Next Article in Journal
Accuracy Verification of Airborne Large-Footprint Lidar based on Terrain Features
Next Article in Special Issue
Feasibility of Estimating Turbulent Heat Fluxes via Variational Assimilation of Reference-Level Air Temperature and Specific Humidity Observations
Previous Article in Journal
Using Training Samples Retrieved from a Topographic Map and Unsupervised Segmentation for the Classification of Airborne Laser Scanning Data
Previous Article in Special Issue
Responses of Water Use Efficiency to Drought in Southwest China
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

A Bayesian Three-Cornered Hat (BTCH) Method: Improving the Terrestrial Evapotranspiration Estimation

1
State Key Laboratory of Earth Surface Processes and Resource Ecology, School of Natural Resources, Faculty of Geographical Science, Beijing Normal University, Beijing 100875, China
2
I. M. Systems Group at Environmental Modeling Center (EMC), National Centers for Environmental Prediction (NCEP), College Park, MD 20741, USA
3
Department of Civil and Environmental Engineering and Water Resources Research Center, University of Hawaii at Manoa, Honolulu, HI 96822, USA
4
National Hulunber Grassland Ecosystem Observation and Research Station, Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, China
*
Author to whom correspondence should be addressed.
Remote Sens. 2020, 12(5), 878; https://doi.org/10.3390/rs12050878
Submission received: 13 January 2020 / Revised: 23 February 2020 / Accepted: 6 March 2020 / Published: 9 March 2020
(This article belongs to the Special Issue Remote Sensing and Modeling of the Terrestrial Water Cycle)

Abstract

:
In this study, a Bayesian-based three-cornered hat (BTCH) method is developed to improve the estimation of terrestrial evapotranspiration (ET) by integrating multisource ET products without using any a priori knowledge. Ten long-term (30 years) gridded ET datasets from statistical or empirical, remotely-sensed, and land surface models over contiguous United States (CONUS) are integrated by the BTCH and ensemble mean (EM) methods. ET observations from eddy covariance towers (ETEC) at AmeriFlux sites and ET values from the water balance method (ETWB) are used to evaluate the BTCH- and EM-integrated ET estimates. Results indicate that BTCH performs better than EM and all the individual parent products. Moreover, the trend of BTCH-integrated ET estimates, and their influential factors (e.g., air temperature, normalized differential vegetation index, and precipitation) from 1982 to 2011 are analyzed by the Mann–Kendall method. Finally, the 30-year (1982 to 2011) total water storage anomaly (TWSA) in the Mississippi River Basin (MRB) is retrieved based on the BTCH-integrated ET estimates. The TWSA retrievals in this study agree well with those from the Gravity Recovery and Climate Experiment (GRACE).

Graphical Abstract

1. Introduction

Evapotranspiration (ET) refers to the amount of water vapor evaporated from the land surface to the atmosphere [1,2]. The accurate estimation of ET is required for understanding the water resource management, water cycle, and climate change [3,4,5,6]. ET can be estimated directly by flux tower systems (e.g., FLUXNET, AmeriFlux, EuroFlux, HiWATER, etc.) [7,8,9]. However, these measurements have a sparse distribution and limited time periods. Hence, several approaches have been developed to estimate the spatial and temporal variability of ET over the regional and global scales. The existing methods for estimating ET can be divided into three main groupings. The first group (called the statistical or empirical models) obtains regional ET based on flux tower observations [10,11,12]. The second group (called the remotely-sensed methods) estimates ET by incorporating remote sensing observations into the empirical models [13,14,15,16], surface energy balance equation [17,18], Penman–Monteith or Priestley–Taylor equation [19,20,21], and data assimilation methods [22,23,24,25,26,27,28,29]. The third group (named the land surface models) utilizes physical models (land surface models) or combines physical models with data assimilation algorithms to predict ET [30,31,32,33].
Using the abovementioned methods, various ET products (e.g., Gridded FLUXNET ET, GFET [10]; Moderate Resolution Imaging Spectroradiometer (MODIS) ET, MOD16 [34,35]; ETWatch [36,37]; Global Land Surface Satellite (GLASS) ET [38]; Global Land Evaporation and Amsterdam Model ET, GLEAM [39,40]; North American Land Data Assimilation System, NLDAS [31,41]) have been generated in the last few decades. However, there is a large difference among these ET products [13,42,43]. The uncertainties of ET products from the statistical or empirical, remotely sensed, and land surface models range from 4 to 15 mm/month [43].
Merging various ET products by the multimodel averaged method can generate an improved ET product with lower uncertainty [21,44]. Several studies have shown that the ET estimates from the multimodel averaged method are better than those of individual models [45,46,47,48,49]. Multimodel averaged ET datasets (e.g., LandFlux_EVAL) were compared with other ET products [14,38,50]. More sophisticated multimodel ensemble approaches, which consider the weights for independent algorithms based on in situ measurements have also been proposed to calculate ET. For example, Yao et al. (2014) [38] improved the ET estimates by merging five physical-based models within a Bayesian model averages (BMA) approach. Yao et al. (2017) [51] improved ET estimates by integrating semi-empirical ET algorithms with support vector machine (SVM). Hobeichi et al. (2018) [52] used the weighting approach to integrate the existing gridded ET products and produce a global ET product. However, the results of weighted fusion method are affected by the accuracy of in situ observations and the spatial scale mismatch between flux towers ET observations (with 100 meter spatial representativeness) and gridded ET products (usually produced with 0.25° resolution) [52,53].
The three-cornered hat (TCH) method has been used to assess the relative uncertainty of gridded datasets without any a priori knowledge [54]. The TCH approach considers cross correlation among ET products, and does not require the products to be independent [55]. Currently, the TCH approach has increasingly been used to evaluate uncertainties in soil moisture [19,56], total water storage [57], and ET [42,58] products over regional scales. The TCH approach has also been used in soil moisture integration applications, but it is rarely used in ET estimates [59].
In this study, a Bayesian-based three-cornered hat (BTCH) method is developed to integrate ET products without using any a priori knowledge. Ten long-term (30 years) gridded ET products from GFET, GLEAM, NLDAS-2, and NLDAS-testbed are integrated by the BTCH method over contiguous United States (CONUS). There are other ET products such as MOD16, ETWatch, and Simplified Surface Energy Balance (SSEBop) [35,60,61]. However, these ET products are not used in this study because they are available over shorter periods (i.e., less than 30 years). The BTCH-integrated ET product is compared with the ET observations from eddy covariance (EC) flux towers (ETEC) and ET estimates from the water balance equation (ETWB). Moreover, the 30-year (1982 to 2011) trends of ET product from BTCH and its influential climate factors (e.g., air temperature, normalized differential vegetation index NDVI, and precipitation) are studied by the Mann–Kendall method. Finally, using the BTCH-integrated ET, the 30-year total water storage anomaly (TWSA) in the Mississippi River Basin (MRB) is retrieved, and validated against the Gravity Recovery and Climate Experiment (GRACE) measurements.
The objectives of our study are to: (1) develop a more accurate ET product by integrating ten long-term gridded ET products within the BTCH method; (2) evaluate the BTCH-integrated ET estimates versus ETEC and ETWB; (3) analyze the trend of 30-year BTCH-integrated ET product and its climate factors by the Mann–Kendall method; and (4) retrieve the 30-year total TWSA in the Mississippi River Basin (MRB) using the BTCH-integrated ET product.

2. Study Regions and Datasets

This study covers the contiguous United States (CONUS), ranging from 25.8° N to 50.8° N and 124.8° W to 67.8° W (Figure 1). The vegetation types of CONUS are forest, grassland, cropland, and shrubland. The land cover types are obtained from the MODIS land cover type product (MCD12Q1) (https://lpdaac.usgs.gov/products/mcd12q1v006/). The CONUS is composed of 12 National Weather Service River Forecast Centers (NWS RFCs): CB (Colorado), CN (California-Nevada), WG (West Gulf), MB (Missouri), AB (Arkansas), NC (North central), NW (Northwest), MA (Mid-Atlantic), SE (Southeast), NE (Northeast), LM (Lower Mississippi), and OH (Ohio). The integrated ET product is assessed using eddy covariance ET observations from 15 AmeriFlux sites. Characteristics of the 15 AmeriFlux sites are shown in Table 1. The energy closure imbalance of monthly ET data from 15 AmeriFlux sites was corrected by Jung et al. (2010) [10]. The locations of 12 RFCs and 15 AmeriFlux sites are shown in Figure 1.
Ten ET products (namely, GFET, GLEAM, and four NLDAS-2 ET, and four NLDAS-testbed ET datasets) are integrated by the BTCH method (Table 2). GFET is generated by the Max Planck Institute for Biogeochemistry in Germany (https://www.bgc-jena.mpg.de/geodb/projects/Data.php). This product is derived from a data-driven model using global FLUXNET eddy covariance measurements. The GLEAM ET dataset is estimated from satellite-based data (i.e., soil moisture, land surface temperature, vegetation optical depth, and snow water equivalents) using the Priestley–Taylor equation over a global scale with spatial resolution of 0.25° [36,62,63]. The GLEAM ET products are available on the Global Land Evaporation Amsterdam Model archive (https://www.gleam.eu/).
The other eight ET products are sourced from physical models in NLDAS-2 and NLDAS-testbed. NLDAS-2 is composed of Noah28, Mosaic, VIC403, and SACs. NLDAS-tested contains Noah36, NoahMP36, VIC412, and CLSM25 [64,65,66,67,68,69,70]. Among all of these models, the Noah28, Noah36, NoahMP36, Mosaic, and CLSM25 models are developed within the soil vegetation atmosphere transfer (SVAT) scheme. VIC403, VIC412, and SAC are hydrological models [71,72,73]. All four models in NLDAS-2 or NLDAS-testbed used the same soil and vegetation types and vegetation cover fraction, but they were different in model parameter values [39]. NLDAS-testbed prepares an experimental system for the next generation of NLDAS, which is further advanced by upgrading the Noah and VIC models, and introducing a new model (i.e., CLSM25).
The auxiliary data used in this study include precipitation (P), air temperature (Ta), runoff (R), TWSA, soil moisture (SM), and normalized differential vegetation index (NDVI) data. The monthly gridded P and Ta datasets are obtained from National Centers for Environmental Information (NCEI) (https://www.ncei.noaa.gov) [74,75]. The regional monthly runoff data are downloaded from the United States Geological Survey (USGS) water watch platform (http://waterwatch.usgs.gov/). The daily NDVI data are derived from the Advanced Very High-Resolution Radiometer (AVHRR) instrument onboard the series of the National Oceanic and Atmospheric Administration (NOAA) satellites with the spatial resolution of 0.05° (https://climatedataguide.ucar.edu/climate-data/ndvi-normalized-difference-vegetation-index-noaa-avhrr). The AVHRR NDVI data were further averaged yearly using the time-average method to avoid cloud contaminations. The TWSA data are obtained from the GRACE Tellus website with the spatial resolution of 1° × 1° [76,77] (https://grace.jpl.nasa.gov/). The monthly soil moisture (SM, 1 meter) and ET values from CLM4 are also used as references to evaluate the integrated ET products. The related regional data are summarized in Table 2.

