Abstract
Landslides lead to a great threat to human life and property safety. The delineation of landslide-prone areas achieved by landslide susceptibility assessment plays an important role in landslide management strategy. Selecting an appropriate mapping unit is vital for landslide susceptibility assessment. This paper compares the slope unit and grid cell as mapping unit for landslide susceptibility assessment. Grid cells can be easily obtained and their matrix format is convenient for calculation. A slope unit is considered as the watershed defined by ridge lines and valley lines based on hydrological theory and slope units are more associated with the actual geological environment. Using 70% landslide events as the training data and the remaining landslide events for verification, landslide susceptibility maps based on slope units and grid cells were obtained respectively using a modified information value model. ROC curve was utilized to evaluate the landslide susceptibility maps by calculating the training accuracy and predictive accuracy. The training accuracies of the grid cell-based susceptibility assessment result and slope unit-based susceptibility assessment result were 80.9 and 83.2%, and the prediction accuracies were 80.3 and 82.6%, respectively. Therefore, landslide susceptibility mapping based on slope units performed better than grid cell-based method.
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The research is supported by National Science and Technology Major Project of the Ministry of Science and Technology of China (project No. 2017YFB0503704) and National Nature Science Foundation of China (project No. 41671380) and is funded by the Foundation of Key Laboratory for Geo-Environmental Monitoring of Coastal Zone of the National Administration of Surveying, Mapping and Geoinformation.
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Communicated by: H. A. Babaie
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Ba, Q., Chen, Y., Deng, S. et al. A comparison of slope units and grid cells as mapping units for landslide susceptibility assessment. Earth Sci Inform 11, 373–388 (2018). https://doi.org/10.1007/s12145-018-0335-9
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DOI: https://doi.org/10.1007/s12145-018-0335-9