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Chase Dwelle
Chase Dwelle
Verified email at umich.edu
Title
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Cited by
Year
Breaking down the computational barriers to real‐time urban flood forecasting
VY Ivanov, D Xu, MC Dwelle, K Sargsyan, DB Wright, N Katopodes, J Kim, ...
Geophysical Research Letters 48 (20), e2021GL093585, 2021
282021
Streamflow, stomata, and soil pits: Sources of inference for complex models with fast, robust uncertainty quantification
MC Dwelle, J Kim, K Sargsyan, VY Ivanov
Advances in Water Resources 125, 13-31, 2019
252019
On the non-uniqueness of the hydro-geomorphic responses in a zero-order catchment with respect to soil moisture
J Kim, MC Dwelle, SK Kampf, S Fatichi, VY Ivanov
Advances in water resources 92, 73-89, 2016
222016
A novel modeling framework for computationally efficient and accurate real‐time ensemble flood forecasting with uncertainty quantification
VN Tran, MC Dwelle, K Sargsyan, VY Ivanov, J Kim
Water Resources Research 56 (3), e2019WR025727, 2020
212020
Academic engagement in public and political discourse: Proceedings of the Michigan meeting
AJ Hoffman, K Ashworth, C Dwelle, P Goldberg, A Henderson, L Merlin, ...
Ross School of Business Paper, 2015
182015
Addressing variability in hydrologic systems using efficient uncertainty quantification
M Dwelle
12018
Zooming in on hydrologic dynamics through data, probabilistic learning, and high-fidelity modeling
VY Ivanov, D Xu, MC Dwelle, K Sargsyan, D Wright, J Kim
Frontiers in Hydrology 2022, 424-027, 2022
2022
Reduction of problem dimensionality by merging hydrologic models with a probabilistic learning methodology
VY Ivanov, D Xu, K Sargsyan, MC Dwelle, D Wright, J Kim, W Huang
AGU Fall Meeting Abstracts 2020, H134-0001, 2020
2020
Pre-training of urban flood simulation for real-time flood forecasting within uncertainty quantification framework
D Xu, MC Dwelle, D Wright, J Kim, K Sargsyan, VY Ivanov
AGU Fall Meeting Abstracts 2019, H12B-08, 2019
2019
Stochastic simulation and inference of complex ecohydrologic processes with uncertainty quantification in an Amazonian catchment
VY Ivanov, MC Dwelle, K Sargsyan, J Kim
AGU Fall Meeting Abstracts 2019, H13Q-1993, 2019
2019
Uncertainty quantification of urban flooding simulation by using a reduced order modeling framework
D Xu, VY Ivanov, MC Dwelle, DS McKague, K Sargsyan
AGU Fall Meeting Abstracts 2018, H41L-2253, 2018
2018
Stochastic simulation of ecohydrological interactions between vegetation and groundwater
MC Dwelle, VY Ivanov, K Sargsyan
AGU Fall Meeting Abstracts 2017, H21J-1612, 2017
2017
Impact of extreme events on watershed dynamics.
J Kim, M Dwelle, A Warnock, V Ivanov, N Katopodes
European Water, 109-113, 2017
2017
Flood Dynamics Using High-Resolution Data and Probabilistic Assessment of Uncertainty
MC Dwelle, J Kim, K Sargsyan, VY Ivanov
AGU Fall Meeting Abstracts 2016, H34E-04, 2016
2016
Modeling Urban Flood Dynamics Using High-Resolution Topography and Bathymetry
MC Dwelle, J Kim, VY Ivanov
AGU Fall Meeting Abstracts 2015, H51E-1418, 2015
2015
Combining precipitation data from observed and numerical models to forecast precipitation characteristics in sparsely-gauged watersheds: an application to the Amazon River basin.
MC Dwelle, VY Ivanov, V Berrocal
AGU Fall Meeting Abstracts 2014, H23M-1058, 2014
2014
Renaissance Scientists: Collaboration across disciplines to meet the world's water-related challenges.
MC Dwelle
AGU Fall Meeting Abstracts 2014, ED21F-21, 2014
2014
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Articles 1–17