Cao Huan Nguyen's research while affiliated with Vietnam National University, Hanoi and other places

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Publications (1)


The location of the Tra Khuc river basin in Vietnam.
Shallow landslide occurring in Tra Khuc basin in 2021.
Landslide conditioning factors in the Tra Khuc river basin in Quang Ngai Province: 1) elevation, 2) curvature, 3) aspect, 4) slope, 5) NDVI in 2010, 6) NDBI in 2010, 7) NDVI in 2020, 8) NDBI in 2020, 9) distance from road, 10) soil type, 11) distance from river, 12) TWI, 13) LULC in 2010, 14) LULC in 2020, 15) LULC in 2030, 16) LULC in 2050, 17) average annual rainfall in 2030, 18) average annual rainfall in 2050, 19) average annual rainfall in 2010, 20) average annual rainfall in 2020, 21) distance to settlement in 2030, 22) distance to settlement in 2050, 23) distance to settlement in 2010, 24) distance to settlement in 2020, 25) NDWI in 2010, 26) NDWI in 2020, 27) morphology.
The methodology for Land use prediction.
Flowchart of landslide susceptibility mapping.

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Deep learning to assess the effects of land use/land cover and climate change on landslide susceptibility in the Tra Khuc river basin of Vietnam
  • Article
  • Full-text available

January 2023

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164 Reads

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7 Citations

Geocarto International

Geocarto International

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Viet Thanh Pham

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Understanding the negative effects of climate change and changes to land use/land cover on natural hazards is an important feature of sustainable development worldwide, as these phenomena are inextricably linked with natural hazards such as landslides. The contribution of this study is an attempt to develop a state-of-the-art method to assess the effects of climate change and changes in land use/land cover on landslide susceptibility in the Tra Khuc river basin in Vietnam. The method is based on machine learning and remote sensing algorithms, namely radial basis function neural networks–search and rescue optimization (RBFNN–SARO), radial basis function neural network–queuing search algorithm (RBFNN–QSA), radial basis function neural network–life choice-based optimizer (RBFNN–LCBO), radial basis function neural network–dragonfly optimization (RBFNN–DO). All proposed models performed well, with AUC value of >0.9. The RBFNN–QSA model performed best, with an AUC value of 0.98, followed by RBFNN–SARO (AUC = 0.97), RBFNN–LCBO (AUC = 0.95), RBFNN–DO (AUC = 0.93), and support vector machine (SVM; AUC = 0.92). The results show that both climate and land use/land cover change greatly in the future: Precipitation increases 18% by 2030 and 25.1% by 2050; the total production forest, protected forest and built-up area change considerably between 2010 and 2050. These changes influence landslide susceptibility: The area of high and very high landslide susceptibility decrease by approximately 100 and 300 km² respectively in the study area from 2010 to 2050. The findings of this study can support decision-makers in formulating appropriate strategies to reduce damage from landslides, such as limiting construction in areas where future landslides are predicted. Although this study applies to a particular region of Vietnam, the findings can be applied in other mountainous regions around the world.

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Citations (1)


... Firstly, the study solely focuses on the application of boosting algorithms in LSM, whereas there is a growing trend of utilizing deep learning techniques for landslide hazard prediction. Thus, future investigations could explore the integration of deep learning models into LSM to achieve more comprehensive and accurate predictions (Viet Du et al., 2023). The findings indicate that deep learning exhibits high accuracy and robustness, making it scientifically significant to explore diverse deep learning approaches in LSM. ...

Reference:

Landslide susceptibility mapping (LSM) based on different boosting and hyperparameter optimization algorithms: A case of Wanzhou District, China
Deep learning to assess the effects of land use/land cover and climate change on landslide susceptibility in the Tra Khuc river basin of Vietnam
Geocarto International

Geocarto International