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Application of hydrological model simulations in landslide predictions

Authors :
Jun Zhang
Binru Zhao
Matteo Berti
Dawei Han
Lu Zhuo
Qiang Dai
Zhao, Binru
Dai, Qiang
Han, Dawei
Zhang, Jun
Zhuo, Lu
Berti, Matteo
Source :
Zhao, B, Dai, Q, Han, D, Zhang, J, Zhuo, L & Berti, M 2019, ' Application of Hydrological Model Simulations in Landslide Predictions ', Landslides . https://doi.org/10.1007/s10346-019-01296-3
Publication Year :
2019
Publisher :
Springer Science and Business Media LLC, 2019.

Abstract

The importance of soil moisture conditions in the initiation of landslides has been widely recognized. This study takes advantage of the distributed hydrological model to derive the soil wetness index. The derived soil wetness index is then used to determine soil wetness thresholds for landslide occurrences. In order to predict landslides based on alert zones, a zone threshold is introduced together with the soil wetness threshold to constitute the integrated threshold. We evaluate the prediction performance of the integrated thresholds with the use of skill scores and the receiver operating characteristic (ROC) curves. This study is carried out in a sub-region of the Emilia-Romagna region, Northern Italy. Results show that the derived soil wetness index could account for the hydrological process that is controlled by meteorological conditions and topographic properties. The proposed integrated threshold shows a better predictive capability than the rainfall threshold, demonstrating the effectiveness of applying the soil wetness index in landslide predictions. The optimal threshold is also determined by compromising the correct predictions and incorrect predictions, it is found that the optimal integrated threshold is more advantageous in reducing false alarms compared with the optimal rainfall threshold. This study highlights the potential of applying hydrological simulations in landslide prediction studies and provides a new way to make use of high-resolution data in zone-based landslide predictions.

Details

ISSN :
16125118 and 1612510X
Volume :
17
Database :
OpenAIRE
Journal :
Landslides
Accession number :
edsair.doi.dedup.....cf774f32372eecfcf2f61f36e0af16bb
Full Text :
https://doi.org/10.1007/s10346-019-01296-3