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Atmósfera

versión impresa ISSN 0187-6236

Atmósfera vol.38  Ciudad de México  2024  Epub 29-Sep-2023

https://doi.org/10.20937/atm.53234 

Articles

Modeling tropical storm Elsa: Flood map simulation using multisensory precipitation in Connecticut

Juan M. Stella1  * 

1Department of Civil and Environmental Engineering, Lamar University, Beaumont, 77710, Texas, USA


ABSTRACT

A flood map simulation in the Fenton River watershed, Connecticut, was conducted for Tropical Storm Elsa occurred in early July 2021, using Multi Radar Multi Sensor-Quantitative Precipitation Estimation (MRMS-QPE) as input to force the Hydrologic Engineering Center-Hydrologic Modeling System (HEC-HMS) to simulate discharges in the mainstream of the watershed. The simulated discharges were calibrated using observed discharges at the Old Turnpike Bridge USGS station, and they were used to force a Hydrologic Engineering Center-River Analysis System (HEC-RAS) 2D model of the Fenton River watershed. The simulated stages were calibrated using observed stages at Old Turnpike Bridge USGS station to simulate flood maps in the mainstream of the watershed. The resulting use of HEC-HMS and HEC-RAS 2D models coupled with MRMS-QPE precipitation shows that these models set up is user-friendly. The model shows stability and the capacity to simulate flood maps along the whole mainstream of the Fenton River with good accuracy.

Keywords: MRMS-QPE precipitation; HEC-HMS; HEC-RAS 2D; floodmap; New England

RESUMEN

Se realizó una simulación de mapa de inundación en la cuenca del río Fenton, Connecticut, para la tormenta tropical Elsa ocurrida a inicios de julio de 2021. Se utilizó para ello el método multirradar/multisensor-estimación cuantitativa de la precipitación (MRMS-QPE, por sus siglas en inglés) como dato para aplicar el Sistema de Modelación Hidrológica del Centro de Ingeniería Hidrológica (HEC-HMS) para simular descargas en la corriente principal de la cuenca. Las descargas simuladas se calibraron utilizando las descargas observadas en la estación hidrográfica del puente Old Turnpike y se aplicaron a un Sistema 2D de Modelación Fluvial del Centro de Ingeniería Hidrológica (HEC-RAS) de la cuenca del río Fenton. Las alturas simuladas se calibraron usando las alturas observadas en la estación del Servicio Geológico de Estados Unidos del puente Old Turnpike con el fin de simular mapas de inundación en la corriente principal de la cuenca. El uso de los modelos 2D HEC-HMS y HEC-RAS junto con la precipitación MRMS-QPE muestra que estos modelos son fáciles de configurar. El modelo muestra estabilidad y capacidad para simular mapas de inundación a lo largo de toda la corriente principal del río Fenton con buena precisión.

1. Introduction

Tropical Storm Elsa moved north parallel to the west coast of Florida (Lodge and Weaver, 2022) and hit the US east coast by early July 2021 (Strypsteen et al., 2022). Very much like other storms, Elsa was responsible for creating destruction, economic losses, and mortality (Teng et al., 2017; Mihu-Pintilie et al., 2019).

Tropical Storm Elsa was responsible for floods, one of the most frequent and disruptive natural hazards (Alfonso et al., 2016). Flood hazard assessment and flood mapping applying flood inundation models to identify flood risk zones can be the first steps to apply flood mitigation measures (Mihu-Pintilie et al., 2019; Patel et al., 2017; Shustikova et al., 2019).

Since the beginning the 21st century flood hazard mapping has undergone significant development and is a vital tool in flood hazard and risk management analysis (Mudashiru et al., 2021). The primary tools for performing inundation mapping are hydraulic and hydrologic models to simulate discharges and flood events, search for vulnerable areas, and create a flood management plan (Mihu-Pintilie et al., 2019). The use of hydraulic models such as HEC-RAS, Tuflow, and Mike series for carrying out flood simulations and flood mapping is a common practice globally (Ongdas et al., 2020). But hydrologic and hydraulic models require high-quality spatial data, especially a continuous representation of precipitation for the hydrologic models, so remote sensor input is critical to achieving this continuity (Kitzmiller et al., 2013).

