3.1. Nanofluids Characterization
The particle size (PZ) distribution of the different nanofluids prepared was measured, and the mean particle value (d0.5) was obtained.
Figure 3 shows the obtained distributions.
All the nanofluids show a monomodal distribution, although, in the case of the 0.5 wt.% G20 sample, some bimodality is observed, and in the case of the 0.5 wt.% G200 sample, the size distribution is very wide.
This characterization technique is considered to be exclusively applicable to suspensions containing mainly spherical particles, although, according to previous studies by M K Rabchinskii et al. [
34], it was shown that despite the high anisotropy of graphene, the LD method allows determining the lateral mean size of graphene. Experimentally obtained results of d0.5 for graphene-based nanofluid fit with nanomaterial lateral size. The mean particle size of formulated nanofluids in n-pentane is compiled in
Table 6.
The critical thermodynamic and thermophysical properties of the refrigerant liquid phase, linked with flow boiling heat transfer characteristic, as reported by A. K. Mozumder et al. [
35] are density (ρ), viscosity (µ), thermal conductivity (λ) and specific heat (Cp).
Table 7 and
Table 8 summarize the effective nanoparticle content dispersed in n-pentane after 24 h and the nanofluids’ main properties in the liquid phase according to real NM content.
It is known that enhancement of the properties of nanofluids depends on the type, size and shape of the nanomaterial, as well as on the particle fraction and particle size distribution [
36,
37]. The experimental data obtained within the dispersion of the proposed nanomaterials in density was related to the nanomaterial fraction dispersed in the fluid, and the change in this property was negligible. For heat capacity measurements, the effect found was in the same order as experimental error, so these properties were not critical in our case of study.
Li et al. [
21] were one of the first researchers to study the transport properties of nanofluids and observed that the viscosity was not only affected by the volume concentration but also by the size of nanoparticles. Subsequently, new experimental studies followed emerged that concluded that the viscosity of nanofluids is dependent on several parameters, such as temperature, volume concentration, aggregation, particle shape, particle size, etc. [
24,
25]. In this case, experimental data obtained for viscosity at 20 °C show that the increment is not just related to particle fraction and dispersed nanomaterials size and nature; results aligned with other reported results.
For thermal conductivity, one of the proposed and accepted behavior is that thermal conductivity is affected by the Brownian velocity of nanomaterials in the fluid; the higher movement, the higher increment in the conductivity [
38], other proposed mechanisms is related to the clustering effect of nanomaterials that increase the hydrodynamic radio promoting a channel for heat transport [
39]. The experimental data obtained for the thermal conductivity at 20 °C show an increment in a range of 1–14%, mainly dependent on nanomaterial nature and concentration.
Based on the effective amount of dispersed nanomaterial, it is observed that the Al2O3-13 nm system was the system with the lowest particle size (180 nm) and the highest content of dispersed nanomaterial, which is why it is considered the most stable nanofluid. This nanofluid also promoted an increase in thermal conductivity of +14% and in viscosity close to 7%. The system formulated with alumina nanowires showed a small amount of effectively dispersed nanomaterial, which is the main reason for discarding this system.
Titanium-based systems were discarded due to their low impact on thermal conductivity (increment in the range of 1.5%), and although the amount of material dispersed after 24 h was 0.3%, the increment in viscosity had the higher effect found (+5%).
Among the graphene-based systems, G200 at 0.5% by weight was selected due to the increment it causes in thermal conductivity (+11%) being more stable in n-pentane than Graphene G20.
Table 9 summarizes the selected systems that were tested in the flow boiling experimental setup.
3.2. Heat Transfer Coefficient Experimental Determination
There are a large number of correlations available in the literature on the flow boiling of saturated liquids to assess the flow boiling heat transfer coefficient (h
fb). Chen´s method [
40] can be considered the most used correlation for evaporation in vertical tubes, which includes the heat transfer coefficients due to nucleate boiling (h
nb), characterized by the formation of vapor bubbles on the heated wall, and forced convection boiling mechanism (h
cb); characterized by the convection through a liquid film on the heated wall and vaporization at the liquid/vapor interface. This correlation uses the Dittus–Boelter correlation for turbulent convection and the Forster–Zuber correlation for nucleate boiling and includes two correction factors, S
f, known as the boiling suppression factor, and F, the convective enhancement factor. This correlation is simplified in Equation (2) and is based on the thermophysical properties of the fluid and design parameters:
From numerous macroscale investigations, it is known that when flow boiling is dominated by the nucleate boiling mechanism, the heat transfer coefficient increases with increasing heat flux (or wall superheat) and saturation pressure and is independent of mass flux and vapor quality. In contrast, in convective-dominated flow boiling, the heat transfer coefficient is independent of heat flux and increases with increasing mass flux and vapor quality [
41].
Chen´s equation allows us to determine the heat transfer coefficient in flow boiling for evaporators in vertical tubes, the main limitations of the proposed expression are that (i) surface interactions are not considered and (ii) that it is needed to know physicochemical data of liquid and vapor phases. In the case of a known substance, it might be feasible, but in the case of nanofluids, it is not possible for the moment to characterize the required properties (measure physic properties in the gas phase)
In order to perform the thermal analysis of the nanofluids, the power exchange in the evaporator (q
ev) at steady state was calculated according to Equation (3), where the power transferred by the hot water (h
w) will be adsorbed by the refrigerant (r). Additionally, from the flow boiling measurement data, the overall heat transfer coefficients (U) were determined (W/m
2 °C). This calculation was carried out for different hot water flow rates (Q) with the aim of obtaining a U-flow curve in the evaporator.
