Journal Pre-proofs One-dimensional drift-flux model and a new approach to calculate drift velocity and gas holdup in bubble columns Azadeh Bahramian, Siamak Elyasi PII: DOI: Reference:
S0009-2509(19)30792-4 https://doi.org/10.1016/j.ces.2019.115302 CES 115302
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Chemical Engineering Science
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Please cite this article as: A. Bahramian, S. Elyasi, One-dimensional drift-flux model and a new approach to calculate drift velocity and gas holdup in bubble columns, Chemical Engineering Science (2019), doi: https:// doi.org/10.1016/j.ces.2019.115302
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One-dimensional drift-flux model and a new approach to calculate drift velocity and gas holdup in bubble columns Azadeh Bahramian1, Siamak Elyasi Department of Chemical Engineering, Lakehead University, Thunder Bay, Ontario, Canada
Abstract In view of the practical importance of the drift-flux model and the variety of industrial applications of large-diameter columns, the model coefficients, including the distribution parameter (πΆ0) and drift velocity (πΆ1), have been investigated for the upward two-phase flow in large- and small-diameter columns. The distribution parameter and drift velocity reflect the nonuniformity in the flow and the local relative motion between two phases, respectively. As the formation of cap bubbles and occurrence of liquid recirculation are two of the most important characteristics in a large-diameter column, the distribution parameter and drift velocity in such a column are rather different from those in a small-diameter column. In this study, the local flow parameters measured by other researchers were collected, and πΆ0 and πΆ1 were calculated based on their definitions. The experimental values in small- and large-diameter columns were compared, and the performances of various existing constitutive equations for the drift-flux model were reevaluated. Two semi-empirical correlations for the drift velocity and gas holdup were developed, and their performances were verified against experimental data for various two-phase flow conditions. Keywords: Multiphase flow; Bubbly flow; Gas holdup; Distribution parameter; Drift velocity 1
Introduction Two-phase gasβliquid flow is the most commonly observed phenomenon in the chemical,
petrochemical, and biochemical industries. For instance, the distribution of gas through liquid is crucial for certain processes, such as oxidation, chlorination, polymerization, and fermentation (e.g. Debellefontaine et al., 1999; De Sousa et al., 2018; Doig et al., 2005; Kantarci et al., 2005; LΓΌbbert et al., 1996; Maretto and Krishna, 2001; Smith et al., 1996; Woo et al., 2010). Furthermore, the presence of vaporβliquid in boiling and condensation phenomena is inevitable. In-depth Tel.:+1(807)6339762 E-mail address:
[email protected] (A. Bahramian) 1
1
knowledge of the two-phase behavior, in terms of the flow patterns, fractional gas holdup, and gas and liquid velocities, is important for understanding the interactions between phases, and consequently for suitably designing or optimizing the related equipment. In particular, bubble columns are utilized to facilitate two-phase processes. However, despite the simplicity of their construction and operation, the hydrodynamics of bubble columns are complex. The fractional gas holdup (Ξ±g) is one of the most important design parameters, playing an important role in the performance of a bubble column. The gas holdup explicitly affects the reactor volume, because the fraction of the volume is occupied by gas. In addition, a spatial variation of Ξ±g changes the pressure, and eventually results in a change in the liquid phase momentum. This internal source of momentum in the liquid phase governs the rates of mixing, heat transfer, and mass transfer (Joshi et al., 1998). As a result, the ability to predict the gas holdup in a bubble column as a function of the geometry and operating parameters has attracted considerable research attention, and many experimental and theoretical methods have been proposed (e.g. Kawasa and Moo-Young, 1987; Kim et al., 2017; Jamilahmadi et al., 2000; Nedeltchev and Schumpe, 2008; Singh et al., 2017; Woldesemayat and Ghajar, 2007). As a two-phase flow consists of the relative motion between two phases, a general two-phase flow problem should be formulated using a two-phase flow model, or a drift-flux model. In the EulerianβEulerian two-phase approach, a two-fluid model treats each phase as a separate fluid with its own set of governing equations. In general, the solutions of the governing equations provide the velocity, temperature, and pressure of each phase individually. Although this approach is capable of accounting for the dynamic and non-equilibrium interactions between phases, considering separate sets of momentum and energy equations for each phase introduces a high degree of complexity, and for most applications only a numerical solution is available. In contrast to the two-fluid model, in which each phase is considered separately, the drift-flux model considers the mixture as a whole. Furthermore, important phenomena such as the influence of non-uniformity in the flow and phase holdup distribution profile, as well as the local relative motion between phases, are taken into account. This approach reduces the number of numerical equations and the resulting complexity of the problem. In addition, this model is a general one, which can be applied to any two-phase flow regime. The concept of drift-flux theory was first proposed by Zuber and Findlay (1965), and was later modified by Wallis (1969), Ishii (1977), and Joshi et al. (1990). The drift-flux model considers the effect of the non-uniformity of the holdup distribution across a cross-sectional area, as well as the local 2
relative velocity between phases. Owing to the flexibility and simplicity of the drift-flux model, many investigators have applied this method to predict the gas holdup over a broad range of operating conditions and column diameters (e.g. Bhagwat and Ghajar, 2014; Shen et al., 2010; Woldesemayat and Ghajar, 2007). Recently, experimental and modeling activities have mostly been limited to small-diameter columns, and the constitutive equations for the drift-flux model have been developed effectively for vertical upward two-phase flows with relatively small diameters ranging from 25 to 50 mm. Although these constitutive equations effectively predict the void fraction in small-diameter columns, mostly large-diameter columns are encountered in industrial plants. The hydrodynamics of two-phase flows in large-diameter columns are different from those in small-diameter columns. In large-diameter columns, slug bubbles are no longer sustained, owing to interfacial instability, which leads to the distortion and collapse of the upper surfaces of large bubbles, consequently resulting in the formation of cap bubbles. This phenomenon produces additional turbulence, which results in secondary recirculation in the flow. On the other hand, the bubbles in large-diameter columns tend to move toward the column centerline and form a core-peak void fraction profile, instead of the wall-peak profile that is commonly observed in smaller columns (e.g. Cheng et al., 1998; Hibiki and Ishii, 2003; Ohnuki and Akimoto, 2000; Serizawa et al. 1991). These differences lead to significant changes in the fractional gas holdup and velocity profiles, and consequently the distribution parameter and drift velocity. Therefore, the constitutive equations for the drift-flux model that are obtained in a smalldiameter column can no longer be guaranteed to accurately predict the two-phase behavior in a large-diameter column, and their applicability and accuracy must be verified. From this viewpoint, the main purpose of this study is to develop a model that can predict the fractional gas holdup for bubble columns over a wide range of operating conditions. The distribution parameter and drift velocity in large- and small-diameter columns are studied, and the existing constitutive equations of drift-flux theory are re-evaluated in comparison with the published experimental data. This approach results in new semi-empirical equations for the drift velocity and gas holdup. The performance and accuracy of the proposed correlations are tested and verified against a wide range of experimental data that are available in open literature for various experimental conditions, such as column diameters, pressures, liquid phase properties, and mixture volumetric fluxes.
