Abstract
Modeling of heat and mass transfer in liquid fuel combustion requires several material properties in a wide temperature and pressure range. The unavailable data are commonly patched with various estimation methods. In this paper, group contribution methods (GCM) and law of corresponding states (LCS) were analyzed for estimating material properties of n-alkanes (up to C10H22 and C12H26), 1-alcohols (up to C10H22O), and methyl esters (up to C19H38O2 and C19H36O2). These were compared to reference data to evaluate their applicability. LCS suggested by Poling et al. provides proper estimation for the acentric factor. GCM of Joback accurately estimates normal boiling point, critical properties, and specific heat capacity of the vapor-phase, the latter was corrected for methanol, however, GCM of Constantinou is more accurate for critical pressure of methyl esters. GCM of Ruzicka is suitable for estimating liquid-phase specific heat capacity. This method was updated for methanol. GCM of Elbro gives a proper estimation for liquid-phase density, while LCS of Lucas estimates vapor-phase viscosity properly. LCS of Chung and the modified Eucken method for vapor-phase and GCM of Sastri for liquid-phase thermal conductivity are appropriate. Considering the gas-phase mutual diffusion coefficient, the method of Fuller provides the best estimation, while LCS methods of Riedel and Chen are suitable for the enthalpy of vaporization at the normal boiling point.
Similar content being viewed by others
Avoid common mistakes on your manuscript.
1 Introduction
Biomass-to-fuel conversion methods have attracted numerous theoretical and practical research in the past few decades with special emphasis on the transportation sector [1, 2]. There are numerous ways available to produce biofuels. Short- and long-chain n-alkanes can be produced from synthesis gas by chemo- and biocatalytic processes [3, 4]. The main source of alcohols is fermentation which provides positive energy balance [5, 6]. It is known that alcohol/diesel blend utilization improves the performance and lowers the pollutant emissions of internal combustion engines [7, 8]. Methyl esters are produced from fats and vegetable oils by esterification and mainly used in biodiesel fuels as a renewable additive to diesel oil, thus information on material properties is indispensable [9, 10]. The present paper deals with the three molecular groups due to their dominance in the renewable fuel industry [11, 12].
Upon selecting the principal characteristics, nowadays, combustion chamber design for liquid fuels starts with numerical analysis, including all the major heat and mass transfer processes [13,14,15]. Then the results are validated by experiments [16, 17]. Nevertheless, modeling the heat and mass transfer of a real multicomponent or nanofluid [18] fuels is still challenging [19, 20] since the majority of the used material property models are not validated in a practically adequate extent.
Modeling heat and mass transfer requires the knowledge of several thermodynamic properties [21]. Some of them are constant, e.g., critical temperature, pressure, volume, and normal boiling point. Others depend on the thermodynamic conditions, they are, e.g., specific heat capacity and thermal conductivity of both the liquid and vapor phases, liquid density, vapor viscosity, gas-phase mutual diffusion coefficient of fuel vapor and the ambient gas, and enthalpy of vaporization. Therefore, they have a significant influence on model sensitivity and validation [22]. The most notable difficulty in practice is that the above-mentioned data are highly limited. Unfortunately, the limitations of these methods are seldom discussed with the engineer who runs a commercial software code that relies on these estimations.
The present study reviews the available pure component material property estimating methods required for calculating the evaporation of a droplet which are mainly discussed in ref. [23]. Su et al. [24] also provide a comprehensive review for the available estimating techniques with the originally published statistical parameters to predict their accuracy for several material properties. The motivation of the present study originates from combustion, hence, estimating methods for material properties required for heat and mass transfer calculations are emphasized. These approaches all rely on molecular theory, aiming to be as general as reasonable which does not necessarily work for all materials. More precisely, there are flaws even for a series of simple hydrocarbons. Consequently, there are a few different methods available for the calculation of a single material property. Note that other molecules, e.g., branched alkanes and cyclic compounds are also relevant in combustion technology. However, reliable reference data for them in terms of all the necessary material properties are often unavailable or limited to narrow ambient conditions. Hence, this paper evaluates solely n-alkanes, 1-alcohols, and methyl esters, focusing on parameters influencing droplet evaporation.
2 Models
The evaluated material property estimating methods are discussed next, highlighting the key equations only. Their theoretical background is available for the reader in the cited references nearby. These models can be divided into two main groups. The first one is using the law of corresponding states (LCS), and the other is relying on the group contribution method (GCM) [23]. According to LCS, the equilibrium properties, which are depending on intermolecular forces, are related to the critical properties. Therefore, pressures, volumes, and temperatures are discussed as reduced values (e.g., pressure divided by the critical pressure) and assumed as identical for all fluids, thus properties can be determined in terms of the critical parameters with general empirical models. Consequently, LCS works well mostly for simple molecules. However, improved accuracy can be reached by adding extra parameters which characterize the molecular structure, such as acentric factor for weakly polar and dipole moment for strongly polar molecules, and semi-empirical constants based on measurement data. GCM is relying on the following philosophy. Molecular structure and intermolecular bonds determine the intermolecular forces which is the governing factor of the macroscopic properties. This approach uses weighting factors for atoms, functional groups, and bond types, and their contributions are summed, then the result is empirically corrected. The contributions are determined from reference data by a suitable optimization procedure. Therefore, a comprehensive measurement database is required in terms of molecule types and chain lengths in order to provide a sufficiently accurate and general method. The investigated models were chosen because of their simplicity and general applicability, however, improved variants are available in the literature [25]. In a practical application like combustion the more general formulation due to the wide temperature and pressure range and the low computational demand are essential for solving a large set of equations at millions of nodes simultaneously [26]. The evaluated estimation methods are discussed below for the relevant material properties of liquid evaporation.
