Spatial mapping of landslide susceptibility in Jerash governorate of Jordan using genetic algorithm-based wrapper feature selection and bagging-based ensemble model
ABSTRACT
This study employs five genetic algorithm (GA)-based machine
learning (ML) models, namely the Decision Tree (DT), k-Nearest
Neighbors (kNN), Na?veBayes (NB), Support Vector Machine (SVM),
and Extreme Learning Machine (ELM), to build a novel ensemble
algorithm that is founded on the Bagging method for landslide
susceptibility mapping (LSM) in Jerash Governorate, north of
Jordan. The GA-based wrapper feature selection (FS) was done
based on the five individual models and in the initial stages of
modeling, an inquiry for the best feature for each of the five
models was made. Finally, five hybrid models, namely DT-GA,
kNN-GA, NB-GA, SVM-GA, and ELM-GA were constructed and
combined to create Bagging-based ensemble model. The FS outcomes
uncovered that rainfall depth, distance to roads, the
Stream Power Index, the Normalized Difference Vegetation Index,
slope, geology, and aspect are the most influential determinants
of landslides. After the significant variables were identified, they
were selected as input predictors and entered into the models.
GA-based Bagging ensemble model with the area under the
receiver operating characteristic curve (AUROC) of 0.85 achieved
the highest accuracy in the validation run, followed by SVM-GA
(AUROC ? 0.80), NB-GA (AUROC ? 0.76), DT-GA (AUROC ? 0.72),
kNN-GA (AUROC ? 0.70), and ELM-GA (AUROC ? 0.48).