Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.

Forest fires can cause catastrophic damage on natural resources. In the meantime, it can also bring serious economic and social impacts. Meteorological factors play a critical role in establishing conditions favorable for a forest fire. Effective prediction of forest fire occurrences could prevent o...

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Main Authors: Yundan Xiao, Xiongqing Zhang, Ping Ji
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0120621
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spelling doaj-58d80692f02c45b59bf9cbb3327444512021-03-03T20:08:15ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01103e012062110.1371/journal.pone.0120621Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.Yundan XiaoXiongqing ZhangPing JiForest fires can cause catastrophic damage on natural resources. In the meantime, it can also bring serious economic and social impacts. Meteorological factors play a critical role in establishing conditions favorable for a forest fire. Effective prediction of forest fire occurrences could prevent or minimize losses. This paper uses count data models to analyze fire occurrence data which is likely to be dispersed and frequently contain an excess of zero counts (no fire occurrence). Such data have commonly been analyzed using count data models such as a Poisson model, negative binomial model (NB), zero-inflated models, and hurdle models. Data we used in this paper is collected from Qiannan autonomous prefecture of Guizhou province in China. Using the fire occurrence data from January to April (spring fire season) for the years 1996 through 2007, we introduced random effects to the count data models. In this study, the results indicated that the prediction achieved through NB model provided a more compelling and credible inferential basis for fitting actual forest fire occurrence, and mixed-effects model performed better than corresponding fixed-effects model in forest fire forecasting. Besides, among all meteorological factors, we found that relative humidity and wind speed is highly correlated with fire occurrence.https://doi.org/10.1371/journal.pone.0120621
collection DOAJ
language English
format Article
sources DOAJ
author Yundan Xiao
Xiongqing Zhang
Ping Ji
spellingShingle Yundan Xiao
Xiongqing Zhang
Ping Ji
Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.
PLoS ONE
author_facet Yundan Xiao
Xiongqing Zhang
Ping Ji
author_sort Yundan Xiao
title Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.
title_short Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.
title_full Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.
title_fullStr Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.
title_full_unstemmed Modeling forest fire occurrences using count-data mixed models in Qiannan autonomous prefecture of Guizhou province in China.
title_sort modeling forest fire occurrences using count-data mixed models in qiannan autonomous prefecture of guizhou province in china.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Forest fires can cause catastrophic damage on natural resources. In the meantime, it can also bring serious economic and social impacts. Meteorological factors play a critical role in establishing conditions favorable for a forest fire. Effective prediction of forest fire occurrences could prevent or minimize losses. This paper uses count data models to analyze fire occurrence data which is likely to be dispersed and frequently contain an excess of zero counts (no fire occurrence). Such data have commonly been analyzed using count data models such as a Poisson model, negative binomial model (NB), zero-inflated models, and hurdle models. Data we used in this paper is collected from Qiannan autonomous prefecture of Guizhou province in China. Using the fire occurrence data from January to April (spring fire season) for the years 1996 through 2007, we introduced random effects to the count data models. In this study, the results indicated that the prediction achieved through NB model provided a more compelling and credible inferential basis for fitting actual forest fire occurrence, and mixed-effects model performed better than corresponding fixed-effects model in forest fire forecasting. Besides, among all meteorological factors, we found that relative humidity and wind speed is highly correlated with fire occurrence.
url https://doi.org/10.1371/journal.pone.0120621
work_keys_str_mv AT yundanxiao modelingforestfireoccurrencesusingcountdatamixedmodelsinqiannanautonomousprefectureofguizhouprovinceinchina
AT xiongqingzhang modelingforestfireoccurrencesusingcountdatamixedmodelsinqiannanautonomousprefectureofguizhouprovinceinchina
AT pingji modelingforestfireoccurrencesusingcountdatamixedmodelsinqiannanautonomousprefectureofguizhouprovinceinchina
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