3. Methodology

3.1. Bayesian-Based Three-Cornered Hat (BTCH) Method

In this study, the BTCH method is utilized to generate an accurate ET product by combining various ET datasets [82,83]. The probability density function (PDF) for the ith ET product (ETi) can be expressed as,
p ( E T i | E T t ) = 1 σ i 2 π exp ε i 2 2 σ i 2 = L ( E T t | E T i ) ( ε i = E T i E T t ) ,
where ETt is the true value of ET. εi and σi are a zero-mean white noise and error variance of the ith ET product, respectively. L(•) is the likelihood function.
Similarly, the PDF for jth ET product (ETj) can be expressed as,
p ( E T j | E T t ) = 1 σ j 2 π exp ε j 2 2 σ j 2 = L ( E T t | E T j ) ( ε j = E T j E T t ) ,
where εj and σj are a zero-mean white noise and error variance of the jth ET product.
The maximum likelihood of true ET (ETt) is the maximum value of its joint probability distribution,
max L ( E T t | E T i , E T j ) = p ( E T i | E T t ) p ( E T j | E T t ) = 1 2 π σ i σ j exp ε i 2 2 σ i 2 ε j 2 2 σ j 2 ,
In order to obtain the maximum likelihood value of ETt in Equation (3), the cost function J is defined as,
J ( E T t ) = ε i 2 2 σ i 2 + ε j 2 2 σ j 2 = 1 2 ( E T i E T t ) 2 σ i 2 + ( E T j E T t ) 2 σ j 2 ,
By setting the first variation of J(ETt) to zero (i.e., δ J(ETt) = 0), ETt can be obtained as,
E T t = σ i 2 σ i 2 + σ j 2 E T i + σ j 2 σ i 2 + σ j 2 E T j ,
If we define ETt = wiETi + wjETj, then
w i = σ i 2 σ i 2 + σ j 2 , w j = σ j 2 σ i 2 + σ j 2 ,
Similar to Equation (5), ETt can be obtained via ETt = w1ET1 + ··· + wNETN when there are N sets of ET products. The weight of each ET product (e.g., wk) can be obtained by minimizing a similar cost function (Equation (4)) as,
w k = i = 1 , i k N σ i 2 k = 1 N i = 1 , i k N σ i 2 ,
The error covariance (σi) of each ET product can be obtained using the three-cornered hat (TCH) method.
Since ETt is not available, the difference between (N-1) ET products and a reference ET product (ETR) (chosen arbitrarily from N ET products) can be expressed as,
Y i , M = E T i E T R = ε i ε R · i = 1 , 2 , , N - 1 ,
where Y is the difference matrix with (N-1) rows and M columns (M is the total number of time samples in each ET product). The covariance matrix (S) of Y is defined as [84],
S = c o v ( Y ) ,
where cov(•) is the covariance operator. The unknown covariance matrix of the individual noise R is related to S via,
S = J R J T ,
where J is the identity matrix, and can be defined as,
J N 1 , N = 1 0 0 1 0 1 0 1 0 0 0 1 ,
and matrix R is defined as,
R = σ 11 σ 1 2 σ 1 N σ 1 2 σ 22 σ 2 N σ 1 N σ 2 N σ N N ,
where σij = cov(εi, εj). There are N × (N + 1)/2 unknowns in Equation (10) (number of distinct elements of R), but there are only N × (N − 1)/2 equations (number of distinct elements of S). Thus, there remain N ”free” parameters that must be reasonably determined to obtain a unique solution [84]. To determine the N free parameters, the following objective function is minimized based on the Kuhn–Tucker theorem.
The Kuhn–Tucker theorem is proposed by Galindo and Palacio (1999) [85], and the objective function is defined as,
F ( σ 1 N , , σ N N ) = 1 K 2 i < j N σ i j 2 ,
where K = det ( S ) N 1 . The constraint function is given by,
H ( σ 1 N , , σ N N ) = Q S K < 0 ,
where Q is a diagonal matrix with elements σ11, ···, σNN on its diagonal. These arrays can be calculated by minimizing Equation (13) through the initial condition iterations [86]. The square root of the diagonal elements of R (i.e., σ11, σ22, …, σNN) represent the relative uncertainty of each ET product [43]. The readers are referred to Long et al. (2014) [42] and Xu et al. (2019) [43] for detailed information on the TCH approach.
The ensemble mean (EM) method is used to also integrate the ten long-term gridded ET products and generate an ET product. This method just simply calculates the average of ET products as follows,
E T EM = 1 N i = 1 N E T i ,

3.2. Water Balance Budget Method

The water budget equation can be expressed as,
E T WB ( t ) = P ( t ) R ( t ) TWSC ( t ) ,
where t is the time step (month), ETWB is the ET (mm/month) estimates from the water budget equation, TWSC is the total water storage change (mm/month), and P and R are the precipitation (mm/month) and runoff (mm/month), respectively. According to Zhang et al. (2010) [87] and Velpuri et al. (2013) [88], ETWB values can be used as the reference data to validate ET estimates at multiyear scale.

3.3. Long-Term Total Water Storage Anomaly Reconstruction

The regional TWSC data can be expressed as follows,
TWSC ( t ) = TWSA ( t + 1 ) TWSA ( t 1 ) 2 Δ t ,
where TWSA is the total water storage anomaly and, on the one hand, can be obtained from GRACE data. On the other hand, TWSC can be calculated from Equation (16) using P, R, and ET, and TWSA can be calculated via,
TWSA ( t ) = TWSC ( 1 ) + 2 TWSC ( 2 ) + + t TWSC ( t ) t + 1 ,
As shown in Equation (18), the uncertainty of TWSA estimates is due to cumulative errors in TWSC estimates, and TWSC uncertainties can be attributed to errors in P, R, and ET. Thus, the PER (precipitation, evapotranspiration, and runoff) method proposed by Zeng, (1999) [89] is applied to Equation (18) to eliminate time accumulative errors, especially systematic bias,
TWSC ( t ) = P ( t ) R ( t ) ET WB ( t ) ( P ( t ) ¯ E T ( t ) ¯ ) + R ( t ) ¯ ,
where P ¯ , E T ¯ , and R ¯ represents mean values of P, ET, and R, respectively.
The Mann–Kendall method is used to analysis linear trend of the BTCH-integrated ET products [90,91]. The Mann–Kendall test is a non-parametric method to identify trends of time series and is widely used in previous studies [92,93,94,95].
The standard deviation (SD), root mean square deviation (RMSE), and correlation coefficients (R) metrics are used to access the performances of VDA approach,
S D = 1 N t = 1 N ( P t O ¯ ) 2 ,
R M S D = 1 N t = 1 N ( P t O t ) 2 ,
R = t = 1 N ( P t P ¯ ) ( O t O ¯ ) t = 1 N ( P t P ¯ ) 2 t = 1 N ( O t O ¯ ) 2 ,
where Pt and Ot are the predicted and observed values at time step t, respectively.
Partial correlation analysis [96,97] is used to obtain the correlation between collinear hydrologic variables (herein, Ta, P, and NDVI) that affect ET. The partial correlation analysis eliminates collinearity among the hydrologic variables (i.e., Ta, P, and NDVI) controlling ET. This analysis allows the impact of one or more variables (e.g., Ta and NDVI) to be eliminated when examining the relationship between another pair of variables (e.g., ET and P) [98,99]. Hence, the partial correlation coefficient quantifies the correlation between two variables (e.g., ET and P), controlling the other variables (i.e., Ta and NDVI).
The partial correlation between the variables x and y, which are conditioned on the variable z can be calculated by,
R x y . z = R x y R x z R y z ( 1 R x z 2 ) ( 1 R y z 2 ) ,
where Rxy,z is the partial correlation between x and y, given the control z. The variables Rxy, Rxz, Ryz are the correlation between x and y, x and z, and y and z, respectively. More details on the formulation of the partial correlation method is provided by [96] and [97].

