Flood Impacts on Critical Infrastructure in a Coastal Floodplain in Western Puerto Rico during Hurricane María
Abstract
:1. Introduction
1.1. Background
1.2. Flood Prediction Modelling
1.3. Previous Hydrologic Studies Conducted in Puerto Rico
1.4. Study Objective
2. Case Study Description
2.1. Hurricane María
2.2. Study Area
Land Use Land Cover and Soil Distribution
3. Methodology
3.1. Hydrologic Model
3.1.1. Calibration
- (1)
- Delineation of the watershed area above the USGS stream discharge station (Sub-watershed 2): A Digital Elevation Model (DEM) of 10 m resolution was required to delineate the watershed and obtain the flow path accumulation. Subsequently, an outlet point was placed in the exact location of the USGS stream gauge (Latitude 18°17′03.00″, Longitude 67°03′03.46″ NAD27) to obtain the delineated watershed above the USGS station.
- (2)
- Generation of the stream channel cross-section: The 3DEP Lidar Explorer tool was utilized from the USGS website to download the Light Detection and Ranging (LiDAR) data for the area of interest. The data acquired was from 2015 with a horizontal resolution of 100 cm and a vertical resolution of 10 cm. Subsequently, the data were processed using QGIS, and the cross-sections were created using QGIS and a python script. It should be mentioned that Lake Guayo collects water that is diverted to southwest PR through tunnels; however, water is released into the watershed when there are events with high rainfall intensity and duration, such as hurricanes or tropical storms. Thus, a downstream cross-section channel was used as the cross-section of the lake; this hypothesis assumes that the precipitation that falls into the lake area will be counted as a volume in the outlet point previously defined. Additionally, the smooth stream option was used to prevent adverse slopes.
- (3)
- Grid Selection: The grid spacing is essential to define the model’s resolution; small grid cells lead to a high-resolution model, which requires high computational resources and increases computational time. A 100 m grid spacing was chosen, based on watershed size and the time required to run the simulation.
- (4)
- Land Use and Soil Data: The soil type and land use maps were added to the model using the datasets previously described. It should be noted from Table A1 and Table A2 that the land and soil categories for Sub-watershed 1 (Figure 2) and Sub-watershed 2 (Figure 2) were predominantly Mixed Forest and clay, respectively. The percentages were calculated using a python script. On the other hand, the initial values of the roughness for each land class were assumed using the values in Table A1 [69]. In addition, Table A3 shows the values of the soil parameters required to use the Green Ampt method, such as hydraulic conductivity, capillary head, and porosity, among others [70].
- (5)
- Soil Moisture Saturation: The soil moisture saturation product from GOES-PRWEB (pragwater.com, [56]) was employed to estimate the average initial soil moisture for the study area, which was determined to be 98.9%. Therefore, initial soil moisture saturation was assumed to be 98.9% of the soils’ porosity values.
- (6)
- Precipitation Data: Hurricane Irma precipitation data was chosen to calibrate the model, representing an extreme weather event for PR. Therefore, NTP (Storm Total Precipitation) Level 3 product from NEXRAD was used to obtain the rainfall distribution from 6 September at 12:00 to 8 September at 11:00 of 2017 (AST). According to NOAA, the NTP product, which uses the Precipitation Processing System (PPS) algorithm, is useful for locating flood potential over urban or rural areas and estimating the total basin runoff [71]. In addition, a python code was implemented to convert the cumulative rainfall into hourly rainfall so that GSSHA can easily read it.
- (7)
- Calibration process: The Secant Levenberg–Marquardt (SLM) method is an efficient enhancement to the Levenberg–Marquardt (LM) method [72]. The Multilevel Single Linkage (MLSL) method was created to reduce the probability of not finding a local minimum. The SLM and the MLSL methods are implemented in GSSHA for conducting model calibrations. These two methods use the observed and the simulated hydrograph to find the objective function minimum, varying the parameters to be calibrated, where the objective function consists of the sum of weighted squared differences between modeled and transformed flow values, with all weights assigned a value of 1 [73]. The Box–Cox transformation with λ = 0.3 [74,75] was employed to transform the observed and modeled flows. Additionally, a time step of 10 s was used for the computational process, and overbank flow was allowed. The following parameters were selected to calibrate the model:
- ○
- Roughness parameter for land use land cover: The Mixed Forest class was selected because, as shown in Table A1, this class is the most representative of the land classes for Sub-watershed 1 and Sub-watershed 2 of the Añasco watershed. To define the ranges, it was assumed a range of values between 0.1 and 0.16 which corresponds to areas dominated by trees generally greater than 5 m tall and greater than 20% of total vegetation cover. Neither deciduous nor evergreen species are greater than 75 percent of total tree cover [76]. It should be mentioned that the urban and suburban drainage systems were not explicitly modelled in this study. Overland runoff in these areas was modelled using roughness values associated with high and medium developed land use land covers, respectively.
