2019
  • Non-ICIMOD publication
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Applying a series and parallel model and a bayesian networks model to produce disaster chain susceptibility maps in the Changbai Mountain area, China

  • Han L., Zhang J., Zhang Y., Lang Q.
  • Summary

The aim of this project was to produce an earthquake-landslide debris flow disaster chain susceptibility map for the ChangbaiMountain region, China, by applying data-driven model series and parallel model and Bayesian Networks model. The accuracy of these two models was then compared. Parameters related to the occurrence of landslide and debris flow disasters, including earthquake intensity, rainfall, elevation, slope, slope aspect, lithology, distance to rivers, distance to faults, land use, and the normalized difference vegetation index (NDVI), were chosen and applied in these two models. Disaster chain susceptibility zones created using the two models were then contrasted and verified using the occurrence of past disasters obtained from remote sensing interpretations and field investigations. Both disaster chain susceptibility maps showed that the high susceptibility zones are situated within a 10 km radius around the Tianchi volcano, whereas the northern and southwestern sections of the study area comprise primarily very low or low susceptibility zones. The two models produced similar and compatible results as indicated by the outcomes of basic linear correlation and cross-correlation analyses. The verification results of the ROC curves were found to be 0.7727 and 0.8062 for the series and parallel model and BN model, respectively. These results indicate that the two models can be used as a preliminary base for further research activities aimed at providing hazard management tools, forecasting services, and early warning systems. © 2019 by the authors.

  • Published in:
    Water (Switzerland), 11(10)
  • DOI:
    10.3390/w11102144
  • Language:
    English
  • Published Year:
    2019
  • External Link:
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