4. Results and Discussions

4.1. ET Product from the BTCH Method

Figure 2 shows the 30-year (1982–2011) averaged ET estimates from the BTCH method over the CONUS. The spatial patterns of retrieved ET are fairly consistent with those of rainfall and to a lesser extent vegetation density. The ET estimates in the southeast of CONUS (wet or densely vegetated areas) are relatively larger than those in the center and north of CONUS (dry or sparsely vegetated areas). Figure 3 shows the 30-year averaged NDVI and precipitation over the CONUS. Higher ET estimates in the southeast of CONUS are mainly due to heavy precipitation and dense vegetation cover (Figure 3). Figure 2 indicates that ET values of 100 to 400 mm/year cover about 60% of the areas of CONUS. The extreme large ET values (>700 mm/year) can only be found in the southeast of CONUS.
Figure 4 shows the statistics of BTCH-integrated, EM, and ten parent ET products as compared with flux tower measurements (ETEC). As indicated, ET estimates from the BTCH method are closer to the observations as compared with other ET products. Since GFET is upscaled based on FLUXNET tower observations, it is also close to the AmeriFlux ET observations. The ET estimates from BTCH have higher R and lower RMSD as compared with those of EM and individual algorithms over the three land cover types. For DBF, ENF, and Crop, the RMSDs of ET estimates from BTCH are respectively 11.25, 15.13, and 17.25 mm/month, which are 31.28%, 20.16%, and 22.05% lower than those of 16.37, 18.95, and 22.13 mm/month from EM.
ETWB values are also used to assess the accuracy of ET estimates from BTCH, EM, and ten individual models at the basin scale in Figure 5. As indicated, BTCH performs better than EM and other models. ET products from BTCH and Noah28 are closest to the ETWB estimates, followed by VIC412 and GFET. For the 30-year comparisons (1982 to 2011), the average RMSD of ET product from the BTCH method is 24.64 mm/year, which is 53.46% lower than the RMSD of 52.94 mm/year from the EM method.
The weight (%) of each ET dataset has a key role in ET integration by the BTCH method. The weights of ten ET products over the main four land covers (cropland, grassland, ENF, and DBF) are shown in Figure 6. As indicated, GFET (22%), Noah28 (15%), and GLEAM (14%) have the largest weight over all land covers in the whole year. The relative contributions vary for different land cover types. For example, Noah28 has the highest weight (24%) over cropland; GFET has the highest weight (27%) over grassland; GFET and NoahMP36 have the highest weight (16%) over ENF; and GFET has the highest weight (24%) over DBF. GFET has the highest weight in different seasons. For different LSMs, Noah28 and Noah36 have the largest weight of 15% and 10% in a whole year, while VIC403 has lowest weight (5%). VIC412 increased weight from 5% to 8% as compared with VIC403 in whole year.

4.2. Relationships between BTCH-Integrated ET and Climate Factors

The Mann–Kendall trend test was used to investigate the temporal variations of BTCH-integrated ET along with dominant climate factors (i.e., air temperature, NDVI, and precipitation) in the CONUS from 1982 to 2011(Figure 7). The black points represent 95% level of significance. The positive and negative values on the maps indicate increasing and decreasing trends, respectively. As shown, air temperature increased about 0.06 ℃/year over the southwest CONUS, and decreased ~0.03 ℃/year over the northwest CONUS. NDVI shows a positive trend over the southeast and west coast, whereas a negative trend was found in southwest areas. The precipitation increased (decreased) ~0.12 mm/year over the northeast (southeast) CONUS. As shown, there is a maximum of 0.04 mm/year growth (reduction) in the BTCH-integrated ET over center, northeast, and west coast (southwest) areas. The growing trend of ET could be caused by increased vegetation density (NDVI) and precipitation. The decreased air temperature in the north and west coast areas could be caused by the ”cooling effect” of increased ET. In the southwest areas (e.g., Texas), ET, NDVI, and precipitation are all decreased, indicating the continuous drought in this area. In contrast, Ta is increased in the southwest area (e.g., Texas). Because the land surface is dry, the available energy at the surface is mostly dissipated through sensible heat flux, which heats the atmosphere.
The results also show different trends of ET among the RFCs. Over Colorado and California-Nevada, the ET estimates show a small decrease over the 30-year period (1982 to 2011). While, there is a small increase in the ET estimates over Missouri, North Central, Mid-Atlantic, Northeast, Lower Mississippi, and Ohio over the same period. Texas is mainly covered by the West Gulf and Arkansas basins, and experienced the most extreme one-year drought on record in 2011. The extreme one-year drought in 2011 has a large impact on the ET estimates [100,101]. Milly and Dunne (2001) [102] showed that increased ET in Mississippi has both climatological and anthropogenic dimensions. Walter et al. (2004) [103] studied ET across the CONUS based on precipitation and stream discharge data and showed that the ET has increased over the past 50 years. This study also reported an increasing trend in ET over the Mississippi basin and CONUS from 1982 to 2011, which is consistent with those of [102] and [103].
Plots of 30-year-averaged ET against Ta, P, and NDVI over the 12 RFCs are shown in Figure 8. As shown, in general, ET grows by an increase in Ta, P, and NDVI over the 12 RFCs. ET estimates over Southeast, Lower Mississippi, and Ohio are higher than those of Colorado and California-Nevada because of higher vegetation density, precipitation, and air temperature. In the West Gulf, low vegetation density and precipitation limit ET in spite of high air temperature. These results are consistent with those of [23] and [104].
Figure 9 shows the partial correlation coefficients of the annual ET estimates from BTCH with NDVI, precipitation, and air temperature from 1982 to 2011. As indicated, the annual ET estimates is positively correlated with precipitation and NDVI in the southwest CONUS, implying that the rise in these variables increase ET, and vice versa. This is because at dry or slightly vegetated conditions (e.g., southwest areas, Figure 3), ET is water limited and is mainly controlled by the surface state variables (i.e., soil moisture and NDVI).
The ET estimates are positively correlated with air temperature in the northwest, east, and southeast CONUS (wet or densely vegetated conditions, Figure 3). This happens because in wet or densely planted conditions (e.g., northwest, east, and southeast areas), ET is energy limited and is mainly influenced by atmospheric state variables (i.e., air temperature and specific humidity) [105,106].

4.3. Interannual Variations of BTCH-Integrated ET Estimates

Figure 10 shows time series of the annual BTCH-integrated ET estimates, soil moisture from CLM4, and precipitation anomalies over the twelve RFCs for 1982 to 2011. As indicated, ET anomalies are consistent with those of soil moisture and precipitation. ET anomalies rise with the increase of soil moisture and precipitation anomalies, and vice versa. Over relatively dry RFCs (i.e., Colorado and California-Nevada), ET increases rapidly with precipitation (e.g., 1983, 1998, and 2005). While, there is a lower consistency between ET and soil moisture over relatively wet RFCs (i.e., Northeast, Lower Mississippi). This is because over relatively dry RFCs, ET is water limited and is mainly controlled by the land surface state variable (i.e., soil moisture). Therefore, the coupling between ET and soil moisture (precipitation) is more robust. In contrast, over relatively wet RFCs, ET is energy limited and is mainly affected by the atmospheric state variables (i.e., air temperature and specific humidity). Hence, the coupling between ET and soil moisture (precipitation) becomes weak.

4.4. Long-Term Reconstruction of GRACE Total Water Storage Anomaly

Using BTCH-integrated ET, precipitation, and runoff datasets, the TWSA over the Mississippi River Basin (MRB) is estimated from Equation (18). The long-term (1982–2011) TWSA estimates from the PER method are shown in Figure 11 (top). In general, the TWS estimates increased by 0.06 mm/year from 1982 to 2011. TWS has a decreasing trend prior to 1993 as represented by the negative TWSA estimates. In contrast, TWS increases after 1993 as reflected in the positive TWSA retrievals.
The retrieved TWSA is compared with the GRACE-derived TWSA from 2002 to 2011 over the MRB. As shown in Figure 11 (bottom), the TWSA retrievals agree well with those of GRACE in terms of magnitude, as well as seasonal and long-term variations. The RMSDs and R of TWSA estimates from PER method are 32.92 mm/month and 0.82. From 2002 to 2011, on average, PER TWS estimates increased by ~0.32 (mm/year), which is close to the TWS increase of ~0.38 (mm/year) from GRACE. The misfit between the GRACE and PER TWSA retrievals is due to uncertainties in the water budget balance components (i.e., ET, precipitation, and runoff) and GRACE data.

