Matches in SemOpenAlex for { <https://semopenalex.org/work/W3210782077> ?p ?o ?g. }
- W3210782077 endingPage "1191" @default.
- W3210782077 startingPage "1191" @default.
- W3210782077 abstract "Given recent scientific advances, coastal flooding events can be properly modelled. Nevertheless, such models are computationally expensive (requiring many hours), which prevents their use for forecasting and warning. In addition, there is a gap between the model outputs and information actually needed by decision makers. The present work aims to develop and test a method capable of forecasting coastal flood information adapted to users’ needs. The method must be robust and fast and must integrate the complexity of coastal flood processes. The explored solution relies on metamodels, i.e., mathematical functions that precisely and efficiently (within minutes) estimate the results that would provide the numerical model. While the principle of relying on metamodel solutions is not new, the originality of the present work is to tackle and validate the entire process from the identification of user needs to the establishment and validation of the rapid forecast and early warning system (FEWS) while relying on numerical modelling, metamodelling, the development of indicators, and information technologies. The development and validation are performed at the study site of Gâvres (France). This site is subject to wave overtopping, so the numerical phase-resolving SWASH model is used to build the learning dataset required for the metamodel setup. Gaussian process- and random forest classifier-based metamodels are used and post-processed to estimate 14 indicators of interest for FEWS users. These metamodelling and post-processing schemes are implemented in an FEWS prototype, which is employed by local users and exhibits good warning skills during the validation period. Based on this experience, we provide recommendations for the improvement and/or application of this methodology and individual steps to other sites." @default.
- W3210782077 created "2021-11-08" @default.
- W3210782077 creator A5001871001 @default.
- W3210782077 creator A5014815586 @default.
- W3210782077 creator A5030279456 @default.
- W3210782077 creator A5034336559 @default.
- W3210782077 creator A5039905527 @default.
- W3210782077 creator A5061530957 @default.
- W3210782077 creator A5063505878 @default.
- W3210782077 creator A5068313546 @default.
- W3210782077 creator A5070989482 @default.
- W3210782077 creator A5083638199 @default.
- W3210782077 creator A5089281428 @default.
- W3210782077 date "2021-10-27" @default.
- W3210782077 modified "2023-10-17" @default.
- W3210782077 title "A User-Oriented Local Coastal Flooding Early Warning System Using Metamodelling Techniques" @default.
- W3210782077 cites W1568559832 @default.
- W3210782077 cites W1824831786 @default.
- W3210782077 cites W1964937639 @default.
- W3210782077 cites W1982413018 @default.
- W3210782077 cites W1987172718 @default.
- W3210782077 cites W1995609103 @default.
- W3210782077 cites W2001842014 @default.
- W3210782077 cites W2019899020 @default.
- W3210782077 cites W2026584030 @default.
- W3210782077 cites W2026936042 @default.
- W3210782077 cites W2027376987 @default.
- W3210782077 cites W2035195019 @default.
- W3210782077 cites W2055668893 @default.
- W3210782077 cites W2073072796 @default.
- W3210782077 cites W2078529379 @default.
- W3210782077 cites W2091425148 @default.
- W3210782077 cites W2119865789 @default.
- W3210782077 cites W2138315818 @default.
- W3210782077 cites W2146754360 @default.
- W3210782077 cites W2152849582 @default.
- W3210782077 cites W2156442555 @default.
- W3210782077 cites W2169942207 @default.
- W3210782077 cites W2326521315 @default.
- W3210782077 cites W2399265967 @default.
- W3210782077 cites W2513386338 @default.
- W3210782077 cites W2513831997 @default.
- W3210782077 cites W2611128125 @default.
- W3210782077 cites W2739787656 @default.
- W3210782077 cites W2768316630 @default.
- W3210782077 cites W2790482354 @default.
- W3210782077 cites W2806555904 @default.
- W3210782077 cites W2902869471 @default.
- W3210782077 cites W2911964244 @default.
- W3210782077 cites W2919501997 @default.
- W3210782077 cites W2934191826 @default.
- W3210782077 cites W2941672057 @default.
- W3210782077 cites W2963442672 @default.
- W3210782077 cites W2963481815 @default.
- W3210782077 cites W2964215139 @default.
- W3210782077 cites W2985731107 @default.
- W3210782077 cites W3008448141 @default.
- W3210782077 cites W3008790271 @default.
- W3210782077 cites W3017564295 @default.
- W3210782077 cites W3028987039 @default.
- W3210782077 cites W3031816369 @default.
- W3210782077 cites W3034077877 @default.
- W3210782077 cites W3036465233 @default.
- W3210782077 cites W3045324548 @default.
- W3210782077 cites W3092134948 @default.
- W3210782077 cites W3092666610 @default.
- W3210782077 cites W3099487920 @default.
- W3210782077 cites W3104250134 @default.
- W3210782077 cites W3109390333 @default.
- W3210782077 cites W3133126961 @default.
- W3210782077 cites W3167589645 @default.
- W3210782077 cites W3195875678 @default.
- W3210782077 cites W3201727520 @default.
- W3210782077 doi "https://doi.org/10.3390/jmse9111191" @default.
- W3210782077 hasPublicationYear "2021" @default.
- W3210782077 type Work @default.
- W3210782077 sameAs 3210782077 @default.
- W3210782077 citedByCount "6" @default.
- W3210782077 countsByYear W32107820772022 @default.
- W3210782077 countsByYear W32107820772023 @default.
- W3210782077 crossrefType "journal-article" @default.
- W3210782077 hasAuthorship W3210782077A5001871001 @default.
- W3210782077 hasAuthorship W3210782077A5014815586 @default.
- W3210782077 hasAuthorship W3210782077A5030279456 @default.
- W3210782077 hasAuthorship W3210782077A5034336559 @default.
- W3210782077 hasAuthorship W3210782077A5039905527 @default.
- W3210782077 hasAuthorship W3210782077A5061530957 @default.
- W3210782077 hasAuthorship W3210782077A5063505878 @default.
- W3210782077 hasAuthorship W3210782077A5068313546 @default.
- W3210782077 hasAuthorship W3210782077A5070989482 @default.
- W3210782077 hasAuthorship W3210782077A5083638199 @default.
- W3210782077 hasAuthorship W3210782077A5089281428 @default.
- W3210782077 hasBestOaLocation W32107820771 @default.
- W3210782077 hasConcept C111919701 @default.
- W3210782077 hasConcept C115903868 @default.
- W3210782077 hasConcept C116834253 @default.
- W3210782077 hasConcept C119857082 @default.
- W3210782077 hasConcept C124101348 @default.