3
2
Theory
2.1 One-dimensional drift-flux model 2.1.1
Basic drift-flux model
Drift-flux theory is one of the most practical and accurate two-phase models, taking into account the effect of the relative motion between phases as well as the non-uniformity of the void fraction profile. An advantage of this model is that it can be utilized for any two-phase (liquidβ gas) flow analysis, and in particular it has been successfully applied to forced convection systems (Hibiki and Ishii, 2002). The one-dimensional drift-flux model proposed by Zuber and Findlay (1965), is formulated as follows:
β©ππβͺ = β©β©ππβͺβͺ = πΆ0β©πβͺ + πΆ1 , β©πΌπβͺ
(1)
where ππ, πΌπ, ππ, and π are the superficial gas velocity, fractional gas holdup, gas velocity, and mixture volumetric flux, respectively. Here, <> and βͺβ« denote the area-weighted average of a quantity over the column cross-section and the void fraction-weighted mean value, respectively. The distribution parameter (C0) and drift velocity (C1) are defined by Equations (2) and (3): πΆ0 =
β©πΌππβͺ , β©πΌπβͺ
(2)
πΆ1 =
β©πΌππππβͺ , β©πΌπβͺ
(3)
where πππ is the local drift velocity of the gas phase, which is defined as πππ = ππ β π = (1 β πΌπ)(ππ β ππ) , 2.1.2
(4)
Existing equations for the distribution parameter and drift velocity in small-diameter columns
Ishii (1977) developed a comprehensive set of equations for the relative motions between phases for small-diameter columns and rectangular channels. Kawanishi et al. (1990) examined a steamβwater two-phase flow under different flow conditions of a vertical upward or downward flow and a counter-current flow at different pressures. They studied the effect of the column diameter on the drift-flux parameters using vertical tubes with diameters of 19.7 and 102.3 mm. In another study, Mishima and Hibiki (1996) calculated the distribution parameter for capillary tubes with inner diameters between 1 and 4 mm, and derived an equation for πΆ0 as a function of 4
the column diameter. Hibiki and Ishii (2002) measured the local flow parameters of adiabatic airβ water bubbly flows in vertical columns with inner diameters of 25.4 and 50.8 mm, and developed a new model. The proposed correlations for the drift-flux model in small diameter vertical columns are summarized in Table 1. Table1: Distribution parameter and drift velocity correlations for small diameter columns. Distribution parameter (πͺπ)
Researchers Ishii (1977)
Drift velocity (πͺπ)
1.2 β 0.2 ππ ππ
( ) ( ) ( ) ( ) ( )
2
ππβπ
2 1.2 β 0.2 ππ ππ
0.52 Mishima and Hibiki
ππ·π»βπ
12
Application range Bubbly flow
Slug flow
ππ
ππβπ
0.35
(1990)
(1 β β©πΌβͺ)1.75
π2π
0.35
Kawanishi et al.
14
14
Churn flow
π2π
ππ·π»βπ
12
π β₯ 0.24, π β€ 1.5, π·π» β€ 0.05m
12
π β₯ 0.24, π β€ 1.5, π·π» β₯ 0.05m
ππ
ππ·π»βπ ππ
1.2 + 0.51π β0.691 π·π»
1.0ππ β€ π·π» β€ 4.0ππ
(1996) Hibiki and Ishii
(1.2 β 0.2
ππ π )(1 β π β22β©π·ππβͺ π·π») π
Same as Ishii (1977)
25.4ππ β€ π·π» β€ 60ππ
(2002)
2.1.3
Existing equations for the distribution parameter and drift velocity in large-diameter columns
Shen et al. (2014) proposed definitions for small and large pipe diameters based on the nondimensional hydraulic diameter: π·π»β =
π·π» π πβπ
,
(5)
They defined small pipes as π·π»β < 18.5 and large pipes as π·π»β > 40. The intervening range of 18.5 β€ π·π»β β€ 40 represents a transition region between the two behaviors. For airβwater systems under atmospheric pressure, pipes with a diameter larger than 102 mm can be considered as largediameter pipes. Hills (1976) derived a drift-flux correlation in an air-water bubble column with an inner diameter of 150 mm and a height of 10.5 m. Although his model confirms his dataset very well, it does not take into account the physical properties of the fluids. Shipley (1984) proposed a 5
model based on his own data in a pipe with a diameter of 457 mm and height of 5.64 m. Shipley considered the column diameter in the drift velocity term, which is the main drawback of the proposed model. This leads to an unrealistic increase in the value of the relative velocity for a column of very large diameter. The drift velocity for bubbling or pool boiling systems was examined in detail by Kataoka and Ishii (1987). They developed a correlation for the drift velocity based on a large amount of experimental data with different physical properties, column diameters, and pressures. Hibiki and Ishii (2003) later demonstrated that the flow pattern and drift-flux parameters are dependent on the physical properties and fluid velocities for bubbly flows in largediameter columns. The existing correlations for the distribution parameter and drift velocity for large-diameter pipes are presented in Table 2. It is worth noting that the distribution parameter and drift velocity used to develop the existing drift-flux models for small- and large-diameter columns have been obtained indirectly from the plot of β©ππβͺ β©πΌβͺ versusβ©πβͺ. When the drift velocity is independent of the fractional phase holdup, or, in other words, when the flow regime is fully developed, the data points form a straight line. The slope of this line represents the distribution parameter, and the drift velocity can be interpreted as the intercept of the graph. However, the majority of two-phase flows in large-diameter columns are not fully developed, and a recirculation flow pattern may develop at low flow rates. As a result, the parameters obtained by graphical methods may not predict the real flow behavior. Despite the practical importance of understanding two-phase flow characteristics in a large-diameter column, only a few analytical and experimental studies have been conducted.
6
Table2: Distribution parameter and drift velocity correlations for large diameter pipes. Distribution parameter (πͺπ)
Drift velocity (πͺπ)
Application range
1.0
(0.24 + 4.0β©πΌβͺ
ππ β€ 0.3
1.35π β0.07
0.24
Shipley (1984)
1.2
0.24 + 0.35
Kataoka and Ishii
1.2 β 0.2 ππ ππ
Researchers Hills (1976)
ππ β₯ 0.3
et
al.
