1. Introduction
Evapotranspiration (ET) represents the total evaporation and transpiration of plants from terrestrial and oceanic surfaces to the atmosphere [1]. ET is a prominent component of the hydrologic cycle, energy exchange, and carbon cycle. In recent years, several global ETp have been developed to estimate the distribution of ETa, including remote sensing-based methods, land surface models, surface energy balance, and reanalysis products [2,3,4,5,6]. These ETp significantly contributed to our knowledge of hydrological components [7]. However, these methods are limited by sparse measurement stations, as well as some uncertainties [8], especially with regard to surface energy balance models. The surface energy balance model, based on satellite images and remote sensing data, is a powerful and accurate method for calculating ET [8,9,10,11,12,13,14]. However, accurate measurements depend on the reliability of the input data, especially the remote sensing data at basin scale. The input data to calculate ETa of the Tibetan Plateau are limited by sparse measurement stations, as well as some uncertainties [15], especially in high-altitude mountains [6,16]. Long et al. [17] evaluated the uncertainty in evapotranspiration from land surface modeling (5 mm/month). Xue et al. [18] compared the annual evapotranspiration of the upper Yellow River and Yangtze River basins with bias −10.8–119.8 mm/yr and −120.9–77 mm/yr for four ETp [2,3,4]. There is an urgent need to evaluate ETp in areas with limited observation stations (e.g., the Tibetan Plateau).
Over the past decades, hydrologists and meteorologists have been making efforts to quantitatively evaluate ETa [16,19,20,21,22]. Although many ETp can be used to estimate actual ET on the Tibetan Plateau, the uncertainty is high [23,24]. The traditional water balance method is a useful tool to calculate ETa at regional scale [17,20,25,26]. In previous studies, ETa was estimated as a residual of precipitation (P) minus runoff (R) at regional scale, and the terrestrial water storage (TWS) changes were often neglected [27,28]. The traditional water balance method cannot be used to estimate ETa at monthly or finer temporal scales. The Gravity Recovery and Climate Experiment (GRACE) satellite [29,30] provides a relatively accurate TWS estimation at basin scale. The calculated ETa that uses the water balance of the GRACE TWS was thought to be accurate [17,22,25]. Therefore, many methods have been proposed for correcting ETp based on the water balance method with GRACE data.
Gamma distribution is an effective method to correct the ETp [18,20,25]. Li et al. [20] used the gamma distribution method to evaluate the existing ETp on the Tibetan Plateau at monthly scale. The correction removed the biases and made the root-mean-square errors (RMSEs) decrease in comparison with the original ETp. But this method has some inaccuracies. It can only correct the systematic error caused by the annual change of TWS [20]. Moreover, the correction of ETp by this method is complicated.
In this study, we propose a simple and efficient method, the ratio bias correction method, to correct four ETp in seven sub-basins on the Tibetan Plateau. First, we calculated ET by using the water balance method with the GRACE TWS and used it as the reference for correction of the different ETp. Second, we used the proposed ratio bias correction method to correct the ETp with the help of the ETref. The gamma distribution bias correction method was also used to correct the ETp. A reasonable and accurate corrected ET on the Tibetan Plateau was obtained after the correction.
