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Article

Comparing Simulated Jujube Evapotranspiration from P–T, Dual Kc, and S–W Models against Measurements Using a Large Weighing Lysimeter under Drip Irrigation in an Arid Area

College of Hydraulic and Civil Engineering, Xinjiang Agricultural University, Urumqi 830052, China
*
Author to whom correspondence should be addressed.
Agriculture 2023, 13(2), 437; https://doi.org/10.3390/agriculture13020437
Submission received: 31 December 2022 / Revised: 7 February 2023 / Accepted: 10 February 2023 / Published: 13 February 2023
(This article belongs to the Section Agricultural Water Management)

Abstract

:
Accurate prediction of orchard evapotranspiration (ET) can optimize orchard water management. Based on the jujube (Zizyphus jujuba), ET was continuously measured from 2016 to 2019 using a large weighing lysimeter; the actual jujube ET was compared with the ET simulated with the Priestley–Taylor (P–T), Dual Crop Coefficient (Dual Kc), and Shuttleworth–Wallace (S–W) models, to verify the accuracy of the three models. The results showed that, from 2016 to 2019, the whole growth period of jujube ET was 532–592 mm and the crop coefficient was 0.85–0.93. The basal crop coefficients of the calibrated Dual Kc model were 0.4, 1.0, and 0.5 at the initial, middle, and ending growth stages, respectively. The overall simulation error of the Dual Kc model was low, and simulations were stable during the four years of the study. However, because of rough estimation the water stress coefficient (Ks) simulation accuracy will be reduced in the case of serious water shortage. The simulation error of the S–W model was greater than the simulation error of the Dual Kc model, and the simulations were unstable and vulnerable to interannual changes. The simulation error of the traditional P–T model was large. When the parameter “α” solution method was improved, the simulation accuracy was significantly improved, and the P–T model’s simulation accuracy was only slightly lower than that of the Dual Kc model. However, the model was easily affected by changes in net radiation and air temperature. Therefore, the Dual Kc model is recommended for estimating the ET of young jujube trees in arid areas.

1. Introduction

Jujube (Zizyphus jujuba) is the most important horticultural crop in Xinjiang, China. This area is the major jujube producer in the world, covering 476,250 ha and producing a crop of 3,470,114 tons [1]. The quality of the fruit coming from this area is highly appreciated in the domestic and international markets. These facts reveal the economic importance of this crop for the region, and its production is the main source of rural employment and economic income in the area. However, Xinjiang is located in the hinterland of Eurasia. The abundant light and heat resources not only improve the quality of jujube fruit, but also increase surface evapotranspiration intensity that can result in a serious shortage of water resources. In order to ensure the yield and quality of crops in this area, local farmers have continuously increased the amount of water applied to crops. Agricultural water consumption accounts for 89.45% of the total water supply in Xinjiang, putting severe pressure on the normal water demands of various other industries [1]. This situation has led to a conflict of interests between agriculture and other industries, and demands management solutions for sustainable jujube production in this environmentally sensitive area.
In this sense, jujube production must employ proper irrigation management that is based on accurate assessment of jujube water requirement in this area. The dual crop coefficient (Dual Kc) model is one of the most frequently used models employed to evaluate and predict crop water demand [2]. This model clearly describes the evapotranspiration (ET) process and its influencing factors by considering aerodynamic and vegetation characteristics, and determines the crop coefficient [3]. However, crop coefficient is highly dependent on the cultivar, local climatic conditions, and crop management, among other factors [4]. Therefore, the Food and Agriculture Organization has determined basal crop coefficients for the main crops cultivated by human beings according to the climatic conditions of semi-humid areas [5], and these have been used to improve the applicability of the Dual Kc model around the world. However, Tian et al. [6] reported that arid climates significantly increase the ET and Kcb of cotton (Gossypium hirsutum L.), especially under extremely high temperature conditions. Under arid climate conditions, the basal crop coefficients (Kcb) of cotton for the initial, mid-season, and end-season periods were 0.20, 0.90, and 0.50, respectively, while Peddinti et al. [7] reported that the three-stage basal crop coefficients were 0.43, 0.78, and 0.80, respectively, for citrus orchards. These Kcb values varied significantly from FAO-established Kcb values. Thus, Kc values may differ substantially due to differences in ground cover (fc), plant height (h), planting density, and plant age, as has been previously discussed by Rallo et al. [8] and Lozano et al. [9]. The parameters must be corrected when using the Dual Kc model to estimate evapotranspiration of drip-irrigated jujube in arid oasis areas.
The Priestley–Taylor (P–T) model is based on the assumption that the influence of atmospheric aerodynamics on ET are less than the influence of radiation [10]. It is calculated based on average temperature and net radiation. Because the model requires fewer meteorological variables as inputs, it is widely used in forest, grassland, and agronomic studies, especially in areas with high net radiation intensity [11,12,13]. Additionally, in order to correct for the influence of advection on transpiration, the model uses an empirical coefficient “α” for correction. Previous research has shown that there are many factors that may affect “α”: it has been shown to be equal to 1.26 where there is a wet underlying surface [14]; equal to 0.7~1.6 for landscape ecosystems [15]; and equal to 1.5~2.0 for arid climates [16]. Therefore, the value of “α” is often different for factors such as lower mean annual temperature and other climate characteristics.
The Shuttleworth–Wallace (S–W) model is a dual source model for estimating ET components. Its theoretical basis is the Penman–Monteith equation, which has two parts: the soil surface and the plant surface [17]. For the processes of soil evaporation and canopy ET, the model primarily regulates energy transfer intensity through canopy resistance and soil surface resistance ( r s c and r s s ). Additionally, in order to account for the impact of external environmental factors on crop ET, three aerodynamic resistances ( r a a , r a c , r a s ) are used to regulate transport intensity in the atmosphere, canopy, and soil, respectively. Previous studies indicated that the S–W model performed well in estimating the ET of rice (Oryza sativa L.) [18], cucumbers (Cucumis sativus L.) [19], grapes (Vitus vinifera L.) [20], apples (Malus sylvestris (L.) Mill var. domestica (Borkh.) Mansf.) [21], and other plant species. The simulation accuracy of S–W is higher than other models, especially under conditions of partial coverage [22]. However, studies are still lacking regarding whether S–W can produce ideal simulation accuracy for young jujube trees grown in an arid environment.
In order to determine the optimum model for estimating jujube ET grown under drip irrigation in an arid area, we conducted a four-year irrigation experiment in a jujube garden equipped with a large weighing lysimeter. Based on meteorological variables and plant physiological and morphological observations, water consumption during the entire jujube growing season was simulated. The objective of this research was based on measuring the jujube ET using a large weighing lysimeter to evaluate the applicability and parameter sensitivity of three ET models (Dual Kc, P–T, and S–W), in order to provide evidence to assist farmland managers in choosing the optimum ET model for agricultural water management.

