Next Article in Journal
The Influence of the Geometric Configuration of the Drive System on the Motion Dynamics of Jaw Crushers
Previous Article in Journal
Thermodynamic Analysis of Biomass Pyrolysis in an Auger Reactor Coupled with a Fluidized-Bed Reactor for Catalytic Deoxygenation
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Investigation of Temperature Drop Characteristics During the Throttling Process of Ultra-High-Pressure Condensate Gas

1
Gas Production Plant of Xinjiang Oilfield Company, Karamay 834000, China
2
Petroleum Engineering School, Southwest Pertroleum University, Chengdu 610500, China
3
State Key Laboratory of Oil and Gas Reservoir Geology and Exploitation, Southwest Petroleum University, Chengdu 610500, China
*
Author to whom correspondence should be addressed.
Processes 2025, 13(8), 2497; https://doi.org/10.3390/pr13082497
Submission received: 22 July 2025 / Revised: 2 August 2025 / Accepted: 6 August 2025 / Published: 7 August 2025
(This article belongs to the Section Chemical Processes and Systems)

Abstract

The southern margin block of the Xinjiang Oilfield represents a typical ultra-high-pressure condensate gas field. Existing surface throttling practices rely heavily on empirical experience, with the underlying throttling mechanisms remaining unclear and lacking systematic theoretical support. In this study, the TW1 Well is selected as the research subject. Based on the principle of equal total enthalpy before and after throttling—and with particular attention to the effects of condensate gas heavy components and water on enthalpy calculations—a mathematical model for throttling-induced temperature drop, tailored to ultra-high-pressure condensate gas, is developed. The model enables a systematic analysis of temperature variations throughout the throttling process. Results indicate that the pre-throttle temperature is the primary factor controlling the magnitude of temperature change, and that post-throttle temperature rise may occur due to the Joule–Thomson coefficient becoming negative under ultra-high-pressure conditions. By integrating hydrate-formation prediction with differential pressure calculations across the throttling valve, a rational production scheme is proposed. This study provides a theoretical basis for understanding the mechanisms of ultra-high-pressure condensate gas well throttling and delivers critical technical support for the scientific design and optimization of surface throttling operations.

1. Introduction

With the acceleration of natural gas exploration and development, the Xinjiang Oilfield has made substantial progress in the southern margin of the Junggar Basin. The first 100-billion-cubic-meter natural gas area in the Hutubi structural belt is undergoing rapid appraisal and development [1]. Among them, three wells in the HT1 Well Area have shown long-term stable production performance, marking a significant breakthrough for the Xinjiang Oilfield in the field of natural gas exploration and development [2,3].
The southern margin block of the Xinjiang Oilfield is characterized as a typical ultra-deep, high-temperature, and high-pressure condensate gas reservoir, with wellhead pressures reaching up to 130 MPa. To ensure the safe operation of pipelines, a multi-stage throttling method is used on-site to reduce the wellhead pressure. The post-throttling temperature and pressure at the wellhead are key parameters in the entire gathering and transportation system, critically influencing hydrate prediction, pipeline material selection, and production regime design [4]. However, due to the presence of heavy components in high-pressure condensate gas, there are large deviations in critical parameters, resulting in complex throttling behavior and an unclear throttling mechanism [5]. Therefore, there is an urgent need to study the temperature drop characteristics of ultra-high-pressure condensate gas during throttling to reveal the changing laws of key parameters, such as pressure and temperature, in the throttling system during production. This will provide the necessary theoretical basis for the design of high-pressure throttling processes at the wellhead of ultra-high-pressure gas wells.
Many scholars have conducted fruitful research on the throttling mechanism at the wellhead of high-pressure gas wells. Jiang et al. [6] developed a three-dimensional cage-and-sleeve throttling valve model to predict temperature and pressure fields within the valve, thereby preventing hydrate formation and ensuring safe production. Li et al. [7] used numerical simulation to investigate the cooling and condensation temperature drop characteristics of natural gas inside the throttling valve. Shoghl et al. [8] used CFD modeling to study the single-phase flow of hydrocarbons during throttling, predicting the Joule–Thomson behavior and the associated temperature and pressure changes of natural gas and various pure gases. Li et al. [9] developed a condensation model for the throttling process using CFD, examining the temperature variations and condensation characteristics during throttling, as well as the influence of condensation latent heat on the flow, thereby ensuring the safety of natural gas transmission systems. Tay et al. [10] used numerical simulation methods to study the potential of the Joule–Thomson cooling effect in natural gas dehydration. Zhang et al. [11] employed CFD numerical simulation to investigate the throttling characteristics of natural gas in a throttling valve, discussing its throttling performance and the hydrate formation resulting from temperature variations. He et al. [12] employed numerical simulation to model the gas–liquid two-phase flow in a nozzle, investigating how upstream temperature and pressure, as well as the gas–liquid ratio, affect the flow characteristics. However, due to the complex composition of ultra-high-pressure condensate gas, the aforementioned numerical simulation methods struggle to accurately characterize each component’s concentration, which significantly impairs the accuracy of predicted throttling temperature and pressure.
To improve the precision of natural-gas throttling temperature-drop calculations, some researchers have proposed constructing mathematical models to compute the temperature drop after throttling. Tarom et al. [13] constructed an analytical model based on correction factors, considering the effects of gas specific gravity, temperature, and pressure, to predict the JT coefficient with high accuracy under unknown component conditions, thereby indirectly solving for the throttling temperature drop. Sokovnin et al. [14] established a two-stage pressure reduction mathematical model, derived the gas temperature variation at key sections, and proposed an optimal control method to prevent hydrate formation. Li et al. [15] conducted a numerical study on the Joule–Thomson (JT) coefficient of natural gas under different hydrogen blending ratios, investigating the throttling temperature drop characteristics of natural gas with varying hydrogen content. Luo et al. [16] proposed a method for predicting the temperature drop of superhigh-pressure sulfur-containing natural gas, combining the enthalpy-conserved throttling model with the mixing rule of the Lee-Kesler Equation of state (EoS). Li et al. [17] selected the LK equation to calculate the enthalpy of natural gas, which is more accurate compared to the BWRS, PR, and SRK equations. Compared with numerical simulation methods, constructing a mathematical model based on the principle of equal total enthalpy before and after throttling yields a more accurate calculation of the post-throttling temperature. In the cited literature, Luo et al. [16] and Li et al. [17] both calculate the throttling temperature drop of wellhead natural gas; however, they do not account for the effects of ultra-high pressure or for the heavy fractions and water content in condensate oil. As a result, their models deviate when predicting the throttling temperature drop of ultra-high-pressure condensate gas. The present study incorporates these heavy-fraction and water-content effects to improve the model’s accuracy.
In summary, this study not only characterizes the throttling-induced temperature drop but also demonstrates how the resulting data can guide field operating practices. First, by fully accounting for the effects of heavy fractions and water content under ultra-high-pressure conditions, we develop and validate a mathematical model that quantitatively describes the evolution of wellhead temperature. Second, we subject the model outputs to systematic statistical and sensitivity analyses, identifying inlet pressure, inlet temperature, and gas-production rate as the primary controlling factors. On this basis, we offer engineering recommendations for choke-step optimisation, hydrate mitigation strategies, and production-parameter tuning, thereby providing a robust scientific basis for the safe and efficient operation of ultra-high-pressure gas wells.