Since the end of the 20th century, there has been a focus on developing new applications and systems to address requirements for quantitative precipitation estimation, with multiple overlapping radars or remote sensing observations and numerical weather predictions (NWP) (Droegemeier et al., 2002; Kelleher et al., 2007). The National Oceanic and Atmospheric Administration’s (NOAA, 2022) current capabilities are produced using the Multi-Radar Multi-Sensor-Quantitative Precipitation Estimation (MRMS-QPE) system, which is a real-time, multisensory precipitation system that can provide input to hydrologic models using a grid mesh of 1 km with a 5-min time step and minimal time lag from the real event. This system has been operating since 1997, when the NEXRAD network was deployed (Zhang et al., 2013; NOAA, 2022; Kitzmiller et al., 2013). The Iowa Environmental Mesonet (ISU, 2022) collects environmental data such as precipitation, solar radiation, and wind from cooperating members with observing networks and maintains an archive of the MRMS-QPE project for public use (ISU, 2022).

The United States Army Corps of Engineers (USACE, 2022) models, such as the Hydrologic Engineering Center-Hydrologic Modeling System (HEC-HMS) and River Analysis System (HEC-RAS) have become essential tools for hydrologic modeling, hydraulic design, and water management. They are widely used in numerous studies and applications and can perform unique functions (Halwatura and Najim, 2013). Also, these models can be linked to the simulation of major storm events (García et al., 2020).

HEC-HMS was designed to simulate the precipitation-runoff processes of dendritic watershed systems (USACE, 2022. The model can be applied to a wide range of geographic areas for solving a broad range of problems, such as large river basin water supply, and flood hydrology for a small urban or natural watershed (Halwatura and Najim, 2013), with the simulation of surface runoff and peak discharges in the watershed (Chu and Steinman, 2009). The result of the modeling process is the computation of stream flow hydrographs at the watershed outlet (Oleyiblo and Li, 2010).

HEC-RAS is a hydraulic model developed by the USACE that can create a fully functional modeling environment that allows coping with virtually all types of problems concerning river networks, including flood maps (Beavers, 1994; Pistocchi and Mazzoli, 2002).

Thakur et al. (2017) applied HEC-HMS and one-dimensional HEC-RAS (1D) models coupled with gage precipitation in the Copper Slough Watershed, Illinois. They found that forcing the HEC-HMS model with forecasted precipitation can work as a flood warning system by generating pre-flood inundation maps with HEC-RAS 1D. Stella (2022) applied a HEC-RAS 1D model forced with observed and simulated discharge in the Fenton River watershed during the 1955, 2005 and 2008 storms to simulate flood maps downstream the Old Turnpike Bridge. Knebl et al. (2005) applied HEC-HMS and HEC-RAS 1D models coupled with Next Generation Weather Radar (NEXRAD) precipitation in the San Antonio River watershed, Texas. The flood maps obtained from the simulation are comparable to satellite imagery, showing that HEC-RAS 1D is a very good tool for hydrological forecasts of flooding.

Vozinaki et al. (2017) research concluded that the combined HEC-RAS 1D/2D model performs better than the HEC-RAS 1D model when topographic data at high spatial resolution are used. The combination of 1D-2D HEC-RAS flood modeling allows the channel flows to be represented in 1D and the overbank flow to be modeled in 2D (Dasallas et al., 2019).

Brunner et al. (2015) considered that HEC-RAS 2D is a flexible model for complex hydraulic systems and can work with subcritical, supercritical, and mixed flow regimes; moreover, the property tables allow for a more accurate representation of the terrain to get accurate results. Dasallas et al. (2019) reported that the HEC-RAS 2D model consistently outperformed HEC-RAS 1D and HEC-RAS 1D-2D models. Ghimire et al. (2022) considered that the HEC-RAS 1D model failed to provide detailed two-dimensional information for the floodplain area, compared with the results from HEC-RAS 1D/2D model. The disadvantage of the 2D model is that it requires substantial computational time and a high computational grid (Vozinaki et al., 2017).

This study describes an alternative modeling method to HEC-RAS 1D-2D applying a full HEC-RAS 2D with internal border conditions along the mainstream as input for the discharges of a flood event during tropical storm Elsa in early July, 2021, in Northwest Connecticut, New England. The study area selected for model development was the Fenton River Watershed (an ungauged stream up to 2006) during tropical storm Elsa. This was the biggest stream flow discharge recorded in this location (USGS, 2022a). A flood map of the Fenton River was generated by applying first a HEC-HMS model to simulate discharges in the watershed forced by MRMS-QPE precipitation and then a two-dimensional HEC-RAS 2D model forced with the discharges obtained from HEC-HMS as border conditions inside the HEC-RAS 2D grid.