- ○
- Soil parameters: The hydraulic conductivity was identified in previous studies [28] as one of the most sensitive soil parameters. Therefore, it was decided to calibrate the hydraulic conductivity for the most representative soil type (clay) in the watershed.
- ○
- Streambed roughness values: Two-channel bed roughness values were proposed for the Añasco watershed; channel roughness 1 corresponds to the streams of the basin and subbasins surrounding the mainstream. Channel 1 values were assumed to be between 0.02 and 0.05, based on an initial value used in previous studies [25]. On the other hand, channel roughness 2 was proposed for the upper area of Sub-watershed 2 with values ranging between 0.051 and 0.075, because this area is composed of shallow water with some gravel and rock and irregular cross-sectional channels, which generate significant friction [77].
3.1.2. Validation
3.1.3. Performance Evaluation Criteria
- The coefficient of determination (R2) indicates the degree of correlation between the simulated and the observed data, describing the portion of the variance in the observed data explained by the simulation; the ranges are between 0 and 1, where 1 indicates less error in variance [79].
- The Nash–Sutcliffe efficiency coefficient (NSE) measures the perfect match between the predicted values and the observed values; the ranges are between −∞ to 1, where a value of 1 means a perfect match and values less than zero indicate unacceptable performance [79].
- Percent Bias (PBIAS) measures the average tendency of the simulated data to be larger or smaller than their observed counterparts, with the optimal value being 0; negative values indicate overestimation bias and positive values underestimation bias [80].
3.2. Flooding Event
- Delineation of the watershed area below the USGS stream discharge station (Sub-watershed 1): Using the same methodology as for Sub-watershed 2, a DEM of 10 m resolution was utilized to delineate the area below the USGS stream discharge station (Sub-watershed 1 of Figure 2). During this process, an outlet point was placed at the end of the Añasco watershed in the coastal zone to obtain a first approximation of the delineated area. Subsequently, the Arc tool from GSSHA was used to extend the delineated area, ensuring the total cover of Sub-watershed 1. This process is required for watershed delineation when the results from the automated delineation option from GSSHA do not match the actual delineated area.
- The same procedure as described for Sub-watershed 2 was used to generate the cross-sections of the stream channels for Sub-watershed 1 and define land use, soil type, and grid selection. It should be mentioned that the best-calibrated parameters obtained from Sub-watershed 2 were also used for Sub-watershed 1.
- Definition of the inflow hydrograph and rainfall during Hurricane María: An inflow node was placed at the location of the USGS stream gauge in Sub-watershed 1 to simulate the water coming from Sub-watershed 2. Additionally, the hourly time series of the WRF simulated rainfall from Hurricane María was used as the precipitation data.
- Definition of the storm surge: In the grid cells located along the coast, a variable stage (water surface elevation) boundary condition was created to simulate the storm surge during Hurricane María. For the simulations without using storm surge, a constant stage boundary condition was used.
3.2.1. Rainfall and Inflow Hydrograph Definition during Hurricane María
- During Hurricane María, the USGS stream discharge gauge stopped working when it reported a maximum discharge measurement of almost 5200 m3 s−1, assumed to be the peak discharge for the whole event. Consequently, there is a gap of nearly 24 h where there is no data available, and after that, the USGS reported an estimated discharge. A simple linear regression was employed to interpolate the data to fill the gap and obtain time series values every 15 min. Figure 8a shows the final built hydrograph superimposed on the USGS discharge data. The time series, limited to 48 h (Figure 8b), was used to simulate the inflow boundary condition at the upstream location in Sub-watershed 1 for two scenarios (defined below).
- The calibrated parameters obtained in the calibration process were used for Hurricane María to obtain the output hydrograph for Sub-watershed 2 using the WRF rainfall and the corrected rainfall separately. Following this, each output hydrograph obtained was used as an inflow hydrograph at the upstream location for Sub-watershed 1 to reproduce the flooding event during Hurricane María.