2. Methodology

Key thermophysical properties of ultra-high-pressure condensate gas, such as the compressibility factor and enthalpy, can be calculated using equations of state. However, due to the presence of heavy components in condensate gas, the critical parameters often deviate significantly, leading to limitations in the predictive accuracy of existing equations of state. Therefore, it is necessary to introduce an enthalpy calculation method that accounts for the influence of heavy components and water under ultra-high-pressure conditions. Additionally, an optimal mixing rule should be selected to establish a numerical model for calculating the throttling temperature drop in ultra-high-pressure condensate gas, incorporating the effects of both heavy components and water.

2.1. Selection of Equation of State

The ultra-high-pressure condensate-gas throttling model is founded on the equality of total enthalpy before and after throttling. Studies [16,17] show that the gas compressibility factor—by accounting for real gas non-idealities—is essential for accurate enthalpy calculations, and its precise determination refines thermodynamic predictions. Accordingly, this work prioritizes the accuracy of compressibility-factor computation when selecting the equation of state to ensure the model’s predictive precision.
The compressibility factor of natural gas is commonly calculated using four types of equations of state: Redlich–Kwong (RK), Peng–Robinson (PR), Lee–Kesler (LK), and Soave–Redlich–Kwong (SRK) [18]. When applying the RK, PR, and SRK equations, the cubic equation of state approach is used. In contrast, the application of the LK Equation requires incorporation of the three-parameter corresponding states principle [19].
The RK, SRK, and PR equations are all cubic equations of state and can be uniformly expressed as follows [20]:
Z 3 1 + B u B Z 2 + A + w B u B u B 2 Z A B w B 2 w B 3 = 0
A = a p R 2 T 2                 B = b p R T
In Equations (1) and (2), Z is the compressibility factor, dimensionless; R is the gas constant, 8314 J/(kg·mol); pc is the critical pressure of the fluid, Pa; Tc is the critical temperature, K; w is the acentric factor; Tr is the reduced temperature, T/Tc; and fω is the correction factor, as referenced in literature [21,22]. The coefficients for the three cubic equations of state are shown in Table 1.
The form of the LK Equation is as follows [23]:
z i = p r ν r T r = 1 + B ν r + C ν r 2 + D ν r 5 + c 4 T r 3 ν r 2 β + γ ν r 2 exp γ ν r 2
where vr represents the specific volume of the reference fluid, and v represents the molar volume of the reference fluid, in m3/mol.
B = b 1 b 2 / T r b 3 / T r 2 b 4 / T r 3
C = c 1 c 2 / T r + c 3 / T r 3
D = d 1 + d 2 / T r
where b1, b2, b3, c1, c2, c3, c4, d1, d2, β, and γ are parameters obtained from experiments, and their values need to be referenced from the literature [23].
The condensate gas samples from HT1 and TW1 Wells were calculated using four equations of state, RK, PR, LK, and SRK, with pressures and temperatures of 145.15 MPa, 159.63 °C and 171.78 MPa, 170.1 °C, respectively. Table 2 and Table 3 present the natural gas compositions for wells HT1 and TW1, respectively.
The calculated results of the compressibility factor were compared with the measured results, as shown in Table 4 and Table 5.
By comprehensively comparing the measured PVT compressibility factor values and the calculation results from the four equations of state for both wells, the LK Equation exhibited the smallest calculation error, with relative errors of only 4.65% and 1.52%. Therefore, the LK Equation was selected to calculate the physical property parameters of ultrahigh-pressure condensate gas.

2.2. Enthalpy Calculation Method for Ultra-High-Pressure Condensate Gas

Many researchers have shown that the LK Equation, proposed by Lee B.I. and Kesler M.G. [24] based on the corresponding states principle, is the most accurate equation for calculating enthalpy differences. This equation is also recommended by the API Data Handbook [17] as the standard method for enthalpy difference calculation. Based on the three-parameter corresponding states principle, the enthalpy calculation method represented by the LK Equation is shown in Equation (7) [25]:
h = h 0 R T c M F h
where h0 represents the enthalpy of the ideal gas, in J/kg; M is the molar mass of the gas, in g/mol; and Fh is the effect of pressure on the enthalpy of the actual fluid, dimensionless.
F h = F h 0 + ω ω h F h h F h 0
where F h ( 0 ) represents the effect of pressure on the enthalpy of a simple fluid, dimensionless; and F h ( h ) represents the effect of pressure on the enthalpy of the reference fluid, dimensionless.
F h i = T r z i 1 b 2 + 2 b 3 / T r + 3 b 4 / T r 2 T r V r c 2 3 c 3 / T r 2 2 T r V r 2 + d 2 5 T R V r 5 + 3 E
E = c 4 2 T r 3 γ β + 1 β + 1 + γ V r 2 exp γ V r 2
where, when Equation (9) is applied to a simple fluid, i = 0; and when Equation (9) is applied to the reference fluid, i = h.
h 0 = A h + B h T + C h T 2 + D h T 3 + E h T 4 + F h T 5
where h0 represents the enthalpy of the ideal gas in J/kg; Ah, Bh, Ch, Dh, Eh, and Fh are the correlation coefficients.
For the heavy components Cn+ in condensate gas, if their physical property parameters cannot be measured, they need to be characterized by treating them as multiple components and then calculating the required physical property parameters. If the physical property parameters are measured, the following method can be used for calculation.
For the liquid phase composition of the heavy components in condensate gas, the enthalpy calculation method is shown in Equation (12) [25]:
H L = 1291.36 A 1 T 144.3 + A 2 T 2 144.3 2 + A 3 T 3 144.3 3
In Equation (12), HL represents the liquid phase enthalpy, in J/kg.
A 1 = 10 3 1171.26 + 23.722 + 24.907 γ K + 1149.82 46.535 γ A 2 = 10 6 1.0 + 0.82463 K 56.086 13.817 γ A 3 = 10 9 1.0 + 0.82463 K 9.6757 2.3653 γ
where K is the characteristic coefficient of the component, dimensionless; and γ is the relative density of the component, in kg/m3.
For the gas phase composition of the heavy components in condensate gas, the enthalpy calculation method is shown in Equation (14) [24].
H = H L + 1291.36 B 1 T 0.8 T c + B 2 T 2 + 0.64 T c 2 + B 3 T 3 0.512 T c 3 + R T c M 4.507 + 5.266 ω F H
where H represents the gas phase enthalpy, in J/kg; H* is the liquid phase enthalpy at Tr = 0.8, in J/kg; and FH is the pressure-related enthalpy factor, dimensionless.
B 1 = 10 3 356.44 + 29.71 K + B 4 295.02 248.46 γ B 2 = 10 6 146.24 + 77.62 2.772 K K B 4 301.42 253.87 γ B 3 = 10 9 56.487 2.95 B 4 B 4 = 12.8 K 1.0 1.0 10.0 K γ 0.885 γ 0.70 10 4 2
For the enthalpy calculation of water in super-high-pressure condensate gas, this paper applies the IAPWS-IF97 equation, which provides methods for calculating parameters such as the specific enthalpy, saturation vapor pressure, and heat capacity of water and steam [26]. This equation has become the international standard for calculating the thermophysical properties of water. The enthalpy calculation method under high-pressure conditions is shown in Equations (16)–(18) [27].
h T , P R T = τ γ τ
γ τ = γ τ π = i = 1 34 n i 7.1 π I i J i τ 1.222 J i 1
τ = 1386 T                 π = P 16.53
where n, I, J, ni, and Ji are characteristic values obtained from reference [27], dimensionless.