2. Materials and methods

2.1 Characteristics of the watersheds

The Fenton River has a total length of 23 km and a drainage area of 89 km2 as it enters Mansfield Hollow Lake and since October, 2006 it has a gauging station for the estimation of daily stream flow discharges, located at Old Turnpike Bridge (United States Geological Survey [USGS] gage 01121330, Tolland County, 41º 49’ 59.50” N, 72º 14’ 34.01” NAD83), with a drainage area of 47.4 km2 (USGS, 2022a). Figure 1 shows the Fenton River and bridges across the mainstream. Table I summarizes the yearly minimum, maximum, and mean precipitation in Connecticut and discharges in the Fenton River (Miller et al., 2002; USGS, 2022a).

Fig. 1 Fenton River watershed and bridges across the mainstream of the river. 

Table I Maximum, minimum and mean yearly precipitation and discharges. 

Parameter Unit Minimum Maximum Mean
Precipitation mm 787 1627 1138
Discharges m3 s-1 0.0068 23.4 0.96

There are 15 bridges and culverts along the Fenton River mainstream from Old Town Road to the outlet of the stream at Warrenville Road: Old Town, Armitage, Turnpike, Thinkerville, Moose Meadow, Liska, Kechkes Tolland Turnpike, Daleville School, US-44, Old Turnpike, Gurleyville, Stone Mill, Chaffeville and Warrenville (Bridges Report, 2022). The total drainage area of the Fenton River where the flood map will be simulated is 89 km2, and the drainage area of the Fenton River upstream Old Turnpike Bridge is 47.4 km2.

2.2 HEC-HMS, HEC-RAS and MRMS-QPE precipitation datasets

Data for the application of HEC-HMS and HEC-RAS 2D models such as data from the Digital Elevation Model (DEM) were obtained from the USGS (2022b) with a 1 × 1 m resolution, land cover from the National Land Cover Database (NLCD, 2022), and soil type from the United States Department of Agriculture (USDA, 2022), both with 30 × 30 m resolution, all through ArcGIS online (ESRI). Discharges and stages were obtained from the USGS at Old Turnpike Bridge (USGS, 2022a) with a 15 min time step and grid precipitation from Mesonet (IEM, 2022) with a 4000 m resolution and 1 h time step. Table II summarizes the sources of data. The HEC-RAS 2D model grid has a 100 × 100 m resolution and 10 s time step.

Table II Data sources for DEM, land cover, soil type discharges, stages, and precipitation. 

Data Data source
DEM United States Geological Survey (USGS, 2022b) https://viewer.nationalmap.gov/basic/ with ArcGIS online
Land cover National Land Cover Database (NLCD, 2022) www.mrlc.gov with ArcGIS online
Soil type Soil Survey Geographic Database (USDA, 2022) http://websoilsurvey.sc.egov.usda.gov/App/WebSoilSurvey.aspx with ArcGIS online
Precipitation Iowa Environmental Mesonet (IEM, 2022) https://mesonet.agron.iastate.edu/
Discharges and stages United States Geological Survey (USGS, 2022a) https://waterdata.usgs.gov/usa/nwis/uv?01121330

DEM: Digital Elevation Model.

2.3 Evaluation coefficients

The observed discharges and stages of Fenton River at Old Turnpike Bridge were used to conduct the calibration of HEC-HMS and HEC-RAS 2D by applying the evaluation coefficients R-squared (r2), Nash-Sutcliffe (NS) model of efficiency, root mean square error (RMSE) by the standard deviation of observations, and mean absolute error (MAE).

The R-squared regression coefficient of determination (equation 1) is the most used statistics to assess the degree of fit of a model. It measures the trend line variation (Akossou and Palm, 2013).

r2=SCEPSCEtot (1)

where SCE p is the sum of squares related to the regression, and SCE tot is the total sum of squares.

The NS model of efficiency is given by equation 2 (Nash and Sutcliffe, 1970).

NS=1-i=1n(Oi-Si)2i=1n(Oi-O-i)2           (2)

where O i are the observed discharges, is the mean of the observed discharges, S i are the simulated discharges, and n is the number of steps modeled.

RMSE by the standard deviation of observations is given by equation 3 (da Silva et al., 2015).

RMSE=i=1n(Oi-Si)2i=1n(Oi-O-i)2 (3)

The MAE of observations is given by equation 4 (Willmott and Matsuura, 2005).

MAE=i=1nabs(Si-Oi )n (4)

Table III summarizes the coefficient evaluation criteria for R-squared (r2), NS, and RMSE according to da Silva et al. (2015) and Chicco et al. (2021).

