Forest Service-Laurentian Forestry Centre, Quebec, QC G1V 4C7, CanadaForest Research Institute, Industrial Chair NSERC-UQAT-UQAM in Sustainable Forest Management, Université du Québec en Abitibi-Témiscamingue, Rouyn-Noranda, QC J9X 5E4, CanadaQuantifying fire regimes in the boreal forest ecosystem is crucial for understanding the past and present dynamics, as well as for predicting its future dynamics. Survival analyses have often been used to estimate the fire cycle in eastern Canada because they make it possible to take into account the censored information that is made prevalent by the typically long fire return intervals and the limited scope of the dendroecological methods that are used to quantify them. Here, we assess how the true length of the fire cycle, the short-term temporal variations in fire activity, and the sampling effort affect the accuracy and precision of estimates obtained from two types of parametric survival models, the Weibull and the exponential models, and one non-parametric model obtained with the Cox regression. Then, we apply those results in a case area located in eastern Canada. Our simulation experiment confirms some documented concerns regarding the detrimental effects of temporal variations in fire activity on parametric estimation of the fire cycle. Cox regressions appear to provide the most accurate and robust estimator, being by far the least affected by temporal variations in fire activity. The Cox-based estimate of the fire cycle for the last 300 years in the case study area is 229 years (CI95: 162–407), compared with the likely overestimated 319 years obtained with the commonly used exponential model.http://www.mdpi.com/1999-4907/7/7/131accuracyboreal forestcoverageCox regressiondendrochronologyexponentialfire cycleprecisionsurvival analysestime since fireWeibull |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Dominic Cyr Sylvie Gauthier Yan Boulanger Yves Bergeron |
spellingShingle |
Dominic Cyr Sylvie Gauthier Yan Boulanger Yves Bergeron Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses Forests accuracy boreal forest coverage Cox regression dendrochronology exponential fire cycle precision survival analyses time since fire Weibull |
author_facet |
Dominic Cyr Sylvie Gauthier Yan Boulanger Yves Bergeron |
author_sort |
Dominic Cyr |
title |
Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses |
title_short |
Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses |
title_full |
Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses |
title_fullStr |
Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses |
title_full_unstemmed |
Quantifying Fire Cycle from Dendroecological Records Using Survival Analyses |
title_sort |
quantifying fire cycle from dendroecological records using survival analyses |
publisher |
MDPI AG |
series |
Forests |
issn |
1999-4907 |
publishDate |
2016-06-01 |
description |
Quantifying fire regimes in the boreal forest ecosystem is crucial for understanding the past and present dynamics, as well as for predicting its future dynamics. Survival analyses have often been used to estimate the fire cycle in eastern Canada because they make it possible to take into account the censored information that is made prevalent by the typically long fire return intervals and the limited scope of the dendroecological methods that are used to quantify them. Here, we assess how the true length of the fire cycle, the short-term temporal variations in fire activity, and the sampling effort affect the accuracy and precision of estimates obtained from two types of parametric survival models, the Weibull and the exponential models, and one non-parametric model obtained with the Cox regression. Then, we apply those results in a case area located in eastern Canada. Our simulation experiment confirms some documented concerns regarding the detrimental effects of temporal variations in fire activity on parametric estimation of the fire cycle. Cox regressions appear to provide the most accurate and robust estimator, being by far the least affected by temporal variations in fire activity. The Cox-based estimate of the fire cycle for the last 300 years in the case study area is 229 years (CI95: 162–407), compared with the likely overestimated 319 years obtained with the commonly used exponential model. |
topic |
accuracy boreal forest coverage Cox regression dendrochronology exponential fire cycle precision survival analyses time since fire Weibull |
url |
http://www.mdpi.com/1999-4907/7/7/131 |
work_keys_str_mv |
AT dominiccyr quantifyingfirecyclefromdendroecologicalrecordsusingsurvivalanalyses AT sylviegauthier quantifyingfirecyclefromdendroecologicalrecordsusingsurvivalanalyses AT yanboulanger quantifyingfirecyclefromdendroecologicalrecordsusingsurvivalanalyses AT yvesbergeron quantifyingfirecyclefromdendroecologicalrecordsusingsurvivalanalyses |
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