3.2.2. Storm Surge
3.2.3. Hydrologic Modelling Approaches (HMAs)
3.2.4. Flood Depth Validation
3.2.5. Methodology for Assessing Impacts to Critical Infrastructure
4. Results
4.1. Calibration Results
4.2. Validation Results
4.3. Flooding Results
4.3.1. Flood Validation Using Survey Data
4.3.2. Extent of Flooded Area
4.4. Critical Infrastructure
5. Discussion
- The rating curve used by the USGS to convert river stage to discharge may not have been accurate during the Hurricane Irma event.
- Although an effort was made to accurately account for the water released from the lakes in the upper Añasco watershed, the PR Energy and Power Authority (PREPA), the agency that manages the lakes, could not provide any information on discharges from the lakes.
- NEXRAD radar rainfall data may also introduce errors into the hydrologic simulation. Rojas Gonzalez [26] reported a simulation of streamflow for the Añasco River in which NEXRAD significantly overestimated the rainfall. A known problem associated with radar rainfall in Western PR is related to the radar’s inability to see low clouds (less than 3000 m) at large distances from the radar facility due to the earth’s curvature [27]. This problem would be expected to produce underestimates in rainfall. However, one of the authors of this paper has considerable experience using radar rainfall in Western PR and has observed both under and overestimation compared with NWS rain gauges.
5.1. Model Limitations
- The model used in this study was developed for large storm events proceeded by saturated soil conditions. Consequently, the model has not been calibrated for conditions when soil saturation is low and infiltration becomes a significant factor. Future efforts should consider calibrating the average matric suction at the wetting front during periods of low soil saturation.
- The hydrologic model of Sub-watershed 1 was not calibrated in this study. However, the depths and extent of the flood were compared with data obtained from a homeowner survey. Although the analysis did not yield a high correlation between the observed and simulated flood depths, we applied the resulting regression equations, which significantly improved the performance of the flood depth estimation. The flood depths obtained from the face-to-face interviews were limited to flood plain areas where people were present during Hurricane María.
- The model was based on a simplified conceptualization of the land surface parameters. Single values of roughness and hydraulic conductivity were used for the dominant land use/soil in Sub-watershed 2. More accurate distribution of these parameters in the watershed may help to improve the model calibrations.
5.2. Future Work
- Couple the flood model with a WRF rainfall forecast model to obtain 2- to 3-day advanced flooding warnings.
- Couple the flood modelling results with a Power/Water network model.
- Expand the model domain to include the Culebrinas, Yagüez, and Guanajibo watersheds. This will expand the area of coverage from 350 km2 to over 900 km2.
- Continue to work with the water and electric authorities to refine our approach for identifying impacted infrastructure.