Table III Criteria for evaluating the performance of the hydrological model, 

Model Value Performance Reference
R2 + 1 Best value (Chicco et al., 2021)
- infinite Worst value
Nash-Sutcliffe 0.75 < NS < 1.0 Very good (Boskidis et al., 2012; Moriasi et al., 2007);
0.65 < NS < 0.75 Good
0.50 < NS < 0.65 Satisfactory
0.4 < NS < 0.50 Acceptable
NS < 0.4 Unsatisfactory
RMSE 0.0 < RMSE < 0.50 Very good (Moriasi et al., 2007)
0.50 < RMSE < 0.60 Good
0.60 < RMSE < 0.70 Satisfactory
RMSE > 0.70 Unsatisfactory
MAE 0 Best value (Chicco et al., 2021)
+ infinite Worst value

3. Results and discussion

An HEC-HMS model was designed for the Fenton River watershed with a 1 m DEM resolution and NAD83 projection. The model delivered 17 subbasins, eight reaches, and one sink as outlets. The HEC-HMS project includes the following components for subbasins: projection, basin, meteorological models, control specifications, and grid and terrain data. Table IV summarizes the HEC-HMS processes.

Table IV HEC-HMS project processes. 

Component Process
Basin model 17 Subbasins, 8 reaches and 1 sink
Meteorological model Gridded precipitation
Control specifications From 07/08/2021 00:00 to 07/12/2021 23:15
Grid data MRMS-QPE Precipitation
Terrain data DEM 1-meter resolution
Projection NAD83/Connecticut (ftUS)

The functions selected to run subbasin processes were loss with SCS Curve number, transform with SCS Unit Hydrograph, base flow with recession, and routing with Muskingum. For reaches, the HEC-HMS project includes the component routing with Muskingum. Tables V and VI summarize the parameters of the watershed before and after calibration.

Table V Parameters of the subbasins model before and after calibration. 

Subbasin # Initial abstraction (mm) Curve number (-) Impervious (%) Lag time (min)
Before After Before After Before After Before After
1 0.5 0.5 76 85 0 50 414.0 311.1
2 0.5 0.5 76 85 0 50 234.4 176.1
3 0.5 0.5 78 85 0 50 238.8 238.8
4 0.5 0.5 79 85 0 50 181.4 301.6
5 0.5 0.5 75 85 0 50 266.6 149.1
6 0.5 0.5 82 82 0 0 190.6 190.6
7 0.5 0.5 82 82 0 0 29.7 29.7
8 0.5 0.5 82 82 0 0 355.3 355.3
9 0.5 0.5 84 84 0 0 147.6 147.6
10 0.5 0.5 79 85 0 50 175.6 190.4
11 0.5 0.5 79 85 0 50 366.9 144.4
12 0.5 0.5 80 85 0 50 277.2 277.2
13 0.5 0.5 85 85 0 0 272.3 272.3
14 0.5 0.5 82 82 0 0 232.1 232.1
15 0.5 0.5 75 75 0 0 463.5 463.5
16 0.5 0.5 81 81 0 0 192.1 192.1
17 0.5 0.5 85 85 0 0 53.2 53.2

Table VI Parameters of the reaches model before and after calibration. 

Reach (-) Muskingum k (h) Muskingum X (-) # Sub reaches (-)
Before After Before After Before After
1 0.5 0.5 0.25 0.25 1 1
2 0.5 0.5 0.25 0.25 1 1
3 0.5 0.5 0.25 0.25 1 1
4 0.5 0.5 0.25 0.25 1 1
5 0.5 0.5 0.25 0.25 1 1
6 0.5 0.5 0.25 0.25 1 1
7 0.5 0.5 0.25 0.25 1 1
8 0.5 0.5 0.25 0.25 1 1

The simulated discharges of the HEC-HMS model were calibrated from 08:45 LT on 07/09/2021 to 14:45 LT on 07/10/2021 with the observed discharges in the Old Turnpike Bridge. The optimized values of simulated discharges against the observed ones using Curve number (CN) values as calibration parameters have an R-squared of 0.87 and NS of 0.59. Figure 2 shows the observed and simulated discharges after the calibration of the HEC-HMS model. Even though the relationship between observed and simulated discharges is satisfactory, Figure 2 shows a nonlinear relationship between the observed and simulated discharges. The event has twin peak discharges during the storm, so the calibration was focused on the second (largest) peak discharge.