2.1 Acentric factor
The acentric factor, ω, was originally introduced by Pitzer et al. [27], using LCS. The slope of the vapor pressure curve is related to the entropy of vaporization, hence they regarded ω as a measure of the increase in the entropy of vaporization over that of a simple fluid. For a simple fluid the reduced vapor pressure, pvr = pv/pc is almost accurately 0.1 at a reduced temperature, Tr = T/Tc = 0.7, where pv, pc, and Tc are vapor pressure, critical pressure, and critical temperature, respectively. Pitzer et al. [27] considered this point on the vapor pressure curve to determine the acentric factor because it is far enough from the critical point and above the melting point for nearly all materials. Therefore, their original definition is the following:
where pvr,0.7 is the reduced vapor pressure at Tr = 0.7. Poling et al. [23] suggested the following equation for the acentric factor:
where both f(0) and f(1) are functions of the normal boiling temperature, Tbn, and critical temperature, developed by Ambrose [28]. Equation (2) results from ignoring the term ω2 in the original Pitzer expansion and solving for ω [23]. Constantinou et al. [29] developed a GCM-based approach for calculating ω:
where Nk and wk are the number and weighting factors of the kth group, respectively.
2.2 Normal boiling point and critical properties
Joback [30, 31] reevaluated the existing GCM schemes for Tbn, Tc, pc, and critical volume, Vc, and determined the following equations:
where tbnk, tck, pck, and vck are the weighting factors for Tbn, Tc, pc and Vc, respectively. Natom is the number of atoms in the molecule. Constantinou et al. [29, 32] also developed a GCM-based estimation method for the critical parameters and normal boiling point, using another functions:
where the tbnk, tck, pck, and vck constants with tilde differ from the ones used in Eqs. (4)–(7). Nevertheless, they bear a similar meaning.
2.3 Specific heat capacity of the vapor
Assuming that the vapor-phase of a substance can be modeled as an ideal gas at atmospheric pressure, Joback [30, 31] and Nielsen [33] derived the following equations for the specific heat capacity of the vapor, defined by Eqs. (12) and (13):
where CpAk, CpBk, CpCk, and CpDk are the contribution constants of the kth relevant group and M is the molecular mass. The tilde differentiates the constants used by the two models. Note that Nielsen [33] used the same group contributions determined by Constantinou [29, 32].
2.4 Liquid specific heat capacity
Ruzicka and Domalski [34] proposed a GCM to calculate the specific heat capacity of liquids, cp,l, from the melting point to the boiling point:
where ak, bk, and dk are the contribution constants of the kth relevant group, and ℜ is the universal gas constant. Another method was proposed by Poling et al. [23] who revised the LCS of Bondi [35] for calculating cp,l:
2.5 Vapor dynamic viscosity
LCS of Chung et al. [36, 37] relates the Lennard-Jones potential parameters to macroscopic parameters in order to determine dynamic viscosity of the vapor, μv, according to Eq. (16):
where Fc is the function of ω and dipole moment, and Ωv is the viscosity collision integral which is the function of Tr. Another LCS from Lucas [38] has been investigated for the estimation of μv, defined by Eq. (17):
where the value of FPO is the function of the dipole moment, pc, and Tc.
2.6 Vapor thermal conductivity
Chung et al. [36, 37] applied LCS to obtain the thermal conductivity of the vapor-phase, kv, defined by Eq. (18):
where Ψ is a function of cp,v, ω, and Tr. Equation (19) is the popular Eucken method [23], an alternative way to estimate kv. Equation (19) was modified by Svehla [39] as Eq. (20), and Stiel and Thodos [40] also proposed a correction, defined by Eq. (21):
where cv,v is the constant volume specific heat capacity of the vapor.
2.7 Liquid thermal conductivity
The estimation methods for the liquid thermal conductivity, kl, are extensively empirical, therefore, testing and validating them is mandatory. Equation (22) was developed by Latini and Pacetti [41]:
where A, α, β, and γ are constants, depending on the type of the molecule. Sastri and Rao [42, 43] recommended two GCMs, defined by Eqs. (23) and (24):
where a and n are constants, depending on the molecule type. Tbr = Tbn/Tc and ∆kk is the contribution constants of the kth relevant group.