2. Materials and Methods
2.1. Study Area
Monthly ETa across the Tibetan Plateau was evaluated, including five outflow basins (Yangtze, Yellow, Yarlung Zangbo, Mekong, and Salween) and two endorheic basins (Inner Plateau and Qaidam Basin), as shown in Figure 1. Overview of the seven sub-basins was shown in Table 1 (Data from the National Meteorological Information Centre and GLDAS 2.1 Noah). The total area of the seven sub-basins is approximately 206 × 104 km2 and covers about 85% of the entire plateau. The Tibetan Plateau is regarded as the “roof of the world” [31]. As it is the source region of the great rivers of Asia, it has also been referred to as the “Asian water tower” [32]. The study areas are dominated by the Indian monsoon and westerlies [33]. The precipitation on the Tibetan Plateau decreases from southeast to northwest [34]. The precipitation of the Yarlung Zangbo basin is largest (73.9 mm/month), and the Qaidam is smallest (13.8 mm/month) (Table 1). The ET on the Tibetan Plateau shows great values (more than 600 mm/yr) in the east and south and small values (less than 50 mm/yr) in the west and north [34,35,36]. The seasonal variation of the ET on the Tibetan Plateau is generally characterized by small values in the cold season and great values in the warm season [37]. The spatial distribution of vegetation cover was obtained from a digitized Atlas of China’s Vegetation (
2.2. Data
Four global ETp were assessed, and Table 2 shows the details of the four ETp. ET from a moderate resolution imaging spectroradiometer (MODIS) was calculated by the Penman–Monteith method (hereafter MET) [3]. ET from Zhang et al. [4] was produced based on the Global Inventory Modelling and Mapping Studies (GIMMS) Normalized Difference Vegetation Index (NDVI) with the modified Penman–Monteith method (hereafter GIET). ET from Chen et al. [41] was produced by an algorithm based on the surface energy balance system (SEBS) (hereafter SET). ET form the Global Land Data Assimilation System (GLDAS) with Noah Land Surface was referred to as GET [2].
A gridded daily precipitation dataset was adopted in this study. The dataset is interpolated using observation meteorological stations and DEM data. The Assessment Report was conducted by the National Meteorological Information Centre (NMIC). The dataset can explain the spatial-temporal changes of precipitation with only minimal errors [42]. The gridded data sets have a high correlation with observation stations, which are widely used in China, especially for the Tibetan Plateau [43,44,45,46].
GLDAS-2.1 Noah monthly river discharge (R) was used in this study. The spatial resolution is 0.25° × 0.25°. The dataset is widely used for the Tibetan Plateau with acceptable errors [46].
The main goal of GRACE is to measure TWS in basin scale [30]. The RL05 gridded data obtained from the Center for Space Research (CSR) of University of Texas, the Jet Propulsion Laboratory (JPL), and the GeoForschungsZentrum (GFZ) were used to estimate TWS. The spatial resolution of the data was 1°from 2003 to 2014. Due to factors such as satellite orbital adjustment, some months of TWS data are missing. A simple linear method was used for data interpolation [20,22]. The arithmetic mean value of TWS from the three agencies after interpolation was adopted.
Monthly time series from the mean values of the precipitation, runoff, and the TWS anomaly during 2003–2014 are shown in Figure 3. The data summary was shown in Table 2. All the data were sampled to 0.05° on average to better capture the data changes at the basin boundary of the seven sub-basins. The advantage of regirding coarser resolution to the high resolution is to eliminate errors caused by the boundaries of sub-basins [47]. In this way, uncertainties caused by sub-basin boundaries would be reduced [48].
2.3. Methods to Estimate ET
2.3.1. Calculation of ETref
The four actual ET products was represented by ETp. The traditional water balance method with GRACE satellite data was used to estimate ET (hereafter ETref) for the sub-basins [17,25]:
(1)
where represents precipitation (mm), represents river runoff (mm), and is the change in TWS (mm) estimated by reconstructing GRACE satellite data. TWS contains: the soil moisture, snow water equivalent, ice, canopy water, and groundwater. R is zero in the Inner Plateau and Qaidam Basin. The calculated ETref was used as the reference for correction of the different ETp.2.3.2. Ratio Correction of ETp
The ratio correction method is mainly based on the traditional water balance method. The ratio of reference ET to the product ET (i.e., r in Equation (2)) was used for correction. In this paper, two timescales were used: monthly scale and annual scale. Schematic diagram of ratio correction is shown in Figure 4.
(2)
where represents the month, , , and are monthly average value during the 2003–2014.A schematic diagram of the ratio bias correction method is shown in Figure 4. This method is used to correct the ETp by the ratio of and . The monthly overestimates and underestimates are corrected using the monthly ratio of factors.
2.3.3. Gamma Distribution Correction of ETp
Gamma distribution is a continuous probability function, which is a very important distribution [49]. The gamma distribution fits the meteorological factors very well [18,25,50]. The gamma distribution can be expressed as [49]:
(3)
where is the shape of the function, is the scale of the function; is the gamma function.The gamma distribution bias correction method has two steps [18,20,25]. First, the monthly ETp and ETref were fitted by the gamma cumulative distribution, and , and , were obtained Then the inverse function () was used to calculate the ET with and (Equation (4)). Therefore, the monthly ETp was corrected by filling the gap between the two gamma cumulative distribution functions (Figure 5) [20].