2.3. Calculation of Virtual Critical Parameters for Mixtures

The enthalpy is typically calculated based on the LK Equation by first determining the enthalpy of an ideal gas and then using a pseudo-critical method to correct the enthalpy of the mixed gas. When calculating, virtual critical parameters are used to replace the actual critical parameters of the fluid, and mixing rules are applied for the calculation. This paper optimizes four mixing rules: Van der Waals, Wong–Sandler, Plocker–Knapp, and Lee–Kesler, and introduces the Prausnitz–Gunn virtual critical pressure calculation rule to improve calculation accuracy [28]. Among these, the Wong–Sandler and Prausnitz–Gunn mixing calculation methods are shown in Equations (19)–(21) [18].
T c m = 1 8 V c i = 1 n j = 1 n x i x j ( ν c i 1 / 3 + ν c j 1 / 3 ) 3 ( T c i T c j ) 1 / 2
ν c m = 1 8 i = 1 n j = 1 n x i x j ν c i 1 / 3 + ν c j 1 / 3 3
P c m = 0.2905 0.085 i = 1 n x i ω i R T c m V c m
where yi represents the mole fraction of component i; Tcm is the virtual critical temperature of the mixture, in K; Pcm is the virtual critical pressure of the mixture, in Pa; vcm is the virtual critical molar volume of the mixture, in m3/mol; and vci is the critical molar volume of component i, in m3.
ω m = i = 1 y i ω i
where wi represents the acentric factor of component i; and wm is the acentric factor of the mixture.
The Prausnitz–Gunn virtual critical pressure calculation method is shown in Equation (23) [29].
p m c = R T m c i = 1 n z c i i = 1 n y i V c i M i
where zci represents the critical compressibility factor of component i, dimensionless; and Mi is the molar mass of component i, in g/mol.
Using the four mixing rules and introducing the virtual critical pressure to calculate the temperature after throttling at TW1 Well, the results are shown in Table 6.
Table 6 lists the pseudocritical temperatures and pseudocritical pressures calculated using various mixing rules. It was found that the pseudocritical temperature Tcm directly affects the compressibility factor and the Joule–Thomson coefficient, and that the Prausnitz–Gunn pseudocritical pressure must be determined based on Tcm. Consequently, the cooling model is highly sensitive to Tcm; a ±5% deviation in Tcm leads to an approximately ±3.2% change in the throttled temperature.
Moreover, Table 6 shows that the throttled temperature calculated using the Wong–Sandler + Prausnitz–Gunn mixing rule exhibits the smallest relative error compared to experimental values—only 0.27%. Therefore, the Wong–Sandler + Prausnitz–Gunn mixing rule was selected in this study for its superior predictive accuracy.

2.4. Model Solution

As mentioned above, the mathematical model for solving the temperature drop during throttling of super-high-pressure condensate gas is mainly based on the equation of state for super-high-pressure condensate gas, enthalpy calculation of super-high-pressure condensate gas, enthalpy calculation of condensate gas heavy components and water, and the principle of equal total enthalpy before and after throttling. The solution must follow specific steps. The specific solution steps are as follows:
Step 1: Input the temperature and pressure of the super-high-pressure condensate gas before throttling.
Step 2: Input the gas, oil, and water production rates before throttling. If these parameters are unknown, they can be calculated based on the temperature and pressure before throttling.
Step 3: Calculate the enthalpy values of each component before throttling and compute the total enthalpy H1 using the mixing rule.
Step 4: Input the estimated temperature value and the pressure after throttling.
Step 5: Based on the temperature and pressure after throttling, calculate the mass fractions of the gas and liquid phases.
Step 6: Calculate the enthalpy values of each component after throttling and compute the total enthalpy H2 using the mixing rule.
Step 7: Compare the total enthalpies before and after throttling, H1 and H2. If H1 > H2, increase the estimated temperature after throttling; if H1 < H2, decrease the estimated temperature after throttling.
Step 8: If ΔH = (H1H2) < 0.1, output the result, which is the temperature after throttling.
To facilitate understanding of the entire solving process, a calculation flowchart is provided as shown in Figure 1.

2.5. Verification of Model Calculation Accuracy

HT1 Well is a typical ultra-high-pressure condensate gas well. A two-stage throttling process is employed on site to reduce the gas pressure. The pressure before throttling exceeds 80 MPa, with a temperature above 70 °C. After the first-stage throttling, the pressure is approximately 40 MPa, and after the second-stage throttling, it is around 11 MPa. To characterize the accuracy of the calculation results, the relative error between the calculated value and the field-measured value is defined as shown in Equation (24):
ε = η c η e η e
where ε represents the relative error; and ηc and ηe denote the calculated and experimental temperatures after throttling, respectively.
Based on the production reports of HT1 Well from 30 August to 25 September 2024, the field-measured values are compared with the calculated values. The comparison results are illustrated in Figure 2 and Figure 3.
Figure 2 and Figure 3 show that the calculation error under all operating conditions is less than 2%, indicating that the ultra-high-pressure condensate gas throttling temperature-drop model developed in this study is highly accurate. In particular, under ultra-high-pressure conditions (wellhead pressure above 100 MPa), the calculated results are especially precise.
Meanwhile, to demonstrate that the model proposed herein is equally applicable to calculating the temperature drop caused by throttling in other high-pressure condensate gas wells, this study adopts the condensate gas sample from Reference [17] as the baseline parameters and computes its post-throttling temperature drop. The results are presented in Table 7.
From Table 7, using the gas sample from Reference [17] as the baseline parameters produces a maximum relative error of no more than 3.5% in the calculated post-throttling temperature drop, demonstrating high accuracy. This accuracy results from the fact that the ultra-high-pressure condensate gas throttling temperature-drop model developed in this paper is governed primarily by gas composition. Since most high-pressure and ultra-high-pressure condensate gas wells share similar compositions, consisting mainly of methane and light hydrocarbons with a small amount of heavy components, the model is applicable to the majority of condensate gas wells.