2.8 Liquid density
Two GCMs for estimating liquid density, ρl, have been investigated. Baum [44] suggested Eq. (25):
where n is a constant, depending on the molecule type, and vk is the contribution constants of the kth relevant atom in the molecule. Eq. (26) was obtained by Elbro et al. [45]:
where Ak, Bk, and Ck are the contribution constants of the kth relevant groups.
2.9 Gas-phase mutual diffusion coefficient
The gas-phase mutual or binary diffusion coefficient, D12, refers to the diffusion in a binary system consisting of constituents 1 and 2. The classical Chapman-Enskog formula [23] is defined by Eq. (27):
where σ12 is the average Lennard-Jones characteristic length of the constituents, M12 is the average molecular mass, and ΩD is the diffusion collision integral, which is the function of T and the average Lennard-Jones characteristic energy of the constituents. Equation (27) has been empirically modified by Wilke [46] and Fuller et al. [47, 48], leading to Eqs. (28) and (29), respectively:
where Σv is the sum of atomic and structural diffusion volume increments of the corresponding molecules.
2.10 Enthalpy of vaporization at the normal boiling point
Calculating the latent heat of vaporization is often necessary in heat and mass transfer problems. The Watson relation [23, 49] is frequently used for this purpose, where the enthalpy of vaporization is an input parameter. When atmospheric conditions are considered, enthalpy of vaporization at the normal boiling point is required. Riedel [50], Chen [51], and Vetere [52] correlated the enthalpy of vaporization with the critical parameters by LCS, leading to Eqs. (30), (31), and (32), respectively when applied to the normal boiling point:
where F = 1, except for alcohols with more than two carbon atoms.
3 Materials
The investigated materials are summarized next. Their evaluated material properties were gathered principally from the NIST [53] and other databases [23, 54, 55]. However, ref. [54] was only used for the normal boiling points of longer-chain methyl esters (from C13 to C19), 10 data points for liquid-phase density of 1-alcohols (from C2 to C10), and 11 data points for liquid-phase density of methyl esters (from C3 to C19:1), but only at room temperature, where reference data were considered reliable. Ref. [54] refers to National Oceanic and Atmospheric Administration’s Office of Response and Restoration - Cameo Chemicals Database of Hazardous Materials [56] in case of liquid density of C6–C7 methyl esters and to National Library of Medicine of the National Institutes of Health - Hazardous Substances Data Bank (HSDB) [57] in case of the other data points. Ref. [54] also indicates the details of the original references for all the individual data points found in HSDB and Cameo Chemicals Database. For further information, the reader is directed to ref. [54]. Material properties from the NIST [53] and refs. [23, 54] databases were used as reference values at atmospheric pressure, except for the gas-phase mutual diffusion coefficient which was obtained from ref. [55]. For the gas-phase mutual diffusion coefficient, both atmospheric and elevated pressures were investigated. D12 was available for methanol and ethanol at high pressures, up to 100 bar, as well. Homologous series of n-alkanes from methane (CH4) to decane (C10H22) and dodecane (C12H26) were investigated as this range is of great relevance in practical combustion chambers, as the kinetics of fuel thermal cracking to form smaller molecular fragments is fast in high-temperature environments [58, 59]. Moreover, C5–C12, C8–C16, and C10–C22 n-alkanes are present in gasoline, kerosene, and diesel fuels, respectively [4]. However, reliable temperature-dependent reference data for the estimated material properties were only available up to C12H26. Furthermore, homologous series of primary alcohols from methanol (CH4O) to decanol (C10H22O) and methyl esters from methyl ethanoate (C3H6O2) to methyl stearate (C19H38O2) and methyl oleate (C19H36O2) were evaluated due to the scarce data for higher carbon numbers. Besides their direct utilization, they are often used in surrogate mixtures of conventional and renewable fuels. Moreover, these compounds are typically used for construction of reaction mechanisms and combustion simulations, where thermodynamic properties are often needed. Figure 1 shows the general structure of the investigated materials. Note that methyl oleate (C19H36O2) has a CH=CH double bond, thus the structure is different from the saturated hydrocarbon chain shown in Fig. 1. However, it is the only molecule with unsaturated hydrocarbon chain discussed in the present paper. Reference data was available for the acentric factor, critical properties, Tbn, cp,v, cp,l, ρl, D12, and HTbn for all three types of molecules. kv, kl, and μv were only available for n-alkanes. Table 1 contains the relevant groups of the investigated materials for each GCM, and Table 2 contains the corresponding uncertainties of the reference data, where it was available. Table 3 contains the availability of the reference data. This dataset is accessible in the following online repository [60].
4 Results and discussion
The comparison of the estimating methods and the reference data is analyzed in the present section. For reference, the relative deviation of ±5% was included in all cases. Figure 2 shows the comparison of LCS proposed by Poling et al. and GCM of Constantinou for estimating the acentric factor for C1-C12 n-alkanes, C1-C10 1-alcohols and C4-C5 methyl esters. The latter method is inapplicable for methane, hence that value was omitted from Fig. 2b. LCS suggested by Poling et al. provided better estimation, as GCM of Constantinou significantly underestimated ω for C1-C7 1-alcohols and slightly underestimated it for methyl esters. Moreover, ω of short-chain n-alkanes are slightly overestimated, shown in Fig. 2b.