(4)
where represents the first monthly corrected ET.Second, the annual bias was removed using the following equation [20]:
(5)
where is the corrected ET, and is the annual and monthly ET of the first step.2.3.4. Uncertainty in Water Balance
All the components in the water balance were obtained from independent data sources, the uncertainties of can be combined by summing uncertainties in each variable in quadrature [51]:
(6)
where σ is the estimated uncertainty of the corresponding variable.Uncertainty in the precipitation product was estimated in the assessment report, which was evaluated by the NMIC [42]. In the report, the error in precipitation was 5% for summer and 3% for other seasons. For the monthly GLDAS runoff data, the error was less than 5%, with a correlation coefficient greater than 0.90 on the Tibetan Plateau [46]. In this study, we adopted 5% for the uncertainty assessment. Uncertainties in GRACE TWS were estimated from variability among the three RL05 TWS gridded data. We used the standard error of the three TWS data to represent the uncertainty [52]. The uncertainties were converted to mm/month using the average monthly data of long time series. The uncertainties of different components were summarized in Table 3 in the sub-basins.
2.3.5. Evaluation Criteria
The deviation (DE), root-mean-square error (RMSE), and correlation coefficient (CR) were used as test standard
(7)
(8)
(9)
where is the number of months, represents the monthly or , and represents the monthly , represents the monthly mean or , and represents the monthly mean .3. Results
3.1. Evaluation of ETp
Figure 6 and Figure 7 show the domain-averaged values of the four ETp and the ETref in the seven sub-basins. The ETref and ETp is maximum in summer and minimum in winter. The four ETp are significantly different from each other. The ETref in the Yarlung Zangbo Basin is the greatest among the seven sub-basins, with an annual mean ET of 659 mm. The annual mean ET of the Qaidam Basin is the smallest, with an annual mean ET of 143 mm. The annual mean ETref in other sub-basins ranges from 246 to 549 mm. The ETp overestimated winter ET in almost all the sub-basins and underestimated summer ET in all the sub-basins except the Yellow River Basin.
In general, the four ETp are the most accurate with regard to the Yellow River and the worst in terms of the two endorheic basins. GET and GIET are the most accurate in estimating ET, followed by MET. SET is the worst at reproducing monthly ET in the ETp. GET is the best at reproducing monthly variations in the source of Yellow, Yangtze, Salween, and the Qaidam Basin. GIET was best for the source of Mekong, Yarlung Zangbo Basin and the Inner Plateau. There is no special advantage of MET and SET in the estimation of ET in the seven sub-basins.
3.2. Correction of ETp
The gamma distribution correction method and the ratio bias correction method were used to correct the four ETp. In order to compare the correction effects of the two correction methods, the four ETp before and after bias correction are compared in the seven sub-basins (Figure 8). The DE, RMSE, and CR values are shown in Table 4. After the gamma distribution and the ratio bias correction, the four ETp in the seven sub-basins showed greater CR with the ETref, and smaller RMSE and DE values. Table 4 shows that the ratio bias correction method has the smallest DE and RMSE values and the greatest CR value. These statistical values show that the proposed ratio bias correction method performs better than the gamma distribution correction method. Moreover, the ratio bias correction method is simpler and more efficient to correct the ETp.
As shown in Table 4 and Figure 8, the original ETp was not in good agreement with the ETref. In terms of DE, the original ETp has the largest deviation, up to 13.61 mm, while the deviations of the corrected ETp are all less than 0.03 mm. The DE of the monthly ratio correction is the smallest, which is only 0.01 mm. In terms of RMSE, the original ETp has the largest deviation (up to 17.6 mm), and the deviation of monthly ratio correction is also the smallest, which is only 10.1 mm. The monthly ET after the ratio correction has the highest correlation with the ETref (up to 0.97), while the gamma distribution bias correction has the lowest correlation (0.91). The proposed method reduced the deviations and the ETp became more accurate to represent the regional ET. It is simpler and more effective in correcting the four ETp compared with to gamma distribution bias correction method.