2. Materials and Methods

2.1. Study Location

The study was conducted at the Experimental Station of Xinjiang Agricultural University, located in the Aksu region of Xinjiang (41°16’ N, 80°14’ E; altitude, 1133 m, Figure 1) from 2015 to 2019. The climate at this location is a typical temperate arid climate (Koppen: Bwk). Average annual values (2008–2019) of climate variables were: precipitation (74 mm), temperature (11.4 °C), total sunshine hours (2728–3014 h), and frost-free period (203–224 day). The soil of the experimental field was predominantly a sandy loam, with field capacity of 28% (volumetric water content) and wilting point of 8% (volumetric water content). Jujube at this location buds around Late April and is harvested at the end of October. Jujube roots are mainly distributed in the 0–100 cm soil layer [23].

2.2. Experimental Design

The crops used in this study were 5-year-old jujube (Zizyphus jujuba), planted in rows with a spacing of 4 m × 1 m. The drip tape lines were located on either side of the tree row, 40 cm away from the tree row. The dripper discharge rate was 1.38 L/h. The P–M model [5] was used to guide irrigation in the experimental field, and irrigations were applied every seven days (Table 1). The irrigation amount was determined as the calculated cumulative E T = E T 0 × K c since the previous irrigation. Jujube crop coefficients ( K c ) were calculated as described by Hong et al. [24]. Additionally, in order to increase the sugar content in the fruit, irrigation was stopped in the later stage of fruit enlargement.
Three large weighing lysimeters were randomly arranged in a 3000 m2 jujube field. A large weighing lysimeter (BSI-GDZSY2.2*3*2.5, Xi’an BiShui Environmental New Technology Co., Ltd., Xi’an, China) was used in the experiment to determine ET (Figure 2). The electronic weighing system comprised the soil system, weighing system, water supply, drainage system, and data acquisition system. The surface area of the lysimeter was 6.6 m2, the soil depth was 2.5 m (0.3 m inverted filter, 2.2 m soil layer). The weighing system adopts a lever-type structure, the system resolution was 5 g, the measurement accuracy was ±50 g, and the range was 0~6500 kg. The accuracy of the water leakage measuring system was ±2.5%. The system was equipped with power-off protection measures, which can work for more than 48 h after power-off. The change of soil weight was recorded every 30 min (change of soil weight = jujube evapotranspiration).

2.3. Measurements

(1)
Temperature, radiation, and rainfall were measured every 30 min using a Watchdog small automatic weather station (Model 2700, Spectrum Technologies, Inc, Aurora, IL, USA).
(2)
The soil moisture content in the 0–100 cm layer was measured with a soil moisture and temperature monitor (ET-100, Insentek Co., Ltd., Hangzhou, China), and the data were recorded every 30 min. The instrument layout position was at 40 cm (between jujube plants) and 40 cm from the jujube row.
(3)
The leaf area index ( L A I ) of jujube plants in the Large Weighing Lysimeter was observed every 10–20 days using a HemiView plant canopy analyzer (HMV1 v9, Delta-T Devices, Cambridge, UK).
(4)
The plant height of jujube plants was measured 1–2 times with a ruler in each growing season. Plant height ( h ) ranged from 1.21 to 2.79 m during the 2016 to 2019 study period.
(5)
Soil evaporation was determined using micro-lysimeters [25]. Each micro-lysimeter was 11 cm in diameter and 15 cm in depth. Measurements were made daily at 10:00 A.M. to determine water loss. The jujube micro-lysimeters were placed at 50 cm (between jujube plants) and 40 cm from the jujube row.

2.4. Shuttleworth–Wallace Model

The S–W model is the P–M model expanded into two parts: canopy and soil. According to Beer’s Law, solar radiation is distributed between the canopy and the soil surface, and the ET of the entire underlying surface is calculated using the following formulas [17]:
λ E T = C c P M c + C s P M s
P M c = Δ A + ρ C P V P D Δ r a c A s / r a a + r a c Δ + γ 1 + r s c / r a a + r a c
P M s = Δ A + ρ C P V P D Δ r a s ( A A s ) / r a a + r a s Δ + γ 1 + r s s / r a a + r a s
A = R n G
A s = R n s G
C c = 1 + R c R a / R s R c + R a 1
C s = 1 + R s R a / R c R s + R a 1
R a = Δ + γ r a a
R s = Δ + γ r a s + γ r s s
R c = Δ + γ r a c + γ r s c
R n s = R n × e C × L A I
Δ , V P D , P , ρ are related to meteorological factors, and are calculated as given in Allen et al. [5]:
Δ = 4098 [ 0.6108 exp ( 17.27 T a T a + 237.3 ) ] T a + 237.3 2
V P D = 0.6108 exp ( 17.27 T a T a + 237.3 ) × 1 R H
γ = 0.665 × 10 3 × P
P = 101.3 293 0.0065 × H / 293 5.26
ρ = 1.293 × P / 101.325 × 273.15 273.15 + T a
Boundary layer resistance r a c was calculated as given in Zhou et al. [26]:
r a c = r b σ b / L A I
r b = 100 n w / u h 1 exp n / 2
n = 2.5 1 h 2.036 + 0.194 h 1 < h < 10 4.25 h 10
Canopy resistance r s c was calculated as given in Chen and Dudhia [27], Gardiol et al. [28], and Tourula and Heikinheimo [29]:
r s c = r s   m i n L A I e f f × F 1 S × F 2 V P D × F 3 T × F 4 θ
L A I e f f = L A I L A I 2 2 2 < L A I < 4 L A I / 2 L A I 4
F 1 S = r s   m i n r s   m a x + S 1 + S
S = 0.55 R n L A I
F 2 V P D = 1 g × V P D
F 3 T = 1 0.0016 25 T 2
F 4 θ = 1 θ > θ t θ θ w θ t θ w θ w θ θ t 0 θ < θ w
Soil surface resistance r s s was calculated as given in Villagarcía et al. [30]:
r s s = 250 θ t θ 100
Aerodynamic resistance between vegetation canopy height and reference height r a a , and aerodynamic resistance between the soil surface and vegetation canopy r a s were calculated as given in Shuttleworth and Wallace [17]:
r a a = 0.25 L A I   r a a a + 0.25 4 L A I r a a 0
r a s = 0.25 L A I   r a s a + 0.25 4 L A I r a s 0
r a a 0 = l n x z 0   l n x z 0   k 2 u r a s 0
r a s 0 = l n x z 0   l n d + z 0 z 0 k 2 u
r a a a = ln x d z 0 k 2 u [ ln x d h d + h n h d exp n 1 d + z 0 h 1 ]
r a s a = ln x d z 0 k 2 u h n h d [ exp n exp n 1 d + z 0 h ]
z 0 = z 0 + 0.3 h X 0.5 0 < X < 0.2 0.3 h 1 d h 0.2 X < 1.5
d = 1.1 h   ln 1 + X 0.25
X = c d × L A I
where:
  • r a a is the aerodynamic resistance between vegetation canopy height and reference height, s m−1;
  • r a s is the aerodynamic resistance between the soil surface and the vegetation canopy, s m−1;
  • r a c is the boundary layer resistance, s m−1;
  • r s c is the canopy resistance, s m−1;
  • r s s is the soil surface resistance, s m−1.
The meanings of other symbols are shown in Table 2.