Fig. 2 Observed and simulated discharges by HEC-HMS model at Old Turnpike Bridge. 

An HEC-RAS 2D model was designed for the Fenton River watershed with a 1 m DEM resolution, with an RMSE of 0.10 RMSE, a 100 × 100 m grid, and NAD83/Connecticut (ftUS) projection. The eight reaches obtained from the HEC-HMS model were used as border conditions inside the HEC-RAS 2D grid with the calibrated discharges as inputs. Land cover and soil layers were used as input to obtain the CN, Manning number (Nm), Abstraction Ratio, Infiltration Rate, and Percent of Impervious Land layers, in the watershed. A special area was created in the mainstream of the Fenton River and was used for calibration with the Nm as a parameter to calibrate the model.

The simulated stages of the HEC-RAS 2D model were calibrated from 08:45 LT on 07/09/2021 to 14:45 LT on 07/10/2021 with observed stages at Old Turnpike Bridge. The optimized values of the simulated stages against the observed ones have an R-squared of 0.85 and NS of 0.96. The Nm obtained for the calibration was = 0.035, corresponding to pit and gravel for the whole stream. Figure 3 shows the observed and simulated stages after calibration of the HEC-RAS 2D model.

Fig. 3 Observed and simulated stages by HEC-RAS 2D model at Old Turnpike Bridge. 

In summary, figure 4 shows the schematics of the HEC-HMS and HEC- RAS 2D models, as well as the flood map obtained from the simulation forced by MRMS-QPE precipitation. The HEC-HMS model includes the 17 subbasins and eight reaches, while the HEC-RAS 2D model includes the 100 × 100 grid and the mainstream of the river zone for the calibration, with the flood map corresponding to the maximum inundation area obtained at 03:45 LT on 07/10/2021 with a DEM as background.

Fig. 4 Schematics of the (a) HEC-HMS, (b) HEC- RAS 2D models, and (c) simulated flood map. 

Table VII summarizes the peak flow and stage for the simulated values after calibration of the HEC-HMS and HEC-RAS 2D models at Old Turnpike Bridge. Table VIII summarizes the , Nash-Sutcliffe, RMSE and MAE coefficients obtained after calibration of the HEC-HMS and HEC-RAS 2D models against observed discharges and stages from 08:45 LT on 07/09/2021 to 16:00 LT on 07/10/2021. Table IX summarizes the simulated maximum flood area. Water depth and water velocity were obtained in the Fenton River watershed from 07/09/2021 to 10/10/2005.

Table VII Peak flow and stages. 

Parameter Unit Observed Simulated
Peak flow m3 s-1 53.5 51.8
Stage m 2.4 2.3

Table VIII R-squared (r2), NS, RMSE and MAE coefficients. 

Coefficients Discharges Stages
0.87 0.85
NS 0.59 0.96
RMSE 0.64 0.19
MAE 5.64 0.13

NS: Nash-Sutcliffe; RMSE: root mean square error; MAE: mean absolute error.

Table IX Maximum simulated flood area, water depth, velocity, peak flow, and stage. 

Parameter Unit Value
Maximum flood area km2 4.84
Maximum water depth m 6.42
Maximum water velocity m s-1 3.14

4. Conclusions

This paper presents the methodology and development of a flood model in the Fenton River watershed, Connecticut. A simulation was conducted for tropical storm Elsa using MRMS-QPE as input to force an HEC-HMS model to simulate discharges in the mainstream of the watershed. The simulated discharges were calibrated using observed discharges at the Old Turnpike Bridge USGS station, with CN as the calibration parameter for every subbasin of the watershed.

The simulated discharges were used to force an HEC-RAS 2D model of the Fenton River watershed introduced as border conditions inside the 2D grid. The simulated stages were calibrated using observed stages at the Old Turnpike Bridge USGS station, with Nm as a calibration parameter to simulate flood maps in the mainstream of the watershed.

The HEC-HMS model forced with MRMS-QPE precipitation achieved a simulated peak discharge of 51.8 m3 s-1 against an observed of 53.5 m3 s-1. The HEC-RAS 2D model forced by HEC-HMS discharges achieved a simulated peak stage of 2.3 m against an observed of 2.4 m.

The resulting simulation achieved an R-squared of 0.87 and 0.85; an NS coefficient of 0.59 and 0.96; an RMSE of 0.64 and 0.19, and a MAE of 5.64 and 0.13 for the simulated discharges and stages, respectively. The , NS, MRSE, and MAE indexes showed satisfactory results for the calibrated discharges, as well as a very good result for the calibrated stages.

