Open Access
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volume 63 pages 101292

Mapping forest fire susceptibility using spatially explicit ensemble models based on the locally weighted learning algorithm

Tran Thanh Tuyen 1
Tien Thinh Le 2
Hoang Phan Hai Yen 3
T. Nguyen-Thoi 4
Phan Trinh 5
Huu Lam Nguyen 6
Hiep Van Le 7
Tran Phuong 8
Son Thanh Nguyen 9
Indra Prakash 10
Binh V. Pham 7
Publication typeJournal Article
Publication date2021-07-01
scimago Q1
wos Q1
SJR1.491
CiteScore11.4
Impact factor7.3
ISSN15749541, 18780512
Computer Science Applications
Computational Theory and Mathematics
Ecology, Evolution, Behavior and Systematics
Applied Mathematics
Ecology
Modeling and Simulation
Ecological Modeling
Abstract
Fire is among the most dangerous and devastating natural hazards in forest ecosystems around the world. The development of computational ensemble models for improving the predictive accuracy of forest fire susceptibilities could save time and cost in firefighting efforts. Here, we combined a locally weighted learning (LWL) algorithm with the Cascade Generalization (CG), Bagging, Decorate, and Dagging ensemble learning techniques for the prediction of forest fire susceptibility in the Pu Mat National Park, Nghe An Province, Vietnam. A geospatial database that contained records from 56 historical fires and nine explanatory variables was employed to train the standalone LWL model and its derived ensemble models. The models were validated for their goodness-of-fit and predictive capability using the area under the receiver operating characteristic curve (AUC) and several other statistical performance criteria. The CG-LWL and Bagging-LWL models with AUC = 0.993 showed the highest training performance, whereas the Dagging-LWL ensemble model with AUC = 0.983 performed better than Decorate-LWL (AUC = 0.976), CG-LWL and Bagging-LWL (AUC = 0.972), and LWL (AUC = 0.965) for predicting the spatial pattern of fire susceptibilities across the study area. Our study promotes the application of ensemble models in forest fire prediction and enhances the researchers' understanding of the processes of model building. Although these four ensemble models were originally developed for the estimation of forest fire susceptibility, the models are sufficiently general to be used for predicting other types of natural hazards, such as landslides, floods, and dust storms, by considering local geo-environmental factors. • Developing four ensemble models for forest fire susceptibility mapping • Testing performance of CG, Bagging, Decorate, and Dagging ensemble learners • Reliable susceptibility mapping using the Dagging-LWL model (AUC = 0.983) • Providing insights for developing more advanced forest fire predictive models
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GOST Copy
Tuyen T. T. et al. Mapping forest fire susceptibility using spatially explicit ensemble models based on the locally weighted learning algorithm // Ecological Informatics. 2021. Vol. 63. p. 101292.
GOST all authors (up to 50) Copy
Tuyen T. T., Le T. T., Yen H. P. H., Nguyen-Thoi T., Trinh P., Nguyen H. L., Le H. V., Phuong T., Nguyen S. T., Prakash I., Pham B. V. Mapping forest fire susceptibility using spatially explicit ensemble models based on the locally weighted learning algorithm // Ecological Informatics. 2021. Vol. 63. p. 101292.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1016/j.ecoinf.2021.101292
UR - https://doi.org/10.1016/j.ecoinf.2021.101292
TI - Mapping forest fire susceptibility using spatially explicit ensemble models based on the locally weighted learning algorithm
T2 - Ecological Informatics
AU - Tuyen, Tran Thanh
AU - Le, Tien Thinh
AU - Yen, Hoang Phan Hai
AU - Nguyen-Thoi, T.
AU - Trinh, Phan
AU - Nguyen, Huu Lam
AU - Le, Hiep Van
AU - Phuong, Tran
AU - Nguyen, Son Thanh
AU - Prakash, Indra
AU - Pham, Binh V.
PY - 2021
DA - 2021/07/01
PB - Elsevier
SP - 101292
VL - 63
SN - 1574-9541
SN - 1878-0512
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2021_Tuyen,
author = {Tran Thanh Tuyen and Tien Thinh Le and Hoang Phan Hai Yen and T. Nguyen-Thoi and Phan Trinh and Huu Lam Nguyen and Hiep Van Le and Tran Phuong and Son Thanh Nguyen and Indra Prakash and Binh V. Pham},
title = {Mapping forest fire susceptibility using spatially explicit ensemble models based on the locally weighted learning algorithm},
journal = {Ecological Informatics},
year = {2021},
volume = {63},
publisher = {Elsevier},
month = {jul},
url = {https://doi.org/10.1016/j.ecoinf.2021.101292},
pages = {101292},
doi = {10.1016/j.ecoinf.2021.101292}
}