(1990)
Hibiki (2003)
and
1.95β©ππβͺ + 0.93β©ππβͺ
ππβπ
β0.157
1.69
1β
β©πβͺ
ππβπ
β2.88
β©πβͺ
β0.562 πππ
πππ β€ 2.25 Γ 10 β3 π·π»β β€ 30 πππ β€ 2.25 Γ 10 β3
β0.562 πππ
π·π»β β₯ 30
14
πππ β₯ 2.25 Γ 10 β3
π2π
π·π»β β₯ 30
14
ππ·π»βπ ππ
12
)
ππ
(
ππ
ππ
+
](
ππ
π·π» β₯ 0.05m
( ) ππβπ π2π
[ (
ππ
+ πΆ1,π 1 β ππ₯π β1.39β©ππβͺ
)
ππ
+ 4.08 1 β
π β₯ 0.24, π β€ 1.5,
)
(
πΆ1,π΅ππ₯π β1.39β©ππβͺ
[ ( )
β0.157
14
π2π
πΆ1,π΅ππ₯π β1.39β©ππβͺ
{ ( ) }( β©ππβͺ
ππ ππ
π2π
ππ
ππ ππ
(
0.52
Ishii ππ₯π 0.475
14
0.25
1.2 β 0.2 ππ ππ
β©ππβͺ
ππβπ
ππ
1.53
β©πβͺ
Kawanishi
0.809
( )
0.934(1 + 1.42β©πΌβͺ)
(1986)
ππ·π»β©πΌβͺ
β©πβͺ
β0.157
ππ
ππ
0.92
Clark and Flemmer
2
( )() () ( ) () ( )
0.0019π·π»β
0.030
(1985)
β©ππβͺ
( )
(1987)
Clark and Flemmer
)(1 β β©πΌβͺ)
1.72
+
ππ
( ) ππβπ π2π
[ (
ππ
+ πΆ1,π 1 β ππ₯π β1.39β©ππβͺ
)
β1 4
( ) ππβπ π2π
Bubbly flow β©πΌβͺ β€ 0.3
)]
β1 4
)
0β€
β©ππβͺ β©πβͺ
β€ 0.9
β1 4
( ) ππβπ π2π
Bubbly flow β©πΌβͺ β€ 0.3
)]
β1 4
0.9 β€
β©ππβͺ β©πβͺ
β€1
Cap Bubbly Flow
{ [(
1.2ππ₯π 0.11 β©πβͺ
ππβπ π2π
)
] }(
β1 4
2.22
1β
)
ππ ππ
+
ππ
β©πΌβͺ > 0.3 πΆ1,π
ππ
0 β€ β©πβͺ
7
( ) ππβπ π2π
β1 4
β€ 1.8
{ { [ { { [( 0.6ππ₯π β1.2 β©πβͺ
( ) ππβπ π2π
β 0.6ππ₯π β1.2 β©πβͺ
3
ππβπ π2π
]} } ) ]} }
β1 4
Cap Bubbly Flow
β 1.8 + 1.2
β1 4
β 1.8 + 0.2
β©πΌβͺ > 0.3 πΆ1,π ππ
β©πβͺ
ππ
( ) ππβπ π2π
β1 4
> 1.8
Results and discussion
3.1 Datasets utilized to develop new correlations With an emphasis on the above facts, a re-evaluation of existing models shows that although the tabulated correlations (Tables 1 and 2) predict the void fraction to a reasonable accuracy for the specific range of operating conditions and geometries from which they were obtained, their performance cannot be guaranteed over a wide range of operating and flow conditions. Therefore, many sets of experimental data taken over a broad range of superficial gas and liquid velocities, column diameters, system pressures, and fluid properties are essential to develop the drift-flux correlation for a two-phase flow. The comprehensive databases utilized in this study are listed in Table 3. A total of 1,611 datasets available from open literature are extracted to validate the void fraction correlation. These databases cover extensive experimental conditions, such as the column diameter (0.019β0.304 m), system pressure (0.1β0.28 MPa), superficial gas velocity (0.001β4.7 m/s), superficial liquid velocity (0.001β5.0 m/s), liquid viscosity (0.3β127 mPa.s), liquid density (767β1,199 m3/s), and surface tension (0.02β0.10 N/m). 3.2 Flow regime map In small-diameter columns, the flow regimes are typically classified into four phase distribution patterns: homogeneous (bubbly), heterogeneous (churn), slug, and annular flow. Zhang et al. (1997) investigated flow regimes experimentally using an air-water system under ambient conditions in a small-diameter column (0.0826 m). However, as discussed in the previous section, stable slug bubbles cannot exist in largediameter columns. This means that the flow regime maps developed for small-diameter columns cannot be applied to large-diameter columns. Schlegel et al. (2009) developed a flow regime map for large-diameter columns, and this was validated using a large database of flow regime identification data. The authors conducted the measurements in an upward airβwater two-phase 8
flow along a column with an inner diameter of 0.15 m, and they classified the flow patterns into bubbly, cap-turbulent, churn-turbulent, and annular flow. In this study, we utilized these flow maps to identify the flow patterns of the experimental data in the small- and large-diameter columns listed in Table 4, and the results are illustrated in Figures 1(a) and 1(b). The dashed lines represents the flow regime transition boundaries developed by Zhang et al. (1997) and Schlegel et al. (2009).
9
Table 3: Databases utilized in this study. Researcher(s)
Fluid system
Column diameter (m)
Superficial liquid velocity (m/s)
Superficial gas velocity (m/s)
System pressure (MPa)
Liquid viscosity (mPa.s)
Number of data points
Hills (1976)
AirβWater
0.150
0.00β0.50
0.04β0.85
0.1
1.0
282
Shen (2010)
AirβWater
0.200
0.05β0.30
0.001β0.1
0.1
1.0
17
Schlegel et al. (2010)
AirβWater
0.152, 0.203
0.05β1.00
0.1β5.0
0.18, 0.28
1.0
265
Schlegel et al. (2012)
AirβWater
0.152, 0.203
0.40β0.63
0.15β3.0
0.18, 0.28
1.0
101
Schlegel et al. (2013)
AirβWater
0.152, 0.203, 0.304
0.25β1.00
0.04β4.0
0.18, 0.28
1.0
374
Hibiki & Ishii (2000)
N2βWater
0.102
0.01β0.40
0.05β0.28
0.1
1.0
58
Besagni & Inzoli (2017)
AirβAqueous MEG solution
0.240
0.00
0.003β0.2
0.1
1.0β8.0
157
Rollbusch et al. (2015)
N2βWater
0.160
0.140
0.003β0.1
0.1
1.0
15
N2βAcetone
0.300
0.207
0.003β0.05
0.1
0.3
22
Das et al. (1992)
AirβAqueous CMC solution
0.019
0.31β0.69
0.28β1.1
0.1
100β127
27
Abdulkadir et al. (2010)
AirβSilicon oil
0.067
0.05β0.38
0.027β4.7
0.1
5.3
78
Xing et al. (2013)
AirβGlycerol solution
0.190
0.00
0.01β0.3
0.1
1.0β39.6
67
Shawkat et al. (2008)
AirβWater
0.200
0.20β0.68
0.005β0.1
0.1
1.0
26
Esmaeili et al. (2015)
Glucose
0.292
0.00
0.02-0.22
0.1
185
16
Boger
117-122
16
CMC
34-66
16
Xanthan gum
13-66
16
1.0
58
Yang & Fan (2003)
AirβWater
0.051
0.00-0.02
10
0.015-0.20
0.1
Hills (1976) Hibiki & Ishii (2000) Das (1992) Abdulkadir (2010) Flow regime map by Zhang et al. (1997) 0.1
Dispersed bubble flow
0.01
Discrete bubble
Churn flow
Superficial liquid velocity,
(m/s)
1
Slug flow
Annular flow
(a) 0.001 0.001
0.01
Superficial liquid velocity, (m/s)
10
0.1
Superficial gas velocity, (m/s)
1
10
Schlegel (2010) Schlegel (2012) Schlegel (2013) Shawkat (2008) Rollbusch (2015) Flow regime map by Schlegel (2009)
1
Annular 0.1
Bubbly
Cap- Turbulent
Churn- Turbulent
(b) 0.01 0.01
0.1
1 Superficial gas velocity, (m/s)
10
Fig. 1. Flow regime map (a) for small-diameter and (b) large-diameter columns.
