Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model

Wildfire is a major disturbance that affects large area globally every year. Thus, a better prediction of the likelihood of wildfire occurrence is essential to develop appropriate fire prevention measures. We applied a global negative Binomial (NB) and a geographically weighted negative Binomial reg...

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Main Authors: Zhangwen Su, Haiqing Hu, Mulualem Tigabu, Guangyu Wang, Aicong Zeng, Futao Guo
Format: Article
Language:English
Published: MDPI AG 2019-04-01
Series:Forests
Subjects:
Online Access:https://www.mdpi.com/1999-4907/10/5/377
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spelling doaj-91a8b58178fa4627b2a4c46344e5ef3a2020-11-25T02:11:58ZengMDPI AGForests1999-49072019-04-0110537710.3390/f10050377f10050377Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial ModelZhangwen Su0Haiqing Hu1Mulualem Tigabu2Guangyu Wang3Aicong Zeng4Futao Guo5College of Forestry, Northeast Forestry University, Harbin 150040, ChinaCollege of Forestry, Northeast Forestry University, Harbin 150040, ChinaCollege of Forestry, Fujian Agriculture and Forestry University, Fuzhou 350002, ChinaAsia Forest Research Centre, Faculty of Forestry, University of British Columbia, Vancouver, BC V6T 1Z4, CanadaCollege of Forestry, Fujian Agriculture and Forestry University, Fuzhou 350002, ChinaCollege of Forestry, Fujian Agriculture and Forestry University, Fuzhou 350002, ChinaWildfire is a major disturbance that affects large area globally every year. Thus, a better prediction of the likelihood of wildfire occurrence is essential to develop appropriate fire prevention measures. We applied a global negative Binomial (NB) and a geographically weighted negative Binomial regression (GWNBR) models to determine the relationship between wildfire occurrence and its drivers factors in the boreal forests of the Great Xing’an Mountains, northeast China. Using geo-weighted techniques to consider the geospatial information of meteorological, topographic, vegetation type and human factors, we aimed to verify whether the performance of the NB model can be improved. Our results confirmed that the model fitting and predictions of GWNBR model were better than the global NB model, produced more precise and stable model parameter estimation, yielded a more realistic spatial distribution of model predictions, and provided the detection of the impact hotpots of these predictor variables. We found slope, vegetation cover, average precipitation, average temperature, and average relative humidity as important predictors of wildfire occurrence in the Great Xing’an Mountains. Thus, spatially differing relations improves the explanatory power of the global NB model, which does not explain sufficiently the relationship between wildfire occurrence and its drivers. Thus, the GWNBR model can complement the global NB model in overcoming the issue of nonstationary variables, thereby enabling a better prediction of the occurrence of wildfires in large geographical areas and improving management practices of wildfire.https://www.mdpi.com/1999-4907/10/5/377boreal forestswildfire driversgeographically weighted regressiongeospatial analysis
collection DOAJ
language English
format Article
sources DOAJ
author Zhangwen Su
Haiqing Hu
Mulualem Tigabu
Guangyu Wang
Aicong Zeng
Futao Guo
spellingShingle Zhangwen Su
Haiqing Hu
Mulualem Tigabu
Guangyu Wang
Aicong Zeng
Futao Guo
Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model
Forests
boreal forests
wildfire drivers
geographically weighted regression
geospatial analysis
author_facet Zhangwen Su
Haiqing Hu
Mulualem Tigabu
Guangyu Wang
Aicong Zeng
Futao Guo
author_sort Zhangwen Su
title Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model
title_short Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model
title_full Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model
title_fullStr Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model
title_full_unstemmed Geographically Weighted Negative Binomial Regression Model Predicts Wildfire Occurrence in the Great Xing’an Mountains Better Than Negative Binomial Model
title_sort geographically weighted negative binomial regression model predicts wildfire occurrence in the great xing’an mountains better than negative binomial model
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2019-04-01
description Wildfire is a major disturbance that affects large area globally every year. Thus, a better prediction of the likelihood of wildfire occurrence is essential to develop appropriate fire prevention measures. We applied a global negative Binomial (NB) and a geographically weighted negative Binomial regression (GWNBR) models to determine the relationship between wildfire occurrence and its drivers factors in the boreal forests of the Great Xing’an Mountains, northeast China. Using geo-weighted techniques to consider the geospatial information of meteorological, topographic, vegetation type and human factors, we aimed to verify whether the performance of the NB model can be improved. Our results confirmed that the model fitting and predictions of GWNBR model were better than the global NB model, produced more precise and stable model parameter estimation, yielded a more realistic spatial distribution of model predictions, and provided the detection of the impact hotpots of these predictor variables. We found slope, vegetation cover, average precipitation, average temperature, and average relative humidity as important predictors of wildfire occurrence in the Great Xing’an Mountains. Thus, spatially differing relations improves the explanatory power of the global NB model, which does not explain sufficiently the relationship between wildfire occurrence and its drivers. Thus, the GWNBR model can complement the global NB model in overcoming the issue of nonstationary variables, thereby enabling a better prediction of the occurrence of wildfires in large geographical areas and improving management practices of wildfire.
topic boreal forests
wildfire drivers
geographically weighted regression
geospatial analysis
url https://www.mdpi.com/1999-4907/10/5/377
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