- Use the model to investigate ways to mitigate flooding in Sub-watershed 1. For example, evaluate changes in agricultural land-use practices or incorporate natural infrastructure.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Land Class | Sub-Watershed 1 (%) | Sub-Watershed 2 (%) | Manning’s Values |
---|---|---|---|
Mixed Forest | 77.5 | 59.1 | 0.1 |
Cultivated | 7.9 | 2.9 | 0.037 |
Low Intensity Developed | 4.7 | 8.4 | 0.05 |
Scrub/Shrub | 3.6 | 7.9 | 0.05 |
Palustrine Forested Wetland | 3.0 | 0.5 | 0.1 |
Medium Intensity Developed | 1.0 | 4.6 | 0.1 |
Grassland | 0.9 | 2.7 | 0.034 |
Water | 0.6 | 0.6 | 0.02 |
Pasture/Hay | 0.4 | 5.0 | 0.033 |
High Intensity Developed | 0.3 | 2.8 | 0.13 |
Bare Land | 0.1 | 0.5 | 0.09 |
Developed Open Space | 0.1 | 1.0 | 0.02 |
Palustrine Scrub/Shrub Wetland | 0.0 | 0.4 | 0.048 |
Unconsolidated Shore | 0.0 | 0.1 | 0.04 |
Palustrine Emergent Wetland | 0.0 | 3.0 | 0.045 |
Estuarine Forested Wetland | 0.0 | 0.2 | 0.1 |
Estuarine Scrub/Shrub Wetland | 0.0 | 0.0 | 0.048 |
Estuarine Emergent Wetland | 0.0 | 0.1 | 0.045 |
Soil Class | Sub-Watershed 1 (%) | Sub-Watershed 2 (%) |
---|---|---|
clay | 77.5 | 66.8 |
clay loam | 16.9 | 16.8 |
loam | 0.5 | 3.0 |
loamy sand | 0.0 | 0.0 |
sand | 0.0 | 2.4 |
sandy loam | 0.0 | 0.0 |
silt clay loam | 1.6 | 10.8 |
silty clay | 3.1 | 0.0 |
silty loam | 0.4 | 0.2 |
Infiltration Variables | Clay Loam | Loamy Sand | Clay | Silt Clay Loam | Sandy Loam | Loam | Silty Clay | Silty Loam | Sand |
---|---|---|---|---|---|---|---|---|---|
Hydraulic conductivity (cm/h) | 0.2 | 5.98 | 0.06 | 0.2 | 2.18 | 1.32 | 0.1 | 0.68 | 23.6 |
Capillary head (cm) | 20.88 | 6.13 | 31.6 | 27.3 | 11.01 | 8.89 | 29.22 | 16.68 | 4.95 |
Porosity (m3/m3) | 0.464 | 0.437 | 0.48 | 0.471 | 0.453 | 0.46 | 0.479 | 0.501 | 0.44 |
Pore Distribution Index (cm/cm) | 0.242 | 0.553 | 0.17 | 0.177 | 0.378 | 0.25 | 0.15 | 0.234 | 0.69 |
Residual Saturation (m3/m3) | 0.075 | 0.035 | 0.09 | 0.04 | 0.041 | 0.03 | 0.056 | 0.015 | 0.02 |
Field Capacity (m3/m3) | 0.318 | 0.125 | 0.4 | 0.366 | 0.207 | 0.27 | 0.387 | 0.33 | 0.09 |
Wilting Point (m3/m3) | 0.197 | 0.055 | 0.27 | 0.208 | 0.095 | 0.12 | 0.25 | 0.133 | 0.03 |
No. | Lat | Lon | Depth (m) | Description |
---|---|---|---|---|
0 | 18.24994 | −67.1605 | 1.22 | Shell Station on Road 2 |
1 | 18.25932 | −67.1604 | 1.525 | West Power Company Road 2 |
2 | 18.26726 | −67.1576 | 1.525 | First Medical Cannabis |
3 | 18.27699 | −67.1633 | 1.525 | Grooming Machine near Road 2 |
4 | 18.29674 | −67.1792 | 0.07625 | Horse Facility |
5 | 18.2908 | −67.1889 | 0.915 | Bakery |
6 | 18.27804 | −67.1883 | 0.915 | In street at HP beach home |
7 | 18.27354 | −67.1874 | 0.915 | Close to small waterway north of Añasco River |
8 | 18.29619 | −67.1987 | 0 | Gas Station |
9 | 18.29853 | −67.1843 | 0 | Colmado |
10 | 18.28207 | −67.1405 | 0 | Añasco Plaza |
11 | 18.28054 | −67.1365 | 1.0675 | Auto Supply Store |
12 | 18.27885 | −67.13 | 0 | Hardware Store |
13 | 18.27883 | −67.1305 | 1.22 | Back yard of home next to hardware store |
14 | 18.2871 | −67.1308 | 0 | Urbanization on north side of Añasco |
15 | 18.28142 | −67.1407 | 1.6775 | Daycare Center behind Municipal Building |
16 | 18.27843 | −67.114 | 4.575 | Residential home |
17 | 18.27674 | −67.1273 | 0 | Residential home |
18 | 18.27534 | −67.1575 | 1.22 | Roadside Store |
19 | 18.2981 | −67.1513 | 0 | Pharmacy Road 402 |
20 | 18.29606 | −67.1447 | 0 | Urbanization |