11
100
3.3 Comparison of existing correlations for the distribution parameter and drift velocity with available experimental data It was emphasized above that the two-phase flow in large-diameter columns is multidimensional and the flow regime is not fully developed. As a result, the drift-flux parameters obtained by the graphical method may not correctly reflect the physics. Using the definitions of πΆ0 and πΆ1 in Eqs. (2) and (3), it is possible to calculate their local values from the radial profiles of the gas holdup, gas velocity, and liquid velocity. The experimental data of Shawkat et al. (2008) and Shen et al. (2010), which were obtained in a 200 mm column, were selected to re-evaluate the existing correlations. Based on the local data captured by their experiments, a database for πΆ0 and πΆ1 in a large-diameter pipe was established. Furthermore, a literature survey on the most commonly utilized constitutive equations of the drift-flux model for an upward two-phase flow in a vertical large-diameter column was conducted. These existing correlations are presented in Table 2. The existing correlations for the distribution parameter proposed by Clark and Flemmer (1985, 1986), Hibiki and Ishii (2003), and Ishii (1977) are compared with the experimental results in Figure 2. It can be observed that Ishiiβs model and the two models of Clark and Flemmer do not satisfactorily predict the distribution parameter. The equation of Hibiki and Ishii agrees well with the experimental distribution parameters at lower values of β©ππβͺ β©πβͺ, but deviations are noticeable when β©ππβͺ β©πβͺ is greater than 0.2.
12
1.40
Shawkat et al. (2008) Shen et al. (2010) Ishii (1977) Clark & Flemmer (1985) Clark & Flemmer (1986) Hibiki & Ishii (2003)
Distribution parameter, C0 (-)
1.35 1.30 1.25 1.20 1.15 1.10 1.05 1.00 0.95 0.90 0
0.1
0.2
0.3 / (-)
0.4
0.5
0.6
Fig. 2. Comparison of the distribution parameter determined in the present study with experimental results.
The existing correlations from Clark and Flemmer (1985), Hibiki and Ishii (2003), Hills (1976), Kataoka and Ishii (1987) and Shipley (1984) for the mean drift velocity are compared with the experimental results in Figure 3. The scatter of the data points appears to be relatively large, and falls between the model of Clark and Flemmer and that presented by Kataoka and Ishii. The high value of the drift velocity predicted by Kataoka and Ishii can be justified by the fact that their model is based on the measurements in a pool. As the wall effect is negligible in a pool, the bubbles can rise freely, and the bubble terminal velocity is higher than that of a bounded fluid (Clift et al., 19778). As a result, the drift velocity predicted by their equation is at the maximum value. On the other hand, the correlations developed by Clark and Flemmer are based on the experimental measurements in a 100-mm-diameter column, which is relatively small, and the wall effect significantly reduces the bubble terminal velocity. The equations of Hibiki and Ishii and of Shipley also do not predict the drift velocity very accurately. Although the drift-flux equations presented by Hibiki and Ishii satisfactorily predict the void fraction, they cannot be employed individually, because their correlations for the distribution parameter and drift velocity have not been validated separately by the local flow measurements. These exhibit a Β±30% error for a relatively low velocity
(β©ππβͺ < 2.0 π/π ) and Β±60% for a relatively high velocity (β©ππβͺ β₯ 2.0 π/π ). Additionally, the 13
correlations suggested by Kataoka and Ishii, Clark and Flemmer, Shipley, and Hills were derived by calculating the intercept of the plot of β©ππβͺ β©πΌβͺ versusβ©πβͺ. This leads to a constant value, and consequently, a significant deviation from the experimental data.
0.60
Shawkat et al. (2008) Shen et al. (2010) Hills (1976): jl=0.2 Shipely (1984) Clark & Flemmer (1985) Kataoka & Ishii (1987) Hibiki & Ishii (2003): jl=0.2 Hibiki & Ishii (2003): jl=0.35
Mean drift velocity, C1 (m/s)
0.55 0.50 0.45 0.40 0.35 0.30 0.25 0.20 0
0.1
0.2
0.3 (-)
0.4
0.5
0.6
Fig. 3. Comparison of the mean drift velocity determined in the present study with experimental results.
To demonstrate the difference between the values of the drift-flux parameters determined by the graphical method and those obtained using of their definitions, the graph of β©ππβͺ β©πΌβͺ versusβ©πβͺ is presented in Figure 4.
14
1.20 1.00
/<Ξ±> (m/s)
0.80 0.60 β¨οΏ½οΏ½ β©/β¨οΏ½β© =0.867β¨οΏ½β©+0.35
0.40 0.20 0.00 0
0.2
0.4
(m/s)
0.6
0.8
1
Fig. 4. Graphical method of calculating the distribution parameter and drift velocity.
Thus, values of πΆ0 = 0.867 and πΆ1 = 0.35 π/π are obtained from the slope and the intercept of the fitted line, respectively. A comparison of these parameters with those in Figures 2 and 3 indicates that the graphical method produces constant values for πΆ0 and πΆ1, but these vary for different superficial gas and liquid velocities. Furthermore, the flows in large and small columns are different. Therefore, the distribution parameter and drift velocity were investigated for various column diameters. The databases utilized in this study and the detailed experimental conditions are summarized in Table 4. Figure 5 compares the distribution parameters calculated in columns with different diameters. The figure shows that the distribution parameter is higher in small-diameter columns. It can be concluded that slug bubbles cannot be formed in large-diameter columns because of the surface tension instability. As a result, the large bubbles break into smaller cap bubbles (Hibiki and Ishii, 2003). This phenomenon may generate secondary turbulent movement owing to liquid recirculation. The existence of turbulent movement and liquid recirculation along with small-cap bubbles gives rise to a relatively uniform radial profile for the gas holdup, whereas the void fraction profile in smalldiameter columns under the same operating conditions is sharper. As the distribution parameter reflects the non-uniformity of the gas holdup profile, the values for large-diameter columns are lower than those for small-diameter columns. 15
1.40
Shawkat et al. (2008), D=200 mm
Distribution parameter, C0 (-)
1.35
Hibiki & Ishii (2002), D=50.8 mm
1.30
Hibiki & Ishii (2002), D=25.4 mm
1.25 1.20 1.15 1.10 1.05 1.00 0.95 0.90 0.00
0.05
0.10
0.15 0.20 Gas holdup (-)
0.25
0.30
Fig. 5. Comparison of the distribution parameter in small and large diameter columns. Table 4: Databases utilized in this study to compare the distribution parameter and drift velocity. Researcher(s)
Fluid system
Column diameter (m)
Superficial liquid velocity (m/s)
Superficial gas velocity (m/s)
Pressure (MPa)
Number of data points
Shawkat et al. (2008)
AirβWater
0.200
0.2β0.68
0.005β0.1
0.1
26
Shen et al. (2010)
AirβWater
0.200
0.2β0.311
0.004β0.065
0.1
17
Serizawa at al. (1991)
AirβWater
0.060
0.442β1.03
0.0941β0.416
0.1
12
Liu (1989)
AirβWater
0.0381
0.376β1.39
0.0197β0.353
0.1
41
Hibiki & Ishii (2002)
AirβWater
0.0508
0.491β5.0
0.0257β4.88
0.1
18
Hibiki & Ishii (1999)
AirβWater
0.0254
0.262β3.49
0.0156β1.27
0.1
25
The drift velocity has been investigated for different column diameters, and the results are shown in Figure 6. The datasets exhibit higher values of πΆ1 for large diameters. The higher drift velocity in large-diameter columns may be attributed to the formation of large cap bubbles at the centers of the columns, resulting from the enhanced bubble coalescence owing to liquid recirculation. These cap bubbles move faster than the dispersed bubbles, consequently leading to a greater drift velocity.
16
Mean drift velocity, C1 (m/s)
1.00
0.10 Shawkat et al. (2008), D=200 mm Serizawa et al. (1991), D=60 mm Hibiki & Ishii (2002), D=50.8 mm Liu (1989), D=38.1 mm Hibiki & Ishii (1999), D=25.4 mm
0.01 0.00
0.05
0.10
0.15
0.20 0.25 Gas holdup (-)
0.30
0.35
0.40
Fig. 6. Comparison of the drift velocity in small- and large-diameter columns.