4.5. Time Window of BTCH Method

As indicated by Xu et al. (2019) [43], uncertainties of ET estimates from 12 ET products (including one, three, and eight products from the machine learning model, remotely sensed observations, and land surface models, respectively) change with seasons. It is evident that the seasonal variations in the uncertainty of ET estimates from different methods affect ET integration by the BTCH method. Herein, the impact of time window on the accuracy of BTCH-integrated ET estimates is evaluated. The chosen time windows are 1, 2, 3, 6, and 12 months (i.e., ET integration by BTCH every 1, 2, 3, 6, and 12 months). Two-month time windows are December to January, February to March, …, and October to November. Three-month time windows are spring (April to June), summer (July to September), autumn (October to December), and winter (January to March). Six-month time windows are growth (May to October) and non-growth (November to April) seasons.
Figure 12 shows the monthly ET estimates from BTCH for the six tested time windows over DBF, ENF, and cropland. As can be seen, the integrated ET products for different time windows are comparable in magnitude and temporal variation. The ET estimates increase with the vegetation growth and reach their maximum in mid–July. Then, ET reduces as the vegetation decays. As indicated, the results of BTCH method with time window are improved significantly as compared with the EM methods. ET estimates from BTCH with one-month and two-month time windows are closer to the observations as compared with those with three-month and six-month time windows. Over ENF, ET estimates are remarkably lower than observations during the whole year. For cropland and DBF, ET values are significantly underestimated during the second half of the year. This is because the Noah28, VIC403, NoahMP36, and VIC412 models typically underestimate ET and fail to capture its seasonal dynamics over DBF and ENF [43]. Overall, the BTCH method with the one-month time window provides the most accurate ET estimates. This is because the one-month time window is able to capture seasonal variations in uncertainties of ET estimates better than those of two-month, three-month, six-month, and 12-month time windows, and EM.
Figure 13 compares statistical metrics of BTCH-integrated ET values from 1982 to 2011 for different time windows. The ET derived from water balance method (ETWB) and ET from CLM4 (ETCLM4) are used as the reference data to quantify different integration results. The results of EM are also shown for comparison. As indicated, the BTCH-integrated ET estimates are closer to observation, implying that BTCH outperforms EM. ET estimates from BTCH1 have the lowest RMSD and standard deviation, followed by those of BTCH2, BTCH3, BTCH6, and BTCH12. The seasonal variations in uncertainties of ET estimates can be efficiently used by the BTCH method to reduce the uncertainties in the integrated ET product.
Figure 14 shows uncertainty of ET retrievals from BTCH over the CONUS, for the five different time windows. For comparison, uncertainty of ET estimates from EM is also shown in Figure 14. The TCH method is used to calculate the uncertainties of ET estimates from BTCH and EM. As indicated, the uncertainties of ET retrievals from BTCH1 to BTCH12 are lower than those of EM. The ET product from BTCH1 has the lowest uncertainty, followed by BTCH2, BTCH3, BTCH6, and BTCH12. The individual ET products have lower uncertainties in the northwest as compared with the southeast and center of CONUS [43]. However, BTCH1 can take advantage of seasonal ET uncertainties and eliminate high uncertainties of the other BTCH and EM products.

5. Conclusions

In this study, a Bayesian-based three-cornered hat (BTCH) method is used to integrate ten long-term (30 years) gridded ET datasets (i.e., GFET, GLEAM, eight physical model outputs from NLDAS-2, and NLDAS-tested) without using any a priori knowledge.
The performance of the BTCH method is evaluated using ET measurements from AmeriFlux eddy covariance (ETEC) stations and ET derived from the water balance method (ETWB). The results show that BTCH is able to capture the seasonal variations of ET estimates more accurately than the ensemble mean (EM) method. The BTCH-integrated ET estimates have the RMSD of 14.54 mm/month, which is 24.07% lower than that of the RMSD of 19.15 mm/month from EM.
BTCH-integrated ET shows a maximum increase of ~0.04 (mm/year) over the center, northeast, and west coast of CONUS and a maximum decrease of ~0.04 (mm/year) over southwest areas. The positive trend of ET in the Mississippi River Basin from 1982 to 2011 is caused by increased vegetation density (NDVI) and precipitation. The decreased ET in the southwest areas is due to the reduction in NDVI and precipitation. The annual BTCH-integrated ET is positively correlated with precipitation and NDVI in dry or sparse vegetated conditions, while it is positively correlated with air temperature wet or densely vegetated conditions. This is because at dry or slightly vegetated conditions, ET is water limited and is mainly controlled by the surface state variables (i.e., soil moisture and NDVI). In contrast, at wet or densely planted conditions, ET is energy limited and is mainly influenced by atmospheric state variables (i.e., air temperature and specific humidity).
Finally, the long-term (1982–2011) total water storage anomaly (TWSA) is computed in the Mississippi River Basin (MRB) based on BTCH-integrated ET, using the PER method. The PER TWSA retrievals agree well with those of GRACE, and they both show an increasing trend over MRB from 1982 to 2011. Using the reconstructed long-term TWSA, the estimated TWS values increased by 0.06 (mm/year) over the MRB from 1982 to 2011.

Author Contributions

Methodology, Z.G., T.X., and X.H.; data processing and analyze, Z.G.; writing—original draft preparation, X.H.; writing—review and editing, X.H., T.X., and S.M.B., writing—review, editing, and supervision Y.X.; supervision, S.L., K.M., Y.Z., H.F., and J.Z.; project administration, T.X.; funding acquisition, T.X. All authors have read and agreed to the published version of the manuscript.

Funding

This work was funded by the National Natural Science Foundation of China (41531174 and 41671335).

Acknowledgments

This work was funded by the National Natural Science Foundation of China (41531174 and 41671335).

