Improving Voting Feature Intervals for Spatial Prediction of Landslides

Author:

Pham Binh Thai1ORCID,Phong Tran Van2ORCID,Avand Mohammadtaghi3ORCID,Al-Ansari Nadhir4ORCID,Singh Sushant K.5ORCID,Le Hiep Van6ORCID,Prakash Indra7ORCID

Affiliation:

1. University of Transport Technology, Hanoi 100000, Vietnam

2. Institute of Geological Sciences, Vietnam Academy of Sciences and Technology, 84 Chua Lang Street, Dong da, Hanoi 100000, Vietnam

3. Department of Watershed Management Engineering, College of Natural Resources, TarbiatModares University, Tehran 14115-111, Iran

4. Department of Civil, Environmental and Natural Resources Engineering, Lulea University of Technology, Lulea 971 87, Sweden

5. Artificial Intelligence and Analytics, Health Care and Life Sciences, Virtusa Corporation, New York, NY, USA

6. Institute of Research and Development, Duy Tan University, Da Nang 550000, Vietnam

7. DDG(R) Geological Survey of India, Gandhinagar 382010, India

Abstract

In this study, the main aim is to improve performance of the voting feature intervals (VFIs), which is one of the most effective machine learning models, using two robust ensemble techniques, namely, AdaBoost and MultiBoost for landslide susceptibility assessment and prediction. For this, two hybrid models, namely, AdaBoost-based Voting Feature Intervals (ABVFIs) and MultiBoost-based Voting Feature Intervals (MBVFIs) were developed and validated using landslide data collected from one of the landslide affected districts of Vietnam, namely, Muong Lay. Quantitative validation methods including area under the ROC curve (AUC) were used to evaluate model performance. The results indicated that both the newly developed ensemble models ABVFI (AUC = 0.859) and MBVFI (AUC = 0.839) outperformed the single VFI (AUC = 0.824) model. Thus, ensemble framework-based VFI algorithms can be used for the accurate spatial prediction of landslides, which can also be applied in other landslide prone regions of the world. Landslide susceptibility maps developed by ensemble VFI models can be used for better landslide prevention and risk management of the area.

Funder

National Foundation for Science and Technology Development

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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