The process to design HEC-HMS and HEC-RAS 2D models coupled with MRMS-QPE precipitation has a user-friendly setup. The model shows stability and the capacity to simulate flood maps along the whole mainstream of the Fenton River with a high degree of accuracy.

One of the most important problems with the simulation of discharges is that hydrologic and hydraulic models require high-quality spatial data, the use of DEM, high-resolution land cover and soil, and MRMS-QPE precipitation, which can be critical to achieve a high degree of accuracy during the simulation.

The successful integration of streams from the HEC-HMS model as border conditions in the HEC-RAS 2D model demonstrates the potential for generalizing this methodology to more intricate watersheds. By combining the strengths of each model, with HEC-HMS handling precipitation-runoff processes and HEC-RAS managing channel stages, the approach maximizes the effectiveness of both models.

The current model can be refined by incorporating higher resolution data related with the tributaries to the mainstream in the HEC-RAS 2D model. An HEC-HMS model with a larger number of subbasins and reaches should be created, adding a larger number of border conditions and bridges to the HEC-RAS 2D model.

Acknowledgments

The author acknowledges the assistance of two anonymous reviewers for their contributions, which enriched this document.

References

Akossou AYJ, Palm R. 2013. Impact of data structure on the estimators R-square and adjusted R-square in linear regression. International Journal of Mathematics and Computation 20: 84-93. [ Links ]

Alfonso L, Mukolwe MM, Di Baldassarre G. 2016. Probabilistic flood maps to support decision-making: Mapping the value of information. Water Resources Research 52: 1026-1043. https://doi.org/10.1002/2015WR017378 [ Links ]

Beavers MA. 1994. Floodplain determination using HEC-2 and Geographic Information Systems. M.Sc. thesis. The University of Texas. [ Links ]

Boskidis I, Gikas GD, Sylaios GK, Tsihruntzis VA. 2012. Hydrologic and water quality modeling of lower Nestos River basin. Water Resource Management 26: 3023-3051. https://doi.org/10.1007/s11269-012-0064-7 [ Links ]

Bridges Report. 2022. Available at Available at https://connecticut-ctdot.opendata.arcgis.com/datasets/CTDOT::bridges/explore (accessed 2022 October 12) [ Links ]

Brunner GW, Piper SS, Jensen MR, Chacon B. 2015. Combined 1D and 2D hydraulic modeling within HEC-RAS. In: World Environmental and Water Resources Congress 2015: 1432-1443. https://doi.org/10.1061/9780784479162.141 [ Links ]

Chicco D, Warrens MJ, Jurman G. 2021. The coefficient of determination R-squared is more informative than SMAPE, MAE, MAPE, MSE and RMSE in regression analysis evaluation. PeerJ Computer Science 7: e623. https://doi.org/10.7717/peerj-cs.623 [ Links ]

Chu X, Steinman A. 2009. Event and continuous hydrologic modelling with HEC-HMS. Journal of Irrigation and Drainage Engineering 135: 119-124. https://doi.org/10.1061/(ASCE)0733-9437(2009)135:1(119) [ Links ]

Dasallas L, Kim Y, An H. 2019. Case study of HEC-RAS 1D-2D coupling simulation: 2002 Baeksan flood event in Korea. Water 11: 2048. https://doi.org/10.3390/w11102048 [ Links ]

Da Silva MG, de Aguiar Netto ADO, de Jesus Neves RJ, do Vasco AN, Almeida C, Faccioli GG. 2015. Sensitivity analysis and calibration of hydrological modeling of the watershed Northeast Brazil. Journal of Environmental Protection 6: 837-850. https://doi.org/10.4236/jep.2015.68076 [ Links ]

Droegemeier KK, Kelleher K, Crum TD, Levit JJ, Del Greco SA, Miller L, Sinclair C, Benner M, Fulker DW, Edmon H. 2002. Project CRAFT: A test bed for demonstrating the real time acquisition and archival of WSR-88D base (Level II) data. In Preprint: 18th International Conference on IIPS. Meteorology, Ocean and Hydrology. American Meteorological Society, Orlando, FL. [ Links ]

García M, Juan A, Bedient P. 2020. Integrating reservoir operations and flood modeling with HEC-RAS 2D. Water 12: 2259. https://doi.org/10.3390/w12082259 [ Links ]

