| Literature DB >> 32300540 |
Sujithkumar Surendran Nair1,2, Ryan A McManamay1,2,3, Christopher R Derolph1,2, Melissa Allen-Dumas2,4.
Abstract
Global alterations of the hydrologic cycle by humans have led to alarming rates of water shortages and irreversible ecosystem change. Our ability to manage water resources lies in accurately modeling water availability at scales meaningful to management. Although hydrologic models have been used to understand the implications of future climate and land cover change on regional water availability, many modeling approaches fail to integrate human infrastructures (HI) with bio-geophysical drivers to facilitate sustainable regional water resource management. This paper presents an integrated framework, inclusive of modeling and data needs, to quantify the effects of both bio-geophysical and HI influence on regional surface water hydrology. The framework enables the integration of high spatial and temporal anthropogenic alterations of water availability for identifying hot-spots and hot-moments of hydrological stresses within individual river-segments using a hydrologic simulation model, Soil and Water Analysis Tool (SWAT). •A high-resolution river network for the study region with a greater spatial granularity compared to contemporary SWAT applications attempted to account for HI.•The anthropogenic influence on water balance for each river segment was estimated using data on human infrastructures, such as water intakes, power production facilities, discharges, dams, and land transformation.Entities:
Keywords: Climate drivers; Human infrastructure; Integrated modeling framework; Regional hydrology; Urbanizing river basins
Year: 2019 PMID: 32300540 PMCID: PMC7153296 DOI: 10.1016/j.mex.2019.10.010
Source DB: PubMed Journal: MethodsX ISSN: 2215-0161
Fig. 1The study areas – 1. Tennessee River basin (TNB) and 2. Apalachicola-Chattahoochee-Flint River (ACF).
Example data inputs and sources for initial SWAT Setup.
| Data Input | Spatial resolution | Source |
|---|---|---|
| DEM | 30m | USGS 3D Elevation Program |
| Climate | 1km | DAYMET |
| STATSGO | Medium | USDA |
| LANDUSE | 30m | USGS |
| NHD | High | NHDPlus V2 |
| LAI | Field | Wullschleger et al. [ |
https://www.usgs.gov/core-science-systems/ngp/3dep/about-3dep-products-serv.
https://daymet.ornl.gov.
https://datagateway.nrcs.usda.gov/.
https://www.mrlc.gov/data.
http://www.horizon-systems.com/NHDPlus/NHDPlusV2_home.php.
https://tde.ornl.gov/RELLAI.tx.
Example of the structure of space-time data inputs for representing human infrastructure influences on a river network.
| Reach ID | Baseline Land use | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Water Supply + | ||||||||||||
| WI (m3s−1) | WR(m3s−1) | |||||||||||
| BE-1 | BE-2 | BE-3 | BE-4 | BE-5 | BE-6 | BE-1 | BE-2 | BE-3 | BE-4 | BE-5 | BE-6 | |
| 1 | ||||||||||||
| . | ||||||||||||
| . | ||||||||||||
| N | ||||||||||||
Examples of data and sources of information used to develop a space-time database to represent human infrastructures in hydrologic models.
| Human Infrastructure Dataset | Description | Examples of sources |
|---|---|---|
| Dams and reservoirs | Spatial coverage of dams and reservoirs. Reservoir operation determined using schedules or through calibration process (also see Section 2.4) | National Anthropogenic Barrier Dataset |
| Water abstraction | Locations and reported water usage for public water supply intakes, irrigation siphons, diversions, industrial facilities, and groundwater wells (if the hydrologic model accommodates groundwater usage). Water usage may be reported at decadal, annual or monthly timesteps. Capacity may be reported instead of usage. Note that data may be sensitive. | State Water Permitting Department Websites: - Tennessee Department of Environment and Conservation |
| Point discharges | Locations and reported discharges of water treatment facilities or industrial point-source discharges | Facility Registration System, NPDES |
| Power plants | Locations of electricity generating stations according to technology types. Water usage estimates vary monthly for each location or for each fuel type, primary mover, and cooling technology. | Energy Information Administration, Forms 860 |
https://www.sciencebase.gov/catalog/item/56a7f9dce4b0b28f1184dabd.
http://www.horizon-systems.com/NHDPlus/NHDPlusV2_home.php.
http://www.tn.gov/environment/dataviewers.shtml.
https://it.nc.gov/center-geographic-information-and-analysis-cgia?tabid=55.
http://opcgis.deq.state.ms.us/MSWRDataCompendium/.
http://epd.georgia.gov/watershed-protection-branch.
http://www.northgeorgiawater.org/plans/water-supply-and-water-conservation-management-plan.
https://ca.dep.state.fl.us/mapdirect/.
http://www.epa.gov/enviro/html/fii/index.html.
https://www.eia.gov/electricity/data/eia860/.
https://www.eia.gov/electricity/data/eia923/.
Fig. 2Sequential and circular three-stage calibration. The following are thresholds used in the decision-tree calibration approach:
IO – inflow (I) to the reservoir and outflow (O) from the reservoir;
A= ET 70% of reported ET.
B= ET % of reported ET.
C = Reservoir outflow ET 70% estimated outflow.
D = Reservoir outflow ET 70% estimated outflow.
E = Streamflow 70% USGS gage flow.
F = Streamflow close to USGS gage flow Nash-Sutcliffe coefficient of efficiency is 0.9.
Fig. 3Estimating reservoir outflow from SWAT output.
A and B- upstream sub-basins contributes water to the reservoir with average storage S.
G1 -Upstream gage measures the flow from sub-basin A.
C – A downstream sub-basin contribute to USGS gage (G2).
Fig. 4A. Monthly mean discharge at USGS gage # 03518300 in TNB over.1985–2000 B. Monthly mean discharge at USGS gage # 02344700 in ACF over 1985–2000.
Fig. 5A. Validation result of annual mean runoff for HUC-8 watersheds in TNB and USGS water watch data. B. Validation result of annual mean runoff for HUC-8 in ACF and USGS water watch data.
Fig. 6Implementing spatially explicit and temporally specific HI scenarios in SWAT.
SS: Scenario Set; DS: Domestic supply (WS-1 and WS-2); WI: Water Intake; WR: Return flow; E1-E5: water need for five energy portfolios.
| Subject Area: | Environmental Science |
| More specific subject area: | Urban-Water-Energy Nexus |
| Method name: | High resolution spatially explicit modeling of land-energy-water nexus in cities: Integrating socioeconomic and climatic drivers |
| Name and reference of original method: | If applicable, include full bibliographic details of the main reference(s) describing the original method from which the new method was derived. |
| Resource availability: | NA |