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Scott, R.L.; Huxman, T.E.; Cable, W.L.; Emmerich, W.E. Partitioning of evapotranspiration and its relation to carbon dioxide exchange in a Chihuahuan Desert shrubland. Hydrol. Process. 2006, 20, 3227–3243. [Google Scholar] [CrossRef] [Green Version]
  2. Peng, S.; Ding, Y.; Wen, Z.; Chen, Y.; Cao, Y.; Ren, J. Spatiotemporal change and trend analysis of potential evapotranspiration over the Loess Plateau of China during 2011–2100. Agric. For. Meteorol. 2017, 233, 183–194. [Google Scholar] [CrossRef] [Green Version]
  3. Er-Raki, S.; Chehbouni, A.; Boulet, G.; Williams, D.G. Using the dual approach of FAO-56 for partitioning ET into soil and plant components for olive orchards in a semi-arid region. Agric. Water Manag. 2010, 97, 1769–1778. [Google Scholar] [CrossRef] [Green Version]
  4. Fisher, J.B.; Melton, F.; Middleton, E.; Hain, C.; Anderson, M.; Allen, R.; McCabe, M.F.; Hook, S.; Baldocchi, D.; Townsend, P.A.; et al. The future of evapotranspiration: Global requirements for ecosystem functioning, carbon and climate feedbacks, agricultural management, and water resources. Water Resour. Res. 2017, 53, 2618–2626. [Google Scholar] [CrossRef]
  5. Kustas, W.; Anderson, M. Advances in thermal infrared remote sensing for land surface modeling. Agric. For. Meteorol. 2009, 149, 2071–2081. [Google Scholar] [CrossRef]
  6. Petropoulos, G.P.; Ireland, G.; Lamine, S.; Griffiths, H.M.; Ghilain, G.; Anagnostopoulos, V.; North, M.R.; Srivastava, P.K.; Georgopoulou, H. Operational evapotranspiration estimates from SEVIRI in support of sustainable water management. Int. J. Appl. Earth Obs. Geoinf. 2016, 49, 175–187. [Google Scholar] [CrossRef] [Green Version]
  7. Baldocchi, D.; Falge, E.; Gu, L.H.; Olson, R. FLUXNET: A new tool to study the temporal and spatial variability of ecosystem-scale carbon dioxide, water vapor, and energy flux densities. Bull. Am. Meteorol. Soc. 2001, 82, 2415–2434. [Google Scholar] [CrossRef]
  8. Evett, S.R.; Kustas, W.P.; Gowda, P.H.; Anderson, M.C.; Prueger, J.H.; Howell, T.A. Overview of the Bushland Evapotranspiration and Agricultural Remote sensing EXperiment 2008 (BEAREX08): A field experiment evaluating methods for quantifying ET at multiple scales. Adv. Water Resour. 2011, 50, 4–19. [Google Scholar] [CrossRef]
  9. Liu, S.M.; Li, X.; Xu, Z.W.; Che, T.; Xiao, Q.; Ma, M.M.; Liu, Q.H.; Jin, R.; Guo, J.W.; Wang, L.X.; et al. The Heihe integrated observatory network: A basin-scale land surface processes observatory in China. Vadose Zone J. 2018, 17. [Google Scholar] [CrossRef]
  10. Jung, M.; Reichstein, M.; Ciais, P.; Seneviratne, S.I.; Sheffield, J.; Goulden, M.L.; Bonan, G.; Cescatti, A.; Chen, J.Q.; De Jeu, R.; et al. Recent decline in the global land evapotranspiration trend due to limited moisture supply. Nature 2010, 467, 951–954. [Google Scholar] [CrossRef]
  11. Jung, M.; Reichstein, M.; Margolis, H.A.; Cescatti, A.; Richardson, A.D.; Arain, M.A.; Arneth, A.; Bernhofer, C.; Bonal, D.; Chen, J.Q.; et al. Global patterns of land-atmosphere fluxes of carbon dioxide, latent heat, and sensible heat derived from eddy covariance, satellite, and meteorological observations. J. Geophys. Res. 2011, 116, G00J07. [Google Scholar] [CrossRef] [Green Version]
  12. Xu, T.; Guo, Z.; Liu, S.; He, X.; Meng, Y.; Xu, Z.; Xia, Y.; Xiao, J.; Zhang, Y.; Ma, Y.; et al. Evaluating different machine learning methods for upscaling evapotranspiration from flux towers to the regional scale. J. Geophys. Res. Atmos. 2018, 123. [Google Scholar] [CrossRef]
  13. Wang, K.; Dickinson, R.E.; Wild, M.; Liang, S. Evidence for decadal variation in global terrestrial evapotranspiration between 1982 and 2002: 1. Model development. J. Geophys. Res. 2010, 115, D20112. [Google Scholar] [CrossRef] [Green Version]
  14. Wang, K.; Liang, S. An improved method for estimating global evapotranspiration based on satellite determination of surface net radiation, vegetation index, temperature, and soil moisture. J. Hydrometeorol. 2008, 9, 712–727. [Google Scholar] [CrossRef]
  15. Zhu, W.; Jia, S.; Lv, A. A universal Ts-VI triangle method for the continuous retrieval of evaporative fraction from MODIS products. J. Geophys. Res. Atmos. 2017, 122. [Google Scholar] [CrossRef]
  16. Zhao, B.; Mao, K.; Cai, Y.; Shi, J.; Li, Z.; Qin, Z.; Meng, X. A combined Terra and Aqua MODIS land surface temperature and meteorological station data product for China from 2003–2017. Earth Syst. Sci. Data Discuss. 2019. in review. [Google Scholar] [CrossRef] [Green Version]
  17. Jia, L.; Xi, G.; Liu, S.; Huang, C.; Yan, Y.; Liu, G. Regional estimation of daily to annual regional evapotranspiration with MODIS data in the Yellow River Delta wetland. Hydrol. Earth Syst. Sci. 2009, 13, 1775–1787. [Google Scholar] [CrossRef] [Green Version]
  18. Ma, Y.; Liu, S.; Song, L.; Xu, Z.; Liu, Y.; Xu, T.; Zhu, Z. Estimation of daily evapotranspiration and irrigation water efciency at a Landsat-like scale for an arid irrigation area using multi-source remote sensing data. Remote Sens. Environ. 2018, 216, 715–734. [Google Scholar] [CrossRef]
  19. Miralles, D.G.; Holmes, T.R.H.; De Jeu, R.A.M.; Gash, J.H.; Meesters, A.G.C.A.; Dolman, A.J. Global land-surface evaporation estimated from satellite-based observations. Hydrol. Earth Syst. Sci. 2011, 15, 453–469. [Google Scholar] [CrossRef] [Green Version]
  20. Yao, Y.; Liang, S.; Li, X.; Chen, J.; Wang, K.; Jia, K.; Chen, J.; Jiang, B.; Fisher, J.B.; Mu, Q.; et al. A satellite-based hybrid algorithm to determine the Priestley-Taylor parameter for global terrestrial latent heat flux estimation across multiple biomes. Remote Sens. Environ. 2015, 165, 216–233. [Google Scholar] [CrossRef] [Green Version]
  21. Zhang, K.; Kimball, J.S.; Running, S.W. A review of remote sensing based actual evapotranspiration estimation. Wiley Interdiscip. Rev. Water. 2016, 3, 834–853. [Google Scholar] [CrossRef]
  22. Bateni, S.M.; Entekhabi, D.; Jeng, D.S. Variational assimilation of land surface temperature and the estimation of surface energy balance components. J. Hydrol. 2013, 481, 143–156. [Google Scholar] [CrossRef]
  23. Bateni, S.M.; Entekhabi, D.; Castelli, F. Mapping evaporation and estimation of surface control of evaporation using remotely sensed land surface temperature from a constellation of satellites. Water Resour. Res. 2013, 49, 950–968. [Google Scholar] [CrossRef]
  24. He, X.L.; Xu, T.R.; Bateni, S.M.; Neale, C.M.U.; Auligne, T.; Liu, S.M.; Wang, K.C.; Mao, K.B.; Yao, Y.J. Evaluation of the Weak Constraint Data Assimilation Approach for Estimating Turbulent Heat Fluxes at Six Sites. Remote Sens. 2018, 10, 1994. [Google Scholar] [CrossRef] [Green Version]
  25. He, X.L.; Xu, T.R.; Bateni, S.M.; Neale, C.M.U.; Liu, S.M.; Auligne, T.; Wang, K.C.; Zhu, S.D. Mapping Regional Turbulent Heat Fluxes via Assimilation of MODIS Land Surface Temperature Data into an Ensemble Kalman Smoother Framework. Earth Space Sci. 2019, 6. [Google Scholar] [CrossRef] [Green Version]
  26. He, X.L.; Xu, T.R.; Bateni, S.M.; Ek, M.; Liu, S.M.; Chen, F. Mapping Regional Evapotranspiration in Cloudy Skies via Variational Assimilation of All-Weather Land Surface Temperature Observations. J. Hydrol. 2020. [Google Scholar] [CrossRef]
  27. Lu, Y.; Steele-Dunne, S.C.; Farhadi, L.; Van de Giesen, N. Mapping surface heat fluxes by assimilating SMAP soil moisture and GOES land surface temperature data. Water Resour. Res. 2017, 53, 10858–10877. [Google Scholar] [CrossRef] [Green Version]
  28. Xu, T.R.; Bateni, S.M.; Liang, S.; Entekhabi, D.; Mao, K. Estimation of surface turbulent heat fluxes via variational assimilation of sequences of land surface temperatures from Geostationary Operational Environmental Satellites. J. Geophys. Res. 2014, 119, 10–780. [Google Scholar] [CrossRef] [Green Version]
  29. Xu, T.R.; He, X.L.; Bateni, S.M.; Auligne, T.; Liu, S.M.; Xu, Z.W.; Zhou, J.; Mao, K.B. Mapping Regional Turbulent Heat Fluxes via Variational Assimilation of Land Surface Temperature Data from Polar Orbiting Satellites. Remote Sens. Environ. 2019, 221, 444–461. [Google Scholar] [CrossRef]
  30. Carrera, M.; Belair, S.; Bilodeau, B. The Canadian Land Data Assimilation System (CaLDAS): Description and synthetic evaluation study. J. Hydrometeor. 2015, 16, 1293–1314. [Google Scholar] [CrossRef]
  31. Xia, Y.; Hao, Z.; Shi, C.; Li, Y.; Meng, J.; Xu, T.; Wu, X.; Zhang, B. Regional and Global Land Data Assimilation Systems: Innovations, Challenges, and Prospects. J. Meteorol. Res. 2019, 33, 159–189. [Google Scholar] [CrossRef]
  32. Xu, T.; Liu, S.M.; Liang, S.; Qin, J. Improving predictions of water and heat fluxes by assimilating MODIS land surface temperature products into common land model. J. Hydrometeorol. 2011, 12, 227–244. [Google Scholar] [CrossRef]
  33. Zhang, B.; Xia, Y.L.; Long, B.; Hobbins, M.; Zhao, X.; Hain, C. Evaluation and comparison of multiple evapotranspiration data models over the contiguous United States: Implications for the next phase of NLDAS (NLDAS-Testbed) development. Agric. For. Meteorol. 2020, 280, 107810. [Google Scholar] [CrossRef]
  34. Mu, Q.; Heinsch, F.A.; Zhao, M.; Running, S.W. Development of a global evapotranspiration algorithm based on MODIS and global meteorology data. Remote Sens. Environ. 2007, 111, 519–536. [Google Scholar] [CrossRef]
  35. Mu, Q.; Zhao, M.; Running, S.W. Improvements to a MODIS global terrestrial evapotranspiration algorithm. Remote Sens. Environ. 2011, 115, 1781–1800. [Google Scholar] [CrossRef]
  36. Wu, B.; Xiong, J.; Yan, N. Etwatch: Models and methods. J. Remote Sens. 2010, 15, 224–230. [Google Scholar]
  37. Wu, B.; Zhu, W.; Yan, N.; Feng, X.; Xing, Q.; Zhuang, Q. An improved method for deriving daily evapotranspiration estimates from satellite estimates on cloud-free days. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens. 2016, 9, 1323–1330. [Google Scholar] [CrossRef]
  38. Yao, Y.; Liang, S.; Li, X.; Hong, Y.; Fisher, J.B.; Zhang, N.; Chen, J.; Cheng, J.; Zhao, S.; Zhang, X.; et al. Bayesian multimodel estimation of global terrestrial latent heat flux from eddy covariance, meteorological, and satellite observations. J. Geophys. Res. Atmos. 2014, 119, 4521–4545. [Google Scholar] [CrossRef]
  39. Martens, B.; Miralles, D.; Lievens, H.; Fernández-Prieto, D.; Verhoest, N.E. Improving terrestrial evaporation estimates over continental Australia through assimilation of SMOS soil moisture. Int. J. Appl. Earth Obs. Geoinf. 2016, 48, 146–162. [Google Scholar] [CrossRef]
  40. Martens, B.; Miralles, D.G.; Lievens, H.; van der Schalie, R.; de Jeu, R.A.M.; Fernández–Prieto, D.; Beck, H.E.; Dorigo, W.A.; Verhoest, N.E.C. GLEAM v3: Satellite–based land evaporation and root–zone soil moisture. Geosci. Model Dev. 2017, 10, 1903–1925. [Google Scholar] [CrossRef] [Green Version]
  41. Mitchell, K.E.; Lohmann, D.; Houser, P.R.; Wood, E.F.; Schaake, J.C.; Robock, A.; Cosgrove, B.A.; Sheffield, J.; Duan, Q.; Luo, L.; et al. The multi–institution North American Land Data Assimilation System (NLDAS): Utilizing multiple GCIP products and partners in a continental distributed hydrological modeling system. J. Geophys. Res. 2004, 109, D07S90. [Google Scholar] [CrossRef] [Green Version]
  42. Long, D.; Longuevergne, L.; Scanlon, B.R. Uncertainty in evapotranspiration from land surface modeling, remote sensing, and GRACE satellites. Water Resour. Res. 2014, 50, 1131–1151. [Google Scholar] [CrossRef] [Green Version]
  43. Xu, T.R.; Guo, Z.X.; Xia, Y.L.; Ferreira, V.G.; Liu, S.M.; Wang, K.C.; Yao, Y.J.; Zhang, X.J.; Zhao, C.S. Evaluation of twelve evapotranspiration products from machine learning, remote sensing and land surface models over conterminous united states. J. Hydrol. 2019, 578, 124105. [Google Scholar] [CrossRef]