3.3. Spatial Distribution and Trend of ET over the Tibetan Plateau
Considering all the criteria, the monthly ratio correction method was adopted to obtain the optimal ET. We use arithmetic averaging to incorporate the four ETp. The average corrected ETp was combined to draw the distribution of ET on the Tibetan Plateau (Figure 9). Figure 9 shows the corrected ET distribution in the sub-basins on the Tibetan Plateau. The ET decreased from 1600 mm in the south to 26 mm in the north. The spatial distribution of ET is consistent with the distribution of precipitation. The distribution of ET is consistent with the result of Gao et al. [52], which was estimated using gauging stations. The ET of the Yarlung Zangbo Basin is the greatest among the seven sub-basins, ranging from 150 to 1605 mm. The ET is the smallest in the middle reach of the basin and greatest in the downstream. ET in the Qaidam Basin is the smallest, which is 150 mm. The average values of ET in the source regions of Yangtze, Salween, and Mekong River are almost the same at approximately 550 mm. The average ET of the Yellow River source region is 438 mm. The ET in both the Yangtze River source region and the Yellow River source region decreases from southeast to northwest. The distribution of ET of the Inner Plateau and Qaidam Basin also shows a similar pattern. The Inner Plateau is the largest region, located in the central area of the Tibetan Plateau. This region is less affected by monsoons [33], resulting in relatively small ET with an average value of approximately 200 mm. The ET decreases from 400 mm in the south and southeast to 80 mm in the north and northwest.
The trends on the Tibetan Plateau were estimated using the least square method [18,53]. The arithmetic average of the four corrected ETp was used to draw the distribution trend of ET on the Tibetan Plateau (Figure 10). The ET on the Tibetan Plateau increased from 2003 to 2014 with an average value of 1.2 mm/yr. The trend of ET decreased from 17 mm/yr in the southeast to −8 mm/yr in the northwest. The trend of ET in the Inner Plateau was decreasing among the seven sub-basins, while the others were increasing from 2003 to 2014. But the Inner Plateau has only a slight decreasing trend (−0.15 mm/yr). The trend in the Salween is the greatest among the seven sub-basins at 2.88 mm/yr. The trend in the Yangtze, Mekong, and Yarlung Zangbo Basins are similar, at about 2.5 mm/yr. The trends in the Yellow and Qaidam are 1.32 mm/yr and 0.50 mm/yr, respectively. The significance analysis shows that ET trends in the Inner Plateau, Qaidam, west of Yarlung Zangbo Basin, and Yellow River source region have not been identified (p > 0.1). The trends in the Salween, Yangtze, Mekong, and east of Yarlung Zangbo Basin are significant (p < 0.05).
4. Discussion
4.1. Uncertainty of ETref
The ETref (derived from the water balance) is to be taken as a reference. The uncertainty of ETref is important, as this is a basis to correct ETp and is related to the reliability of the corrected results. Table 3 shows the uncertainties of P, R, and TWS. The uncertainties of ETref vary in the seven sub-basins (Table 3 and Table 5). The annual uncertainties of ETref in the five outflow basins (Yangtze, Yellow, Yarlung Zangbo, Mekong, and Salween) are less than 6%. But the annual uncertainties of ETref in the two endorheic basins (Inner Plateau and Qaidam Basin) are 19% and 30%. The reason for this is that the vegetation cover in these areas is very minimal and the quality of remote sensing data is poor [38,44,52].
We must also admit that the estimates of uncertainties are weak according to Li et al. [51] and the national technical report [42]. The uncertainty may not be very precise because there are few observations on the Tibetan Plateau. But the uncertainty can represent the relative differences among the seven sub-basins. We can use more precise data or integration of several reliable products to eliminate data uncertainty [17,22].
