Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins

Abstract Quantitative precipitation estimation (QPE) has been an enduring challenge especially in mountainous regions due to high spatiotemporal variability of precipitation. Because of QPE uncertainty, and fast rainfall‐runoff processes in complex terrain, improvements in flood modeling through cal...

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Main Authors: Mochi Liao, Ana P. Barros
Format: Article
Language:English
Published: Wiley 2025-08-01
Series:Water Resources Research
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Online Access:https://doi.org/10.1029/2024WR038446
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author Mochi Liao
Ana P. Barros
author_facet Mochi Liao
Ana P. Barros
author_sort Mochi Liao
collection DOAJ
description Abstract Quantitative precipitation estimation (QPE) has been an enduring challenge especially in mountainous regions due to high spatiotemporal variability of precipitation. Because of QPE uncertainty, and fast rainfall‐runoff processes in complex terrain, improvements in flood modeling through calibration of hydrologic model parameters remain elusive. Liao and Barros (2022, https://doi.org/10.1016/j.rse.2022.113107, 2023), https://doi.org/10.1029/2023wr034456 introduced the Inverse Rainfall Correction (IRC) to calculate QPE corrections. The IRC redistributes runoff simulation errors at the basin outlet by Lagrangian backtracking to the runoff source area along flow pathlines. Whereas the IRC can be implemented using any hydrologic model, the IRC outcome is impacted by hydrological model structure. This work aims to elucidate model structural uncertainty impacts on hydrologic simulations. Two sources of model structural uncertainty were identified: (a) numerical formulation—flood propagation errors attributed to the routing algorithm, and (b) missing physics—representation of riverbank storage impacts on early flood response. Significant advances are achieved by implementing a new flood routing algorithm without calibration of celerity‐discharge relations, and by introducing a riverbank storage parameterization to capture flood response delays tied to the lateral ponds along the streams. Overall, a median Kling‐Gupta Efficiency of 0.83 at 15‐min intervals is achieved. Over 95% of the events have flood timing errors less than 1 hour with the new routing compared to 30% with the classical variable‐parameter Muskingum‐Cunge (MC) routing, and the median error of peak discharge decreases from −7.4% to −1% after applying IRC. This study confirms the IRC as a robust general framework for QPE correction.
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spelling doaj-art-16a680cd82da416dba4fb0e858663c092025-08-26T12:02:54ZengWileyWater Resources Research0043-13971944-79732025-08-01618n/an/a10.1029/2024WR038446Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater BasinsMochi Liao0Ana P. Barros1Civil and Environmental Engineering University of Illinois Urbana‐Champaign Urbana IL USACivil and Environmental Engineering University of Illinois Urbana‐Champaign Urbana IL USAAbstract Quantitative precipitation estimation (QPE) has been an enduring challenge especially in mountainous regions due to high spatiotemporal variability of precipitation. Because of QPE uncertainty, and fast rainfall‐runoff processes in complex terrain, improvements in flood modeling through calibration of hydrologic model parameters remain elusive. Liao and Barros (2022, https://doi.org/10.1016/j.rse.2022.113107, 2023), https://doi.org/10.1029/2023wr034456 introduced the Inverse Rainfall Correction (IRC) to calculate QPE corrections. The IRC redistributes runoff simulation errors at the basin outlet by Lagrangian backtracking to the runoff source area along flow pathlines. Whereas the IRC can be implemented using any hydrologic model, the IRC outcome is impacted by hydrological model structure. This work aims to elucidate model structural uncertainty impacts on hydrologic simulations. Two sources of model structural uncertainty were identified: (a) numerical formulation—flood propagation errors attributed to the routing algorithm, and (b) missing physics—representation of riverbank storage impacts on early flood response. Significant advances are achieved by implementing a new flood routing algorithm without calibration of celerity‐discharge relations, and by introducing a riverbank storage parameterization to capture flood response delays tied to the lateral ponds along the streams. Overall, a median Kling‐Gupta Efficiency of 0.83 at 15‐min intervals is achieved. Over 95% of the events have flood timing errors less than 1 hour with the new routing compared to 30% with the classical variable‐parameter Muskingum‐Cunge (MC) routing, and the median error of peak discharge decreases from −7.4% to −1% after applying IRC. This study confirms the IRC as a robust general framework for QPE correction.https://doi.org/10.1029/2024WR038446QPE errorsorographic rainfallfloodsheadwater basins
spellingShingle Mochi Liao
Ana P. Barros
Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins
Water Resources Research
QPE errors
orographic rainfall
floods
headwater basins
title Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins
title_full Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins
title_fullStr Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins
title_full_unstemmed Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins
title_short Modeling Celerity‐Discharge Behavior and Riverbank Storage for Improving Flood Simulations in Headwater Basins
title_sort modeling celerity discharge behavior and riverbank storage for improving flood simulations in headwater basins
topic QPE errors
orographic rainfall
floods
headwater basins
url https://doi.org/10.1029/2024WR038446
work_keys_str_mv AT mochiliao modelingceleritydischargebehaviorandriverbankstorageforimprovingfloodsimulationsinheadwaterbasins
AT anapbarros modelingceleritydischargebehaviorandriverbankstorageforimprovingfloodsimulationsinheadwaterbasins