  44. McCabe, M.F.; Ershadi, A.; Jimenez, C.; Miralles, D.G.; Michel, D.; Wood, E.F. The GEWEX LandFlux project: Evaluation of model evaporation using tower-based and globally gridded forcing data. Geosci. Model Dev. 2016, 9, 283–305. [Google Scholar] [CrossRef] [Green Version]
  45. Duan, Q.; Phillips, T.J. Bayesian estimation of local signal and noise in multimodel simulations of climate change. J. Geophys. Res. Atmos. 2010, 115, D18123. [Google Scholar] [CrossRef]
  46. Houghton, J.T.A. Climate Change 2001: The Scientific Basis. In Contribution of Working Group I to the Third Assessment Report of the Intergovernmental Panel on Climate Change; Cambridge University Press: New York, NY, USA, 2001; p. 892. [Google Scholar]
  47. Raftery, A.E.; Madigan, D.; Hoeting, J.A. Bayesian model averaging for linear regression models. J. Am. Stat. Assoc. 1997, 92, 179–191. [Google Scholar] [CrossRef]
  48. Raftery, A.E.; Gneiting, T.; Balabdaoui, F.; Polakowski, M. Using Bayesian model averaging to calibrate forecast ensembles. Mon. Weather Rev. 2005, 133, 1155–1174. [Google Scholar] [CrossRef] [Green Version]
  49. Wu, H.; Zhang, X.; Liang, S.; Yang, H.; Zhou, G. Estimation of clear-sky land surface longwave radiation from MODIS data products by merging multiple models. J. Geophys. Res. Atmos. 2012, 117, D22107. [Google Scholar] [CrossRef]
  50. Dirmeyer, P.A.; Gao, X.; Zhao, M.; Guo, Z.; Oki, T.; Hanasaki, N. GSWP-2: Multimodel analysis and implications for our perception of the land surface. Bull. Am. Meteorol. Soc. 2006, 87, 1381–1397. [Google Scholar] [CrossRef] [Green Version]
  51. Yao, Y.; Liang, S.; Li, X.; Chen, J.; Liu, S.; Jia, K.; Zhang, X.; Xiao, Z.; Fisher, J.B.; Mu, Q.; et al. Improving global terrestrial evapotranspiration estimation using support vector machine by integrating three process-based algorithms. Agric. For. Meteorol. 2017, 242, 55–74. [Google Scholar] [CrossRef]
  52. Hobeichi, S.; Abramowitz, G.; Evans, J.; Ukkola, A. Derived Optimal Linear Combination Evapotranspiration (DOLCE): A global gridded synthesis ET estimate. Hydrol. Earth Syst. Sci. 2018, 22, 1317. [Google Scholar] [CrossRef] [Green Version]
  53. Burba, G.; Anderson, D. A Brief Practical Guide to Eddy Covariance Flux Measurements: Principles and Workflow Examples for Scientific and Industrial Applications; LI-COR Biosciences: Lincoln, NE, USA, 2010. [Google Scholar]
  54. Scipal, K.; Holmes, T.; De Jeu, R.; Naeimi, V.; Wagner, W. A possible solution for the problem of estimating the error structure of global soil moisture data sets. Geophys. Res. Lett. 2008, 35, L24403. [Google Scholar] [CrossRef] [Green Version]
  55. Premoli, A.; Tavella, P. A revisited three-cornered hat method for estimating frequency standard instability. IEEE Trans. Instrum. Meas. 1993, 42, 7–13. [Google Scholar] [CrossRef]
  56. Crow, W.T.; Lei, F.; Hain, C.; Anderson, M.C.; Scott, R.L.; Billesbach, D.; Arkebauer, T. Robust estimates of soil moisture and latent heat flux coupling strength obtained from triple collocation. Geophys. Res. Lett. 2015, 42, 8415–8423. [Google Scholar] [CrossRef] [Green Version]
  57. Ferreira, V.G.; Montecino, H.D.; Yakubu, C.I.; Heck, B. Uncertainties of the Gravity Recovery and Climate Experiment time–variable gravity-field solutions based on three-cornered hat method. J. Appl. Remote Sens. 2016, 10, 015015. [Google Scholar] [CrossRef]
  58. Khan, M.S.; Liaqat, U.W.; Baik, J.; Choi, M. Stand–alone uncertainty characterization of GLEAM, GLDAS and MOD16 evapotranspiration products using an extended triple collocation approach. Agric. For. Meteorol. 2018, 252, 256–268. [Google Scholar] [CrossRef]
  59. Yilmaz, M.T.; Crow, W.T.; Anderson, M.C.; Hain, C. An objective methodology for merging satellite- and model-based soil moisture products. Water Resour. Res. 2012, 48, 11502. [Google Scholar] [CrossRef]
  60. Wu, B.; Xiong, J.; Yan, N.; Yang, L.; Du, X. ETWatch for monitoring regional evapotranspiration with remote sensing. Adv. Rater Sci. 2008, 19, 671–678. [Google Scholar]
  61. Senay, G.B.; Bohms, S.; Singh, R.K.; Gowda, P.H.; Velpuri, N.M.; Alemu, H.; Verdin, J.P. Operational evapotranspiration mapping using remote sensing and weather datasets: A new parameterization for the SSEB approach. J. Am. Water Resour. Assoc. 2013, 49, 577–591. [Google Scholar] [CrossRef] [Green Version]
  62. Miralles, D.G.; Crow, W.T.; Cosh, M.H. Estimating spatial sampling errors in coarse–scale soil moisture estimates derived from point–scale observations. J. Hydrometeorol. 2010, 11, 1423–1429. [Google Scholar] [CrossRef]
  63. Miralles, D.G.; Jimenez, C.; Jung, M.; Michel, D.; Ershadi, A.; McCabe, M.F.; Hirschi, M.; Martens, B.; Dolman, A.J.; Fisher, J.B.; et al. The WACMOS-ET project—Part 2: Evaluation of global terrestrial evaporation data sets. Hydrol. Earth Syst. Sci. 2016, 20, 823–842. [Google Scholar] [CrossRef] [Green Version]
  64. Burnash, R.J.C.; Ferral, R.L.; McGuire, R.A. A Generalized Stream Flow Simulation System. Conceptual Modeling for Digital Computer; State Department of Water Resources: Sacramento, CA, USA, 1973; Volume 204. [Google Scholar]
  65. Chen, F.; Janjić, Z.; Mitchell, K. Impact of atmospheric surface-layer parameterizations in the new land-surface scheme of the NCEP mesoscale Eta model. Bound. Layer Meteor. 1997, 85, 391–421. [Google Scholar] [CrossRef]
  66. Koster, R.D.; Suarez, M. The components of the SVAT scheme and their effects on a GCM’s hydrological cycle. Adv. Water Resour. 1994, 17, 61–78. [Google Scholar] [CrossRef]
  67. Koster, R.; Suarez, M.; Ducharne, A.; Stieglitz, M.; Kumar, P. A catchment-based approach to modeling land surface processes in a general circulation model 1. Model structure. J. Geophys. Res. Atmos. 2000, 105, 24–809. [Google Scholar] [CrossRef]
  68. Liang, X.; Lettenmaier, D.P.; Wood, E.F.; Burges, S.J. A simple hydrologically based model of land surface water and energy fluxes for general circulation models. J. Geophys. Res. Atmos. 1994, 99, 14–415. [Google Scholar] [CrossRef]
  69. Xia, Y.; Mitchell, K.; Ek, M.; Sheffield, J.; Cosgrove, B.; Wood, E.; Luo, L.; Alonge, C.; Wei, H.; Meng, J.; et al. Continental-scale water and energy flux analysis and validation for the North American Land Data Assimilation System project phase 2 (NLDAS-2): 1. Intercomparison and application of model products. J. Geophys. Res. Atmos. 2012, 17, 1–27. [Google Scholar] [CrossRef]
  70. Xia, Y.; Mitchell, K.; Ek, M.; Cosgrove, B.; Sheffield, J.; Luo, L.; Alonge, C.; Wei, H.; Meng, J.; Livneh, B.; et al. Continental-scale water and energy flux analysis and validation for North American Land Data Assimilation System project phase 2 (NLDAS-2): 2. Validation of model-simulated streamflow. J. Geophys. Res. Atmos. 2012, 117, 1–23. [Google Scholar] [CrossRef]
  71. Xia, Y.; Hobbins, M.T.; Mu, Q.; Ek, M.B. Evaluation of NLDAS-2 evapotranspiration against tower flux site observations. Hydrol. Process. 2015, 29, 1757–1771. [Google Scholar] [CrossRef]
  72. Xia, Y.; Peter-Lidard, C.D.; Huang, M.; Wei, H.; Ek, M. Improved NLDAS-2 Noah-simulated hydrometeorological products with an interim run. Hydrol. Process. 2015, 29, 780–792. [Google Scholar] [CrossRef]
  73. Xia, Y.; Cosgrove, B.A.; Mitchell, K.E.; Peters-Lidard, C.D.; Ek, M.B.; Brewer, M.; Mocko, D.; Kumar, S.V.; Wei, H.; Meng, J.; et al. Basin-scale assessment of the land surface water budget in the National Centers for environmental prediction operational and research NLDAS-2 systems. J. Geophys. Res. 2016, 121, 2750–2779. [Google Scholar] [CrossRef] [Green Version]
  74. Vose, R.S.; Arndt, D.; Banzon, V.F.; Easterling, D.R.; Gleason, B.; Huang, B.; Kearns, E.; Lawrimore, J.H.; Menne, M.J.; Peterson, T.C. NOAA’s merged land–ocean surface temperature analysis. Bull. Am. Meteorol. Soc. 2012, 93, 1677–1685. [Google Scholar] [CrossRef]
  75. Vose, R.S.; Applequist, S.; Squires, M.; Durre, I.; Menne, M.J.; Williams, C.N., Jr.; Fenimore, C.; Gleason, K.; Arndt, D. Improved historical temperature and precipitation time series for US climate divisions. J. Appl. Meteorol. Climatol. 2014, 53, 1232–1251. [Google Scholar] [CrossRef]
  76. Landerer, F.W.; Swenson, S. Accuracy of scaled GRACE terrestrial water storage estimates. Water Resour Res. 2012, 48, 1–11. [Google Scholar] [CrossRef]
  77. Long, D.; Longuevergne, L.; Scanlon, B.R. Global analysis of approaches for deriving total water storage changes from GRACE satellites. Water Resour. Res. 2015, 51, 2574–2594. [Google Scholar] [CrossRef] [Green Version]
  78. Jian, X.; Wolock, D.; Lins, H. WaterWatch-Maps, Graphs, and Tables of Current, Recent, and Past Streamflow Conditions; Report; United States Geological Survey: Reston, VA, USA, 2008; pp. 2327–6932. [Google Scholar]
  79. Xia, Y.; Mocko, D.; Huang, M.; Li, B.; Rodell, M.; Mitchell, K.E.; Cai, X.; Ek, M.B. Comparison and Assessment of Three Advanced Land Surface Models (CLSM–F2.5_NoahMP_CLM4.0) in Simulating Terrestrial Water Storage Components over the United States. J. Hydrometeorol. 2017, 18, 625–649. [Google Scholar] [CrossRef]
  80. Vermote, E.; Justice, C.; Csiszar, I.; Eidenshink, J.; Myneni, R.; Baret, F.; Masuoka, E.; Wolfe, R.E.; Claverie, M. NOAA CDR Program: NOAA Climate Data Record (CDR) of Normalized Difference Vegetation Index (NDVI); Version 4. [indicate subset used]; NOAA National Centers for Environmental Information: Asheville, NC, USA, 2014. [Google Scholar] [CrossRef]
  81. Jung, M.; Reichstein, M.; Bondeau, A. Towards global empirical upscaling of FLUXNET eddy covariance observations: Validation of a model tree ensemble approach using a biosphere model. Biogeosciences 2009, 6, 2001–2013. [Google Scholar] [CrossRef] [Green Version]
  82. Gray, J.E.; Allan, D.W. A method for estimating the frequency stability of an individual oscillator. In Proceedings of the 28th Annual Symposium on Frequency Control, Atlantic City, NJ, USA, 29–31 May 1974; pp. 243–246. [Google Scholar]
  83. Tavella, P.; Premoli, A. Estimating the instabilities of N clocks by measuring differences of their readings. Metrologia 1994, 30, 479–486. [Google Scholar] [CrossRef]
  84. Galindo, F.J.; Palacio, J. Post-processing ROA data clocks for optimal stability in the ensemble timescale. Metrologia 2003, 40, S237–S244. [Google Scholar] [CrossRef]
  85. Galindo, F.J.; Palacio, J. Estimating the instabilities of N correlated clocks. In Proceedings of the 31st Annual Precise Time and Time Interval (PTTI) Meeting, Dana Point, CA, USA, 7–9 December 1999; pp. 285–296. [Google Scholar]
  86. Torcaso, F.; Ekstrom, C.; Burt, E.; Matsakis, D. Estimating frequency stability and cross-correlations. In Proceedings of the 30th Annual Precise Time and Time Interval Meeting, Reston, VA, USA, 1–3 December 1998. [Google Scholar]
  87. Zhang, K.; Kimball, J.S.; Nemani, R.R.; Running, S.W. A continuous satellite-derived global record of land surface evapotranspiration from 1983 to 2006. Water Resour. Res. 2010, 46, 1–21. [Google Scholar] [CrossRef] [Green Version]
  88. Velpuri, N.M.; Senay, G.B.; Singh, R.K.; Bohms, S.; Verdin, J.P. A comprehensive evaluation of two MODIS evapotranspiration products over the conterminous United States: Using point and gridded FLUXNET and water balance ET. Remote Sens. Environ. 2013, 139, 35–49. [Google Scholar] [CrossRef]
  89. Zeng, N. Seasonal cycle and interannual variability in the Amazon hydrologic cycle. J. Geophys. Res. Atmos. 1999, 104, 9097–9106. [Google Scholar] [CrossRef]
  90. Mann, H.B. Non-parametric test against trend. Econometrica 1945, 13, 245–259. [Google Scholar] [CrossRef]