3.4 Semi-empirical modeling and introduction of new correlations 3.4.1
Semi-empirical model development for the drift velocity
As discussed in the previous section, liquid recirculation may develop in large-diameter columns, particularly at low flow rates. The developed flow pattern affects the void fraction and velocity profiles, and consequently the drift-flux parameters. As the contribution of the drift velocity to the calculation of the gas velocity is relatively significant for a bubbly flow regime compared with other regimes, such as churn-turbulent and annular flow patterns, a new drift velocity correlation is developed in this section. Zuber and Findlay (1965) showed that the void-weighted average drift velocity is derived by the following equation: πΆ1 =
β©πΌππππβͺ β©πΌπ(1 β πΌπ)ππβͺ , = β©πΌπβͺ β©πΌπβͺ
(6)
where ππ is the relative local velocity. Assuming that the relative velocity is uniform across the cross-section area, the drift velocity can be rewritten as in Equation (7):
β©πΌπ2βͺ β©πΌππππβͺ β©πΌπ(1 β πΌπ)βͺ β©ππβͺ = 1 β β©π βͺ , = πΆ1 = β©πΌπβͺ β©πΌπβͺ β©πΌπβͺ π
(
)
17
(7)
The assumption of a uniform relative velocity can be verified using the detailed local experimental data of Hibiki and Ishii (1999) and Shawkat et al. (2008) as shown in Figure 7. This assumption is also supported by Brooks et al. (2014). The void fraction covariance can be defined using Equation (8). As a result, the drift velocity correlation can be simplified as in Equation (9).
β©πΌπ2βͺ
,
(8)
πΆ1 = (1 β πΆπΌβ©πΌπβͺ)β©ππβͺ ,
(9)
πΆπΌ =
β©πΌπβͺ2
The void fraction is calculated from the local gas holdup measurements. Brooks et al. (2014) plotted πΆπΌβ©πΌπβͺ (covariance parameter) versus β©πΌπβͺ based on experimental data taken for two flow directions (upward and downward flow) and two different flow geometries (pipe and annulus). For a two-phase upward flow, they showed that for a wide range of pipe sizes and two geometries, the data converge to a line with a slope of 1.18, which represents the magnitude of the void fraction covariance.
Local relative velocity, Ο
r (m/s)
0.60 0.50
Shawkat et al. (2008), D=200 mm
jl=0.2 m/s,
jg=0.1 m/s
Hibiki & Ishii (1999), D=25.4 mm
jl=0.262 m/s,
jg=0.117 m/s
0.40 0.30 0.20 0.10 0.00 0
0.2
0.4
r/R (-)
0.6
0.8
1
Fig. 7. Local radial relative velocity profile in small- and large-diameter pipes.
In the present study, this value is considered to estimate the covariance parameter. πΆπΌβ©πΌπβͺ =
β©πΌπ2βͺ β©πΌπβͺ
= 1.18β©πΌπβͺ ,
(10)
18
For the next step, the area-weighted average relative velocity β©ππβͺ, with the correlation as a function of the void fraction, must be estimated. Lapidus and Elgin (1957) found that in liquid fluidization systems, the relative velocity is related to the terminal velocity and gas holdup: ππ = π’βπ(πΌπ) ,
(11)
where π’β is the terminal velocity of a bubble in an infinite medium. Several researchers have proposed different correlations for the dependency of the relative velocity on the terminal velocity and gas holdup. Some of these equations are summarized in Table 5. All existing correlations were tested, and it was found that the equation proposed by Wallis with n = 2 yields an accurate prediction compared with the other equations. Therefore, Equation (11) can be reformulated as follows: ππ = π’β(1 β πΌπ) ,
(12)
Table 5: Existing correlations for the relative velocity. Author(s)
Proposed correlation
Richardson and Zaki (1954)
ππ = π’β(1 β πΌπ)2.39
Marrucci
5 ( ) ππ = π’β 1 β πΌπ (1 β πΌπ 3)
Davidson and Harrison (1966)
ππ = π’β (1 β πΌπ)
Wallis (1969)
ππ = π’β(1 β πΌπ)π β 1
n=2 for small bubbles, n=0 for large bubbles
In view of the significant contribution of the terminal velocity in determining the overall hydrodynamics of the system, the bubble rise velocity in a system and possible bubble size need to be determined. As the terminal velocity and bubble diameter vary with the system properties, many investigators have developed empirical, semi-empirical, and theoretical correlations. Summaries of the available correlations for the terminal velocity and bubble diameter/volume are presented in Tables 6 and 7, respectively. We utilized different combinations of terminal velocity and bubble diameter correlations to develop a model that is capable of estimating the void fraction over a broad range of flow conditions. The model proposed by Krishna et al. (1999) was selected for the terminal velocity, because it provides accurate predictions in comparison with the other models. The authors developed the model to estimate the rise velocity of a swarm of bubbles in bubble columns: 19
π’β = 0.71 πππ(ππΉ)(π΄πΉ) ,
(13)
where AF is the acceleration factor, which considers the effect of the interaction between a bubble and the wake of the bubble preceding it. The AF for both low- and high-viscosity liquids can be given by Equation (14): π΄πΉ = 2.25 + 4.09(ππ β ππ‘ππππ ) ,
(14)
Furthermore, SF is the scale correction factor, which accounts for the influence of the column diameter. ππΉ = 1
πππ
ππ π·π»
< 0.125
( )
ππΉ = 1.13 ππ₯π β
ππΉ = 0.496
π·π» ππ
ππ
(15)
πππ 0.125 <
π·π»
ππ π·π»
< 0.6
ππ πππ > 0.6 π·π»
(16)
(17)
Here, ππ is the bubble diameter, which can be estimated using Akita and Yoshidaβs (1974) formula (Eq. 18) for regimes with a small bubble size, including bubbly, churn-turbulent (churn flow), and annular flow regimes. For slug/cap-turbulent regimes, which are characterized by large bubble diameters, the correlation proposed by Krishna et al. (1999) (Eq. 19) yields the best estimation: β0.5
β0.12
( ) ( ) ( )
ππ = 26π·π»
π·2π»πππ π
ππ·3π» π2π
ππ
ππ·π»
β0.12
,
ππ = 0.069(ππ β ππ‘ππππ )0.376,
(18) (19)
20
Table 6: Existing correlations for bubble terminal velocity. Researchers
Rise velocity
Remarks
βπππ2π
Pure gasses and clean liquids
Stokes (1851)
π’β =
Davies and Taylor (1950)
π’β = 0.707 πππ
Haberman & Morton (1956)
π’β =
Mandelson (1967)
π’β =
π’β = π’β = Peebles and Garber (1953)
18ππ
ππ < 0.7 ππ
βπππ2π