Figures 3 and 4 show the GCM of Joback and Constantinou for Tbn, Tc, Vc, and pc, respectively. Methods of Joback and of Constantinou are inapplicable for methane, because only group C can be applied for the calculations which is obviously insufficient and leads to improper estimations. Generally, the accuracy of both GCMs increases with the length of the carbon chain, as the agreement with reference data is better for higher values of Tc, Vc, and lower values of pc, therefore, these methods may work for even longer-chain molecules as well. Note that the possibility for extrapolation depends on the range of molecules that was originally used to determine the group contributions for each method. If the range of original reference data was wide concerning molecular weight and chemical families as well, the method is more robust and universal. In case of the presently investigated chemical families, there are only a few different groups, thus the group contributions determined in the investigated methods were based on a broad dataset. For instance, in case of the method of Joback, original reference data for determining the group contributions were available for the normal boiling point and critical properties up to n-eicosane, 1-eicosanol, and methyl butanoate for n-alkanes, 1-alcohols, and methyl esters, respectively. This may allow us to extrapolate within reasonable limits, if no further data are available. As an example, normal boiling points of methyl esters are estimated within 5% deviation shown in Fig. 3a, although no reference data were available for longer-chain methyl esters when group contributions were determined originally by Joback, demonstrating the justification of the possible extrapolation. GCM of Constantinou notably underestimates Tbn for longer-chain methyl esters, despite the good estimation for the other molecule types. The deviation of Tbn of C2-C3 n-alkanes exceeds 5% by either approach, shown in Fig. 3a and b. The method of Constantinou notably underestimates Tbn and Tc of methanol, shown in Fig. 3b and d. However, both methods estimate Vc properly, shown in Fig. 4a and b. The method of Joback is superior for Tc and Tbn for all the investigated substances while the method of Constantinou provided a better estimation for pc, shown in Fig. 4d, since the method of Joback highly overestimated this property of methyl esters, shown in Fig. 4c. The used optimization criterion for determining the group contributions for the estimating methods may result in the different accuracy for shorter- and longer-chain molecules. For instance, Joback [30, 31] minimized the sum of absolute deviations, which resulted in slightly higher errors for the outliers but provided better estimation for the majority of the compounds. In case of n-alkanes, ethane has a slightly different structure with only CH3 groups, than the longer-chain molecules with only a difference in an additional CH2 group. Methanol and methyl ethanoate have different structures in their own chemical family, as well. However, OH, COO, and CH3COO groups have higher group contributions, than CH2 and CH3 groups, thus this effect is less considerable for 1-alcohols and methyl esters.
The critical parameter is unique for each material. Since the properties discussed next are functions of temperature and/or pressure, the markers were modified for better presentation. Figure 5 shows the comparison of the method of Joback and Nielsen for cp,v estimation of C2-C12 n-alkanes, C1-C5 1-alcohols, and methyl ethanoate. Methane was excluded, as both methods are inapplicable. cp,v of methanol vapor could not be estimated properly by either methods for Tr < 0.75 since it is not monotonic at 1 bar, see Fig. 5c. From the boiling point to approximately 390 K, it decreases, then increases with temperature at T > 390 K. This behavior of methanol was investigated earlier by Weltner and Pitzer [61]. For the other investigated materials, cp,v increases with temperature. The method of Nielsen highly overestimates cp,v of methyl ethanoate while the method of Joback estimates that within 5% deviation except for Tr > 2.35, although no reference data were available for methyl esters when group contributions for cp,v were determined originally by Joback [30], which shows the robustness of the method. Therefore, the method of Joback performs better for cp,v estimation. Moreover, a correction function was introduced, only for methanol, for the method of Joback, in order to capture the non-monotonic behavior of cp,v:
where cp,v,Joback is the result of Eq. (12). The range of validity of Eq. (33) is 0.66 < Tr < 1.21. Note that Fig. 5a shows the corrected cp,v values for methanol.
For cp,l, a modified LCS method of Bondi and a GCM of Ruzicka are compared for C2-C12 n-alkanes, C1-C10 1-alcohols, and C3-C11 and C15 methyl esters. Note that ω and cp,v are input parameters for the modified LCS of Bondi, Eq. (15). As a consequence, cp,v was calculated with GCM of Joback and Fig. 6a contains only those fluids, where ω was available as reference data. Methane was excluded from Fig. 6, as both GCM of Joback and GCM of Ruzicka are inapplicable. Generally, cp,l increases with temperature for the investigated fluids, except for ethane, which has a minimum at 1 bar. This non-monotonic behavior cannot be captured by either methods for ethane, shown in Fig. 6. Modified LCS of Bondi provided a highly inaccurate approximation for methanol, thus those values were omitted in Fig. 6a. Nevertheless, both methods provided an appropriate estimation for n-alkanes while the results of GCM of Ruzicka agree better with reference data in case of 1-alcohols and methyl esters. Consequently, the method of Ruzicka performed better in general. Note that cp,l of methanol had a non-unity slope and its cp,l was estimated within 5% deviation for 0.5 < Tr < 0.6 by the GCM of Ruzicka. Fortunately, a correction function for Eq. (14) for only methanol was able to provide an excellent fit. This is the following:
where cp,l,Ruzicka is the result of Eq. (14). The range of validity of Eq. (34) is 0.34 < Tr < 0.66. Both a third order polynomial and a two-term exponential fit worked well in the range of the available data, however, the exponential variant captured the trends even at the edges, as shown in Fig. 6b.
