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A machine learning approach for landslide susceptibility modeling for Rathnapura district, Sri Lanka

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dc.contributor.advisor Thayasivam U
dc.contributor.author Perera MAS
dc.date.accessioned 2021
dc.date.available 2021
dc.date.issued 2021
dc.identifier.citation Perera, M,A,S. (2021). A machine learning approach for landslide susceptibility modeling for Rathnapura district, Sri Lanka [Master's theses, University of Moratuwa]. Institutional Repository University of Moratuwa. http://dl.lib.uom.lk/handle/123/20450
dc.identifier.uri http://dl.lib.uom.lk/handle/123/20450
dc.description.abstract In certain areas of the world, landslides are the most common and recurrent natural hazard, resulting in substantial human deaths and property damage. Landslides are extremely common in Sri Lanka, with landslides affecting approximately 30.7%of the country's land area. As the demand for human growth has increased, landslides have become a major problem in Sri Lanka's mountainous regions. As a result, detecting landslide potential associated with terrain data and remote sensing data is crucial for ensuring the long-term viability of projects while minimizing the risk of landslide disasters. The aim of this study is to develop a susceptibility map for Sri Lanka using a novel data science approach. This study has been used the Rathnapura district in Sri Lanka as the study area. In this study, five ensemble machine learning algorithms: Random Forest, Bagged Decision Tree, AdaBoost, XGBoost, and Gradient Boost were used for landslide prediction and landslide susceptibility map modeling. Using the K-Means clustering algorithm, the class probability values from ensemble-based machine learning algorithms were used to reclassify the study area into susceptibility levels: Extreme Low (EL), Low (L), Moderate (M), High (H), Very High (VH), and Extreme High (EH). In addition, landslide susceptibility maps were generated using the Frequency Ratio technique. The Landslide Susceptibility Index (LSI) was generated using the Frequency Ratio values. The study area was then categorized into six landslide susceptibility classes based on the LSI value: Extreme Low, Low, Moderate, High, Very High, and Very High. The F-Score, Accuracy, Precision, and Recall values were used to evaluate the landslide prediction results, while the Landslide Density value was used to evaluate the LSMs. Finally, a web application was developed to visualize landslide susceptibility maps, landslide locations, and landslide conditioning factor maps. en_US
dc.language.iso en en_US
dc.subject LANDSLIDE DISASTER en_US
dc.subject MACHINE LEARNING en_US
dc.subject LANDSLIDE SUSCEPTIBILITY en_US
dc.subject SRI LANKA - Rathnapura en_US
dc.subject COMPUTER SCIENCE - Dissertation en_US
dc.subject COMPUTER SCIENCE & ENGINEERING - Dissertation en_US
dc.subject INFORMATION TECHNOLOGY – Dissertation en_US
dc.title A machine learning approach for landslide susceptibility modeling for Rathnapura district, Sri Lanka en_US
dc.type Thesis-Abstract en_US
dc.identifier.faculty Engineering en_US
dc.identifier.degree MSc in Computer Science and Engineering en_US
dc.identifier.department Department of Computer Science & Engineering en_US
dc.date.accept 2021
dc.identifier.accno TH4659 en_US


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