21 | 18.28486 | −67.1384 | 0 | Urbanization |
22 | 18.28942 | −67.1443 | 0 | Industrial Park |
23 | 18.30017 | −67.1585 | 0.61 | Oil Change Garage |
24 | 18.29886 | −67.1603 | 0 | Laundry Mat |
25 | 18.29912 | −67.1665 | 0.61 | Road 402 in front of Coffee Shop |
26 | 18.26535 | −67.1835 | 1.22 | Urbanization close to Añasco River |
27 | 18.26223 | −67.1811 | 1.22 | Urbanization close to Añasco River |
28 | 18.25013 | −67.1758 | 1.22 | Grocery Store on Road 341 |
29 | 18.256 | −67.1612 | 3.355 | Mazda Dealership on Road 2 |
30 | 18.24323 | −67.1602 | 0.07625 | Church’s Chicken on Road 2 |
31 | 18.2995 | −67.1711 | 0.27755 | House on Hwy 115 |
32 | 18.28975 | −67.1863 | 1.9825 | No description |
33 | 18.28551 | −67.1859 | 1.9825 | No description |
34 | 18.28853 | −67.1897 | 1.525 | No description |
35 | 18.26178 | −67.1748 | 1.83 | No description |
36 | 18.2603 | −67.1752 | 1.525 | No description |
37 | 18.25227 | −67.1772 | 1.83 | No description |
38 | 18.24886 | −67.1642 | 1.3725 | No description |
39 | 18.25006 | −67.1578 | 0 | No description |
40 | 18.2535 | −67.1492 | 0.7625 | No description |
41 | 18.24555 | −67.1384 | 0 | No description |
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Parameters Selected | Initial Value | Intervals | |
---|---|---|---|
Minimum | Maximum | ||
Channel Roughness 1 | 0.03 | 0.02 | 0.05 |
Channel Roughness 2 | 0.6 | 0.051 | 0.075 |
Mixed Forest Roughness | 0.12 | 0.1 | 0.16 |
Hydraulic Conductivity for Clay | 0.03 | 0.02 | 0.06 |
Events | Dates | Spatial Resolution (m) | Temporal Resolution (hr) | Maximum Discharge Recorded in the Station (cms) | Volume Hydrograph (USGS Station) (m3) | Volume of Rainfall from NEXRAD (m3) | |
---|---|---|---|---|---|---|---|
Sub-Watershed 2 | Sub-Watershed 1 | Sub-Watershed 2 | |||||
Hurricane Irma | 9/6/2017 12:00–9/8/2017 11:00 | 769 | 1 | 594 | 26,727,374.00 | 13,337,010 | 35,293,9530 |
Extreme Rainfall Event | 12/11/2007 00:00–12/13/2007 00:00 | 632 | 1 | 468 | 22,888,190.00 | 9752,113 | 29,394,120 |
Volume from Cumulative Rainfall (m3) | Error (%) | ||
---|---|---|---|
WRF Cumulative Rainfall | NWS Interpolated Rainfall | Absolute Difference (m3) | |
120,972,091 | 185,939,473 | 64,967,382 | 34.94 |
Number | HMAs |
---|---|
1 | USGS Hydrograph + WRF Rainfall + No Storm Surge |
2 | USGS Hydrograph + WRF Rainfall + Storm Surge |
3 | Inflow Hydrograph from Sub-watershed 2 using WRF Rainfall + WRF Rainfall + No Storm Surge |
4 | Inflow Hydrograph from Sub-watershed 2 using WRF Rainfall + WRF Rainfall + Storm Surge |
5 | Inflow Hydrograph from Sub-watershed 2 using bias-corrected WRF Rainfall + bias-corrected WRF Rainfall + No Storm Surge |
6 | Inflow Hydrograph from Sub-watershed 2 using bias-corrected WRF Rainfall + bias-corrected WRF Rainfall + Storm Surge |
Infrastructure | Total | |
---|---|---|
Water infrastructure | Sewer pump stations | 33 |
Potable water pump stations | 40 | |
Sewer plants | 1 | |
Filtration Plants | 1 | |
Wells | 12 | |
Electric Infrastructure | Substations | 3 |
Transmission Center | 1 | |
Public Infrastructure | Public Schools | 21 |
Parameters | SLM | MLSL |
---|---|---|
Channel Roughness 1 | 0.02 | 0.02 |
Channel Roughness 2 | 0.075 | 0.063 |
Mixed Forest Roughness | 0.1 | 0.1075 |
Hydraulic Conductivity for Clay | 0.02 | 0.02262 |
Evaluation Metrics | Volume (m3) | Evaluation Criteria | |||||||