  91. Kendall, M.G. Rank Correlation Methods, 4th ed.; Charles Griffin: London, UK, 1975. [Google Scholar]
  92. Rahman, M.; Yunsheng, L.; Sultana, N. Analysis and prediction of rainfall trends over Bangladesh using Mann–Kendall, Spearman’s rho tests and ARIMA model. Meteorol. Atmos. Phys. 2017, 129, 409–424. [Google Scholar] [CrossRef]
  93. Fathian, F.; Dehghan, Z.; Bazrkar, M.H.; Eslamian, S. Trends in hydrological and climatic variables affected by four variations of the Mann-Kendall approach in Urmia Lake basin. Iran. Hydrol. Sci. J. 2016, 61, 892–904. [Google Scholar] [CrossRef] [Green Version]
  94. Rezaie, H.; Khalili, K.; Khanmohammadi, N.; Nazeri Tahrudi, M. Surface air temperature trends during the last 20 years in Iran. J. Appl. Environ. Biol. Sci. 2014, 4, 40–46. [Google Scholar]
  95. Yue, S.; Pilon, P.; Cavadias, G. Power of the Mann-Kendall and Spearman’s tests for detecting monotonic trends in hydrological series. J. Hydrol. 2002, 259, 254–271. [Google Scholar] [CrossRef]
  96. Haan, C.T. Statistical Methods in Hydrology; Iowa State University Press: Ames, IA, USA, 1977. [Google Scholar]
  97. De la Fuente, A.; Bing, N.; Hoeschele, I.; Mendes, P. Discovery of meaningful associations in genomic data using partial correlation coefficients. Bioinformatics 2004, 20, 3565–3574. [Google Scholar] [CrossRef] [Green Version]
  98. Thorndike, R.M. Correlational Procedures for Research; Gardner Press Inc.: New York, NY, USA, 1976. [Google Scholar]
  99. Wilcox, B.P.; Wood, M.K.; Tromble, J.T.; Ward, T.J. A hand-portable single nozzle rainfall simulator designed for use on steep slopes. J. Range Manag. 1986, 39, 375–377. [Google Scholar] [CrossRef]
  100. Long, D.; Pan, Y.; Zhou, J.; Chen, Y.; Hou, X.Y.; Hong, Y.; Scanlon, B.R.; Longuevergne, L. Global analysis of spatiotemporal variability in merged total water storage changes using multiple GRACE products and global hydrological models. Remote Sens. Environ. 2017, 192, 198–216. [Google Scholar] [CrossRef]
  101. Henn, B.; Painter, T.H.; Bormann, K.J.; McGurk, B.; Flint, A.L.; Flint, L.E.; White, W.; Lundquist, J.D. High-elevation evapotranspiration estimates during drought: Using streamflow and NASA airborne snow observatory SWE observations to close the upper tuolumne river basin water balance. Water Resour. Res. 2018, 54, 746–766. [Google Scholar] [CrossRef]
  102. Milly, P.C.D.; Dunne, K.A. Trends in evaporation and surface cooling in the Mississippi River basin. Geophys. Res. Lett. 2001, 28, 1219–1222. [Google Scholar] [CrossRef]
  103. Walter, M.T.; Wilks, D.S.; Parlange, J.-Y.; Schneider, R.L. Increasing evapotranspiration from the conterminous United States. J. Hydrometeorol. 2004, 5, 405–408. [Google Scholar] [CrossRef]
  104. Bateni, S.M.; Entekhabi, D. Relative efficiency of land surface energy balance components. Water Resour. Res. 2012, 48, W04510. [Google Scholar] [CrossRef]
  105. Shokri, N.; Lehmann, P.; Vontobel, P.; Or, D. Drying front and water content dynamics during evaporation from sand delineated by neutron radiography. Water Resour. Res. 2008, 44, W06418. [Google Scholar] [CrossRef] [Green Version]
  106. Shokri, N.; Lehmann, P.; Or, D. Characteristics of evaporation from partially wettable porous media. Water Resour. Res. 2008, 45, W02415. [Google Scholar] [CrossRef] [Green Version]
Figure 1. The land cover types and location of the 15 AmeriFlux stations over the contiguous United States (CONUS). DBF, EBF, and ENF represent deciduous broadleaf forest, evergreen broadleaf forest, and evergreen needleleaf forest, respectively.
Figure 1. The land cover types and location of the 15 AmeriFlux stations over the contiguous United States (CONUS). DBF, EBF, and ENF represent deciduous broadleaf forest, evergreen broadleaf forest, and evergreen needleleaf forest, respectively.
Remotesensing 12 00878 g001
Figure 2. Spatial distribution of 30-year averaged evapotranspiration (ET) from the Bayesian-based three-cornered hat (BTCH) method.
Figure 2. Spatial distribution of 30-year averaged evapotranspiration (ET) from the Bayesian-based three-cornered hat (BTCH) method.
Remotesensing 12 00878 g002
Figure 3. Maps of 30-year averaged normalized differential vegetation index (NDVI) and precipitation over the contiguous United States.
Figure 3. Maps of 30-year averaged normalized differential vegetation index (NDVI) and precipitation over the contiguous United States.
Remotesensing 12 00878 g003
Figure 4. Comparison of monthly BTCH-integrated, ensemble mean (EM), and ten parent evapotranspiration (ET) datasets with flux tower observations. There are 144, 336, and 300 samples for the deciduous broadleaf forest (DBF), evergreen broadleaf forest (ENF), and cropland, respectively.
Figure 4. Comparison of monthly BTCH-integrated, ensemble mean (EM), and ten parent evapotranspiration (ET) datasets with flux tower observations. There are 144, 336, and 300 samples for the deciduous broadleaf forest (DBF), evergreen broadleaf forest (ENF), and cropland, respectively.
Remotesensing 12 00878 g004
Figure 5. Comparison of annual BTCH-integrated, ensemble mean (EM), and ten parent evapotranspiration (ET) dataset with ET from water balance method from 1982 to 2011. There are 360 samples over the contiguous United States.
Figure 5. Comparison of annual BTCH-integrated, ensemble mean (EM), and ten parent evapotranspiration (ET) dataset with ET from water balance method from 1982 to 2011. There are 360 samples over the contiguous United States.
Remotesensing 12 00878 g005
Figure 6. Weight (%) of each evapotranspiration (ET) product in the Bayesian-based three-cornered hat (BTCH) method.
Figure 6. Weight (%) of each evapotranspiration (ET) product in the Bayesian-based three-cornered hat (BTCH) method.
Remotesensing 12 00878 g006
Figure 7. The spatial pattern of trends in air temperature (Ta), normalized differential vegetation index (NDVI), precipitation (P), and evapotranspiration (ET) over the contiguous United States from 1982 to 2011. The black points represent 95% level of significance.
Figure 7. The spatial pattern of trends in air temperature (Ta), normalized differential vegetation index (NDVI), precipitation (P), and evapotranspiration (ET) over the contiguous United States from 1982 to 2011. The black points represent 95% level of significance.
Remotesensing 12 00878 g007
Figure 8. Plots of 30-year-averaged evapotranspiration (ET) against air temperature (Ta), precipitation (P), and normalized differential vegetation index (NDVI) over the 12 river forecast centers (RFCs). The red line represents the fitted linear regression.
Figure 8. Plots of 30-year-averaged evapotranspiration (ET) against air temperature (Ta), precipitation (P), and normalized differential vegetation index (NDVI) over the 12 river forecast centers (RFCs). The red line represents the fitted linear regression.
Remotesensing 12 00878 g008
Figure 9. Partial correlation coefficients (R) between the annual evapotranspiration (ET) and air temperature (Ta), precipitation (P), and normalized differential vegetation index (NDVI).
Figure 9. Partial correlation coefficients (R) between the annual evapotranspiration (ET) and air temperature (Ta), precipitation (P), and normalized differential vegetation index (NDVI).
Remotesensing 12 00878 g009
Figure 10. Annual variations of BTCH-integrated evapotranspiration (ET), soil moisture, and precipitation anomalies for 12 river forecast centers (RFCs) from 1982 to 2011.
Figure 10. Annual variations of BTCH-integrated evapotranspiration (ET), soil moisture, and precipitation anomalies for 12 river forecast centers (RFCs) from 1982 to 2011.
Remotesensing 12 00878 g010
Figure 11. Time series of the total water storage anomaly (TWSA) retrievals over the Mississippi River Basin (MRB) from 1982 to 2011 (top). Comparison of the TWSA estimates with those of the Gravity Recovery and Climate Experiment (GRACE) from 2003 to 2011 (bottom).
Figure 11. Time series of the total water storage anomaly (TWSA) retrievals over the Mississippi River Basin (MRB) from 1982 to 2011 (top). Comparison of the TWSA estimates with those of the Gravity Recovery and Climate Experiment (GRACE) from 2003 to 2011 (bottom).
Remotesensing 12 00878 g011
Figure 12. Monthly variations of evapotranspiration (ET) estimates from Bayesian-based three-cornered hat (BTCH) for different time windows, and ensemble mean (EM). BTCH1, BTCH2, BTCH3, BTCH6, and BTCH12 denote 1-month, 2-month, 3-month, 6-month, and 12-month time windows, respectively. The black circles are observations from eddy covariance flux towers.
Figure 12. Monthly variations of evapotranspiration (ET) estimates from Bayesian-based three-cornered hat (BTCH) for different time windows, and ensemble mean (EM). BTCH1, BTCH2, BTCH3, BTCH6, and BTCH12 denote 1-month, 2-month, 3-month, 6-month, and 12-month time windows, respectively. The black circles are observations from eddy covariance flux towers.
Remotesensing 12 00878 g012
Figure 13. Comparison of evapotranspiration (ET) estimates (1982 to 2011) from the ensemble mean (EM) and Bayesian-based three-cornered hat (BTCH) methods for different time windows.
Figure 13. Comparison of evapotranspiration (ET) estimates (1982 to 2011) from the ensemble mean (EM) and Bayesian-based three-cornered hat (BTCH) methods for different time windows.
Remotesensing 12 00878 g013
Figure 14. The uncertainties of evapotranspiration (ET) products from the ensemble mean (EM) and Bayesian-based three-cornered hat (BTCH) methods with different time windows over the contiguous United States.
Figure 14. The uncertainties of evapotranspiration (ET) products from the ensemble mean (EM) and Bayesian-based three-cornered hat (BTCH) methods with different time windows over the contiguous United States.
Remotesensing 12 00878 g014
Table 1. Characteristics of the 15 AmeriFlux stations over the contiguous United States.
Table 1. Characteristics of the 15 AmeriFlux stations over the contiguous United States.
IDSite NamePeriodLocation (N°, W°)Elevation (m)Land Cover
US-BarBartlett Experimental Forest2004–200544.06, -71.28272DBF
US-MOzMissouri Ozark2004–200638.74, -92.20219DBF
US-MMSMorgan Monroe State Forest2000–200439.32, -86.41275DBF
US-OhoOhio Oak Openings2004–200541.55, -83.84230DBF
US-BloBlodgett Forest2000–200638.89, -120.631315ENF
US-SP3Donaldson2000–200429.75, -82.1650ENF
US-FufFlagstaff Unmanaged Forest2005–200635.08, -111.762180ENF
US-Me2Metolius Pine2003–200544.45, -121.551253ENF
US-NR1Niwot Ridge2000–200340.03, -105.543050ENF
US-WrcWind River2000–200645.82, -121.95371ENF
US-ARMARM Southern Great Plains Main2003–200636.60, -97.48314Cropland
US-Bo1Bondville2000–200640.00, -88.29219Cropland
US-Ne1Mead Irrigated2001–200541.16, -96.47361Cropland
US-Ne2Mead Irrigated Rotation2002–200541.16, -96.47362Cropland
US-Ne3Mead Rainfed2001–200541.18, -96.44363Cropland
Table 2. Summary of regional datasets over the contiguous United States.
Table 2. Summary of regional datasets over the contiguous United States.
DatasetData SourceSpatial, Temporal ResolutionSpatial, Temporal CoverageReferences
P & TaNCEI4.16 km, monthlyCONUS, 1979–2012 [74,75]
RUSGS~2°, dailyCONUS, 1982–2011 [78]
TWSAGRACE~1°, monthlyGlobal, 2003–2016 [76]
SM & ETCLM412.5 km, monthlyCONUS, 1980–2014 [79]
NDVIAVHRR0.05°, dailyGlobal, 1981–2018 [80]
SE ETGFET50 km, monthlyGlobal, 1982–2011 [10,81]
RSM ETGLEAM25 km, dailyGlobal, 1982–2017 [37]
NLDAS-2 ETNoah2812.5 km, monthlyCONUS, 1979–2013 [69,70]
SAC
Mosaic
VIC403
NLDAS-testbed ETCLSM2512.5 km, monthlyCONUS, 1979–2013 [79]
Noah36
NoahMP36
VIC412
SE, statistical or empirical models; RSM, remotely-sensed model; and NLDAS, North American Land Data Assimilation System.

