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Proceeding Paper

Effect of Nanofluids on Heat Transfer in Milk and Tomato Juice Production: An Optimization Study with ANCOVA †

Department of Chemical Engineering, Faculty of Engineering, Bilecik Seyh Edebali University, Bilecik TR 11100, Turkey
Presented at the 4th International Electronic Conference on Foods, 15–30 October 2023; Available online: https://foods2023.sciforum.net/.
Biol. Life Sci. Forum 2023, 26(1), 68; https://doi.org/10.3390/Foods2023-14963
Published: 13 October 2023
(This article belongs to the Proceedings of The 4th International Electronic Conference on Foods)

Abstract

:
Recently, researchers have developed new heat transfer fluids that have high thermal conductivity, heat capacity, and low viscosity for food applications. Because the thermal conductivity of nanoparticles is higher than base fluids (water, ethylene glycol, and so on), nanofluids (NFs) are characterized by high performance in heat transfer operations. In this study, the aim was to determine the effect of NFs used in heat transfer equipment on the heat transfer coefficient using Analysis of Covariance (ANCOVA), which is an optimization test. For heat transfer modeling of tomato juice, the effect of alumina content in NFs on Reynolds Number (Re) and overall heat transfer coefficient was evaluated. For heat transfer modeling of milk, the effect of carbon nanotube content in NFs on Peclet Number (Pe) and convective heat transfer coefficient was assessed. As a result, it was determined that Re and alumina content to be crucial in the heat transfer of tomato juice within their p-values. However, in milk production heat transfer, carbon nanotubes had no crucial importance.

1. Introduction

Due to high consumption worldwide, fruit juice production has gained importance as one of the agriculture-based sectors. Evaporation is a kind of heat treatment used to obtain safe and stable juice. Besides that, it can be possible to adjust the desired concentration level of a juice via an evaporator [1]. Except for evaporation, there are many application areas of heat transfer in the juice sector such as refrigeration, pasteurization, and sterilization [2].
Nanofluid is a colloidal suspension composed of metallic or non-metallic nanoparticles which disperse uniformly in a base liquid. These particles can be effective at larger sizes to increase the thermal conductivity of the fluid. The reason for decreasing particle size to the nanoscale is to prevent sedimentation and provide a large surface area per volume. Using nanofluid in heat transfer operations can provide many advantages to an industrial food producer. Thanks to high thermal conductivity and heat transfer coefficient, the process becomes feasible in terms of economy and time. It can be used in smaller process equipment as a low amount of fluid can be used. Nanofluids have a few drawbacks to solve. These need more pump power because of their low viscosity making them more stable [2].
In the current literature, there are several optimization studies about NFs. Chang et al. (2006) carried out a study about the optimization of TiO2 NF synthesis parameters. They used the Robustness Design method for optimization [3]. Salameh et al. (2021) combined fuzzy modeling and particle swarm optimization to determine the optimum heat transfer operating parameters for Al2O3/SiO2 NF. In summary, they achieved specific values of density, viscosity, specific heat, and thermal conductivity [4]. Mohammadi et al. (2019) worked with water–Fe3O4 NF to obtain the maximum heat transfer rate. They used Taguchi as an optimization method. They tested the effect of different mass flowrates and nanoparticle concentration to reach the optimum values [5].
Nanofluid utilization in beverage production is a novel topic in the literature. Jafari et al. (2017) synthesized Al2O3 containing NF to reduce the process time during pasteurization in tomato juice production [6]. Saremnejad Namini et al. (2015) used the same NF type for the production of watermelon juice. At this time, researchers investigated color and vitamin changes during the process when NF was used in the heat transfer [7]. Taghizadeh-Tabari et al. (2016) assessed TiO2-containing NF to increase the heat transfer rate during pasteurization in milk production [8]. This study aimed to display the effect of NFs in liquid food production via computational optimization.