3. Results and Discussion

3.1. Calculation and Analysis of the Throttling-Induced Temperature Drop in Ultra-High-Pressure Condensate Gas

3.1.1. Sensitivity Analysis of Factors Influencing Throttling-Induced Temperature Drop

(1)
Different inlet pressures
Based on field measurements for well TW1, the pre-throttling temperature was set at 60 °C, and the inlet pressure ranged from 70 MPa to 130 MPa. Using the ultra-high-pressure condensate gas throttling temperature-drop model, the temperature-drop behavior at different pressures was calculated, as illustrated in Figure 4.
As shown in Figure 4, for TW1 Well, as the pre-throttling pressure increases, the temperature drop across the throttling decreases. When the pre-throttling pressure exceeds 90 MPa, the post-throttling temperature actually begins to rise. Moreover, for every 10 MPa increase in pre-throttling pressure, the temperature difference before and after throttling for the TW1 Well decreases by an average of 1.2 °C.
(2)
Different inlet temperatures
To investigate the temperature-drop characteristics at different inlet temperatures, based on field measurements, the inlet temperature of the TW1 Well was set from 40 °C to 70 °C, and the temperature difference before and after throttling was calculated for each inlet temperature, as illustrated in Figure 5.
As shown in Figure 5, for TW1 Well, as the pre-throttling temperature increases, the temperature drop across the throttling decreases. Compared to the effect of pre-throttling pressure, the temperature difference before and after throttling is more strongly influenced by the inlet temperature. For every 5 °C increase in pre-throttling temperature, the temperature difference for the TW1 Well decreases by an average of 3.1 °C, indicating that in ultra-high-pressure condensate gas, the throttling temperature drop is more sensitive to temperature.
(3)
Different gas production rates
Based on field measurements, to investigate the effect of different gas production rates on the throttling temperature drop, the gas production rate of the TW1 Well was set from 100,000 m3/d to 350,000 m3/d, and the temperature difference before and after throttling was calculated for each rate, as illustrated in Figure 6.
Figure 6 shows that the temperature after throttling in the TW1 Well is only slightly affected by the gas production rate. When the daily gas production increases by 20,000 m3, the temperature after throttling increases by only about 0.3 °C. This paper suggests that this phenomenon may be due to the small change in pressure differential before and after throttling. Despite the increase in gas production, if the pressure differential before and after throttling does not significantly expand, the Joule–Thomson effect during the throttling process is not significant, resulting in a relatively small temperature drop.

3.1.2. Influence of the Joule–Thomson Effect on Throttling Temperature Drop

In the calculation process of this study, it was found that the TW1 Well exhibited a temperature increase during the throttling process. This phenomenon is reflected in both the field-measured data and the results, with a high degree of consistency between the two. According to the monitoring data from 26 September 2024 to 7 October 2024, the average temperature at the TW1 Well wellhead was 56 °C, and the temperature increased by approximately 10 °C after the first stage of throttling.
According to the principle that the total enthalpy of the gas before and after throttling remains constant and the characteristics of the gas pressure drop, the temperature change before and after throttling can be expressed by Equation (25) shown below [30]:
d T = T p H d p
where T p H is referred to as the Joule–Thomson coefficient and is represented by μ, i.e.,:
μ = T p H
Using thermodynamic relations and the derivation of gas enthalpy, it can be derived that
μ = 1 C P T v T P v
where Cp is the specific heat capacity of the gas at constant pressure, J/(kg·K).
Substituting Equation (27) into Equation (25) and integrating them, we can obtain
Δ T = T 2 T 1 = p 1 p 2 T v T p v C p d p
From Equation (28), it can be concluded that the throttling temperature change of real gases is closely related to the Joule–Thomson coefficient, requiring specific consideration of three different cases. When ΔT < 0, the temperature decreases after throttling. When ΔT > 0, the temperature increases after throttling. When ΔT = 0, the temperature remains unchanged after throttling [31].
Regarding this phenomenon, this paper suggests that the direct cause is due to the change in the Joule–Thomson coefficient under ultra-high-pressure conditions. Based on the above derivation, the temperature increase during throttling in the TW1 Well is caused by the Joule–Thomson coefficient μ < 0. Since μ < 0 under ultra-high-pressure conditions, the pressure drop after throttling dp < 0, and substituting this into Equation (28) results in ΔT > 0. Therefore, the throttling temperature increases under this working condition.
To gain a clearer understanding of the temperature change after throttling in the TW1 Well, this paper uses the developed ultra-high-pressure condensate gas throttling calculation software. Based on the TW1 Well’s production report from 26 September 2024 to 7 October 2024, the throttling pressure is set to 35 MPa, and the wellhead temperature is 63 °C. The temperature variation under different inlet pressures during throttling is calculated, as illustrated in Figure 7.
As shown in Figure 7, for the TW1 Well, the temperature after throttling may either increase or decrease with changes in the pressure before throttling. When the pressure before throttling is 92 MPa, μ = 0, and the temperature remains unchanged before and after throttling. When the pressure before throttling is less than 92 MPa, a cooling effect occurs, and the temperature decreases after throttling. When the pressure is greater than 92 MPa, a heating effect occurs, and the temperature increases after throttling.

