TY - JOUR
T1 - Advancing the LightGBM approach with three novel nature-inspired optimizers for predicting wildfire susceptibility in Kaua'i and Moloka'i Islands, Hawaii
AU - Janizadeh, Saeid
AU - Thi Kieu Tran, Trang
AU - Bateni, Sayed M.
AU - Jun, Changhyun
AU - Kim, Dongkyun
AU - Trauernicht, Clay
AU - Heggy, Essam
N1 - Publisher Copyright:
© 2024
PY - 2024/12/15
Y1 - 2024/12/15
N2 - This study developed three hybrid light gradient boosting machine (LightGBM) models using novel metaheuristic algorithms (golden jackal optimization [GJO], the pelican optimization algorithm [POA], and the zebra optimization algorithm [ZOA]) to predict wildfire susceptibility on Kaua'i and Moloka'i islands, Hawaii. Thirteen geo-environmental variables were employed as potentially influential variables to predict wildfire susceptibility, while 1641 and 136 recorded wildfire ignition points on Kaua'i and Moloka'i islands, respectively, and 1641 and 136 randomly generated non-wildfire locations on the same islands were used as output data. The impact of the independent variables on wildfire susceptibility was interpreted using the Shapley additive explanations (SHAP) method. It was found that ZOA-LightGBM had the highest accuracy (AUC = 0.9314) for the prediction of wildfire susceptibility on Kaua'i island, followed by GJO-LightGBM (0.9308), POA-LightGBM (0.9303), and LightGBM (0.9228). On Moloka'i island, ZOA-LightGBM also achieved the highest AUC (0.858), outperforming POALightGBM (0.8488), GJO-LightGBM (0.8426), and LightGBM (0.8395). Analysis of the hybrid models revealed that the use of metaheuristic algorithms resulted in the setting of the optimal hyperparameters for the LightGBM model, enhancing its performance in modeling wildfire susceptibility on both islands. The SHAP results indicated that the distance from roads, elevation, land surface temperature, and average annual wind speed had the strongest impact on wildfire susceptibility on Kaua'i Island, whereas distance from roads, slope, and average annual rainfall were the most important variables on Moloka'i island.
AB - This study developed three hybrid light gradient boosting machine (LightGBM) models using novel metaheuristic algorithms (golden jackal optimization [GJO], the pelican optimization algorithm [POA], and the zebra optimization algorithm [ZOA]) to predict wildfire susceptibility on Kaua'i and Moloka'i islands, Hawaii. Thirteen geo-environmental variables were employed as potentially influential variables to predict wildfire susceptibility, while 1641 and 136 recorded wildfire ignition points on Kaua'i and Moloka'i islands, respectively, and 1641 and 136 randomly generated non-wildfire locations on the same islands were used as output data. The impact of the independent variables on wildfire susceptibility was interpreted using the Shapley additive explanations (SHAP) method. It was found that ZOA-LightGBM had the highest accuracy (AUC = 0.9314) for the prediction of wildfire susceptibility on Kaua'i island, followed by GJO-LightGBM (0.9308), POA-LightGBM (0.9303), and LightGBM (0.9228). On Moloka'i island, ZOA-LightGBM also achieved the highest AUC (0.858), outperforming POALightGBM (0.8488), GJO-LightGBM (0.8426), and LightGBM (0.8395). Analysis of the hybrid models revealed that the use of metaheuristic algorithms resulted in the setting of the optimal hyperparameters for the LightGBM model, enhancing its performance in modeling wildfire susceptibility on both islands. The SHAP results indicated that the distance from roads, elevation, land surface temperature, and average annual wind speed had the strongest impact on wildfire susceptibility on Kaua'i Island, whereas distance from roads, slope, and average annual rainfall were the most important variables on Moloka'i island.
KW - Hawaii Islands
KW - Hybrid machine learning
KW - Metaheuristic algorithm
KW - Shap
KW - Wildfire susceptibility
KW - Zebra optimization algorithm (ZOA)
UR - https://www.scopus.com/pages/publications/85201782961
U2 - 10.1016/j.eswa.2024.124963
DO - 10.1016/j.eswa.2024.124963
M3 - Article
AN - SCOPUS:85201782961
SN - 0957-4174
VL - 258
JO - Expert Systems with Applications
JF - Expert Systems with Applications
M1 - 124963
ER -