viscosity and surface tension
3ππ + 3ππ
2π πππ + ππππ 2
1.4 ππ < ππ < 6 ππ For intermediateβlarge bubbles in pure liquids
π
π < 2
ππππ2π 18ππ
3.1ππ β0.25 < π
π
Lehrer(1976)
π’β = π’β =
4.02ππ β0.214 < π
π < 3.1ππ β0.25
1.18ππ2 ππ
π’β = 0.35 πππ
Applicable for slugs with a clean interface
3π πππβπ + ππππ 2ππ
( ) ππ
πππ
6 ππ < ππ
ππ β0.149(π½ β 0.857)
π½ = 0.94π»0.747
2 < π» < 59.3
0.441
59.3 < π»
π½ = 3.42π»
()
ππ 4 π» = πΈπππ β0.149 3 ππ€
(
Nickens et al. (1987)
π’β = 0.361 1 +
Jamilalahmadi et al. (1994)
π’β =
Rodrigu (2002)
π=
β0.14
0.25
)
4.89 πΈπ
π’β,π»π’β,π
π’β,π» is Haberman and Mortonβs correlation and
π’β,π»2 + π’β,π2
π’β,π is Mandlsonβs correlation
πΉ
V: Velocity number
12(1 + 0.018πΉ)0.75 β0.273
0.03
( ) () ( ) ( ) ()
π π3ππ π’β = 2.25 ππ ππ4π Wilkinson et al. (1992)
+2.4
Krishna et al. (1999)
2 < π
π < 4.02ππ β0.214
0.136π0.76π0.52 π1.28 π π
Dumitrescu (1943)
Krishna & Ellenberger (1996)
For small bubbles considering the effect of the inherent circular flow within the bubble
)
(
18ππ 2ππ + 3ππ
10π0.52 π 2ππ π’β = 1.35 ππππ π’β =
Clift et al. (1978)
For large bubbles without consideration of
π’β =
(ππ β ππ‘ππππ )ππ
ππ
ππ
0.757
π
π3ππ
β0.077
ππ
0.077
ππ
ππ4π
1 π·0.18(ππ β ππ‘ππππ )0.42 0.268 π» ππ
ππΉ = 1
π’β = 0.71 πππ(ππΉ)(π΄πΉ)
π·π»
( )
π΄πΉ = 2.25 + 4.09(ππ β ππ‘ππππ )
ππΉ = 1.13 ππ₯π β
21
ππ
π·π»
< 0.125
0.125 <
ππ π·π»
< 0.6
ππΉ = 0.496
π·π»
ππ
ππ
π·π»
> 0.6
Table 7: Existing correlations for bubble diameter. Researchers
Bubble diameter/volume
Eversole et al. (1941)
π ππ = 81.18 π0π
Hughes et al. (1955)
πππβπ ππ = 1.82 πβπ 6
(1960)
π 5 ππ = 1.772 3 π 5
Kumar et al. (1970)
ππ =
Acharya et al. (1978)
ππ = 0.976
Tsuge et al. (1986)
ππ = 6.9
Akita & Yoshida (1974)
ππ = 26π·π»
Davidson
and
Schuler
Remarks
0.25
0.75
( ) ( ) 4π 3
15ππ 2πππ 35
π2 π
( ) () ( ) ( ) ( ) π ππ
0.5
π0.44 π
π·2π»πππ
β0.5
π
ππ·3π»
β0.12
ππ
π2π
β0.04
ππ·π»
β0.12
( ) ( ) ()
π ππππ πππ π
π3ππ
Wilkinson & Haring (1994)
ππ = 38.8
Krishna at al. (1999)
ππ = 0.069(ππ β ππ‘ππππ )0.376
β0.12
ππ
0.22
ππ
ππ4π
Low- and high-viscous liquids
Many attempts have been made to predict the flow regime transition. A comprehensive study by Sheikh and al-Dahan (2007) reviewed existing efforts to understand the flow regime transition. By comparing different available correlations, the relations derived by Reilly et al. (1994) were utilized to calculate the transition velocity and gas holdup. The authors conducted experiments in 150-mm-diameter bubble columns using water and non-aqueous liquids as a continuous phase and different gases as a dispersed phase. They studied the effects of gas and liquid physical properties on the flow regime transition, and proposed the following correlations for the velocity and gas holdup at the transition point: ππ‘ππππ =
1 2.84π0.04 π
π0.12πΌπ‘ππππ (1 β πΌπ‘ππππ ) ,
0.12 πΌπ‘ππππ = 0.59π΅1.5(π0.96 /ππ) π π
0.5
(20)
,
(21)
where B=3.85, based on their experimental data. Substituting Equations (20) and (21) into Equation (13), the terminal velocity can be computed as follows: 22
(
(
π’β = 0.71 πππ(ππΉ) 2.25 + 4.09 ππ β
1 2.84π0.04 π
))
π0.12πΌπ‘ππππ (1 β πΌπ‘ππππ )
(22)
When Equations (10) and (11) are utilized, a new correlation for the drift velocity can be derived, where π’β is obtained by Equation (22): πΆ1 = (1 β 1.18β©πΌπβͺ)(1 β β©πΌπβͺ)π’β , 3.4.2
(23)
New correlations for the drift-flux model and gas holdup
A new correlation for the drift velocity was developed in the previous section. To derive the drift flux model, a proper formula for the distribution parameter also needs to be selected. Shipley (1984) worked with a wide range of gas and liquid velocities (with a total flux of 0.1β10 m/s) in a 240-mm-diameter column, and reported a value of πΆ0 equal to 1.2. This value is supported by several researchers working with different ranges of flow conditions (e.g. Clark and Flemmer, 1985; Joshi et al., 1998; Hills, 1976; Wallis, 1969; Zuber and Findlay, 1965). Because the distribution parameter for most two-phase flows is approximately 1.2, this value is selected hereafter to analyze the problem. Using the basic drift-flux model, the newly developed drift velocity obtained in the previous section, and the distribution parameter proposed by Shipley, a new correlation can be derived to predict the gas holdup for either large or small columns. Inserting πΆ0 = 1.2 and πΆ1 from Equation (23) into Equation (1) yields the following correlation:
β©ππβͺ = 1.2β©πβͺ + (1 β 1.18β©πΌπβͺ)(1 β β©πΌπβͺ)π’β , β©πΌπβͺ
(24)
After some manipulation, the following equation is proposed for the gas holdup: 1.18
π’β
β©ππβͺ
β©πΌπβͺ3 β 2.18
π’β
β©ππβͺ
(
β©πΌπβͺ2 + 1 +
β©ππβͺ π’β β©πΌ βͺ β 1 = 0 , + β©ππβͺ β©ππβͺ π
)
(25)
The gas holdup can be calculated by solving the above equation under different flow conditions. 4 Comparison of the newly developed semi-empirical correlations with the experimental data The proposed models for the drift velocity and gas holdup in a large-diameter column are evaluated using the available experimental data. The performance of the developed correlation in Equation (23), is compared with the data captured by Hibiki and Ishii (2003), Shawkat et al. (2008), 23
and Shen et al. (2010) shown in Figure 8. The proposed correlation predicts the majority of the data points within Β±20% error bands. 0.60 Predicted mean drift velocity, C1 (m/s)
Shen et al. (2010) Shawkat et al. (2008)
0.50
Hibiki & Ishii (2003) Hibiki & Ishii (1999)
0.40
Liu (1989) Β±20% error bands
0.30 0.20 0.10 0.00 0.00
0.10 0.20 0.30 0.40 Experimental mean drift velocity, C1 (m/s)
0.50
0.60
Fig. 8. Performance of the proposed correlation for the drift velocity against experimental data.
To verify that the correlation proposed in Equation (25) is applicable for different flow patterns, column diameters, or fluid systems, its performance was examined against experimental void fraction data. The comparison between the predicted values and available experimental data listed in Table 3 is illustrated in Figure 9.
