Uncertainty assessment of flood inundation modeling with a 1D/2D random field
An uncertainty assessment framework based on Karhunen-Loevexpansion (KLE) and probabilistic collocation method (PCM) was introduced to deal with flood inundation modelling under uncertainty. The Manning's roughness for channel and floodplain were treated as 1D and 2D, respectively, and decompos...
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sg-ntu-dr.10356-1394222020-05-19T07:29:44Z Uncertainty assessment of flood inundation modeling with a 1D/2D random field Huang, Yuefei Qin, Xiao Sheng School of Civil and Environmental Engineering Environmental Process Modelling Centre Nanyang Environment and Water Research Institute Engineering::Environmental engineering Flood Inundation Modelling KLE An uncertainty assessment framework based on Karhunen-Loevexpansion (KLE) and probabilistic collocation method (PCM) was introduced to deal with flood inundation modelling under uncertainty. The Manning's roughness for channel and floodplain were treated as 1D and 2D, respectively, and decomposed by KLE. The maximum flow depths were decomposed by the 2nd-order PCM. Through a flood modelling case with steady inflow hydrographs based on five designed testing scenarios, the applicability of KLE-PCM was demonstrated. The study results showed that the Manning's roughness assumed as a 1D/2D random field could efficiently alleviate the burden of random dimensionality within the analysis framework, and the introduced method could significantly reduce repetitive runs of the physical model as required in the traditional Monte Carlo simulation (MCS). The study sheds some light on reducing the computational burden associated with flood modelling under uncertainty which is useful for the related damage quantification and risk management. MOE (Min. of Education, S’pore) 2020-05-19T07:29:43Z 2020-05-19T07:29:43Z 2017 Journal Article Huang, Y., & Qin, X. S. (2018). Uncertainty assessment of flood inundation modelling with a 1D/2D random field. Journal of Hydroinformatics, 20(5), 1148-1162. doi:10.2166/hydro.2017.219 1464-7141 https://hdl.handle.net/10356/139422 10.2166/hydro.2017.219 2-s2.0-85054619468 5 20 1148 1162 en Journal of Hydroinformatics © 2018 IWA Publishing. All rights reserved. |
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Engineering::Environmental engineering Flood Inundation Modelling KLE Huang, Yuefei Qin, Xiao Sheng Uncertainty assessment of flood inundation modeling with a 1D/2D random field |
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An uncertainty assessment framework based on Karhunen-Loevexpansion (KLE) and probabilistic collocation method (PCM) was introduced to deal with flood inundation modelling under uncertainty. The Manning's roughness for channel and floodplain were treated as 1D and 2D, respectively, and decomposed by KLE. The maximum flow depths were decomposed by the 2nd-order PCM. Through a flood modelling case with steady inflow hydrographs based on five designed testing scenarios, the applicability of KLE-PCM was demonstrated. The study results showed that the Manning's roughness assumed as a 1D/2D random field could efficiently alleviate the burden of random dimensionality within the analysis framework, and the introduced method could significantly reduce repetitive runs of the physical model as required in the traditional Monte Carlo simulation (MCS). The study sheds some light on reducing the computational burden associated with flood modelling under uncertainty which is useful for the related damage quantification and risk management. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Huang, Yuefei Qin, Xiao Sheng |
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Article |
author |
Huang, Yuefei Qin, Xiao Sheng |
author_sort |
Huang, Yuefei |
title |
Uncertainty assessment of flood inundation modeling with a 1D/2D random field |
title_short |
Uncertainty assessment of flood inundation modeling with a 1D/2D random field |
title_full |
Uncertainty assessment of flood inundation modeling with a 1D/2D random field |
title_fullStr |
Uncertainty assessment of flood inundation modeling with a 1D/2D random field |
title_full_unstemmed |
Uncertainty assessment of flood inundation modeling with a 1D/2D random field |
title_sort |
uncertainty assessment of flood inundation modeling with a 1d/2d random field |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/139422 |
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1681056164653039616 |