The evaporator is a coaxial tube heat exchanger, and the proposed expression for determining the average overall heat transfer coefficient (and the exchanged power) is based on the Logarithmic Mean Temperature Difference (LMTD).
The overall heat transfer coefficient (U) can be calculated according to Equation (5), where the area of the evaporator (A) is a known data of 0.078 m
2, and ΔT
lm can be conducted according to the nomenclature of
Figure 4 for LTMD expression.
Equation (3) can be expressed according to proposed nomenclature in Equation (6), where hot water mass flow rate (m
hw) can be expressed as hot water flow rate (Q
hw in L/min) and water density (
in kg/m
3).
Combining Equations (5) and (6) in Equation (7), display the expression applied to experimental determination of U in the evaporator.
Table 10 shows the U values obtained for the evaporator working with n-pentane at proposed water flow rates. External resistance of water (1/h
ex) was calculated according to Sieder and Tate equation [
42] for a laminar flow for each proposed water flow rate and considering wall resistance (
Table 4), the internal resistance (1/h
in) and, thus, heat transfer coefficient of pentane was calculated (Equation (8).
The heat transfer coefficient of n-pentane as reference system is plotted in
Figure 5 as a function of Reynolds number.
The heat transfer coefficient of n-pentane tested at different hot water flow rates has shown linearity, being the mean value of pentane was 307 W/m2 °C.
Proposed systems, listed in
Table 11, based on nanomaterial dispersion in n-pentane, were tested under a defined protocol and compared with n-pentane at different flow rates.
The sample formulated with 0.5 wt.% G20, with Graphene and tested in the flow boiling device (Test T4), did not show a stable boiling pattern in the evaporator tube and the steady state was not reached according to the proposed protocol.
Table 12 summarizes experimental data of U in the evaporator at proposed flow rates.
According to Equation (8), the heat transfer coefficient of proposed systems (h
in) was calculated considering the wall and water resistance.
Table 13 summarizes obtained values, and
Figure 6 the h
in-flow rate plot.
The addition of the proposed nanomaterials in n-pentane promoted an increase in the overall heat transfer coefficient in the evaporator (U) due to the increment of the heat transfer coefficient (hin) of the refrigerant. It was found that this increment was related to the type of nanomaterial and the concentration of nanomaterial. The alumina nanomaterial tested at 0.01 wt.% and 0.5 wt.% promoted a mean h increase of 12% and 24%, respectively, while graphene nanomaterial tested at 0.01% promoted an average increase of 34%.
Therefore, graphene tested at 0.01 wt.% shows the highest increase in all tested points, with a mean increment of 34%. This experimental behavior is in accordance with the experimental results published by Sarafraz [
43], who, after evaluating the boiling heat transfer characteristics in a vertical annulus, a higher heat transfer performance was found for carbon-based nanomaterials. According to experimental data, a graphene-based system evidence an increment in the heat transfer coefficient (h) at higher flow rates. The main hypothesis for this phenomenon could be due to the more intense disturbance caused by the bubbles under a higher heat flux [
18].
Although the complexity of the flow boiling heat transfer mechanism, based on experimental data obtained for n-pentane and nanoaditivated systems, it is possible to propose the main components that are governed the flow boiling process. Due to the limitations mentioned in Chen Equation, the convection boiling heat transfer for pentane has been calculated according to Dittus–Boelter [
44] expression (h
cb = 85 W/m
2 °C) and, for nucleate boiling heat transfer coefficient Rohsenow expression [
45] has been used (h
nb = 688 W/m
2 °C). The experimental mean value obtained for n-pentane (307 W/m
2 °C) is an intermediate value between the convection boiling heat transfer convection and the nucleate boiling heat transfer and could be expressed according to Equation (9), where ∝ is the fraction of convection and (1 − ∝) the fraction of nucleation.
According to the experimental value of pentane, the fraction of convention boiling mechanism (∝: 0.63) is dominating. Considering experimental mean values of tested systems where the heat transfer coefficient (h
in) has been increased due to the presence of nanomaterials, the nucleate boiling mechanism is being promoted.
Table 14 shows the estimated values of ∝ for tested systems.
The effect of n-pentane addition with nanomaterials has promoted not only an increment of heat transfer coefficient but also has supported the nucleation mechanism of the process; so it can be concluded that the addition of nanomaterial into n-pentane could modify the dominating boiling heat transfer mechanism [
41].
The effect of nanomaterials during flow boiling was also evaluated by means of visual analysis. In fact, the addition of nanomaterials to n-pentane caused three main phenomena that were verified visually. The first one was to generate a process with a higher perturbation, as shown in
Figure 7, the other was the generation of more nucleation sites where the bubbles were generated, and the last effect was the deposition of nanomaterials on the glass surface.
This is consistent with previous studies, where it was already shown that in the course of the nucleate boiling process with nanofluids, nanoparticles deposit on the heating surface over time and can modify its properties, including wettability, roughness, and nucleation site density [
43]. In particular, the surface roughness after the nanoparticle deposition is influenced by the fraction and intrinsic thermal properties of the nanoparticles and heating surface roughness. The mending effect of nanoparticles in rough surfaces can decrease the density of the nuclear sites decreasing the heat transfer coefficient [
46,
47], but nanomaterials deposition can promote new and more nucleation points mainly in the polish surface [
48], promoting the heat transfer coefficient.