ρl was available for all the investigated fluids, however, reference data for μv, kv, and kl was only available for n-alkanes, therefore, the present evaluation is confined to them, and only the results of the best performing methods are presented. Generally, lower ρl, kl, and higher μv, kv values correspond to higher temperature for the investigated materials. Figure 7a and b show the comparison of ρl and μv with reference data. GCM of Elbro estimated liquid density excellently. However, it is not applicable for methane, thus it was excluded from Fig. 7a. Note that GCM of Elbro is not suitable for methanol, however GCM suggested by Baum, Eq. (25), provided proper estimation within 5% deviation for 0.34 < Tr < 0.66, not shown here. LCS of Lucas is accurate for μv estimation, shown in Fig. 7b. Both the LCS method of Chung and the modified Eucken method, Eq. (20), provided an excellent estimation for kv while only the latter is presented in Fig. 7c. For kl, GCMs of Sastri worked well, however, Eq. (23) failed to yield an acceptable temperature-dependent result. Eq. (24) provided a slightly better estimation for kl, thus these results are shown in Fig. 7d.
As the gas-phase mutual diffusion coefficient is interpreted for two constituents, nitrogen was selected as a pair for all the investigated materials, as it is often used as an inert ambient gas in mass transfer experiments. Figure 8 shows the comparison of the classical Chapman-Enskog formula, the method of Wilke, and the method of Fuller for C1-C6 n-alkanes. The investigated D12 range is divided for better visualization, as there is an order of magnitude difference in the gas-phase mutual diffusion coefficient due to the temperature dependency. Based on the available reference data, the last model outperformed all the others in the presented range, even at high temperatures. Nevertheless, the classical Chapman-Enskog formula is widely used, even in the state-of-the-art numerical codes [62], although the method of Fuller requires more general input data of the constituents, which are broadly available in refs. [47, 48]. As D12 decreases with pressure, Fig. 9 shows the comparison of the former methods for methanol, ethanol, and methyl ethanoate at atmospheric and elevated pressure (up to 100 bar) conditions. For the latter case, the method of Fuller estimates D12 within ±10% deviation. For atmospheric pressure, method of Fuller estimates D12 of ethanol properly while it underestimates that of methanol. Generally, the deviation increases with temperature, which corresponds to higher D12 values. All the other methods provided even less accurate estimation for methanol.
As with the critical parameters, the enthalpy of vaporization at the normal boiling point is also unique for each material. Figure 10. shows the comparison of methods suggested by Riedel, Chen, and Vetere for C1-C12 n-alkanes, C1-C6 1-alcohols, and C3-C5 methyl esters. In general, all of them provide sufficient estimation. However, LCS of Vetere slightly underestimates HTbn of 1-alcohols in the range of 400–700 kJ/kg. Therefore, LCS methods of Riedel and Chen are recommended.
Table 4 summarizes the average relative deviation (ARD) values for each of the investigated material property estimation methods for all molecules, calculated by Eq. (35) to quantify the aforementioned evaluation:
where N is the number of reference data points for a certain property, calci is the calculated, while refi is the reference value, respectively.
5 Conclusions
Several formulae are available for estimating various thermodynamic properties of fuels since the available reference database is often limited. They are all based on the law of corresponding states (LCS) and the group contribution method (GCM) which are connected to molecular theory. Since none of the formulae are universal, numerous methods were evaluated in the present paper against reference data, leading to the following conclusions about their applicability for principally liquid fuel combustion applications.
-
1.
LCS proposed by Poling et al. is recommended for calculating the acentric factor.
-
2.
GCM of Joback is more universal and suitable for estimating atmospheric boiling temperature, specific heat capacity of the vapor-phase, and critical properties, except for pc, where GCM of Constantinou is recommended. However, a correction function for GCM of Joback was introduced for cp,v of methanol for 0.66 < Tr < 1.21.
-
3.
For liquid-phase specific heat capacity, GCM of Ruzicka performed the best. A correction function was introduced for methanol only in order to estimate cp,l properly for 0.34 < Tr < 0.66.
-
4.
GCM of Elbro is applicable for estimating liquid density. For n-alkanes, the LCS method of Lucas estimates vapor viscosity properly. As for thermal conductivity, the LCS method of Chung and the modified Eucken method for vapor-phase and GCM of Sastri for the liquid-phase are the best approaches.
-
5.
Based on reference data for n-alkanes, methanol, ethanol, and methyl ethanoate in a nitrogen atmosphere, method of Fuller provided acceptable estimation for the gas-phase mutual diffusion coefficient.
-
6.