2.5. Dual Crop Coefficient Model

The dual crop coefficient (Dual Kc) model was given by Allen et al. [4] as:
E T = K s · K c b + K e E T 0
where: E T is the evapotranspiration, mm·d−1;
  • K s is the water stress coefficient;
  • K c b is the basal crop coefficient;
  • K e is the soil evaporation coefficient.
For determination of the related parameters in the Dual Kc model, refer to Allen et al. [5]. There is no reference value for the basal crop coefficient for jujube in FAO-56. In this study, the initial value of the basal crop coefficient was determined by reference to other fruit trees (stone fruit). In addition, jujube is a drought-tolerant crop. It has waxy layers on its leaves, which can reduce transpiration. The ability of its leaves to prevent water loss is significantly greater than that of other crops. The basal crop coefficient and the soil water consumption coefficient will therefore be reduced.
The soil parameters and crop parameters of the model were calibrated by trial-and-error using crop ET data measured with a large weighing lysimeter in 2016 [34]. First, soil parameters were held constant, and the crop parameters adjusted to reduce simulation errors. The crop parameters were then kept unchanged while the soil parameters were adjusted based on measured soil evaporation, until the simulation error was minimal and stable. The calibrated parameters are shown in Figure 3 and Table 3.

2.6. Priestley–Taylor Model

The Priestley–Taylor (P–T) model was formulated as given in Priestley and Taylor [10]:
E T = α Δ Δ + γ R n G λ  
where: α is an empirical coefficient.
In this study, the value of “α” was calculated based on the crop ET value measured using a large weighing lysimeter in 2016. The determination of “α” was resolved in three ways: (1) P–Ta: linear fitting in each of four different growth periods; (2) P–Tb: the mean value of “α” throughout the whole growth period; (3) P–Tc: a quadratic function fitting over the entire growth period. The results are shown in Figure 4 and Table 4.

2.7. Parameters for Sensitivity Analysis

T a , RH, R n , L A I , h c , and θ were selected for relative sensitivity analysis because they have important influences on crop evapotranspiration [35]. Only one parameter was varied while the remaining parameters remained unchanged for the simulations conducted at each of nine disturbance steps (the disturbance amounts were −20%, −15%, −10%, −5%, 0, 5%, 10%, 15%, and 20%). The relevant calculation formula for sensitivity was [36]:
S = i = 1 n 1 M i + 1 M i / M a P i + 1 P i / P a n 1
where:
  • S is the sensitivity coefficient;
  • M i + 1 and M i are the ET simulation values of the i + 1 and i parameters, respectively;
  • M a is the mean value of the two simulated ET values;
  • P i + 1 and P i are the input values of the i + 1 and i parameters, respectively;
  • P a is the mean value of the two input parameters.
According to the S value, the relative sensitivity of ET to input parameters was divided into five levels [36] (Table 5).

2.8. Evaluation of Model Performance

The following statistical indices were calculated for validating the accuracy of the S–W, Dual Kc, and P–T models [37]:
R M S E = i = 1 n O i P i 2 n
M A E = 1 n i = 1 n O i P i
R S R = [ i = 1 n O i P i 2 ] 0.5 [ i = 1 n O i P ¯ 2 ] 0.5
N S E = 1 i = 1 n O i P i 2 i = 1 n O i O ¯ 2
d I A = 1 i = 1 n O i P i 2 i = 1 n O i O ¯ + P i O ¯ 2
P B I A S = 100 i = 1 n O i P i i = 1 n O i
where:
  • R M S E is the root mean square error;
  • M A E is the mean absolute error;
  • R S R is the ratio of RMSE to the standard deviation of observed data;
  • N S E is the Nash–Sutcliffe efficiency coefficient;
  • d I A is the index of agreement;
  • P B I A S is the percent bias, the average tendency of predicted values to be larger or smaller than observed values;
  • n is the number of observations;
  • O i and P i are the observed and estimated values, respectively;
  • O ¯ and P ¯ are the average observed and average estimated values, respectively.
In this study, NSE and RSR were both used to evaluate the models (Table 6) [38]. For special cases, we graded the model performance based on the lower of the two evaluation parameters. For example, if the NSE of a model was graded as “excellent”, and the RSR was graded as “Good”, then the overall evaluation of the model was graded as “Good”.

