Matches in SemOpenAlex for { <https://semopenalex.org/work/W4385161938> ?p ?o ?g. }
- W4385161938 endingPage "3678" @default.
- W4385161938 startingPage "3678" @default.
- W4385161938 abstract "Flood risk assessment and mapping are considered essential tools for the improvement of flood management. This research aims to construct a more comprehensive flood assessment framework by emphasizing factors related to human resilience and integrating them with meteorological and geographical factors. Moreover, two ensemble learning models, namely voting and stacking, which utilize heterogeneous learners, were employed in this study, and their prediction performance was compared with that of traditional machine learning models, including support vector machine, random forest, multilayer perceptron, and gradient boosting decision tree. The six models were trained and tested using a sample database constructed from historical flood events in Hefei, China. The results demonstrated the following findings: (1) the RF model exhibited the highest accuracy, while the SVR model underestimated the extent of extremely high-risk areas. The stacking model underestimated the extent of very-high-risk areas. It should be noted that the prediction results of ensemble learning methods may not be superior to those of the base models upon which they are built. (2) The predicted high-risk and very-high-risk areas within the study area are predominantly clustered in low-lying regions along the rivers, aligning with the distribution of hazardous areas observed in historical inundation events. (3) It is worth noting that the factor of distance to pumping stations has the second most significant driving influence after the DEM (Digital Elevation Model). This underscores the importance of considering human resilience factors. This study expands the empirical evidence for the ability of machine learning methods to be employed in flood risk assessment and deepens our understanding of the potential mechanisms of human resilience in influencing urban flood risk." @default.
- W4385161938 created "2023-07-24" @default.
- W4385161938 creator A5020817752 @default.
- W4385161938 creator A5020932593 @default.
- W4385161938 creator A5038696152 @default.
- W4385161938 creator A5067047877 @default.
- W4385161938 creator A5076492280 @default.
- W4385161938 date "2023-07-23" @default.
- W4385161938 modified "2023-10-18" @default.
- W4385161938 title "Urban Flood Risk Assessment through the Integration of Natural and Human Resilience Based on Machine Learning Models" @default.
- W4385161938 cites W1498436455 @default.
- W4385161938 cites W1678356000 @default.
- W4385161938 cites W1974614011 @default.
- W4385161938 cites W1989810169 @default.
- W4385161938 cites W2001345576 @default.
- W4385161938 cites W2007802759 @default.
- W4385161938 cites W2009290038 @default.
- W4385161938 cites W2012930983 @default.
- W4385161938 cites W2038188901 @default.
- W4385161938 cites W2042315239 @default.
- W4385161938 cites W2070606289 @default.
- W4385161938 cites W2071968219 @default.
- W4385161938 cites W2092556113 @default.
- W4385161938 cites W2122588877 @default.
- W4385161938 cites W2147406638 @default.
- W4385161938 cites W2149298154 @default.
- W4385161938 cites W2176478590 @default.
- W4385161938 cites W2516880899 @default.
- W4385161938 cites W2594352094 @default.
- W4385161938 cites W2606804832 @default.
- W4385161938 cites W2732516007 @default.
- W4385161938 cites W2745132597 @default.
- W4385161938 cites W2811032661 @default.
- W4385161938 cites W28412257 @default.
- W4385161938 cites W2895196240 @default.
- W4385161938 cites W2902923351 @default.
- W4385161938 cites W2904486608 @default.
- W4385161938 cites W2941121100 @default.
- W4385161938 cites W2973053290 @default.
- W4385161938 cites W2996701347 @default.
- W4385161938 cites W3005791898 @default.
- W4385161938 cites W3006494367 @default.
- W4385161938 cites W3008924545 @default.
- W4385161938 cites W3023118770 @default.
- W4385161938 cites W3035968653 @default.
- W4385161938 cites W3036595569 @default.
- W4385161938 cites W3038030066 @default.
- W4385161938 cites W3109983083 @default.
- W4385161938 cites W3116724951 @default.
- W4385161938 cites W3131138274 @default.
- W4385161938 cites W3140276143 @default.
- W4385161938 cites W3164556435 @default.
- W4385161938 cites W3176511636 @default.
- W4385161938 cites W3197367277 @default.
- W4385161938 cites W3198066336 @default.
- W4385161938 cites W3204751889 @default.
- W4385161938 cites W3214840804 @default.
- W4385161938 cites W4206955329 @default.
- W4385161938 cites W4220712909 @default.
- W4385161938 cites W4220946332 @default.
- W4385161938 cites W4230777928 @default.
- W4385161938 cites W4239510810 @default.
- W4385161938 cites W4289767170 @default.
- W4385161938 cites W4297200317 @default.
- W4385161938 cites W4302424479 @default.
- W4385161938 cites W4308116318 @default.
- W4385161938 cites W4313471424 @default.
- W4385161938 cites W4327694208 @default.
- W4385161938 cites W588320544 @default.
- W4385161938 doi "https://doi.org/10.3390/rs15143678" @default.
- W4385161938 hasPublicationYear "2023" @default.
- W4385161938 type Work @default.
- W4385161938 citedByCount "0" @default.
- W4385161938 crossrefType "journal-article" @default.
- W4385161938 hasAuthorship W4385161938A5020817752 @default.
- W4385161938 hasAuthorship W4385161938A5020932593 @default.
- W4385161938 hasAuthorship W4385161938A5038696152 @default.
- W4385161938 hasAuthorship W4385161938A5067047877 @default.
- W4385161938 hasAuthorship W4385161938A5076492280 @default.
- W4385161938 hasBestOaLocation W43851619381 @default.
- W4385161938 hasConcept C111919701 @default.
- W4385161938 hasConcept C119857082 @default.
- W4385161938 hasConcept C121332964 @default.
- W4385161938 hasConcept C12267149 @default.
- W4385161938 hasConcept C152124472 @default.
- W4385161938 hasConcept C154945302 @default.
- W4385161938 hasConcept C166957645 @default.
- W4385161938 hasConcept C169258074 @default.
- W4385161938 hasConcept C179717631 @default.
- W4385161938 hasConcept C205649164 @default.
- W4385161938 hasConcept C2779488668 @default.
- W4385161938 hasConcept C2779585090 @default.
- W4385161938 hasConcept C41008148 @default.
- W4385161938 hasConcept C50644808 @default.
- W4385161938 hasConcept C74256435 @default.
- W4385161938 hasConcept C84525736 @default.
- W4385161938 hasConcept C97355855 @default.
- W4385161938 hasConceptScore W4385161938C111919701 @default.