LCS methods suggested by Riedel and Chen are suitable for determining the enthalpy of vaporization at the normal boiling point.
Abbreviations
- ARD :
-
Average relative deviation, %
- c p :
-
Specific heat capacity at constant pressure, J/(kg·K)
- c v :
-
Specific heat capacity at constant volume, J/(mol·K)
- D 12 :
-
Gas-phase mutual diffusion coefficient, m2/s
- H :
-
Enthalpy of vaporization, J/kg
- k :
-
Thermal conductivity, W/(m·K)
- M :
-
Molecular mass, kg/kmol
- p :
-
Pressure, bar
- ℜ:
-
Universal gas constant (8.314 kJ/(kmol·K))
- T :
-
Temperature, K
- V :
-
Volume, cm3/mol
- μ :
-
Dynamic viscosity, Pa·s
- ρ :
-
Density, kg/m3
- σ :
-
Deviation
- ω :
-
Acentric factor, 1
- bn :
-
Boiling point at 101,325 Pa
- c :
-
Critical
- est :
-
Estimation
- l :
-
Liquid
- r :
-
Reduced value
- ref :
-
Reference
- T :
-
Temperature
- v :
-
Vapor
References
Dunn JB (2019) Biofuel and bioproduct environmental sustainability analysis. Curr Opin Biotechnol 57:88–93. https://doi.org/10.1016/j.copbio.2019.02.008
Li Y, Tang W, Chen Y et al (2019) Potential of acetone-butanol-ethanol (ABE) as a biofuel. Fuel 242:673–686. https://doi.org/10.1016/j.fuel.2019.01.063
Lødeng R, Lunder O, Lein J-E et al (2018) Synthesis of light olefins and alkanes on supported iron oxide catalysts. Catal Today 299:47–59. https://doi.org/10.1016/j.cattod.2017.06.039
Deneyer A, Renders T, Van Aelst J et al (2015) Alkane production from biomass: chemo-, bio- and integrated catalytic approaches. Curr Opin Chem Biol 29:40–48. https://doi.org/10.1016/j.cbpa.2015.08.010
Mączyńska J, Krzywonos M, Kupczyk A et al (2019) Production and use of biofuels for transport in Poland and Brazil – the case of bioethanol. Fuel 241:989–996. https://doi.org/10.1016/j.fuel.2018.12.116
Alfonsín V, Maceiras R, Gutiérrez C (2019) Bioethanol production from industrial algae waste. Waste Manag 87:791–797. https://doi.org/10.1016/j.wasman.2019.03.019
Huang H, Liu Q, Teng W et al (2018) Improvement of combustion performance and emissions in diesel engines by fueling n-butanol/diesel/PODE3–4 mixtures. Appl Energy 227:38–48. https://doi.org/10.1016/j.apenergy.2017.09.088
Yusri IM, Mamat R, Akasyah MK et al (2019) Evaluation of engine combustion and exhaust emissions characteristics using diesel/butanol blended fuel. Appl Therm Eng 156:209–219. https://doi.org/10.1016/j.applthermaleng.2019.02.028
Devarajan Y, Munuswamy DB, Nagappan B, Pandian AK (2018) Performance, combustion and emission analysis of mustard oil biodiesel and octanol blends in diesel engine. Heat Mass Transf 54:1803–1811. https://doi.org/10.1007/s00231-018-2274-x
Prakash T, Geo VE, Martin LJ, Nagalingam B (2019) Evaluation of pine oil blending to improve the combustion of high viscous (castor oil) biofuel compared to castor oil biodiesel in a CI engine. Heat Mass Transf 55:1491–1501. https://doi.org/10.1007/s00231-018-2519-8
International Energy Agency (2021) Bioenergy - Fuels & Technologies. https://www.iea.org/fuels-and-technologies/bioenergy. Accessed 19 Jan 2021
International Energy Agency (2021) Transport Biofuels - Analysis. https://www.iea.org/reports/transport-biofuels. Accessed 19 Jan 2021
Lefebvre AH, McDonell VG (2017) Atomization and sprays, 2nd edn. CRC Press, Taylor & Francis Group, Boca Raton
Sazhin S (2014) Droplets and sprays
Saufi AE, Frassoldati A, Faravelli T, Cuoci A (2019) DropletSMOKE++: a comprehensive multiphase CFD framework for the evaporation of multidimensional fuel droplets. Int J Heat Mass Transf 131:836–853. https://doi.org/10.1016/j.ijheatmasstransfer.2018.11.054
Strizhak PA, Volkov RS, Castanet G et al (2018) Heating and evaporation of suspended water droplets: experimental studies and modelling. Int J Heat Mass Transf 127:92–106. https://doi.org/10.1016/j.ijheatmasstransfer.2018.06.103
Nomura H, Murakoshi T, Suganuma Y et al (2017) Microgravity experiments of fuel droplet evaporation in sub- and supercritical environments. Proc Combust Inst 36:2425–2432. https://doi.org/10.1016/j.proci.2016.08.046
Wang X, Dai M, Wang J et al (2019) Effect of ceria concentration on the evaporation characteristics of diesel fuel droplets. Fuel 236:1577–1585. https://doi.org/10.1016/j.fuel.2018.09.085
Ma X, Zhang F, Han K, Song G (2016) Numerical modeling of acetone–butanol–ethanol and diesel blends droplet evaporation process. Fuel 174:206–215. https://doi.org/10.1016/j.fuel.2016.01.091