3. Results

3.1. Environmental Parameters, Plant Height, LAI, and ET

During the 2016–2019 growing seasons, LAI and plant height ( h c ) varied in a similar pattern. LAI sharply increased until late July, when maximum values occurred (1.40–1.80 m2 m−2) and then slowly decreased until the end of the growing season (Figure 5). The general trend of h c was similar to that of LAI, and the peak also appeared in late July (Figure 5). Ranges of daily mean values of ET, ET0, Kc, and rainfall in 2016–2019 were 532–592 mm, 625–673 mm, 0.85–0.93, and 57.3–98.8 mm, respectively (Figure 6 and Table 7). There were a few leaves in the canopy at budding, and the crop coefficient was 0.82–0.89. Then, with the development of the canopy, the crop coefficient reached maximum values of 0.86–1.03 in the flower, fruit setting, and fruit enlargement stages. When the jujube fruit matured, the irrigation amount decreased significantly, and the crop coefficient was only 0.56–0.77. By the end of the growing season, the crop coefficient was 0.85–0.93. Therefore, the ET of jujube was mainly affected by ET0 (meteorological factors) during the 2016 to 2019 study period, and Kc over the entire season increased with increasing tree age.
(1)
Linear relationship between “y = LAI of jujube” and “x = Day of year”:
  • 2016: y = −0.81×10−6 x2 + 3.95×10−2 x – 3.42 R2 = 0.9796
  • 2017: y = −0.83×10−6 x2 + 4.10×10−2 x – 3.50 R2 = 0.9727
  • 2018: y = −0.91×10−6 x2 + 4.47×10−2 x – 3.81 R2 = 0.9743
  • 2019: y = −0.97×10−6 x2 + 4.81×10−2 x – 4.15 R2 = 0.9817
(2)
Linear relationship between “y = Plant height of jujube” and “x = Day of year”:
  • 2016: y = −0.0027 x2 + 1.1196 x + 29.417 R2 = 0.9154
  • 2017: y = −0.0036 x2 + 1.6155 x – 3.1431 R2 = 0.8925
  • 2018: y = −0.0040 x2 + 1.8749 x – 0.8212 R2 = 0.9466
  • 2019: y = −0.0031 x2 + 1.3996 x + 87.520 R2 = 0.9676
Figure 5. Seasonal variations of LAI and plant height during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Figure 5. Seasonal variations of LAI and plant height during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Agriculture 13 00437 g005
Figure 6. Rainfall and ET0 from 2016 to 2019 in the Aksu region, Xinjiang, China.
Figure 6. Rainfall and ET0 from 2016 to 2019 in the Aksu region, Xinjiang, China.
Agriculture 13 00437 g006aAgriculture 13 00437 g006b
Table 7. Jujube evapotranspiration (ET) measured using a large weighing lysimeter during several growth stages during the 2016–2019 study period in the Aksu region, Xinjiang, China, and the corresponding calculated reference evapotranspiration (ET0) and crop coefficients (Kc).
Table 7. Jujube evapotranspiration (ET) measured using a large weighing lysimeter during several growth stages during the 2016–2019 study period in the Aksu region, Xinjiang, China, and the corresponding calculated reference evapotranspiration (ET0) and crop coefficients (Kc).
Year20162017
ET (mm)ET0 (mm)KcET (mm)ET0 (mm)Kc
Budding100.62122.850.82155.44184.620.84
Flower and fruit setting202.85208.480.97195.77206.610.95
Fruit enlargement183.86213.290.86207.61203.781.02
Fruit mature44.7280.250.5653.8677.550.69
Entire season532.05624.860.85612.68672.560.91
Year20182019
ET (mm)ET0 (mm)KcET (mm)ET0 (mm)Kc
Budding151.85174.200.87146.58165.020.89
Flower and fruit setting198.40211.350.94205.38199.731.03
Fruit enlargement192.84204.170.94193.18199.990.96
Fruit mature53.0073.460.7246.7474.670.63
Entire season596.08663.180.90591.88639.410.93

3.2. Comparisons of Daily Jujube ET Estimated with the P–T Model and Measured Using a Large Weighing Lysimeter

Comparisons between daily ET estimated with the P–Ta, P–Tb, and P–Tc models and measurement using a large weighing lysimeter (ETmea) from 2016 to 2019 are presented in Table 8. In comparison with P–Ta and P–Tb, the RMSE with P–Tc was larger (about 14% greater during the four years). The linear regression slopes (“b”) ranged from 0.59 to 0.69, indicating that the model produced large errors. When the measured values were low, the model noticeably overestimated crop ET. In addition, the R2 values for ETP–Tc vs. ETmea ranged from 0.62 to 0.74, indicating that the simulated and measured values were statistically similar. However, the values were still significantly lower than those observed for P–Ta and P–Tb. The simulation results for P–Tc during the four years were graded by NSE and RSR as “Adequate” or “Unacceptable”, respectively. Thus, this model was unacceptable.
The R2 values for P–Ta and P–Tb during the four years ranged from 0.74 to 0.81, and the linear regression slopes (“b”) ranged from 0.89 to 1.04, indicating that the model deviation is low. RMSE and MAE values were 0.67–0.88 and 0.54–0.71, respectively, indicating that the errors were within the allowable range. Both models exhibited good simulation of jujube evapotranspiration. However, as graded by RSR and NSE, P–Ta simulation accuracy was slightly higher than that for P–Tb. The model grades from the RSR and NSE results were “Excellent” or “Good”. Therefore, we determined that we would use P–Ta (Figure 7) to simulate jujube evapotranspiration.

3.3. Comparisons of Daily Jujube ET Estimated with the Dual Kc Model and Measured Using a Large Weighing Lysimeter

Comparisons between daily ET estimated with the Dual Kc model (ETDual Kc) and measured using a large weighing lysimeter (ETmea) from 2016–2019 are presented in Figure 8 and Table 9. Variations in daily ETDual Kc were generally similar to those observed for ETmea. The coefficients of determination (R2) ranged from 0.82 to 0.87, and linear regression slopes (b) ranged from 0.92 to 1.00, indicating that the simulated and measured values were statistically similar. RMSE and MAE values were 0.60–0.82 and 0.46–0.66, respectively, indicating that errors were within the allowable range (Table 5). The dIA ranged from 0.94 to 0.96, indicating that the residual variance was small and within the tolerance allowed for simulation error. PBIAS was greater than 0, indicating that the Dual Kc model generally underestimated ET. The simulation results for Dual Kc during the four years were graded by NSE and RSR values as “Excellent”. Therefore, the simulation of jujube ET with the Dual Kc model was excellent, and the model produced little error.

