1. Modeling the forest fire risk by incorporating a new human activity factor from nighttime light data.
- Author
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Chen, Ming, Wang, Yongqian, Zheng, Zhong, You, Xingyue, and Zeng, Yaoqiang
- Subjects
FIRE risk assessment ,FOREST fire prevention & control ,FOREST fires ,FOREST fire management ,ECOLOGICAL disturbances ,RANDOM forest algorithms ,LOGISTIC regression analysis - Abstract
Fire was a serious natural disturbance to forest ecosystems. In this study, a national-scale forest fire risk model (RF_NTL) was proposed in mainland China by incorporating a new human activity factor (NTL) from nighttime light data. For objective verification of model's performance, the logistic regression model (LR) and random forest model (RF) were also built in this paper. Results showed that the RF_NTL model fitted with an AUC value up to 0.95, which was superior to the conventional LR model and RF model. The RF_NTL model also had good generalization ability and stability on annual and monthly scales, helping to accurately forecast forest fire risk. Moreover, the spatial distribution of forest fire risk based on RF_NTL model was detailed and reasonable on a national scale. Forest fire high-risk areas in China were mainly concentrated in the northeast and southwest regions. This study could provide references for future relevant research. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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