3.2. Design of Production System for Ultra-High-Pressure Condensate Gas Wells

3.2.1. Basis for Production System Design

Based on the calculation method for the throttling temperature drop of ultra-high-pressure condensate gas, a production system plan for the TW1 Well is proposed for the wellhead process. The wellhead equipment should be designed based on high-pressure and high-temperature conditions, with the selection of appropriate throttling valves, oil nozzles, and other facilities. Due to the gas flow characteristics under ultra-high-pressure conditions, high-pressure-resistant pipelines and valves must be selected, while also considering potential issues such as hydrates and wax formation in the condensate gas. The main bases for the design are as follows:
(1)
Hydrate formation prediction
This study focuses on hydrate formation in the downstream pipeline following throttling. In the post-throttle section, the flow velocity is low, residence time is ample, and the system remains in a deeply supersaturated state, allowing it to be treated as a series of quasi-steady-state processes. Consequently, nucleation induction time and mass/heat transfer resistances are neglected, and hydrate formation at each temperature–pressure point is predicted solely using the thermodynamic statistical method [32].
Figure 8 and Figure 9 show that the critical temperature for hydrate formation is approximately between 10 °C and 28 °C. The temperatures after the first and second throttling at well TW1 are much higher than the critical temperature for hydrate formation, so no hydrates will form in either the throttling section or the section before throttling. The temperature difference between the temperature after secondary throttling and the hydrate formation temperature is even smaller, making hydrate formation more likely.
(2)
Throttling pressure difference design basis
The TW1 Well adopts a two-stage throttling process. Reasonably determining the pressure drop between each stage not only ensures the safe operation of the pipeline but also stabilizes production, maintaining good production conditions. This paper, based on the critical flow theory, calculates the critical pressure for the super-high-pressure condensate gas two-phase gas-liquid flow and establishes a reasonable throttling pressure difference.
This paper applies the HNE-DS model, which is based on the improved PR Equation of state, to calculate the throttling pressure difference [33].
Where the critical compressibility factor wc is given by Equation (29) [33]:
w c = η c p 1 v 1 w 0 d v g 1 d p 1 + 1 x d v L 1 d p 1 c p , L 1 Δ h v g 1 v L 1 N d T 1 d p 1
where ηc is the critical exit pressure ratio, dimensionless; x is the gas phase component fraction, dimensionless; Cp,L1 is the specific heat capacity at constant pressure for the liquid phase, J/(kg·K); Δh is the latent heat of vaporization, J/kg; p1 is the stagnation pressure, Pa; and vg1 and vL are the gas and liquid phase volume fractions, respectively. N is the boiling delay coefficient.
The calculation method for the critical pressure ratio ηc is shown in Equation (30) [33]:
η c = 0.036203 + 2.74652 w + 0.45113 w c 1 + 4.89524 x 2.317001 w c + 2.6859 w c 2 0.81197 w c 2

3.2.2. Production System Plan

Based on the production conditions of the TW1 Well and the aforementioned design basis, the production system plan for the surface process is as follows.
(1)
Hydrate Control Plan
The hydrate formation conditions under different temperatures and pressures were predicted using the thermodynamic statistical method. According to the prediction results, the temperature after the first and second-stage throttling in TW1 Well is much higher than the critical temperature for hydrate formation, so hydrates will not form under normal operating conditions. However, under extremely low temperatures (the lowest temperature in 2024 being −52.3 °C), based on the super-high-pressure condensate gas throttling temperature drop characteristics, the throttling temperature drop is most affected by the temperature before throttling, and there is a significant risk of hydrate formation after throttling due to the influence of external temperatures. Therefore, it is recommended to install heating systems at the wellhead and pipeline facilities or add methanol injection pipelines to ensure gas flow in the pipelines at extremely low temperatures and prevent production stoppages due to ice blockage or hydrate formation.
(2)
Throttling Pressure Differential Design
Based on the production characteristics of the TW1 Well, the appropriate throttling pressure differential is calculated using Equations (29) and (30). The inlet pressure is set at 130 MPa, and the calculation results are shown in Table 8.
Figure 10 and Figure 11 show the process designs for the two-stage and three-stage throttling methods, respectively. The throttling temperatures between each stage were calculated using the mathematical model established in this paper, and the throttling pressure differences between each stage were designed based on critical flow theory.
As shown in Table 8, when two-stage throttling is used, the first and second-stage throttling pressure differential is controlled at approximately 38.2 MPa, with the pressure after the second-stage throttling controlled at approximately 5 MPa. When three-stage throttling is used, it is recommended to use a fixed nozzle for the first and second stages and an adjustable nozzle for the third stage. The first and second-stage throttling pressure differential is controlled at approximately 40.3 MPa, while the second and third-stage throttling pressure differential is controlled at approximately 37.4 MPa. This ensures that the first and second-stage throttling will not reach a critical flow state, and the third-stage adjustable nozzle can adjust the well production rate by changing the opening.
In summary, the ultra-high-pressure condensate gas throttling temperature-drop model can provide effective guidance for designing production schemes in condensate gas wells. At the same time, significant residual pressure and heat remain available during wellhead throttling in ultra-high-pressure gas wells. To further enhance energy efficiency and reduce emissions, one can exploit the temperature and pressure drop characteristics of the throttling process by treating the throttling valve and its immediately adjacent upstream and downstream pipeline segments as a control volume, calculating the specific exergy at the inlet and outlet, and performing an exergy balance to quantify the irreversibilities occurring in throttling and downstream flow. By comparing the actual process with an ideal isothermal reversible expansion, the respective contributions of the temperature drop and pressure drop to exergy destruction can be distinguished [34]. In the future, this methodology could be extended to a segmented exergy distribution analysis across the entire pipeline network, coupled with dynamic hydrate-formation models and online monitoring data, to optimize valve selection, pipeline insulation design, and real-time energy-saving and emission-reduction control—thereby providing a robust scientific basis for the efficient, low-carbon operation of oil and gas production systems.