3.4. Comparisons of Daily Jujube ET Estimated with the S–W Model and Measured Using a Large Weighing Lysimeter

Comparisons between daily ET estimated with the S–W model (ETS–W) and measured using a large weighing lysimeter (ETmea) from 2016–2019 are presented in Figure 9 and Table 9. Variations in daily ETS–W were generally similar to those observed for ETmea. The R2 and regression slope values for ETS–W vs. ETmea during the four years ranged from 0.74 to 0.82 and from 0.80 to 0.89, respectively, indicating that the simulated and measured values were statistically similar, and that most of the variation in ET was explained by the model. RMSE and MAE values were 0.74–0.94 and 0.61–0.79, respectively, indicating that model error was within the allowable range. The simulation results of S–W during 2016, 2017, 2018, and 2019 were graded by NSE and RSR as “Excellent”, “Good”, “Adequate”, and “Adequate”, respectively. The dIA ranged from 0.88 to 0.94, indicating that the residual variance was relatively small and within the tolerance of allowable simulation error. Excluding 2016, PBIAS ranged from 13.50 to 18.05. The deviation of model simulation results was small, and the model noticeably and fairly consistently underestimated ET. Therefore, the S–W model may produce large errors.

3.5. Comparisons of Measured Jujube ET and ET Simulated with Three Models

Comparisons of measured ET and ET simulated with the three models are presented in Figure 10 and Table 9. Based on the b, R2, RMSE, and MAE values shown in Table 9, the simulation errors of the three ET models followed the order of P–Ta (small), Dual Kc (small), and S–W (large). Most of the variation in measured jujube ET could be explained by the P–Ta and Dual Kc model, and the estimation error was very small. The model evaluation statistics were b = 0.92–1.04, R2 = 0.74–0.87, RMSE = 0.60–0.88 mm/d, and MAE = 0.46–0.71 mm/d. The values of dIA showed that the residual errors of the three models followed the order of Dual Kc < P–Ta < S–W model. The NSE and RSR values for the three models indicated that simulation ability for the three models followed the order of Dual Kc > P–Ta > S–W model. The stability of the Dual Kc model was significantly higher than that of the other two models during the four-year period. However, it can be seen from PBIAS that the deviation degree of the Dual Kc model consistently underestimated ET (PBIAS = 0.06–10.78%), and by a higher amount than the P–Ta model (PBIAS = −1.58–4.05%). In summary, the deviation degree of the P–Ta model was the lowest of the three models. The fitting results for the S–W model were “Good”, but the deviation degree of the model was higher. The deviation degree of the Dual Kc model, however, was higher than that of the P–Ta model, and the fitting effect of the model was “Excellent” during the four-year period. The simulation effect of the model was stable. Thus, we suggest that the Dual Kc model be used as the preferred model to estimate jujube ET in order to improve irrigation scheduling for jujube grown in this arid area.
The absolute simulation errors at different growth stages were also compared for the three models. As can be seen from Figure 11, the absolute errors for the S–W model and the Dual Kc model were similar at budding, and were less than with the P–Ta model. The simulation error for the Dual Kc model was relatively less than that of the S–W model and the P–Ta model in the flowering, fruit setting, and fruit enlargement stages. At fruit maturity, the absolute error by the three models was similar, and underestimated jujube ET. In general, the absolute error produced by the Dual Kc model was the smallest over the entire growth period, followed by the S–W and P–Ta model.

3.6. Model Sensitivity Analysis

The results of the sensitivity analysis for six basic parameters (air temperature: T a ; relative humidity: RH; solar radiation: R n ; leaf area index: L A I ; plant height: h c ; soil moisture content: θ ) in the three models and six core parameters ( V P D , r a c , r s c , r a a , r s s , r a s ) in the S–W model are shown in Figure 12 and Table 10. ET, as simulated with the P–Ta model, was primarily affected by net radiation and air temperature. The model was “very sensitive” to net radiation and “sensitive” to temperature. Plant height, soil moisture, and net radiation had the greatest impact on the S–W simulation results, and they are “relatively sensitive” parameters in the model. Wind speed and relative humidity had little influence on ET simulated with the S–W model, and hence were classified as only “minor sensitivity”. A special result from the sensitivity analysis was obtained for the Dual Kc model, and simulated ET was not sensitive to the model parameters.
In addition, it can be seen from Table 10 that r a a and r s c had the greatest impact on simulated jujube ET. When they changed by ±20%, ET changed by −5.62–5.12%. ET changed in response to ±20% changes in V P D and r s s with a range of −2.05–1.86%. r a c and r a s had the least effect, with ET only changing by −0.62–0.60%. In general, canopy resistance and the relationship between jujube canopy height and reference height had the greatest impact on ET. Other aerodynamic parameters had the least influence.