Ni Z, Han K, Zhao C et al (2018) Numerical simulation of droplet evaporation characteristics of multi-component acetone-butanol-ethanol and diesel blends under different environments. Fuel 230:27–36. https://doi.org/10.1016/j.fuel.2018.05.038
Eckel G, Le Clercq P, Kathrotia T et al (2018) Entrained flow gasification. Part 3: insight into the injector near-field by large Eddy simulation with detailed chemistry. Fuel 223:164–178. https://doi.org/10.1016/j.fuel.2018.02.176
Csemány D, Józsa V (2017) Fuel Evaporation in an Atmospheric Premixed Burner: Sensitivity Analysis and Spray Vaporization. Processes:5. https://doi.org/10.3390/pr5040080
Poling BE, Prausnitz JM, O’Connell JP (2001) The properties of gases and liquids, 5th edn. McGraw-Hill, New York
Su W, Zhao L, Deng S (2017) Group contribution methods in thermodynamic cycles: physical properties estimation of pure working fluids. Renew Sust Energ Rev 79:984–1001. https://doi.org/10.1016/j.rser.2017.05.164
Tahami S, Movagharnejad K, Ghasemitabar H (2019) Estimation of the critical constants of organic compounds via a new group contribution method. Fluid Phase Equilib 494:45–60. https://doi.org/10.1016/j.fluid.2019.04.022
Felden A, Esclapez L, Riber E et al (2018) Including real fuel chemistry in LES of turbulent spray combustion. Combust Flame 193:397–416. https://doi.org/10.1016/j.combustflame.2018.03.027
Pitzer KS, Lippmann DZ, Curl RF et al (1955) The volumetric and thermodynamic properties of fluids. II. Compressibility factor, vapor pressure and entropy of Vaporization1. J Am Chem Soc 77:3433–3440. https://doi.org/10.1021/ja01618a002
Ambrose D, Walton J (1989) Vapour pressures up to their critical temperatures of normal alkanes and 1-alkanols. Pure Appl Chem 61:1395–1403
Constantinou L, Gani R, O’Connell JP (1995) Estimation of the acentric factor and the liquid molar volume at 298 K using a new group contribution method. Fluid Phase Equilib 103:11–22. https://doi.org/10.1016/0378-3812(94)02593-P
Joback KG (1984) A unified approach to physical property estimation using multivariate statistical techniques. Massachusetts Institute of Technology, Department of Chemical Engineering
Joback KG, Reid RC (1987) Estimation of pure-component properties from group-contributions. Chem Eng Commun 57:233–243. https://doi.org/10.1080/00986448708960487
Constantinou L, Gani R (1994) New group contribution method for estimating properties of pure compounds. AICHE J 40:1697–1710. https://doi.org/10.1002/aic.690401011
Nielsen TL (1998) Molecular structure based property prediction. 15-point project Department of Chemical Engineering, Technical University of Denmark, Lyngby, DK-2800
Ruzicka V, Domalski E (1993) Estimation of the heat capacities of organic liquids as a function of temperature using group Additivity II.: compounds of carbon, hydrogen, halogens, nitrogen, oxygen, and sulfur. J Phys Chem Ref Data 22:619–657
Bondi AA (1968) Physical properties of molecular crystals, liquids, and glasses (Wiley series on the science and technology of materials). Wiley, New York
Chung TH, Lee LL, Starling KE (1984) Applications of kinetic gas theories and multiparameter correlation for prediction of dilute gas viscosity and thermal conductivity. Ind Eng Chem Fundam 23:8–13. https://doi.org/10.1021/i100013a002
Chung TH, Ajlan M, Lee LL, Starling KE (1988) Generalized multiparameter correlation for nonpolar and polar fluid transport properties. Ind Eng Chem Res 27:671–679. https://doi.org/10.1021/ie00076a024
Lucas K (1981) Die Druckabhängigkeit der Viskosität von Flüssigkeiten – eine einfache Abschätzung. Chemie Ing Tech 53:959–960. https://doi.org/10.1002/cite.330531209
Svehla RA (1962) Estimated viscosities and thermal conductivities of gases at high temperatures. NASA tech. Rept. R-132, Lewis research center, Cleveland
Stiel LI, Thodos G (1964) The thermal conductivity of nonpolar substances in the dense gaseous and liquid regions. AICHE J 10:26–30. https://doi.org/10.1002/aic.690100114
Latini G, Pacetti M (1978) The thermal conductivity of liquids — a critical survey, pp 245–253
Sastri SRS, Rao KK (1999) A new temperature–thermal conductivity relationship for predicting saturated liquid thermal conductivity. Chem Eng J 74:161–169. https://doi.org/10.1016/S1385-8947(99)00046-7
Sastri SRS, Rao KK (1993) Quick estimating for thermal conductivity
Baum EJ (1997) Chemical property estimation: theory and application. CRC Press, New York
Elbro HS, Fredenslund A, Rasmussen P (1991) Group contribution method for the prediction of liquid densities as a function of temperature for solvents, oligomers, and polymers. Ind Eng Chem Res 30:2576–2582. https://doi.org/10.1021/ie00060a011