4. Conclusions

Through the study of the throttling temperature drop characteristics of ultra-high-pressure condensate gas wells, the following conclusions are drawn:
(1)
Under ultra-high-pressure conditions, selecting the LK Equation provides higher accuracy for calculating the compressibility factor. The relative error when calculating for the TW1 Well is only 1.5%. The Wong–Sandler + Prausnitz–Gunn mixing rule provides the highest calculation accuracy, with the relative error compared to field measurements being only 0.27%. Considering the impact of the enthalpy of the condensate gas, heavy components and water, the calculation error compared to the measured value is less than 2%. In the future, once additional wells have complete PVT datasets, we will conduct further robustness testing.
(2)
The study found that the temperature before throttling has the greatest impact on the temperature drop. For every 5 °C increase in the temperature before throttling, the average temperature difference before and after throttling for the TW1 Well decreases by 3.1 °C. The increase in temperature after throttling in TW1 Well is due to changes in pressure, which result in a negative Joule–Thomson coefficient (μ < 0), causing the temperature to rise after throttling. When the wellhead pressure is less than 92 MPa, the temperature after throttling decreases, but when it is greater than 92 MPa, the temperature increases after throttling. In future work, we will address the inherent limitations of our ultra-high-pressure throttling-temperature-drop model, which is rooted in classical thermodynamics and therefore cannot fully capture energy-dissipation mechanisms, microscopic temperature perturbations, or process-specific influences. To improve the model, we intend to implement zonal corrections that integrate a high-precision equation of state, non-equilibrium CFD, and multiphase experimental data.
(3)
Under normal operating conditions, the TW1 Well will not generate hydrates. However, with the lowest temperature of −52.3 °C for the whole year in 2024, it is recommended to install heating systems at the wellhead and pipeline facilities or add methanol injection pipelines. Regarding pressure differential design, for two-stage throttling, it is recommended to control the first and second-stage throttling pressure differential at approximately 38.2 MPa, with the pressure after the second-stage throttling controlled at approximately 5 MPa. For three-stage throttling, it is recommended to control the first and second-stage throttling pressure differential at approximately 40.3 MPa, with the second and third-stage throttling pressure differential controlled at approximately 37.4 MPa.
However, ultra-high-pressure condensate gas wells still face potential risks of erosion effects in practical applications. On one hand, the wellhead throttling devices are subject to erosion from sand particles; on the other hand, the severe pressure gradient across the throttling valve can cause local fluid pressure to rapidly drop below the vaporization pressure, triggering flash evaporation. At the same time, the sharp temperature drop may lead to the formation of cavitation bubbles. The collapse of these bubbles generates microjets and shockwaves that can cause material fatigue and micro-crack propagation on the valve surface, resulting in erosive damage. The risk of cavitation erosion increases further in the presence of liquid-phase hydrocarbons or hydrate formation. Future research is needed to better understand the erosion phenomena under ultra-high-pressure conditions and to implement effective protective measures.

Author Contributions

Conceptualization, X.F., Y.Y., T.H., D.F., H.S. and D.X.; methodology, W.S. and H.H.; software, W.S.; validation, X.F., Y.Y. and T.H.; formal analysis, D.F., H.S. and H.H.; investigation, W.S., D.X. and D.F.; resources, H.S.; data curation, D.X.; writing—original draft preparation, H.H.; writing—review and editing, X.F. and D.X.; visualization, H.S.; supervision, Y.Y.; project administration, X.F. and Y.Y.; funding acquisition, X.F. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by the Major Science and Technology Special Project of the Xinjiang Oilfield Company, China National Petroleum Corporation, project number 2024XJZX02.

Data Availability Statement

The original contributions presented in this study are included in the article. Further inquiries can be directed to the corresponding author.

Acknowledgments

The authors would like to express their sincere gratitude to Gexiao Zhang (Petroleum Engineering School, Southwest Petroleum University, Chengdu 610500, China; 15008334878@163.com) for her substantial contributions to this work. As an undergraduate student, Zhang was instrumental during the revision process, particularly in collecting 78% of the condensate gas samples and performing extensive experimental analyses. Although her name could not be included in the author list due to authorship policy constraints, her efforts were essential to the successful completion of this research. We deeply appreciate her dedication and valuable input.

Conflicts of Interest

Xuezhang Feng, Yingqiang Yang, Tianxin Hu, Dianfang Feng and Huijie Song were employed by the Gas Production Plant of Xinjiang Oilfield Company. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest. The Gas Production Plant of Xinjiang Oilfield Company had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