4. Discussion

The P–T model has been commonly used to calculate crop ET under normal irrigation conditions [15,39]. When estimating crop ET with the P–T model, determining the value of the empirical coefficient “α” is crucial for effective use of the model. Some previous studies have shown that the value of “α” is strongly dependent on soil moisture, and that “α” increases with increasing soil moisture [40,41]. Therefore, conditions where soil moisture is stable will result in greater stability of model simulation accuracy. The P–T model has better adaptability in humid areas than other ET models [42]. However, Xinjiang is located in an arid area, with very high evaporative demand and large amounts surface soil water evaporation, resulting in great changes in soil moisture. Therefore, when the model is used, it is easy to produce a large error in simulated ET (Table 8). Bottazzi et al. [43] and Akumaga and Alderman [10] also confirmed this conclusion. Meanwhile, ET rates were underestimated when the soil was wet and overestimated when the soil was dry [44].
A previous study [45] has shown that the opening degree of the canopy (i.e., canopy cover) has a significant impact on the empirical coefficient “α”. Under conditions where the same crop was planted at different densities, a smaller opening degree of the canopy led to the downregulation of “α”. The P–T model is an ET estimation model based on the assumption that the effect of atmospheric aerodynamics on ET is less than the effect of radiation [46]. When air in the plant canopy is saturated or nearly saturated with water vapor, “α” is greater than 1.0. However, when the canopy opening degree is large (sparse planting pattern) or an agro-pastoral ecotone ecosystem is present, energy transmission will be significantly driven by the atmosphere, resulting in an obvious downregulation of “α” [47]. For example, in our study, the air flow around jujube trees and at the bottom of the canopy was large, and the boundary effect was obvious, such that the mean value of “α” was 0.64 over the entire growth period. Liang et al. [48] showed that under a sparse planting pattern in an arid area, “α” = 0.23. This result also shows that one of the reasons for the low estimation accuracy of sparse vegetation ET simulations is that the influence of canopy aerodynamics leads to an instability in “α” during the entire crop growing season [49], resulting in a large simulation error. Therefore, after improving the calculation method of “α” by using either linear fitting for different growth periods or a quadratic function over the entire growth period, the R2 of the model increased from 0.62–0.74 to 0.74–0.83 (Table 8).
The basal crop coefficient is a crucial parameter in accurately simulating crop ET in the Dual Kc model, and its accurate determination is affected by many factors. Therefore, the crop coefficient recommended in FAO-56 should be adaptively adjusted according to regional differences and crop types. Bellvert et al. [50] showed that the median crop coefficient was related to orchard age and density. For large trees, a highly developed canopy and high leaf area index are the main factors that will increase the basal crop coefficient [51]. Therefore, young trees and low-density planting in orchards may lead to a reduction in crop coefficient values [52]. In our study, after trial-and-error adjustments, the crop coefficients of young jujube trees grown in an arid area were reduced by 0.10–0.15. In addition, there have been some reports that high wind speed and low vapor pressure increase stomatal conductance and crop coefficient values [53]. In areas with frequent rainy seasons or heavy rainfall, the crop coefficient will remain high [54]. The REW (readily evaporable water) and Ze (depth of topsoil dried by evaporation) are core parameters for calculating topsoil evaporation. Some existing studies have shown that ET simulated with the Dual Kc model is underestimated when crop ET is abnormally high [55]. In our study, when jujube ET was abnormally high, ET was overestimated before mid-June. After mid-June, jujube ET was underestimated (Figure 8). We believe that tree crown width will appreciably affect the amount of thermal radiation energy received by the soil surface [8], thus affecting the values of REW and Ze, especially during high-temperature time periods [56]. Therefore, the REW and Ze should be adjusted by a factor to account for canopy shading, leaf area index, and environmental factors. In addition, some other studies [57] have also proven that simulated soil evaporation estimation using the Dual Kc model is poor in the early stages of crop growth. When canopy density is high, simulation errors for soil evaporation decrease significantly. Under this condition, the error caused by using fixed values of REW and Ze is less and can easily be ignored.
The S–W model further optimizes the Penman–Monteith model mainly through soil surface resistance, canopy surface resistance, and three aerodynamic resistances. After sensitivity analysis of parameters, r s c and r a a were found to have the greatest impact on ET. This result is similar to results reported by Mu et al. [58]. r s c is mainly affected by leaf area index and soil moisture. Lower leaf area index may lead to ET overestimation by the model [59]. In addition, some studies have reported that a model of the water vapor exchange process involving stomatal control of the leaf/air interface is easy to build under stable soil water supply conditions [18]. However, when affected by water stress, plant stress resistance will cause changes to the minimum leaf stomatal resistance and to other related parameters, resulting in the obvious underestimation of crop ET [60], as was also found in our study. Therefore, the S–W model does not consider the effect of water stress on canopy surface resistance.
We attempted to use the P–T model, the S–W model, and the Dual Kc model to simulate the ET of young jujube trees in an arid area, and to compare simulated ET with ET measured using a large weighing lysimeter. Previous studies have shown that the S–W, P–T, and Dual Kc models can estimate ET in different ecosystems well [2,7,18]. However, the three models all have different errors in simulating ET that can be attributed to the inaccurate estimation of the effective energy of the surface soil and canopy caused by a variety of factors [58]. Among them, the ET simulation error of the P–T model was significantly higher than that of the S–W model and the Dual Kc model, mainly caused by changes in canopy aerodynamic resistance that caused “α” to fluctuate over the entire growth period. Therefore, after improving the calculation method for “α” by using either linear fitting for different growth periods or a quadratic function over the entire growth period, the simulation accuracy of the P–T model was significantly improved. For the S–W model, the results showed that the S–W error was higher than for the Dual Kc model. Our analysis showed that the reasons for the large error in ET simulations by the S–W model were as follows: (1) assuming that soil moisture is basically constant, then the stomatal model in the S–W model is suitable; however, after irrigation or rainfall, the soil moisture content changes greatly, and the simulated stomatal resistance value is higher than the actual value, resulting in the simulated value of ET being lower than the measured value under the wetter conditions following irrigation or rainfall; (2) the S–W model does not consider differences in albedo and emitted longwave radiation between the soil surface and the canopy, leading to an increase in model simulation error; (3) in areas where water-saving irrigation technologies such as furrow irrigation, drip irrigation, and small pipe outflow are used, the spatial variability of surface moisture is very large, resulting in reduced simulation accuracy.

5. Conclusions

(1)
After improving the calculation method of “α” by using either linear fitting for different growth periods (P–Ta) or a quadratic function over the entire growth period (P–Tb), the R2 of the P–T model increased from 0.62–0.74 to 0.74–0.83. Both of the improved models provided good simulations of jujube evapotranspiration. Simulation accuracy was slightly higher for P–Ta than for P–Tb.
(2)
The basal crop coefficients of the modified Dual Kc model at the initial, middle, and end stages of development were 0.4, 1.0, and 0.5, respectively. The error analysis results showed that the overall simulation error for the Dual Kc model was low, and that the model simulation was stable. However, simulation accuracy decreased when there was severe water deficit, resulting in jujube ET being significantly underestimated.
(3)
Simulation error for the S–W model was larger than for the other models, and the model generally underestimated ET. In addition, it can be seen from the NSE and RSR values that S–W simulations were the worst and most unstable of the three models.
(4)
Through our comprehensive evaluation of these three ET models we conclude that the simulation abilities of the Dual Kc model and P–Ta model were similar, and slightly better than the S–W model. The simulation effect grade for the Dual Kc model was “Excellent” during the four years of the study, and the simulation stability was higher than that observed for the P–Ta model. The P–Ta model was easily affected by changes in net radiation and air temperature due to the few formula parameters. Therefore, the Dual Kc model had better performance than the S–W model and the P–Ta model in estimating jujube ET and could be recommended to estimate jujube ET.

Author Contributions

Conceptualization, P.A. and Y.M.; methodology, P.A.; writing—review and editing, P.A., Y.M. and Y.H. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by The Central Guidance on Local Science and Technology Development Fund (ZYYD2023A10), the National Natural Science Foundation of China (52069027), and the Fund of Academician Mingjiang Deng Workstation (2020.D-003).