24
0.60
Hills (1976) Das et al. (1992) Hibiki & Ishii (2002) Shawkat (2008) Abdulkadir et al. (2010) Schlegel (2010) Schlegel (2012) Schlegel (2013) Rollbucsh et al. (2015) Besagni & Inzoli (2017) Β±20% error bands
Predicted gas hodup, β©οΏ½οΏ½ βͺ (-)
0.50 0.40 0.30 0.20 0.10 0.00 0
0.1
0.2 0.3 0.4 Experimental gas hodup, β©οΏ½οΏ½ βͺ (-)
0.5
0.6
Fig. 9. Performance of the proposed correlation for the void fraction against available experimental data.
To investigate the quantitative performance of the proposed equation more comprehensively, the predictions of the void fraction for different column diameters, system pressures, and liquid phase properties are presented individually in Figures 10β12. It is observed that for a wide range of column diameters and system pressures the proposed correlation predicts the majority of the data within Β±20% error bands, and within Β±10% for different liquid phase dynamic viscosities. All the correlations developed for large and small columns in this study are summarized in Table 8. Table 8: Developed and recommended correlations. Proposed correlations
Remarks
πΆ1 = (1 β 1.18β©πΌπβͺ)(1 β β©πΌπβͺ)π’β
The mean drift velocity
1.18
π’β
β©ππβͺ
β©πΌπβͺ3 β 2.18
π’β
β©ππβͺ
(
β©πΌπβͺ2 + 1 +
β©ππβͺ π’β β©πΌ βͺ β 1 = 0 + β©ππβͺ β©ππβͺ π
)
Average gas holdup
β©ππβͺ = 1.2β©πβͺ + (1 β 1.18β©πΌπβͺ)(1 β β©πΌπβͺ)π’β β©πΌπβͺ
The drift-flux model
ππΉ = 1
25
πππ
ππ π·π»
< 0.125
(
(
π’β = 0.71 πππ(ππΉ) 2.25 + 4.09 ππ β
1
π0.12πΌπ‘ππππ (1 β πΌπ‘ππππ ) 0.04
2.84ππ
))
( )
ππΉ = 1.13 ππ₯π β
ππΉ = 0.496 β0.5
β0.12
( ) ( ) ( )
ππ = 26π·π»
π·2π»πππ π
ππ·3π» π2π
ππ
β0.12
1
π·π»
π·π»
πππ 0.125 <
ππ π·π»
< 0.6
ππ πππ > 0.6 π·π»
ππ
For bubbly flow, churn-turbulent, and annular flow
ππ·π»
(Proposed by Akita and Yoshida, 1974)
For Slug/ cap-turbulent flow
ππ = 0.069(ππ β ππ‘ππππ )0.376
ππ‘ππππ =
ππ
(Proposed by Krishna et al., 1999) Transition velocity and gas holdup
π0.12πΌπ‘ππππ (1 β πΌπ‘ππππ ) 0.04
(Proposed by Reilly et al., 1994)
2.84ππ
0.5
0.8 0.6 0.4 0.2
Das et al. (1992) Β±10% error bands
0 0
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
(a)
D= 0.019 m
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
0.2
0.4
0.6
0.8
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
1 0.8 0.6 0.4
26
0.2
Hibiki & Ishii (2000) Β±20% error bands
0 0
0.2 0.4 0.6 0.8 Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
0.8 0.6 0.4 0.2
Abdulkadir et al. (2010) Β±20% error bands 0
1
(c)
D= 0.102 m
(b)
D= 0.067 m
0
1
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
0.12 πΌπ‘ππππ = 0.59π΅1.5(π0.96 /ππ) π π
0.2 0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ0.8 (-)
(d)
D= 0.152 m
0.8 0.6 0.4 0.2
Schlegle et al. (2013) Β±20% error bands
0 1
1
0
0.2
0.4
0.6
0.8
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
1
Fig. 10. Performance of the proposed void fraction correlation for different column diameters.
1
(e)
D= 0.203 m
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1 0.8 0.6 0.4 0.2
Schlegel et al. (2013) Β±20% error bands
0 0
0.2
0.4
0.6
0.8
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
0.8 0.6 0.4 0.2
Schlegel et al. (2013) Β±20% error bands
0 1
27
(f)
D= 0.304 m
0
0.2 0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)0.8
1
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
(a)
P= 100 kPa
0.8 0.6 0.4 0.2
Schlegel et al. (2012) Β±20% error bands
0 0
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
0.2 0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)0.8
(b)
P= 180 kPa
0.8 0.6 0.4 0.2
Schlegel et al. (2010) Β±20% error bands
0 0
0.2 0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)0.8
1
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
1
(c)
P= 280 kPa 0.8 0.6 0.4 0.2
Schlegel et al. (2010) Β±20% error bands
0 0
0.2 0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)0.8
1
Fig. 11. Performance of the proposed void fraction correlation for different system pressures.
28
0.6 0.4 0.2
Rollbucsh et al. (2015) Β±10% error bands
1
0.2
0.4
0.6
0.8
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
ΞΌl = 7.9 mPa.s
0.6 0.4 Xing et al. (2013) Besagni et al. (2017)
1
0.2
0.4
0.6
0.8 0.6 0.4
Xing et al. (2013) Β±10% error bands 0
0.2
0.4
0.6
0.8
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
0.6 0.4 0.2
Xing et al. (2013) Β±10% error bands 0
0.2
0.4
0.6
1
(f)
ΞΌl = 40- 185 mPa.s
0.8 0.6 0.4 Das et al. (1992) Esmaeili (2015) Β±20% error bands
0.2
0
0.2
0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ0.8 (-)
Fig. 12. Performance of the proposed void fraction correlation for different liquid viscosities.
