2024 : 4 : 28
Himan Shahabi

Himan Shahabi

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 23670602300
Faculty: Faculty of Natural Resources
Address: Faculty of Natural Resources, University of Kurdistan, Sanandaj, Iran ORCID ID: orcid.org/0000-0001-5091-6947
Phone: 087-33664600-8 داخلی 4312

Research

Title
Shallow Landslide Susceptibility Mapping by Random Forest Base Classifier and Its Ensembles in a Semi-Arid Region of Iran
Type
JournalPaper
Keywords
shallow landslide; machine learning; goodness-of-fit; over-fitting; GIS; Iran
Year
2020
Journal FORESTS
DOI
Researchers Viet-Ha Nhu ، Ataollah Shirzadi ، Himan Shahabi ، Wei Chen ، John J. Clague ، Marten Geertsema ، Abolfazl Jaafari ، Mohammadtaghi Avand ، Shaghayegh Miraki ، Davod Talebpur Asl ، Binh Thai Pham ، Baharin Ben Ahmad ، Lee Saro

Abstract

We generated high-quality shallow landslide susceptibility maps for Bijar County, Kurdistan Province, Iran, using Random Forest (RAF), an ensemble computational intelligence method and three meta classifiers—Bagging (BA, BA-RAF), Random Subspace (RS, RS-RAF), and Rotation Forest (RF, RF-RAF). Modeling and validation were done on 111 shallow landslide locations using 20 conditioning factors tested by the Information Gain Ratio (IGR) technique. We assessed model performance with statistically based indexes, including sensitivity, specificity, accuracy, kappa, root mean square error (RMSE), and area under the receiver operatic characteristic curve (AUC). All four machine learning models that we tested yielded excellent goodness-of-fit and prediction accuracy, but the RF-RAF ensemble model (AUC = 0.936) outperformed the BA-RAF, RS-RAF (AUC = 0.907), and RAF (AUC = 0.812) models. The results also show that the Random Forest model significantly improved the predictive capability of the RAF-based classifier and, therefore, can be considered as a useful and an effective tool in regional shallow landslide susceptibility mapping.