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Location of the study area.
Figure 1. Location of the study area.
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Figure 2. The large weighing lysimeter setup in the Aksu region, Xinjiang, China.
Figure 2. The large weighing lysimeter setup in the Aksu region, Xinjiang, China.
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Figure 3. Basal crop coefficient initial values (Kcb-int) and calibrated values (Kcb-cal).
Figure 3. Basal crop coefficient initial values (Kcb-int) and calibrated values (Kcb-cal).
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Figure 4. Fitted curve for parameter “α” in 2016.
Figure 4. Fitted curve for parameter “α” in 2016.
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Figure 7. Comparisons of daily jujube evapotranspiration (ET) estimated with the P–Ta model and measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Figure 7. Comparisons of daily jujube evapotranspiration (ET) estimated with the P–Ta model and measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
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Figure 8. Comparisons of daily jujube evapotranspiration (ET) estimated with the Dual Kc model and measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Figure 8. Comparisons of daily jujube evapotranspiration (ET) estimated with the Dual Kc model and measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
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Figure 9. Comparisons of daily jujube evapotranspiration (ET) estimated with the S–W model and measured using a large weighing lysimeter during 2016–2019 in the Aksu region, Xinjiang, China.
Figure 9. Comparisons of daily jujube evapotranspiration (ET) estimated with the S–W model and measured using a large weighing lysimeter during 2016–2019 in the Aksu region, Xinjiang, China.
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Figure 10. Time series of daily jujube evapotranspiration (ET) measured with a large weighing lysimeter, and ET values simulated with the Dual-Kc, S–W, and P–Ta models during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Figure 10. Time series of daily jujube evapotranspiration (ET) measured with a large weighing lysimeter, and ET values simulated with the Dual-Kc, S–W, and P–Ta models during the 2016–2019 study period in the Aksu region, Xinjiang, China.
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Figure 11. Boxplots of absolute errors for estimating daily jujube evapotranspiration with the Dual Kc, S–W, and P–Ta models at five growth stages during the 2016–2019 study period in the Aksu region, Xinjiang, China. Lower and upper box boundaries represent the 25th and 75th percentiles, respectively. The line and dot in the box represent the median and mean, respectively. The lower and upper whiskers represent the 5th and 95th percentiles, respectively. The dots beyond the whiskers represent outliers.
Figure 11. Boxplots of absolute errors for estimating daily jujube evapotranspiration with the Dual Kc, S–W, and P–Ta models at five growth stages during the 2016–2019 study period in the Aksu region, Xinjiang, China. Lower and upper box boundaries represent the 25th and 75th percentiles, respectively. The line and dot in the box represent the median and mean, respectively. The lower and upper whiskers represent the 5th and 95th percentiles, respectively. The dots beyond the whiskers represent outliers.
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Figure 12. Relative sensitivity of simulated jujube evapotranspiration to the main input parameters for the P–Ta, S–W, and Dual-Kc models. T a , air temperature; R n , net radiation; R H , relative humidity; u , wind speed; h , plant height; θ , soil moisture.
Figure 12. Relative sensitivity of simulated jujube evapotranspiration to the main input parameters for the P–Ta, S–W, and Dual-Kc models. T a , air temperature; R n , net radiation; R H , relative humidity; u , wind speed; h , plant height; θ , soil moisture.
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Table 1. Irrigation design for jujube in a large weighing lysimeter from 2016 to 2019 in the Aksu region, Xinjiang, China.
Table 1. Irrigation design for jujube in a large weighing lysimeter from 2016 to 2019 in the Aksu region, Xinjiang, China.
Growing SeasonSpring IrrigationBuddingFlower and Fruit SettingFruit EnlargementFruit MatureEntire Season
201640 mm78 mm158 mm205 mm35 mm516 mm
201740 mm95 mm159 mm201 mm35 mm530 mm
201840 mm108 mm157 mm199 mm35 mm539 mm
201940 mm102 mm143 mm199 mm35 mm519 mm
Table 2. List of symbols used in S–W, Dual Kc, P–T models.
Table 2. List of symbols used in S–W, Dual Kc, P–T models.
SymbolNameUnit
ρ Density of dry airkg m−3
γ Psychrometric constantPa °C−1
Δ Slope of saturation to vapor pressure curvePa °C−1
V P D Water vapor pressure deficitkPa
R n Net radiation fluxMJ m−2 day−1
G Surface soil heat fluxMJ m−2 day−1
L A I Leaf area indexm2 m−2
T a Air temperature°C
R H Air relative humidity%
P Atmospheric pressurekPa
H Altitudem
r b Mean boundary layer resistances m−1
w Canopy characteristic leaf widthm
u h Wind speed at the top of canopym s−1
h Mean height of the cropm
n Eddy diffusion decay constant-
r s   m i n Minimum canopy resistance-
L A I e f f Effective leaf area index-
θ w Wilting coefficient of soil%
θ t Soil water-holding capacity%
θ Soil moisture of the soil root system%
x Reference heightm
z 0 Roughness lengthm
d Zero-plane displacementm
u Wind speedm s−1
E T 0 Reference evapotranspirationmm day−1
E T Crop evapotranspirationmm day−1
λ Latent heat flux 2.45 MJ kg−1 [5]
C P Specific heat capacity of air 0.001013 J kg−1 °C−1 [5]
C Extinction coefficient of light 0.7 [16]
σ b Shielding factor 0.5 [16]
r s   m a x Maximum stomatal resistance value 5000 m s−1 [31]
g Empirical coefficient 0.25 kPa−1 [32]
z 0 Effective roughness length 0.02 m [33]
k von Kármán constant 0.41 [21]
c d Mean drag coefficient for leaves 0.07 [26]