4.2. The Monthly Coefficients of Ratio Bias Correction
The ratio bias correction coefficients for the most optimal corrected ETp in each sub-basin are shown in Figure 11. The result shows different performances in each sub-basin and each month. In addition to the Inner Plateau and the Yellow River, the correction coefficients in spring and summer (March–August) are greater than 1, indicating that the original ETp would overestimate ETa in hot weather. All the correction coefficients are less than 1 in autumn and winter, indicating that the original ETp underestimated ET in cold weather for each sub-basin (Figure 9). The most significant overestimations occurred in the Qaidam Basin, the Yarlung Zangbo Basin, and the Salween River from April to June. The correction coefficients are much greater than 1. This may be related to the climate features of these basins. The climate in the Qaidam Basin is very dry, and the ET is relatively small.
Uncertainties in the ETp come from the input of meteorological and surface cover data [18]. It is difficult to calculate ET in the Qaidam Basin due to the dry climate, which leads to a large error in ETp. In the southwest Tibetan Plateau, clouds are formed due to the water vapor. The overestimations of ET in the Yarlung Zangbo Basin and the source of the Salween River Basin are affected by clouds. The ETp for the source regions of the Yellow River and the Mekong River most seriously underestimated the ET, with the correction coefficients less than 1 in all seasons. The correction coefficient of December was only about 0.2 in these two sub-basins. The freezing phenomenon in cold weather may be the main reason for the underestimation, because most remote sensing data have difficulty capturing phenomenon of freezing [54]. Other sub-basins were characterized by slight overestimation before monsoon and underestimation after monsoon (Figure 11).
4.3. Limitations
The monthly ratio correction method was adopted as an effective method to correct the ET. The corrected ETp are more reasonable and accurate than the original ETp. But we should also be fully aware of the following limitations in the proposed monthly ratio correction method.
The water balance method with a corrected TWS was used to calculate the monthly ET as the ETref. Although the corrected results are reliable, the uncertainty in TWS is relatively large [17,18]. ETref was calculated using the water balance method with the GRACE TWS, whereas the spatial resolution of the TWS data is 1° and the temporal scale is monthly [30]. The ETref is relatively accurate on the basin scale, and has been widely used to evaluate the change of global ET [22]. However, the resolution of this data is too coarse to capture the spatial variation of evaporation in small catchments [51]. The proposed correction should be carried out in large basins [20]. The uncertainty caused by the boundary effect should be considered when applying this method in small basins [17].
The input data (P and R) should also be considered carefully to calculate the ETref. The reliability of ETref depends on the accuracy of P and R. In this study, the estimates of uncertainty is weak according to Li et al. [51] and the national technical report [42]. The integration of several reliable products will improve the accuracy of input data (P and R) [17,22,51].
5. Summary and Conclusions
This study presents an evaluation of four ETp in seven sub-basins in the Tibetan Plateau with the ETref calculated by the water balance method. Obvious seasonal cycles were found in the ETref and ETp. The ET was at maximum in summer and minimum in winter over the period of 2003–2014. The four ETp are significantly different from the ETref, regardless of time series or monthly average.
Two correction methods were compared to correct the four ETp. The proposed ratio bias correction method is simpler and more effective in correcting the four ETp compared with the gamma distribution bias correction method. The corrected ET improved the correlation coefficients, and reduced the biases and RMSEs.
The average corrected ETp, which was obtained from the arithmetic mean of the four corrected ETp, was combined to draw the distribution and trend of ET in the Tibetan Plateau. The ET on the Tibetan Plateau decreases from southeast to northwest. The average value of ET is 380 mm/yr ranging from 26 mm/yr to 1600 mm/yr. There is a general increasing trend of ET in the Tibetan Plateau, with an average value of 1.2 mm/yr over the period of 2003–2014.
Conceptualization, Y.F. and X.K.; methodology, Y.F.; software, Y.F.; validation, X.K.; formal analysis, S.L. (Sihai Liang); investigation, S.L. (Sihai Liang) and Y.F.; resources, X.K.; data curation, S.L. (Sihai Liang); writing—original draft preparation, Y.F.; writing—review and editing, S.L. (Suning Liu), Y.Y. and Y.X.; visualization, Y.F.; supervision, X.K.; project administration, C.Z.; funding acquisition, X.K. All authors have read and agreed to the published version of the manuscript.