Share and Cite

MDPI and ACS Style

He, X.; Xu, T.; Xia, Y.; Bateni, S.M.; Guo, Z.; Liu, S.; Mao, K.; Zhang, Y.; Feng, H.; Zhao, J. A Bayesian Three-Cornered Hat (BTCH) Method: Improving the Terrestrial Evapotranspiration Estimation. Remote Sens. 2020, 12, 878. https://doi.org/10.3390/rs12050878

AMA Style

He X, Xu T, Xia Y, Bateni SM, Guo Z, Liu S, Mao K, Zhang Y, Feng H, Zhao J. A Bayesian Three-Cornered Hat (BTCH) Method: Improving the Terrestrial Evapotranspiration Estimation. Remote Sensing. 2020; 12(5):878. https://doi.org/10.3390/rs12050878

Chicago/Turabian Style

He, Xinlei, Tongren Xu, Youlong Xia, Sayed M. Bateni, Zhixia Guo, Shaomin Liu, Kebiao Mao, Yuan Zhang, Huaize Feng, and Jingxue Zhao. 2020. "A Bayesian Three-Cornered Hat (BTCH) Method: Improving the Terrestrial Evapotranspiration Estimation" Remote Sensing 12, no. 5: 878. https://doi.org/10.3390/rs12050878

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop