Quantifying a Reliable Framework to Estimate Hydro-Climatic Conditions via a Three-Way Interaction between Land Surface Temperature, Evapotranspiration, Soil Moisture
Abstract
:1. Introduction
- Providing a physically based estimation of LST, ET, and soil moisture;
- Implementing the conceptual relationships between land surface hydrological components;
- Developing a more sophisticated, realistic hydrological model to improve the long-term simulation of streamflow and groundwater level;
- Providing a possible framework to evaluate the efficiency of global gridded data of LST in simulating the streamflow and groundwater levels in areas without high-tech instruments, such as eddy towers.
2. Study Domain and Data Sources
2.1. Study Domain
2.2. Data Sources
2.2.1. Ground-Based Data
2.2.2. Gridded Data
3. Modeling Procedure
3.1. MCSD-EWB Model Description
3.1.1. Full Surface Energy Balance Model
3.1.2. Water Balance Model
3.2. Statistical Performance Metrics
4. Results and Discussion
4.1. Evaluation of LST results
4.1.1. Statistical Performance Criteria
4.1.2. Spatiotemporal Patterns
4.1.3. Performance Assessment Based on EEBT
4.2. Evaluation of ET Results
4.2.1. Spatiotemporal Patterns
4.2.2. Performance Assessment Based on Modeled ET
4.3. Behavioral Assessment Based on the Water Balance Model
4.4. Hydro-Climatic Conditions of the Watershed
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Acronyms
SEB | Surface Energy Balance |
MCSD-EWB | Monthly Continuous Semi-Distributed Energy Water Balance |
ET | Evapotranspiration |
LST | Surface Temperature |
MODIS | Moderate Resolution Imaging Spectroradiometer |
TIR | Thermal Infrared Radiation |
LSM | Land Surface Model |
BATS | Biosphere–Atmosphere Transfer Scheme |
SiB | Simple Biosphere Model |
VIC | Variable Infiltration Capacity |
BT | Bulk Transfer |
MCM | Million Cubic Meters |
DEM | Digital Elevation Model |
IGBP-DIS | International Geosphere-Biosphere Programme Data and Information System |
TRMM | Tropical Rainfall Measuring Mission |
MLS | Moving Least Square |
NDVI | Normalized Difference Vegetation Index |
LAI | Leaf Area Index |
LULC | Land Use Land Cover |
TESSEL | Tiled ECMWF Scheme for Surface Exchanges over Land incorporating Land Surface Hydrology |
FSEB | Full Surface Energy Balance |
EEBT | Equilibrium Energy Balance Temperature |
CASA | Carnegie Ames Stanford Approach |
APAR | Absorbed Photosynthetic Active Radiation |
LUE | Light Use Efficiency |
SCE.UA | Shuffled Complex Evolution |
KGE | Kling–Gupta Efficiency |
NSE | Nash–Sutcliffe Efficiency |
RMSE | Root Mean Square Error |
MAE | Mean Absolute Error |
IFOV | Instantaneous Field of View |
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Data | Temporal Resolution | Spatial Resolution | Variable | Web Address |
---|---|---|---|---|
IGBP-DIS | Annual | 8 km | Wilting point | https://daac.ornl.gov (accessed on 11 November 2000) |
Field capacity | ||||
TRMM | Monthly | 25 km | Precipitation (3B43 V7) | https://disc.gsfc.nasa.gov (accessed on 1 January 1999) |
ERA5-Land | Monthly | 10 km | Wind speed | https://cds.climate.copernicus.eu (accessed on 1 January 1950) |
ERA5-Land | Monthly | 10 km | LST | https://cds.climate.copernicus.eu (accessed on 1 January 1950) |
MODIS | Monthly | 1 km | NDVI (MOD13A1) | https://lpdaac.usgs.gov (accessed on 18 February 2000) |
MODIS | 8-Day | 0.5 km | LAI (MOD15A2H) | https://lpdaac.usgs.gov (accessed on 18 February 2000) |
MODIS | Monthly | 5 km | LST (MOD11C3) | https://lpdaac.usgs.gov (accessed on 1 February 2000) |
MODIS | Daily | 1 km | ALBEDO (MCD43A3) | https://lpdaac.usgs.gov (accessed on 24 February 2000) |