This research was supported by the National Natural Science Foundation of China (Grant No. 91747204, 92047202), High-level Special Funding of the Southern University of Science and Technology (Grant No. G02296302, G02296402), and China Geological Survey (DD20191006).
The data that support the findings of this study are available upon request from the authors.
The authors declare no conflict of interest.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Figure 2. Distribution of vegetation types on the Tibetan Plateau (provided by http://westdc.westgis.ac.cn, accessed date: 1 July 2021).
Figure 3. Monthly time series from the mean values of the precipitation(mm/month), runoff (mm/month), and the TWS anomaly (mm/month) during 2003−2014. (a) Yellow River source region; (b) Yangtze River source region; (c) Salween River source region; (d) Mekong River source region; (e) Yarlung Zangbo basin; (f) Qaidam Basin; and (g) Inner Plateau.
Figure 6. Monthly time series from the mean values of the four ETp(mm) and the ETref (mm) during 2003–2014. (a) Yellow River source region; (b) Yangtze River source region; (c) Salween River source region; (d) Mekong River source region; (e) Yarlung Zangbo Basin; (f) Qaidam Basin; and(g) Inner Plateau.
Figure 7. Seasonal variations of the ETref (mm) and the ET products (mm) in the seven sub-basins averaged during 2003–2014. (a) Yellow River source region; (b) Yangtze River source region; (c) Salween River source region; (d) Mekong source region; (e) Yarlung Zangbo Basin; (f) Qaidam Basin; and(g) Inner Plateau.
Figure 8. Comparison of the monthly ETp with the ETref before and after correction for the seven sub-basins on the Tibetan Plateau The vertical axis represents ETp before correction, after ration correction, and after gamma correction, respectively.
Figure 9. Distribution of average corrected ET in the sub-basins on the Tibetan Plateau. (a) The spatial distribution of average corrected ET, (b) The statistics of average corrected ET in each sub-basin.
Figure 10. Distribution of corrected ET trends in the sub-basins on the Tibetan Plateau. (a) The spatial distribution of corrected ET trends, stippling denotes regions where the trend is significant at the 90% level (p < 0.1, t-test). (b) The statistics of corrected ET trends in each sub-basin. The * represents p < 0.1, and ** represents p < 0.05.
Figure 11. The coefficients of the monthly ratio bias correction in the seven sub-basins.
Overview of the seven sub-basins.
Sub-Basin | Area (104 km2) | P (mm/Month) | R (mm/Month) | Main Vegetation Types |
---|---|---|---|---|
Yellow | 21.4 | 40.6 | 3.3 | Meadow/Shrub |
Yangtze | 43.5 | 54.5 | 9.8 | Meadow/Shrub |
Yarlung Zangbo | 25.3 | 73.9 | 21.3 | Meadow/Steppe/Forest/Alpine vegetation |
Salween | 10.8 | 59.1 | 13.2 | Meadow/Shrub |
Menkon | 8.1 | 53.6 | 6.7 | Meadow/Shrub |
Qaidam | 24.7 | 13.8 | / | Sparse vegetation |
Inner Plateau | 69.3 | 20.6 | / | Steppe/Meadow |
Overview of the datasets.
Datasets | Category | Spatial Resolution | Time Range | Frequency | References |
---|---|---|---|---|---|
P | Interpolation with observations | 0.1° | 1980–2019 | Monthly | [ |
R | Land surface model | 0.25° | 2000–2016 | Monthly | [ |
TWS | Remote sensing | 1° | 2003–2017 | Monthly | [ |
MET | Penman–Monteith | 0.05° | 2000–2015 | Monthly | [ |
GIET | Modified Penman-Monteith | 8 km | 1982–2015 | Monthly | [ |
SET | Surface energy balance system | 0.1° | 2001–2015 | Monthly | [ |
GET | land surface model | 0.25° | 1948–2015 | Monthly | [ |
Uncertainty Estimates of Different Components for the sub-basins.