Ghimire E, Sharma S, Lamichhane N. 2022. Evaluation of one-dimensional and two-dimensional HEC-RAS models to predict flood travel time and inundation area for flood warning system. ISH Journal of Hydraulic Engineering 28: 110-126. https://doi.org/10.1080/09715010.2020.1824621 [ Links ]

Halwatura D, Najim MMM. 2013. Application of the HEC-HMS model for runoff simulation in a tropical catchment. Environmental Modelling and Software 46: 155-162. https://doi.org/10.1016/j.envsoft.2013.03.006 [ Links ]

IEM. 2022. Iowa Environmental Mesonet. Iowa State University of Science and Technology. Available at Available at https://mesonet.agron.iastate.edu/disclaimer.php (accessed 2022 September 04). [ Links ]

Kelleher KE, Droegemeier KK, Levit JJ, Sinclair C, Jahn DE, Hill SD, Mueller L, Qualley G, Crum TD, Smith SD, Del Greco SA, Lakshmivarahan S, Miller L, Ramamurthy M, Domenico B, Fulker DW. 2007. Project craft: A real-time delivery system for NEXRAD level II data via the internet. Bulletin of the American Meteorological Society 88: 1045-1058. https://doi.org/10.1175/BAMS-88-7-1045 [ Links ]

Kitzmiller D, Miller D, Fulton R, Ding F. 2013. Radar and multisensor precipitation estimation techniques in National Weather Service Hydrologic Operations. Journal of Hydrologic Engineering 18: 133-142. https://doi.org/10.1061/(ASCE)HE.1943-5584.0000523 [ Links ]

Knebl MR, Yang ZL, Hutchison K, Maidment DR. 2005. Regional scale flood modeling using NEXRAD rainfall, GIS, and HEC-HMS/RAS: A case study for the San Antonio River Basin Summer 2002 storm event. Journal of Environmental Management 75: 325-336. https://doi.org/10.1016/j.jenvman.2004.11.024 [ Links ]

Lodge CT, Weaver RJ. 2022. Coupling a parametric wave solver into a hydrodynamic circulation model to improve efficiency of nested estuarine storm surge predictions. Journal of Marine Science and Engineering 10: 1117. https://doi.org/10.3390/jmse10081117 [ Links ]

Mihu-Pintilie A, Cîmpianu CI, Stoleriu CC, Pérez MN, Paveluc LE. 2019. Using high-density LiDAR data and 2D streamflow hydraulic modeling to improve urban flood hazard maps: A HEC-RAS multi-scenario approach. Water 11, 1832. https://doi.org/10.3390/w11091832 [ Links ]

Miller DR, Warner GS, Ogden FL, DeGaetano AT. 2002. Precipitation in Connecticut. Special Reports 36. Available at Available at https://opencommons.uconn.edu/ctiwr_specreports/36/ (accessed 2022 October 12). [ Links ]

Moriasi DN, Arnold JG, Van Liew MW, Bingner RL, Harmel RD, Veith TL. 2007. Model evaluation guidelines for systematic quantification of accuracy in watershed simulations. American Society of Agricultural and Biological Engineers 50: 885-900. https://doi.org/10.13031/2013.23153 [ Links ]

Mudashiru RB, Sabtu N, Abustan I, Balogun W. 2021. Flood hazard mapping methods: A review. Journal of Hydrology 603: 126846. https://doi.org/10.1016/j.jhydrol.2021.126846 [ Links ]

NLCD. 2022. National Land Cover Database. Multi-Resolution Land Characteristics (MRLC) Consortium. Available at https://www.mrlc.gov (accessed 2022 September 1). [ Links ]

Nash JE, Sutcliffe JV. 1970. River flow forecasting through conceptual models: Part 1 - A discussion of principles. Journal of Hydrology 10: 282-290. https://doi.org/10.1016/0022-1694(70)90255-6 [ Links ]

NOAA. 2022. Multi-Radar/Multi-Sensor System (MRMS). National Severe Storms Laboratory, National Oceanic and Atmospheric Administration. Available at Available at https://www.nssl.noaa.gov/projects/mrms/ (accessed 2022 September 1). [ Links ]

Oleyiblo JO, Li ZJ. 2010. Application of HEC-HMS for flood forecasting in Misai and Wan’an catchments in China. Water Science and Engineering 3: 14-22. https://doi.org/10.3882/j.issn.1674-2370.2010.01.002 [ Links ]

Ongdas N, Akiyanova F, Karakulov Y, Muratbayeva A, Zinabdin N. 2020. Application of HEC-RAS (2D) for flood hazard maps generation for Yesil (Ishim) River in Kazakhstan. Water 12: 2672. https://doi.org/10.3390/w12102672 [ Links ]

