Matches in SemOpenAlex for { <https://semopenalex.org/work/W3048285196> ?p ?o ?g. }
- W3048285196 endingPage "519" @default.
- W3048285196 startingPage "505" @default.
- W3048285196 abstract "The identification of landslide-prone areas is an essential step in landslide hazard assessment and mitigation of landslide-related losses. In this study, we applied two novel deep learning algorithms, the recurrent neural network (RNN) and convolutional neural network (CNN), for national-scale landslide susceptibility mapping of Iran. We prepared a dataset comprising 4069 historical landslide locations and 11 conditioning factors (altitude, slope degree, profile curvature, distance to river, aspect, plan curvature, distance to road, distance to fault, rainfall, geology and land-sue) to construct a geospatial database and divided the data into the training and the testing dataset. We then developed RNN and CNN algorithms to generate landslide susceptibility maps of Iran using the training dataset. We calculated the receiver operating characteristic (ROC) curve and used the area under the curve (AUC) for the quantitative evaluation of the landslide susceptibility maps using the testing dataset. Better performance in both the training and testing phases was provided by the RNN algorithm (AUC=0.88) than by the CNN algorithm (AUC=0.85). Finally, we calculated areas of susceptibility for each province and found that 6% and 14% of the land area of Iran is very highly and highly susceptible to future landslide events, respectively, with the highest susceptibility in Chaharmahal and Bakhtiari Province (33.8%). About 31% of cities of Iran are located in areas with high and very high landslide susceptibility. The results of the present study will be useful for the development of landslide hazard mitigation strategies." @default.
- W3048285196 created "2020-08-13" @default.
- W3048285196 creator A5043053868 @default.
- W3048285196 creator A5056706783 @default.
- W3048285196 creator A5075443696 @default.
- W3048285196 creator A5077439959 @default.
- W3048285196 creator A5083514118 @default.
- W3048285196 creator A5089503857 @default.
- W3048285196 creator A5090671205 @default.
- W3048285196 date "2021-03-01" @default.
- W3048285196 modified "2023-10-09" @default.
- W3048285196 title "Evaluation of deep learning algorithms for national scale landslide susceptibility mapping of Iran" @default.
- W3048285196 cites W1057892209 @default.
- W3048285196 cites W1985288162 @default.
- W3048285196 cites W1993934953 @default.
- W3048285196 cites W1997659744 @default.
- W3048285196 cites W2000779163 @default.
- W3048285196 cites W2010113775 @default.
- W3048285196 cites W2038000952 @default.
- W3048285196 cites W2058082754 @default.
- W3048285196 cites W2069663627 @default.
- W3048285196 cites W2090105324 @default.
- W3048285196 cites W2090292633 @default.
- W3048285196 cites W2094149843 @default.
- W3048285196 cites W2112796928 @default.
- W3048285196 cites W2120630093 @default.
- W3048285196 cites W2192859287 @default.
- W3048285196 cites W2217003378 @default.
- W3048285196 cites W2318568688 @default.
- W3048285196 cites W2617669016 @default.
- W3048285196 cites W2640557513 @default.
- W3048285196 cites W2735810309 @default.
- W3048285196 cites W2754252800 @default.
- W3048285196 cites W2775745878 @default.
- W3048285196 cites W2787677368 @default.
- W3048285196 cites W2809363322 @default.
- W3048285196 cites W2830213849 @default.
- W3048285196 cites W2888380393 @default.
- W3048285196 cites W2903721734 @default.
- W3048285196 cites W2912361013 @default.
- W3048285196 cites W2921093430 @default.
- W3048285196 cites W2921395829 @default.
- W3048285196 cites W2921415961 @default.
- W3048285196 cites W2946974793 @default.
- W3048285196 cites W2957484857 @default.
- W3048285196 cites W2959500497 @default.
- W3048285196 cites W2962207954 @default.
- W3048285196 cites W2970904865 @default.
- W3048285196 cites W2972082796 @default.
- W3048285196 cites W2980376317 @default.
- W3048285196 cites W2984248680 @default.
- W3048285196 cites W2995742865 @default.
- W3048285196 cites W2996342798 @default.
- W3048285196 cites W2996701347 @default.
- W3048285196 cites W2999729702 @default.
- W3048285196 cites W3004517429 @default.
- W3048285196 cites W3005741980 @default.
- W3048285196 cites W3102619772 @default.
- W3048285196 doi "https://doi.org/10.1016/j.gsf.2020.06.013" @default.
- W3048285196 hasPublicationYear "2021" @default.
- W3048285196 type Work @default.
- W3048285196 sameAs 3048285196 @default.
- W3048285196 citedByCount "170" @default.
- W3048285196 countsByYear W30482851962020 @default.
- W3048285196 countsByYear W30482851962021 @default.
- W3048285196 countsByYear W30482851962022 @default.
- W3048285196 countsByYear W30482851962023 @default.
- W3048285196 crossrefType "journal-article" @default.
- W3048285196 hasAuthorship W3048285196A5043053868 @default.
- W3048285196 hasAuthorship W3048285196A5056706783 @default.
- W3048285196 hasAuthorship W3048285196A5075443696 @default.
- W3048285196 hasAuthorship W3048285196A5077439959 @default.
- W3048285196 hasAuthorship W3048285196A5083514118 @default.
- W3048285196 hasAuthorship W3048285196A5089503857 @default.
- W3048285196 hasAuthorship W3048285196A5090671205 @default.
- W3048285196 hasBestOaLocation W30482851961 @default.
- W3048285196 hasConcept C11413529 @default.
- W3048285196 hasConcept C127313418 @default.
- W3048285196 hasConcept C154945302 @default.
- W3048285196 hasConcept C165205528 @default.
- W3048285196 hasConcept C186295008 @default.
- W3048285196 hasConcept C205649164 @default.
- W3048285196 hasConcept C2778755073 @default.
- W3048285196 hasConcept C41008148 @default.
- W3048285196 hasConcept C58640448 @default.
- W3048285196 hasConcept C62649853 @default.
- W3048285196 hasConceptScore W3048285196C11413529 @default.
- W3048285196 hasConceptScore W3048285196C127313418 @default.
- W3048285196 hasConceptScore W3048285196C154945302 @default.
- W3048285196 hasConceptScore W3048285196C165205528 @default.
- W3048285196 hasConceptScore W3048285196C186295008 @default.
- W3048285196 hasConceptScore W3048285196C205649164 @default.
- W3048285196 hasConceptScore W3048285196C2778755073 @default.
- W3048285196 hasConceptScore W3048285196C41008148 @default.
- W3048285196 hasConceptScore W3048285196C58640448 @default.
- W3048285196 hasConceptScore W3048285196C62649853 @default.
- W3048285196 hasFunder F4320322097 @default.
- W3048285196 hasFunder F4320328359 @default.