干旱区科学2023,Vol.15Issue(6) :710-723.

Modelling the dead fuel moisture content in a grassland of Ergun City,China

CHANG Chang CHANG Yu GUO Meng HU Yuanman
干旱区科学2023,Vol.15Issue(6) :710-723.

Modelling the dead fuel moisture content in a grassland of Ergun City,China

CHANG Chang 1CHANG Yu 2GUO Meng 3HU Yuanman4
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作者信息

  • 1. CAS Key Laboratory of Forest Ecology and Management,Institute of Applied Ecology,Chinese Academy of Sciences,Shenyang 110016,China;University of Chinese Academy of Sciences,Beijing 100049,China
  • 2. CAS Key Laboratory of Forest Ecology and Management,Institute of Applied Ecology,Chinese Academy of Sciences,Shenyang 110016,China
  • 3. School of Geographical Sciences,Northeast Normal University,Changchun 130024,China
  • 4. CAS Key Laboratory of Forest Ecology and Management,Institute of Applied Ecology,Chinese Academy of Sciences,Shenyang 110016,China;E'erguna Wetland Ecosystem National Research Station,Hulunbuir 022250,China
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Abstract

The dead fuel moisture content(DFMC)is the key driver leading to fire occurrence.Accurately estimating the DFMC could help identify locations facing fire risks,prioritise areas for fire monitoring,and facilitate timely deployment of fire-suppression resources.In this study,the DFMC and environmental variables,including air temperature,relative humidity,wind speed,solar radiation,rainfall,atmospheric pressure,soil temperature,and soil humidity,were simultaneously measured in a grassland of Ergun City,Inner Mongolia Autonomous Region of China in 2021.We chose three regression models,i.e.,random forest(RF)model,extreme gradient boosting(XGB)model,and boosted regression tree(BRT)model,to model the seasonal DFMC according to the data collected.To ensure accuracy,we added time-lag variables of 3 d to the models.The results showed that the RF model had the best fitting effect with an R2 value of 0.847 and a prediction accuracy with a mean absolute error score of 4.764% among the three models.The accuracies of the models in spring and autumn were higher than those in the other two seasons.In addition,different seasons had different key influencing factors,and the degree of influence of these factors on the DFMC changed with time lags.Moreover,time-lag variables within 44 h clearly improved the fitting effect and prediction accuracy,indicating that environmental conditions within approximately 48 h greatly influence the DFMC.This study highlights the importance of considering 48 h time-lagged variables when predicting the DFMC of grassland fuels and mapping grassland fire risks based on the DFMC to help locate high-priority areas for grassland fire monitoring and prevention.

Key words

dead fuel moisture content(DFMC)/random forest(RF)model/extreme gradient boosting(XGB)model/boosted regression tree(BRT)model/grassland/Ergun City

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基金项目

National Key Research and Development Program of China Strategic International Cooperation in Science and Technology Innovat(2018YFE0207800)

National Natural Science Foundation of China(31971483)

出版年

2023
干旱区科学
中国科学院新疆生态与地理研究所,科学出版社

干旱区科学

CSTPCDCSCD北大核心
影响因子:1.743
ISSN:1674-6767
参考文献量8
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