Sub-Basin | σPre (mm/Month) | σR |
σΔTWS |
σETref |
||||
---|---|---|---|---|---|---|---|---|
Spring | Summer | Autumn | Winter | Mean | ||||
Yellow | ±0.22 | ±2.70 | ±2.58 | ±0.37 | ±1.47 | ±0.16 | ±1.4 | ±2.0 |
Yangtze | ±0.52 | ±4.98 | ±2.73 | ±0.25 | ±2.12 | ±0.51 | ±1.7 | ±2.8 |
Yarlung Zangbo | ±1.08 | ±6.33 | ±3.55 | ±0.36 | ±2.83 | ±1.13 | ±2.8 | ±4.1 |
Salween | ±0.80 | ±5.40 | ±2.75 | ±0.29 | ±2.31 | ±0.68 | ±2.5 | ±3.5 |
Mekong | ±0.43 | ±3.44 | ±3.42 | ±0.49 | ±1.95 | ±0.36 | ±1.9 | ±2.7 |
Qaidam | ±0.12 | ±1.36 | ±0.62 | ±0.07 | ±0.54 | / | ±2.0 | ±2.1 |
Inner Plateau | ±0.25 | ±1.03 | ±1.42 | ±0.18 | ±0.72 | / | ±2.1 | ±2.2 |
Bias (mm/month), RMSE (mm/month), and CORR of the correction methods in comparison with the reference ET (mm/month).
Correction |
Product ET | Gamma | Monthly Ratio | |
---|---|---|---|---|
Criteria | ||||
DE | −13.61 | −0.03 | 0.01 | |
RMSE | 17.6 | 14.2 | 10.1 | |
CR | 0.95 | 0.91 | 0.97 |
Smaller DE and RMSE and larger CR are in bold.
The comparison of the average annual ETp, ETref, and corrected ET of the sub-basins.
Sub-Basin | ETp (mm/yr) | ETref |
Corrected ET |
|||
---|---|---|---|---|---|---|
GET | GIET | MET | SET | |||
Yellow | 440 | 604 | 498 | 330 | 445 ± 24 | 438 |
Yangtze | 506 | 638 | 540 | 462 | 535 ± 20.4 | 528 |
Yarlung Zangbo | 389 | 563 | 584 | 411 | 664 ± 33.6 | 650 |
Salween | 369 | 556 | 498 | 426 | 571 ± 30 | 550 |
Mekong | 465 | 623 | 506 | 466 | 574 ± 22.8 | 552 |
Qaidam | 137 | 161 | / | 90 | 124 ± 24 | 150 |
Inner Plateau | 310 | 331 | / | 163 | 83 ± 25.2 | 200 |
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Abstract
Evapotranspiration (ET) is one of the important components of the global hydrologic cycle, energy exchange, and carbon cycle. However, basin scale actual ET (hereafter ETa) is difficult to estimate accurately. We present an evaluation of four actual ET products (hereafter ETp) in seven sub-basins in the Tibetan Plateau. The actual ET calculated by the water balance method (hereafter ETref) was used as the reference for correction of the different ETp. The ETref and ETp show obvious seasonal cycles, but the ETp overestimated or underestimated the ET of the sub-basins in the Tibetan Plateau. A simple and effective method was proposed to correct the basin-scale ETp. The method was referred to as ratio bias correction, and it can effectively remove nearly all biases of the ETp. The proposed method is simpler and more effective in correcting the four ETp compared with the gamma distribution bias correction method. The reliability of the ETp is significantly increased after the ratio bias correction. The ratio bias correction method was used to correct the ETp in the seven sub-basins in the Tibetan Plateau, and regional ET was significantly improved. The results may help improve estimation of the ET of the Tibetan Plateau and thereby contribute to a better understanding of the hydrologic cycle of the plateau.
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1 School of Environmental Science and Engineering, Southern University of Science and Technology, 1088 Xueyuan Ave, Shenzhen 518055, China;
2 School of Water Resources and Environment, China University of Geosciences (Beijing), 29 Xueyuan Road, Beijing 430074, China;
3 Department of Earth and Environmental Science, School of Human Settlements and Civil Engineering, Xi’an Jiaotong University, Xi’an 710000, China;
4 Key Laboratory of Surficial Geochemistry, Ministry of Education, School of Earth Sciences and Engineering, Nanjing University, Nanjing 210093, China;