29
0.8
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
0 1
1
(d)
ΞΌl = 20.1 mPa.s
1
(e)
0
0.4 0.6 Experimental gas holdup, β©οΏ½οΏ½ βͺ0.8 (-)
0.8
1
Experimental gas holdup, β©οΏ½οΏ½ βͺ (-)
0.2
0.2
0
0.8
ΞΌl = 39.6 mPa.s
Schlegel et al. (2012) Yang & Fan (2003) Β±20% error bands
0.2
0
Β±20% error bands 0
0.4
1
0.8
0
0.6
0
(c)
0.2
(b)
ΞΌl = 1.0 mPa.s
0.8
1
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
0
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
0.8
0
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
(a)
ΞΌl = 0.3 mPa.s
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
Predicted gas holdup, β©οΏ½οΏ½ βͺ (-)
1
1
The accuracy of the proposed gas holdup correlation is also assessed based on the statistical parameters such as mean relative error (ππ¦) and the standard deviation (π ) between the experimental and predicted values of gas holdup. The mean relative error and the standard deviation are determined using Equations (26) and (27), respectively. 1 ππ¦ = Γ π
π
β| 1
π
β [|
1 π = πβ1
|
πΌπ,ππ₯π β πΌπ,ππππ πΌπ,ππ₯π
,
(26)
| ]
πΌπ,ππ₯π β πΌπ,ππππ πΌπ,ππ₯π
1
2
β ππ¦ ,
(27)
The comprehensive datasets listed in Table 3, are divided into three different ranges of gas holdup based on the associated two-phase flow patterns. The first range of gas holdup of 0 < πΌπ β€ 0.25 is based on bubbly flow regime, the second range is based on the churn turbulent/slug flow pattern that approximately occupies a gas holdup range of 0.25 < πΌπ β€ 0.75. Finally, the last division is related to the annular flow pattern that is in a range of 0.75 < πΌπ β€ 1.0. The quantitative performance of different existing correlations for gas holdup is represented in Table 9. Table 9: Statistical comparison of the performance of the proposed model against the existing correlations. Gas holdup range
0 < πΌπ β€ 0.25
0.25 < πΌπ β€ 0.75
0.75 < πΌπ β€ 1.0
(705 Data points)
(1025 Data points)
(149 Data points)
Correlations
ππ¦
s
Present study
0.0003
0.0097
Hills (1976)
0.0004
Shipley (1984)
% of Data
% of Data
s
% of Data
ππ¦
s
79
0.0001
0.0067
93
0.0004
0.0058
100
0.0127
40
0.0002
0.0070
64
0.0013
0.0184
54
0.0003
0.0097
65
0.0001
0.0058
90
0.0007
0.0093
100
Kataoka and Ishii (1987)
0.0003
0.109
49
0.0001
0.0071
91
0.0006
0.0078
100
Clark and Flemmer (1985)
0.0004
0.0138
48
0.0002
0.0056
67
0.0022
0.0267
0
Clark and Flemmer (1986)
0.0003
0.0105
63
0.0002
0.0076
55
0.0027
0.0330
0
Kawanishi et al. (1990)
0.0006
0.0164
15
0.0001
0.0050
70
0.0007
0.0096
98
Hibiki and Ishii (2003)
0.0003
0.0110
46
0.0001
0.0083
89
0.0006
0.0078
100
Ishii (1977)
0.001
0.0444
35
0.0003
0.0167
49
0.002
0.0421
64
ππ¦ β€ 20%
30
ππ¦ β€ 20%
ππ¦
ππ¦ β€ 20%
For the first range of gas holdup, the proposed correlation predicts 79% of the data points within Β±20% error bands. For this range, the developed model gives the lowest mean relative error (0.0097). For the second range of gas holdup, approximately representing churn turbulent/slug flow regime, the proposed correlation predicts 93% of data points within Β±20% error bands and is comparable to the performance of Shipley (1984), and Kataoka and Ishii (1987). For 0.75 < πΌπ β€ 1.0, the suggested correlation in this study yields the highest accuracy by predicting 100% of data points within Β±20% error bands. 4
Conclusion
In view of the practical importance of the drift-flux model for the analysis of two-phase flows, a comprehensive investigation of different flow conditions was conducted, the distribution parameter and drift velocity were studied, and a new approach for calculating the drift velocity and gas holdup was presented. The results can be summarized as follows: 1- Based on the experimental local flow parameters obtained by Shawkat et al. (2008) and Shen et al. (2010), the distribution parameter and drift velocity were calculated directly from their definitions, and the results were compared with those of several existing models proposed to estimate drift-flux parameters. The comparisons show that the models of Ishii and of Clark and Flemmer cannot predict the distribution parameter. Furthermore, Hibiki and Ishiiβs correlation can only predict the correct values at low velocities, and overestimates when
β©ππβͺ β©πβͺ
is greater than 0.2.
2- The comparison between the estimations using the existing drift velocity correlations and the collected experimental data showed that none of the selected correlations can estimate the drift velocity. 3- Furthermore, the drift-flux parameters in small- and large-diameter columns were compared, and a significant difference was observed. The formation of cap bubbles and the occurrence of liquid recirculation can affect the flow characteristics in large-diameter columns. 4- New correlations for the drift velocity and gas holdup were derived. As the two-phase flow characteristics could be influenced by the bubble size, two different correlations were selected, for small and large bubble diameters. The derived correlations yield practically
31
reasonable predictions for an extensive range of column diameters, system pressures, and fluid properties. 5- As the majority of datasets utilized in this study are based on Newtonian liquids, with the exception of some data of Das et al., it is recommended to verify the accuracy of the model against more diversified fluid systems with non-Newtonian liquids. According to the overall performance of the proposed correlation, it is recommended for utilization to predict void fractions in the ranges listed in Table 3. Acknowledgment We gratefully acknowledge the financial support of the Natural Sciences and Engineering Research Council of Canada (NSERC).
32
NOMENCLATURE AF
Acceleration factor (-)
C0
Distribution parameter (-)
C1
Drift velocity (m/s)
C1,B
Ishiiβs Drift velocity (m/s)
C1,P
Kataoka & Ishiiβs Drift velocity (m/s)
πΆπ·
Drag force coefficient of a bubble in the swarm (-)
πΆπ·β
Drag force coefficient of an isolated bubble (-)
πΆπΌ
Void fraction covariance (-)
πΆπ
Constant in k-Ξ΅ model (-)
πΆπ1, πΆπ2
Constants in k-Ξ΅ model (-)
ππ
Bubble diameter (m)
π·π»
Hydraulic diameter of the flow channel (m)
π·π π
Sauter mean diameter (m)
ππ¦
Mean relative error (-)
πΉππ
Total interfacial forces (N/m3)
πΉπ·
Drag force (N/m3)
πΉπΏ
Lift force (N/m3)
πΉππ
Virtual mass force (N/m3)
πΉππΏ
Wall lubrication force (N/m3)
g
Gravity (m/s2)
G
Generation of turbulent kinetic energy (J/m3.s)
π
Mixture volumetric flux (m/s)
ππ
Superficial gas velocity (m/s)
ππ
Superficial liquid velocity (m/s)
k
Turbulent kinetic energy (m2/s2)
N
Number of data points (-)
P
Pressure (Pa)
ππ·
Correction factor of drag coefficient (-)
Re
Reynolds number (-)
33
s
Standard deviation (-)
SF
Scale correction factor (-)
u
Velocity (m/s)
π’π
Local liquid velocity (m/s)
π’π
Local gas velocity (m/s)
π’β
Terminal velocity (m/s)
ππ‘ππππ
Transition velocity (m/s)
ππ
Slip velocity (m/s)
Greek letters Ξ±
Phase void fraction (-)
Ξ±π‘ππππ
Transition void fraction (-)
ππ
Turbulent viscosity (Pa.s)
ππππ
Effective viscosity (Pa.s)
ππ
Prandtle number for turbulent kinetic energy (-)
ππ
Prandtle number for turbulent energy dissipation rate (-)
ππ
Shear stress of phase k (Pa)
Β΅
Molecular viscosity (Pa.s)
Ξ±g
Local gas holdup (-)
Ξ±g,exp
Experimental gas holdup (-)
Ξ±g,pred
Predicted gas holdup (-)
Ξ΅
Turbulent energy dissipation rate (m2/s3)
πππ
Drift velocity of gas phase (m/s)
ππ
Gas phase velocity (m/s)
ππ
Liquid phase velocity (m/s)
ππ
Relative velocity between phases (m/s)
Ξ½
Kinematic viscosity (m2/s2)
Ο
Density (kg/m3)
Ο
Surface tension (N/m)
Subscripts g
Gas phase
34
k
Phase index
l
Liquid phase
p
Primary phase in Schiller and Naumann model
q
Secondary phase in Schiller and Naumann model
tp
Two phase
35
References
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41
Highlights ο·
The existing correlations for πΆ0 and πΆ1 were re-evaluated against the published experimental data.
ο·
The values of the distribution parameter and drift velocity in small- and large-diameter columns were compared.
ο·
Semi-empirical correlations for the drift velocity and gas holdup were developed.
ο·
The proposed correlations were verified against a wide range of experimental data.
42
Declaration of interests
β The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
βThe authors declare the following financial interests/personal relationships which may be considered as potential competing interests:
43