References

  1. Liu, G.; Li, J.; Qi, X.; Zhu, M. Geochemistry of High-Maturity Crude Oil and Gas from Deep-Ultradeep Reservoirs and Their Geological Importance in a Foreland Basin: A Case Study of the Southern Thrust Belt, Junggar Basin, Northwest China. J. Energy Eng. 2024, 150, 04023051. [Google Scholar] [CrossRef]
  2. Sun, J.; You, X.; Xue, J.; Zheng, M.; Chang, Q.; Wang, T. Characteristics and controlling factors of deep to ultra-deep tight-gas clastic reservoirs in the Junggar Basin. Oil Gas Geol. 2024, 45, 1046–1063. [Google Scholar] [CrossRef]
  3. Hu, S.Y.; Wang, X.J.; Cao, Z.L.; Li, J.Z.; Gong, D.Y.; Xu, Y. Formation conditions and exploration direction of large and medium gas reservoirs in the Junggar Basin, NW China. Pet. Explor. Dev. 2020, 47, 266–279. [Google Scholar] [CrossRef]
  4. Brogan, M.J. Evaluating Risk and Natural Gas Pipeline Safety. Politics Policy 2017, 45, 657–680. [Google Scholar] [CrossRef]
  5. Yang, B.; Zhang, H.; Wu, B.; Lv, K.; Zhou, Y.; Li, X.; Yang, Z.; Yuan, R. Joule-Thomson Effect on Bottom Hole Temperature in Ultra-High-Temperature and High-Pressure Gas Wells. ACS Omega 2025, 10, 10302–10307. [Google Scholar] [CrossRef]
  6. Jiang, D.; Meng, W.; Huang, Y.; Yu, Y.; Zhou, Y.; Jiang, Z.; Gao, Y. Characterization of Physical Field and Flow Assurance Risk Analysis of Subsea Cage-Sleeve Throttling Valve. Front. Earth Sci. 2021, 9, 786996. [Google Scholar] [CrossRef]
  7. Li, C.; Zhang, C.; Li, Z.; Jia, W. Numerical study on the condensation characteristics of natural gas in the throttle valve. J. Nat. Gas Sci. Eng. 2022, 104, 104689. [Google Scholar] [CrossRef]
  8. Shoghl, S.N.; Naderifar, A.; Farhadi, F.; Pazuki, G. Prediction of Joule-Thomson coefficient and inversion curve for natural gas and its components using CFD modeling. J. Nat. Gas Sci. Eng. 2020, 83, 103570. [Google Scholar] [CrossRef]
  9. Li, Z.; Zhang, C.; Li, C.; Jia, W. Thermodynamic study on the natural gas condensation in the throttle valve for the efficiency of the natural gas transport system. Appl. Energy 2022, 322, 119506. [Google Scholar] [CrossRef]
  10. Tay, W.H.; Lau, K.K.; Shariff, A.M. Numerical Simulation for Dehydration of Natural Gas using Joule Thompson Cooling Effect. Procedia Eng. 2016, 148, 1096–1103. [Google Scholar] [CrossRef]
  11. Zhang, H.; Zhang, Y.; Huang, X. Numerical Simulation Analysis of Flow Field of a New Double-layer Cage-sleeve Throttle Valve. Sci. Technol. Eng. 2024, 24, 4091–4099. [Google Scholar] [CrossRef]
  12. He, F.; He, T.; Wang, H.; Lü, Y. Numerical Research for Gas-liquid Two-phase Flow Properties of Nozzle in Gas Wells. K. Cheng Je Wu Li Hsueh Pao/J. Eng. Thermophys. 2022, 43, 2647–2652. [Google Scholar]
  13. Tarom, N.; Hossain, M.M.; Rohi, A. A new practical method to evaluate the Joule-Thomson coefficient for natural gases. J. Pet. Explor. Prod. Technol. 2018, 8, 1169–1181. [Google Scholar] [CrossRef]
  14. Sokovnin, O.M.; Zagoskina, N.V.; Zagoskin, S.N. Using a Thermodynamic Approach to Estimate a Temperature Drop of Natural Gas in a Pressure Regulator. J. Appl. Mech. Tech. Phys. 2019, 60, 451–456. [Google Scholar] [CrossRef]
  15. Li, J.; Su, Y.; Yu, B.; Wang, P.; Sun, D. Influences of Hydrogen Blending on the Joule-Thomson Coefficient of Natural Gas. ACS Omega 2021, 6, 16722–16735. [Google Scholar] [CrossRef] [PubMed]
  16. Luo, Z.; Liu, Q.; Yang, F.; Li, Z.; Wang, H.; Wang, B.; Peng, Z.; Jia, W. Research and Application of Surface Throttling Technology for Ultra-High-Pressure Sour Natural Gas Wells in Northwestern Sichuan Basin. Energies 2022, 15, 8641. [Google Scholar] [CrossRef]
  17. Li, C.; Jia, W.; Wu, X. Temperature Prediction for High Pressure High Temperature Condensate Gas Flow Through Chokes. Energies 2012, 5, 670–682. [Google Scholar] [CrossRef]
  18. Chabab, S.; Coquelet, C.; Rivollet, F. Generalization of the Wong-Sandler mixing rule to a generic cubic equation of state: Examples of use for systems of industrial interest (Hydrogen, CCUS, refrigeration). J. Supercrit. Fluid 2024, 212, 106336. [Google Scholar] [CrossRef]
  19. Lee, B.I.; Kesler, M.G. A generalized thermodynamic correlation based on three-parameter corresponding states. Aiche J. 1975, 21, 510–527. [Google Scholar] [CrossRef]
  20. Danesh, A.; Xu, D.H.; Todd, A.C. Comparative study of cubic equations of state for predicting phase behaviour and volumetric properties of injection gas-reservoir oil systems. Fluid Phase Equilibr. 1991, 63, 259–278. [Google Scholar] [CrossRef]
  21. Kontogeorgis, G.M.; Liang, X.; Arya, A.; Tsivintzelis, I. Equations of state in three centuries. Are we closer to arriving to a single model for all applications? Chem. Eng. Sci. X 2020, 7. [Google Scholar] [CrossRef]
  22. Harmens, A.; Knapp, H. Three-Parameter Cubic Equation of State for Normal Substances. Ind. Eng. Chem. Fundam. 1980, 19, 291–294. [Google Scholar] [CrossRef]
  23. Li, C.; Jia, W.; Wu, X. Application of Lee-Kesler equation of state to calculating compressibility factors of high pressure condensate gas. Energy Procedia 2012, 14, 115–120. [Google Scholar] [CrossRef]
  24. Jaeger, A.; Steinberg, L.; Mickoleit, E.; Thol, M. Residual Entropy Scaling for Long-Chain Linear Alkanes and Isomers of Alkanes. Ind. Eng. Chem. Res. 2023, 62, 3767–3791. [Google Scholar] [CrossRef]
  25. Smith, R.L., Jr.; Teja, A.S. Prediction of enthalpy and entropy departures using a two-fluid corresponding-states principle. Int. J. Thermophys. 1987, 8, 247–256. [Google Scholar] [CrossRef]
  26. Kim, C.; Kim, H.; Mun, K. Use of the international association for the properties of water and steam (IAPWS) formulations, IAPWS-95 & IAPWS-IF97: Making of Mollier diagram and T-s diagram of water and steam. Therm. Sci. Eng. Prog. 2020, 20, 100691. [Google Scholar] [CrossRef]
  27. Pourshaghaghy, A. Calculation of some thermodynamic properties of water for the boundary points between regiona 3 and 4 of industrial formulation IAPWS-IF97. Sci. Stud. Res. Ser. Math. Inform. 2015, 21, 66. [Google Scholar]
  28. Privat, R.; Jaubert, J.; Kontogeorgis, G.M. Let us rethink advanced mixing rules for cubic equations of state. Fluid. Phase Equilibria 2025, 596, 114455. [Google Scholar] [CrossRef]
  29. Mohamadi-Baghmolaei, M.; Azin, R.; Zarei, Z.; Osfouri, S. Presenting decision tree for best mixing rules and Z-factor correlations and introducing novel correlation for binary mixtures. Petroleum 2016, 2, 289–295. [Google Scholar] [CrossRef]
  30. Farzaneh-Gord, M.; Rahbari, H.R.; Zangeneh, J. Effects of natural gas compositions on its Joule-Thomson coefficients and Joule-Thomson inversion curves. Cryogenics 2020, 111, 103169. [Google Scholar] [CrossRef]
  31. Pakravesh, A.; Zarei, H. Prediction of Joule-Thomson coefficients and inversion curves of natural gas by various equations of state. Cryogenics 2021, 118, 103350. [Google Scholar] [CrossRef]