Wilke CR, Lee CY (1955) Estimation of diffusion coefficients for gases and vapors. Ind Eng Chem 47:1253–1257. https://doi.org/10.1021/ie50546a056
Fuller EN, Schettler PD, Giddings JC (1966) New method for prediction of binary gas-phase diffusion coefficients. Ind Eng Chem 58:18–27. https://doi.org/10.1021/ie50677a007
Fuller EN, Ensley K, Giddings JC (1969) Diffusion of halogenated hydrocarbons in helium. The effect of structure on collision cross sections. J Phys Chem 73:3679–3685. https://doi.org/10.1021/j100845a020
Watson KM (1931) Prediction of critical temperatures and heats of vaporization. Ind Eng Chem 23:360–364. https://doi.org/10.1021/ie50256a006
Riedel L (1954) Kritischer Koeffizient, Dichte des gesättigten Dampfes und Verdampfungswärme Untersuchungen über eine Erweiterung des Theorems der übereinstimmenden Zustände Teil III. Chemie Ing Tech 26:679–683. https://doi.org/10.1002/cite.330261208
Chen NH (1965) Generalized correlation for latent heat of vaporization. J Chem Eng Data 10:207–210. https://doi.org/10.1021/je60025a047
Vetere A (1979) New correlations for predicting vaporization enthalpies of pure compounds. Chem Eng J 17:157–162. https://doi.org/10.1016/0300-9467(79)85008-X
Lemmon EW, McLinden MO, Friend DG (2019) Thermophysical properties of fluid systems, NIST Chemistry WebBook, NIST Standard Reference Database Number 69
National Library of Medicine of the National Institutes of Health - National Center for Biotechnology Information - PubChem Database. (2019). https://pubchem.ncbi.nlm.nih.gov. Accessed 3 Dec 2019
Winkelmann J (2007) Landolt-Börnstein - Group IV Physical Chemistry, p 474
National Oceanic and Atmospheric Administration’s Office of Response and Restoration - Cameo Chemicals Database of Hazardous Materials. https://cameochemicals.noaa.gov/. Accessed 11 Jun 2020
National Library of Medicine of the National Institutes of Health - Hazardous Substances Data Bank (HSDB). https://www.nlm.nih.gov/toxnet/index.html. Accessed 11 Jun 2020
You X, Egolfopoulos FN, Wang H (2009) Detailed and simplified kinetic models of n-dodecane oxidation: the role of fuel cracking in aliphatic hydrocarbon combustion. Proc Combust Inst 32:403–410. https://doi.org/10.1016/j.proci.2008.06.041
Zhou D, Yang W, Li J, Tay KL (2016) Simplified fuel cracking process in reduced mechanism development: PRF – PAH kinetic models for combustion and soot prediction. Fuel 182:831–841. https://doi.org/10.1016/j.fuel.2016.06.053
Csemány D, Gujás I, Chong CT, Józsa V (2021) Thermophysical properties of n-alkanes, 1-alcohols, and methyl esters. https://doi.org/10.5281/ZENODO.4453074
Weltner W, Pitzer KS (1951) Methyl alcohol: the entropy, heat capacity and polymerization Equilibria in the vapor, and potential barrier to internal rotation. J Am Chem Soc 73:2606–2610. https://doi.org/10.1021/ja01150a053
Ansys Fluent Theory Guide 2020 R1 (2020)
Funding
Open Access funding provided by Budapest University of Technology and Economics. The research reported in this paper and carried out at the Budapest University of Technology and Economics has been supported by the National Research Development and Innovation Fund (TKP2020 National Challenges Subprogram, Grant No. BME-NCS) based on the charter of bolster issued by the National Research Development and Innovation Office under the auspices of the Ministry for Innovation and Technology and project №. OTKA-FK 124704, New National Excellence Program of the Ministry of Human Capacities project №.s ÚNKP-18-4-BME-195 and ÚNKP-18-3-I-BME-145, New National Excellence Program of the Ministry for Innovation and Technology project №.s ÚNKP-19-3-I-BME-236 and ÚNKP-19-4-BME-213, and the János Bolyai Research Scholarship of the Hungarian Academy of Sciences.
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
The authors declare that there is no conflict of interest.
Additional information
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
There are several constants used in the equations which are noted at their first occurrence and are used only locally.
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Csemány, D., Gujás, I., Chong, C.T. et al. Evaluation of material property estimating methods for n-alkanes, 1-alcohols, and methyl esters for droplet evaporation calculations. Heat Mass Transfer 57, 1965–1979 (2021). https://doi.org/10.1007/s00231-021-03059-0
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00231-021-03059-0