MODIS | Annual | 0.5 km | LULC (MCD12Q1) | https://lpdaac.usgs.gov (accessed on 1 January 2001) |
Models | Estimation of Energy Balance Components | Estimation of Water Balance Components | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Net radiation Flux | Sensible heat Flux | Soil heat Flux | Latent heat Flux | Heat storage Flux | Precipitation | Soil moisture | Streamflow | Groundwater Level | Snowmelt | Karst hydrology | |
MCSD-EWB | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
MCSD-EWB (ERA5-Land) | ✕ | ✕ | ✕ | ✓ | ✕ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
MCSD-EWB (MODIS) | ✕ | ✕ | ✕ | ✓ | ✕ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
No. | Equation | Description | Variables | References |
---|---|---|---|---|
1 | Rn is mostly defined as the sum of the radiation components of incoming and outgoing long- and short-wave radiation. | Rs,in = incoming shortwave radiation (W/m2) = incoming longwave radiation (W/m2) alb = surface albedo (dimensionless) εs = surface emissivity (dimensionless) σ = Stefan–Boltzmann constant (5.67 × 10−8 W.m−2k−4) EEBT = Energy Balance Equilibrium Temperature (K) | Rs,in has been estimated using model proposed by [33]. Rl,in and Rl,out have been calculated by Stefan–Boltzmann equation. | |
2 | G is the conducted heat between the surface and underground soil layer due to the temperature difference. | Gz = soil heat flux at depth z (W/m2) = is the ratio of soil heat flux to net radiation flux for areas with dense vegetation cover (equal to 0.05) and bare lands (equal to 0.315), respectively fv = the vegetation ratio (for separation of soil and canopy) | [34] | |
3 | H is the heat energy exchanged when there is a temperature gradient between the land surface and atmosphere layer near the surface. | Hc, Hs = canopy and soil sensible heat flux (W/m2), respectively ρa = air density at constant pressure (Kg.m−3) Cp = the specific heat capacity of air at constant pressure (1004 J.kg−1. K−1) Ta = air temperature (K) ra,s, ra,c = aerodynamic resistances of soil and vegetation (s.m−1), respectively | ra,s and ra,c have been estimated using the relationship suggested by [35] and similarity theory (MOST) by [36] | |
4 | λET is the energy required to change the water phase from liquid to vapor. | = latent heat fluxes for vegetation and soil (W/m2), respectively γ = psychometric constant (kPa °C−1) λ = the latent heat of vaporization (KJ.kg−1.C−1) rs, rc = surface resistances of soil and vegetation, in that order (s.m−1) = saturated vapor pressure in equilibrium temperature (kPa) ea = actual vapor pressure (kPa) | rs and rc have been computed using relations proposed by [28]. | |
5 | is defined as the stored energy in the air from the surface to measurement height of air temperature. | = The measurement height of the air temperature to the surface level (m) = Air temperature gradient at the desired height with respect to time | [37] | |
6 | indicates the latent heat storage in the air and is computed for the area between the ground surface and the measurement height. | = Specific humidity (dimensionless) | [38] | |
7 | indicates the energy stored in the soil over time. | = Thicknesses of various soil layers (m) = Temperature gradient in different soil layers (K) = Volumetric heat capacity of the soil ) [39] | [40,41] | |
8 | indicates the energy stored in the canopy over time. | ) = Specific heat capacity of biomass (J.Kg−1.K−1) = Canopy temperature gradient with respect to time (K) | [37] | |
9 | During the heat storage due to photosynthesis process, the carbon dioxide flux is transformed into energy flux in such a way that 11.2 watts of energy is generated in each square meter, corresponding to the absorption of each gram of carbon dioxide. | - | [42] |