  32. Zhang, G.; Li, J.; Liu, G.; Yang, H.; Huang, H. Applicability research of thermodynamic models of gas hydrate phase equilibrium based on different equations of state. Rsc Adv. 2022, 12, 15870–15884. [Google Scholar] [CrossRef] [PubMed]
  33. Jia, W.; Ban, J.; Liang, F.; Cheng, T.; He, Y.; Li, C. A New Homogeneous Non-Equilibrium Model to Compute Vapor-Liquid Two-Phase Critical Pressure Ratios of Multicomponent Hydrocarbon Mixtures. J. Loss Prevent Proc. 2020, 6, 104338. [Google Scholar] [CrossRef]
  34. Oweh, S.O.; Aigba, P.A.; Samuel, O.D.; Oyekale, J.; Abam, F.I.; Veza, I.; Enweremadu, C.C.; Der, O.; Ercetin, A.; Sener, R. Improving Productivity at a Marble Processing Plant Through Energy and Exergy Analysis. Sustainability 2024, 16, 11233. [Google Scholar] [CrossRef]
Figure 1. Ultra-high-pressure condensate gas throttling model solution process.
Figure 1. Ultra-high-pressure condensate gas throttling model solution process.
Processes 13 02497 g001
Figure 2. First-stage throttling results comparison for the HT 1 Well.
Figure 2. First-stage throttling results comparison for the HT 1 Well.
Processes 13 02497 g002
Figure 3. Second-stage throttling results comparison for the HT 1 Well.
Figure 3. Second-stage throttling results comparison for the HT 1 Well.
Processes 13 02497 g003
Figure 4. Post-throttling temperature variation for TW1 Well at varying inlet pressures.
Figure 4. Post-throttling temperature variation for TW1 Well at varying inlet pressures.
Processes 13 02497 g004
Figure 5. Post-throttling temperature changes of TW1 Well under varying inlet temperatures.
Figure 5. Post-throttling temperature changes of TW1 Well under varying inlet temperatures.
Processes 13 02497 g005
Figure 6. Temperature variation after throttling at different gas production rates for TW1 Well.
Figure 6. Temperature variation after throttling at different gas production rates for TW1 Well.
Processes 13 02497 g006
Figure 7. Change in Throttling Temperature for the TW 1 well.
Figure 7. Change in Throttling Temperature for the TW 1 well.
Processes 13 02497 g007
Figure 8. First-stage hydrate prediction for the TW 1 Well.
Figure 8. First-stage hydrate prediction for the TW 1 Well.
Processes 13 02497 g008
Figure 9. Second-stage hydrate prediction for the TW 1 well.
Figure 9. Second-stage hydrate prediction for the TW 1 well.
Processes 13 02497 g009
Figure 10. Two-stage throttling process for ultra-high-pressure gas wells.
Figure 10. Two-stage throttling process for ultra-high-pressure gas wells.
Processes 13 02497 g010
Figure 11. Three-stage throttling process for ultra-high-pressure gas wells.
Figure 11. Three-stage throttling process for ultra-high-pressure gas wells.
Processes 13 02497 g011
Table 1. Coefficients in the three cubic equations of state.
Table 1. Coefficients in the three cubic equations of state.
Equationuwba
RK10 0.08664 R T c p c 0.077796 R T c p c
SRK10 0.08664 R T c p c 0.42748 R 2 T c 2 p c 1 + f ω 1 T r 0.5 2
PR2−1 0.077796 R T c p c 0.457235 R 2 T c 2 p c 1 + f ω 1 T r 0.5 2
Table 2. Natural gas composition of Well TW1.
Table 2. Natural gas composition of Well TW1.
Component NameMole Fraction/%Component NameMole Fraction/%Component NameMole Fraction/%
N20.4600iC50.3058C110.0108
CO20.0000nC50.0904C120.0008
C193.6421C60.0817C130.0005
C24.0160C70.0802C140.0002
C30.6800C80.0587C150.0002
iC40.2013C90.0446C160.0002
nC40.3030C100.0235C170.0000
Table 3. Natural gas composition of Well HT1.
Table 3. Natural gas composition of Well HT1.
Component NameMole Fraction/%Component NameMole Fraction/%Component NameMole Fraction/%
N20.9670iC50.1037C110.0008
CO20.5835nC50.0700C120.0003
C192.5559C60.0916C130.0003
C24.1094C70.0902C140.0002
C30.8949C80.0587C150.0002
iC40.2480C90.0146C160.0001
nC40.2070C100.0035C170.0001
Table 4. Comparison results of the HT 1 equation of state (145.15 MPa, 159.63 °C).
Table 4. Comparison results of the HT 1 equation of state (145.15 MPa, 159.63 °C).
Comparison of ResultsRKSRKPRLK
calculated value2.0282.0511.8542.126
measured value2.2302.2302.2302.230
relative error%9.067.6616.854.65
Table 5. Comparison results of the TW 1 Well equation of state (171.78 MPa, 170.1 °C).
Table 5. Comparison results of the TW 1 Well equation of state (171.78 MPa, 170.1 °C).
Comparison of ResultsRKSRKPRLK
calculated value2.2492.2781.9942.362
measured value2.3352.3352.3352.335
relative error%5.033.6313.271.52
Table 6. Throttling temperature calculation using different mixing rules.
Table 6. Throttling temperature calculation using different mixing rules.
Mixing RulesPseudocritical Pressure/MPaPseudocritical Temperature/°CPost-Throttle Temperature/°CRelative Error
Van der Waals + Prausnitz-Gunn4.11−65.0462.826.1%
Wong-Sandler + Prausnitz-Gunn4.29−57.8867.050.3%
Plocker-Knapp + Prausnitz-Gunn4.63−64.1459.9410.3%
Lee-Kesler + Prausnitz-Gunn4.42−48.6857.0214.7%
field measured value\\66.87\
Table 7. Comparison of measured and calculated values for high-pressure condensate gas wells.
Table 7. Comparison of measured and calculated values for high-pressure condensate gas wells.
Pressure/MpaTemperature/°C
Before Throttling/MPaAfter Throttling/MPaBefore Throttling/°CAfter Throttling/°CCalculated Values/°C
74.0512.0789.3773.9874.88
82.9511.1779.8766.7164.12
73.3411.6693.2374.5072.11
79.5010.6884.2569.0071.25
85.3010.8390.2172.9874.03
Table 8. Setting of throttling pressure drop at each level.
Table 8. Setting of throttling pressure drop at each level.
Throttling StagesFirst and Second-Stage Pressure Differential/MPaSecond and Third-Stage Pressure Differential/MPaGathering Station Inlet Pressure/MPa
two-stage throttling38.2\5
three-stage throttling40.337.45
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Feng, X.; Yang, Y.; Hu, T.; Feng, D.; Song, H.; Hu, H.; Shen, W.; Xiao, D. Investigation of Temperature Drop Characteristics During the Throttling Process of Ultra-High-Pressure Condensate Gas. Processes 2025, 13, 2497. https://doi.org/10.3390/pr13082497

AMA Style

Feng X, Yang Y, Hu T, Feng D, Song H, Hu H, Shen W, Xiao D. Investigation of Temperature Drop Characteristics During the Throttling Process of Ultra-High-Pressure Condensate Gas. Processes. 2025; 13(8):2497. https://doi.org/10.3390/pr13082497

Chicago/Turabian Style

Feng, Xuezhang, Yingqiang Yang, Tianxin Hu, Dianfang Feng, Huijie Song, Haotian Hu, Wenyong Shen, and Dong Xiao. 2025. "Investigation of Temperature Drop Characteristics During the Throttling Process of Ultra-High-Pressure Condensate Gas" Processes 13, no. 8: 2497. https://doi.org/10.3390/pr13082497

APA Style

Feng, X., Yang, Y., Hu, T., Feng, D., Song, H., Hu, H., Shen, W., & Xiao, D. (2025). Investigation of Temperature Drop Characteristics During the Throttling Process of Ultra-High-Pressure Condensate Gas. Processes, 13(8), 2497. https://doi.org/10.3390/pr13082497

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