Table 3. Initial and calibrated values of soil parameters and crop-related parameters in the dual crop coefficient model.
Table 3. Initial and calibrated values of soil parameters and crop-related parameters in the dual crop coefficient model.
Relevant ParametersInitial ValuesCalibrated Values
Soil parametersZe (m)0.100.15
TEW (mm)26.0039.00
REW (mm)11.009.00
Crop parametersKcb-int0.450.40
Kcb-mid1.101.00
Kcb-end0.850.50
ρ 0.650.40
Note: Ze, depth of surface soil layer subjected to drying by evaporation; TEW, total evaporable water; REW, readily evaporable water; Kcb-int, crop coefficient during the initial growth stage; Kcb-mid, crop coefficient during the mid-season growth stage; Kcb-end, crop coefficient at end of the late season growth stage; ρ , evapotranspiration depletion factor.
Table 4. Calculation formulas for parameter “α” in 2016.
Table 4. Calculation formulas for parameter “α” in 2016.
Different Fitting MethodsBuddingFlower and
Fruit Setting
Fruit
Enlargement
Fruit
Mature
P−Ta(improved) α = 1.3108   x 0.9661α = 0.78α = 0.63α = 0.33
P–Tb(improved)α = −0.3204 x 2   + 1.0457 x     0.0657
P–Tc(original)α = 0.64
Note: x = day of year × 0.01 ; P–Ta, divide the reproductive period; P–Tb, quadratic function regression; P–Tc, whole growth period.
Table 5. Sensitivity level classifications.
Table 5. Sensitivity level classifications.
Levels S ” Value Range Relative Sensitivity
S < 0.10 Insensitive
0.10 S < 0.25 Minor sensitivity
0.25 S < 0.50 Sensitive
0.50 S < 1.00 More sensitive
S 1.00 Very sensitive
Table 6. Model grade evaluation.
Table 6. Model grade evaluation.
GradeNSERSR
Excellent(0.75–1.00)(0.0–0.5)
Good(0.65–0.75)(0.5–0.6)
Adequate(0.50–0.65)(0.6–0.7)
Unacceptable(0.00–0.50)(0.7–1.0)
Table 8. Error analysis for daily jujube evapotranspiration (ET) estimated with the P–Ta, P–Tb, and P–T models compared with ET measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Table 8. Error analysis for daily jujube evapotranspiration (ET) estimated with the P–Ta, P–Tb, and P–T models compared with ET measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
YearModelbR2RMSEMAEdIAPBIASNSERSRGrade
2016P–Ta0.90.810.70.540.95−1.580.80.45Excellent
P–Tb0.890.750.820.630.93−3.140.740.52Good
P–Tc0.590.620.970.80.86−0.620.310.62Unacceptable
2017P–Ta0.920.740.880.710.923.410.730.56Good
P–Tb0.90.790.760.590.943.810.770.48Good
P–Tc0.610.740.880.730.898.550.410.55Unacceptable
2018P–Ta1.040.760.770.630.924.050.760.58Good
P–Tb1.030.740.830.680.912.410.730.63Adequate
P–Tc0.690.660.790.660.895.380.510.59Adequate
2019P–Ta0.960.820.710.570.953.190.820.45Excellent
P–Tb0.920.830.670.550.953.50.820.43Excellent
P–Tc0.590.720.90.730.887.730.350.57Unacceptable
Table 9. Error analysis for daily jujube evapotranspiration (ET) estimated with the Dual-Kc, S–W, and P–T models compared with ET measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
Table 9. Error analysis for daily jujube evapotranspiration (ET) estimated with the Dual-Kc, S–W, and P–T models compared with ET measured using a large weighing lysimeter during the 2016–2019 study period in the Aksu region, Xinjiang, China.
YearModelbR2RMSE
(mm/d)
MAE
(mm/d)
dIAPBIASNSERSRGrade
2016Dual Kc1.000.870.650.530.968.930.850.41Excellent
S–W0.830.790.740.610.94−2.900.750.47Excellent
P–Ta0.900.810.700.540.95−1.580.800.45Excellent
2017Dual Kc1.000.840.820.660.9413.780.790.50Excellent
S–W0.840.810.810.660.9313.500.720.50Good
P–Ta0.920.740.880.710.923.410.730.56Good
2018Dual Kc0.930.820.660.530.9410.180.770.49Excellent
S–W0.890.740.930.790.8820.240.610.64Adequate
P–Ta1.040.760.770.630.924.050.760.58Good
2019Dual Kc0.920.860.600.460.960.060.850.38Excellent
S–W0.800.820.940.760.9022.050.630.55Adequate
P–Ta0.960.820.710.570.953.190.820.45Excellent
Note: b, regression slope; R2, coefficient of determination; RMSE, root mean square error; MAE, mean absolute error; NSE, Nash–Sutcliffe efficiency; RSR, ratio of RMSE to the standard deviation of observed data; dIA, index of agreement; PBIAS, percent bias.
Table 10. Sensitivity of simulated jujube evapotranspiration (ET) to ±20% changes in parameter values.
Table 10. Sensitivity of simulated jujube evapotranspiration (ET) to ±20% changes in parameter values.
ModelChange in Parameter T a R n R H u h θ
S–W−20%−10.47%−20.04%−2.48%3.13%10.26%−12.06%
20%7.35%20.04%2.27%−2.98%−10.72%8.80%
Dual Kc−20%−1.44%−1.78%0.11%−0.13%−0.02%
20%0.20%0.73%0.01%0.11%0.02%
P–Ta−20%−6.12%−25.00%
20%6.08%25.00%
ModelChange in Parameter V P D r a c r s c r a a r s s r a s
S–W−20%1.86%−0.62%5.12%−5.62%1.53%−0.11%
20%−2.05%0.60%−3.95%4.84%−1.40%0.11%
Note: S–W, Shuttleworth–Wallace model; Dual Kc, dual crop coefficient model; P–T, Priestley–Taylor model; T a , air temperature; R n , net radiation; RH, relative humidity; u, wind speed; h, plant height; θ , soil moisture; VPD, vapor pressure deficit; r a c , boundary layer resistance; r s c , canopy resistance; r s s , soil surface resistance; r a a , aerodynamic resistance between vegetation canopy height and reference height; r a s , aerodynamic resistance between the soil surface and vegetation canopy.
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MDPI and ACS Style

Ai, P.; Ma, Y.; Hai, Y. Comparing Simulated Jujube Evapotranspiration from P–T, Dual Kc, and S–W Models against Measurements Using a Large Weighing Lysimeter under Drip Irrigation in an Arid Area. Agriculture 2023, 13, 437. https://doi.org/10.3390/agriculture13020437

AMA Style

Ai P, Ma Y, Hai Y. Comparing Simulated Jujube Evapotranspiration from P–T, Dual Kc, and S–W Models against Measurements Using a Large Weighing Lysimeter under Drip Irrigation in an Arid Area. Agriculture. 2023; 13(2):437. https://doi.org/10.3390/agriculture13020437

Chicago/Turabian Style

Ai, Pengrui, Yingjie Ma, and Ying Hai. 2023. "Comparing Simulated Jujube Evapotranspiration from P–T, Dual Kc, and S–W Models against Measurements Using a Large Weighing Lysimeter under Drip Irrigation in an Arid Area" Agriculture 13, no. 2: 437. https://doi.org/10.3390/agriculture13020437

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