Name | Unit | bl | bu | Description |
---|---|---|---|---|
Tsnow | °C | −7 | −2 | Snow threshold temperature |
Train | °C | 2 | 8 | Rainfall threshold temperature |
Ks | - | 0.2 | 0.8 | Snowmelt coefficient |
LSM | mm | 50 | 120 | Lower-layer initial soil moisture |
LSMmax | mm | 80 | 200 | Lower-layer saturated soil moisture |
alpha | - | 0.25 | 0.85 | Ratio of the return flow |
K1 | - | 0 | 0.3 | Surface flow coefficient |
K2 | - | 0.1 | 0.6 | Upper-layer subsurface flow coefficient |
K3 | - | 0 | 0.5 | Lower-layer subsurface flow coefficient |
K4 | - | 0.1 | 0.7 | Deep percolation coefficient |
K5 | m/day | 0 | 20 | Hydraulic conductivity coefficient |
zp | - | 0.1 | 0.8 | Soil porosity |
m | 640 | 700 | Groundwater level threshold | |
q | - | 1 | 6 | Scale parameter of the Weibull distribution |
k | - | 2 | 8 | Shape parameter of the Weibull distribution |
n | - | 1 | 9 | Maximum number of time steps taken for soil drainage to reach the groundwater |
S | - | 0 | 1 | Storage coefficient of the aquifer |
h0 | m | 722 | 726 | Initial groundwater level |
Karstp | - | 0 | 0.5 | Karst storage precipitation ratio |
KarstET | - | 0 | 0.3 | Karst storage evaporation ratio |
Karstbsf | - | 0 | 0.5 | Karst storage baseflow ratio |
Karstdis | - | 0 | 0.2 | Karst storage discharge ratio |
Karstwsh | - | 0 | 0.5 | Karst storage into the basin (baseflow + Recharge) ratio |
Station | MCSD-EWB | MCSD-EWB (MODIS) | MCSD-EWB (ERA5-Land) | ||||||
---|---|---|---|---|---|---|---|---|---|
KGE | RMSE | NSE | KGE | RMSE | NSE | KGE | RMSE | NSE | |
Bandar-e-Mahshahr | 0.72 | 4.99 | 0.5 | −0.34 | 20.54 | −7.42 | 0.13 | 12.62 | −2.17 |
Behbahan | 0.73 | 4.04 | 0.74 | −0.78 | 23.29 | −7.65 | 0.06 | 12.17 | −1.36 |
Dogonbad | 0.6 | 5.89 | 0.36 | −0.86 | 20.8 | −6.92 | 0.13 | 9.56 | −0.67 |
Hendijan | 0.77 | 4.31 | 0.66 | −0.59 | 24.16 | −9.68 | 0.17 | 12.25 | −1.74 |
Izeh | 0.34 | 7.2 | −0.01 | −1.46 | 24.13 | −10.4 | 0.05 | 9.17 | −0.64 |
Masjed-Soleyman | 0.45 | 7.17 | 0.21 | −0.6 | 23.6 | −7.53 | 0.24 | 10.79 | −0.78 |
Omidieh | 0.79 | 4.07 | 0.69 | −0.55 | 23.99 | −9.55 | 0.2 | 11.48 | −1.41 |
Ramhormoz | 0.68 | 5.48 | 0.55 | −0.35 | 21.64 | −6.08 | 0.37 | 9.66 | −0.41 |
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Taheri, M.; Anboohi, M.S.; Nasseri, M.; Bigdeli, M.; Mohammadian, A. Quantifying a Reliable Framework to Estimate Hydro-Climatic Conditions via a Three-Way Interaction between Land Surface Temperature, Evapotranspiration, Soil Moisture. Atmosphere 2022, 13, 1916. https://doi.org/10.3390/atmos13111916
Taheri M, Anboohi MS, Nasseri M, Bigdeli M, Mohammadian A. Quantifying a Reliable Framework to Estimate Hydro-Climatic Conditions via a Three-Way Interaction between Land Surface Temperature, Evapotranspiration, Soil Moisture. Atmosphere. 2022; 13(11):1916. https://doi.org/10.3390/atmos13111916
Chicago/Turabian StyleTaheri, Mercedeh, Milad Shamsi Anboohi, Mohsen Nasseri, Mostafa Bigdeli, and Abdolmajid Mohammadian. 2022. "Quantifying a Reliable Framework to Estimate Hydro-Climatic Conditions via a Three-Way Interaction between Land Surface Temperature, Evapotranspiration, Soil Moisture" Atmosphere 13, no. 11: 1916. https://doi.org/10.3390/atmos13111916
APA StyleTaheri, M., Anboohi, M. S., Nasseri, M., Bigdeli, M., & Mohammadian, A. (2022). Quantifying a Reliable Framework to Estimate Hydro-Climatic Conditions via a Three-Way Interaction between Land Surface Temperature, Evapotranspiration, Soil Moisture. Atmosphere, 13(11), 1916. https://doi.org/10.3390/atmos13111916