---|---|---|---|---|---|---|---|---|---|
R2 | NSE | PBIAS (%) | Observed | Modelled | Error (%) | R2 > 0.6 | NSE > 0.5 | PBIAS < ±15% | |
SLM | 0.613 | 0.55 | 13.197 | 26,727,374 | 23,208,506 | 13.2 | Yes | Yes | Yes |
MLSL | 0.585 | 0.519 | 15.61 | 26,727,374 | 22,563,229 | 15.6 | No | Yes | No |
Evaluation Metrics | Volume (m3) | Evaluation Criteria | |||||||
---|---|---|---|---|---|---|---|---|---|
Time Step(s) | R2 | NSE | PBIAS (%) | Observed | Modelled | Error (%) | R2 > 0.6 | NSE > 0.5 | PBIAS < ±15% |
2 | 0.946 | 0.903 | −1.87 | 22,888,190 | 23,328,917 | 1.926 | Yes | Yes | Yes |
10 | 0.9 | 0.838 | −3.211 | 22,888,190 | 23,636,319 | 3.269 | Yes | Yes | Yes |
HMA | Flooded Area (m2) | Comparison with the FEMA Flood Extent Area | |
---|---|---|---|
Absolute Difference (m2) | Difference (%) | ||
1 | 27,680,000 | 7,109,370 | −20.44 |
2 | 27,920,000 | 6,869,370 | −19.75 |
3 | 18,560,000 | 16,229,370 | −46.65 |
4 | 18,740,000 | 16,049,370 | −46.13 |
5 | 23,230,000 | 11,559,370 | −33.23 |
6 | 23,370,000 | 11,419,370 | −32.82 |
2 Corrected | 30,090,000 | 46,99,370 | −13.51 |
4 Corrected | 23,810,000 | 10,979,370 | −31.56 |
6 Corrected | 23,840,000 | 10,949,370 | −31.47 |
Water Infrastructure | HMA | Total Facilities | |||||
---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | ||
Number of Facilities that Failed | |||||||
Sewer pump stations | 9 | 12 | 4 | 7 | 7 | 10 | 33 |
Potable water pump stations | 4 | 4 | 4 | 4 | 4 | 4 | 40 |
Sewer plants | 0 | 0 | 0 | 0 | 0 | 0 | 1 |
Filtration Plants | 0 | 0 | 0 | 0 | 0 | 0 | 1 |
Wells | 0 | 0 | 0 | 0 | 2 | 2 | 12 |
Public and Electrical Infrastructure | HMA | Total Facilities | |||||
---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | ||
Number of Facilities that Failed | |||||||
Public Schools | 1 | 1 | 0 | 0 | 1 | 1 | 21 |
Substations | 0 | 0 | 0 | 0 | 0 | 0 | 3 |
Transmission Center | 0 | 0 | 0 | 0 | 0 | 0 | 1 |
Water Infrastructure | HMA | Total Facilities | ||
---|---|---|---|---|
2 | 4 | 6 | ||
Number of Facilities that Failed | ||||
Sewer pump stations | 18 | 13 | 11 | 33 |
Potable water pump stations | 6 | 6 | 6 | 40 |
Sewer plants | 0 | 0 | 0 | 1 |
Filtration Plants | 0 | 0 | 0 | 1 |
Wells | 3 | 3 | 4 | 12 |
Public and Electrical Infrastructure | HMA | Total Facilities | ||
---|---|---|---|---|
2 | 4 | 6 | ||
Number of Facilities that Failed | ||||
Public Schools | 4 | 3 | 3 | 21 |
Substations | 0 | 0 | 0 | 3 |
Transmission Center | 0 | 0 | 0 | 1 |
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Mejia Manrique, S.A.; Harmsen, E.W.; Khanbilvardi, R.M.; González, J.E. Flood Impacts on Critical Infrastructure in a Coastal Floodplain in Western Puerto Rico during Hurricane María. Hydrology 2021, 8, 104. https://doi.org/10.3390/hydrology8030104
Mejia Manrique SA, Harmsen EW, Khanbilvardi RM, González JE. Flood Impacts on Critical Infrastructure in a Coastal Floodplain in Western Puerto Rico during Hurricane María. Hydrology. 2021; 8(3):104. https://doi.org/10.3390/hydrology8030104
Chicago/Turabian StyleMejia Manrique, Said A., Eric W. Harmsen, Reza M. Khanbilvardi, and Jorge E. González. 2021. "Flood Impacts on Critical Infrastructure in a Coastal Floodplain in Western Puerto Rico during Hurricane María" Hydrology 8, no. 3: 104. https://doi.org/10.3390/hydrology8030104