Patel DP, Ramírez JA, Srivastava PK, Bray M, Han D. 2017. Assessment of flood inundation mapping of Surat city by coupled 1D/2D hydrodynamic modeling: A case application of the new HEC-RAS 5. Natural Hazards 89: 93-130. https://doi.org/10.1007/s11069-017-2956-6 [ Links ]

Pistocchi A, Mazzoli P. 2002. Use of HEC-RAS and HEC-HMS models with ArcView for hydrologic risk management. In: International Congress on Environmental Modelling Software. Lugano, Switzerland. Available at Available at https://scholarsarchive.byu.edu/iemssconference/2002/all/138 (accessed 2022 September 1). [ Links ]

Shustikova I, Domeneghetti A, Neal JC, Bates P, Castellarin A. 2019. Comparing 2D capabilities of HEC-RAS and LISFLOOD-FP on complex topography. Hydrological Sciences Journal 64: 1769-1782. https://doi.org/10.1080/02626667.2019.1671982 [ Links ]

Stella JM. 2022. Mapping floods of Fenton River, an ungauged stream in Connecticut. Journal of Water Resource and Protection 14: 531-541. https://doi.org/10.4236/jwarp.2022.147028 [ Links ]

Strypsteen G, Bart Roest, Dries Bonte, Pieter Rauwoens, eds. 2022. Book of abstracts: Building coastal resilience. Bruges, Belgium, 12-13 April. VLIZ Special Publication 89. KU Leuven/Flanders Marine Institute, Oostende, Belgium, 81 pp. https://doi.org/10.48470/28 [ Links ]

Teng J, Jakeman AJ, Vaze J, Croke BFW, Dutta D, Kim S. 2017. Flood inundation modelling: A review of methods, recent advances, and uncertainty analysis. Environmental Modelling & Software 90: 201-216. https://doi.org/10.1016/j.envsoft.2017.01.006 [ Links ]

Thakur B, Parajuli R, Kalra A, Ahmad S, Gupta R. 2017. Coupling HEC-RAS and HEC-HMS in precipitation runoff modelling and evaluating flood plain inundation map. In: Proceedings of the World Environmental and Water Resources Congress 2017. Sacramento, CA, USA, 240-251. https://doi.org/10.1061/9780784480625.022 [ Links ]

USACE. 2022. HEC-HMS 4.10 User’s manual. Headquarters U.S. Army Corps of Engineers. Hydrologic Engineering Center. Davis, California. Available at Available at https://www.hec.usace.army.mil/confluence/hmsdocs/hmsum/latest (accessed 2022 November 19) [ Links ]

USDA. 2022. Web Soil Survey. Natural Resources Conservation Service, United States Department of Agriculture. Available at Available at http://websoilsurvey.sc.egov.usda.gov/App/WebSoilSurvey.aspx (accessed 2022 October 6). [ Links ]

USGS. 2022a. Fenton River at Mansfield, CT - 01121330. Available at Available at https://waterdata.usgs.gov/usa/nwis/uv?01121330 (accessed 2022 October 6). [ Links ]

USGS. 2022b. The National Download v2 (TNM). Available at Available at https://viewer.nationalmap.gov/basic/ (accessed 2022 October 6). [ Links ]

Vozinaki AEK, Morianou GG, Alexakis DD, Tsanis IK. 2017. Comparing 1D and combined 1D/2D hydraulic simulations using high-resolution topographic data: A case study of the Koiliaris basin, Greece. Hydrological Sciences Journal 62: 642-656. https://doi.org/10.1080/02626667.2016.1255746 [ Links ]

Willmott CJ, Matsuura K. 2005. Advantages of the mean absolute error (MAE) over the root mean square error (RMSE) in assessing average model performance. Climate Research 30: 79-82. https://doi.org/10.3354/cr030079 [ Links ]

Zhang J, Qi Y, Howard K, Langston C, Kaney B, Ortega K, Smith T, Stevens SE, Nelson BR. 2013. Retrospective analysis of high-resolution multi-radar multi-sensor QPEs for the Unites States. In AGU Fall Meeting Abstracts (vol. 2013, H41I-1357). Available at Available at https://ui.adsabs.harvard.edu/abs/2013AGUFM.H41I1357Z/abstract (accessed 2022 November 29) [ Links ]

Received: September 29, 2022; Accepted: February 22, 2023

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