2. Material and Methods

Optimization was done on SigmaPlot 14.0 software for one-way Analysis of Covariance (ANCOVA). The importance of the independent variables for heat transfer determined in relation to the p-values means that if a variable had a below-selected p-value, it was not the effect of this variable on heat transfer. Data for the analysis were obtained from the literature, which are presented in Table 1 and Table 2. Normality and Equal Variance tests were made using Shapiro–Wilk and Levene, respectively.
For tomato juice production, independent variables (alumina amount in the NF and Reynolds Number) were connected with the dependent variable (Overall Heat Transfer Coefficient). The alumina content of the NF was selected as factor for this analysis.
For milk production, independent variables (Carbon Nanotube amount in the NF and Peclet Number) were connected with the dependent variable (Convective Heat Transfer Coefficient). The carbon nanotube content of the NF was selected as factor for this analysis.
As a result of the analysis, Degree of Freedom, Sum of Square, mean square, F- and p-values were determined. Adjusted means graphs were drawn. Regression equations were obtained.

3. Results and Discussion

3.1. Tomato Juice Production

In Table 3, the ANCOVA results for heat transfer in tomato juice production are shown. The Reynolds number was assumed as the covariate. As can be shown in the results, all of the parameters had a crucial effect on heat transfer. Because the p-value of both the alumina amount and Reynolds number were below 0.05. However, it was concluded that Re had more importance than alumina amount. Same conclusion was obtained the study by Vahidinia and Miri in 2015. They determined that an increasing Re had a positive effect on heat transfer when it was used alumina contained NF [11]. Since its p-value was near zero. For ANCOVA analysis of tomato juice, the R2 value was found as 0.998. In Figure 1 the possible overall heat transfer coefficient ranges when the appropriate amount of alumina in NF was used is shown. Table 4 displays the equations used to compute the overall heat transfer coefficient for NF contained in alumina in tomato juice heat transfer.

3.2. Milk Production

In Table 5, the ANCOVA results for heat transfer in milk production are displayed. At this time, the Peclet Number was chosen as the covariate. The results show that only the Peclet Number had a significant effect on heat transfer. Because the p-value of the Carbon Nanotube amount was higher than 0.05,it was not a surprising result. Sarafraz and Hormozi in 2016 concluded that carbon nanotubes content in NFs has a negligible effect on the friction factor, especially in the case of high Re (over 8000). It is known that the friction factor affects heat transfer P [11]. Furthermore, researchers determined that the optimum carbon nanotube amount is 1% [12]. The reference study values in this work were lower than this value (Table 2). In the ANCOVA analysis of milk, the R2 value was 0.988. Figure 2 shows the ranges of the convective heat transfer coefficient using the appropriate amount of Carbon Nanotube in the NF. Table 6 shows the equations used to calculate the convective heat transfer coefficient for Carbon Nanotube containing NF in milk heat transfer.

4. Conclusions

The aim of this work was to display the effect of parameters, one of which was the amount of nanomaterial in NF, on heat transfer in the production of milk and tomato juice. The experimental data were obtained from the scientific literature and utilized in the analysis of covariance. After the analysis, the most effective parameter in heat transfer in liquid food production was determined, as well as the equations defining the relationship between the covariance, the factor, and the dependent variable. It was concluded that the amount of alumina was an important parameter used in tomato juice production in terms of its p-value. It may be appropriate to work with high percentage Alumina to achieve a high heat transfer rate. For 4% w/v alumina NF content, almost 2200–2300 overall heat transfer coefficient in the heat exchanger can be achieved. It was determined that the Peclet Number is more important for heat transfer than the content of carbon nanotube in NF in milk production. When working with high heat transfer, it is crucial to work with high carbon nanotube content NF for milk production. This is one of the disadvantages of using NF using in heat transfer in the production of food juice sin terms of the production costs of nanomaterials.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/Foods2023-14963/s1. Presentation Video: Effect of Nanofluids on Heat Transfer in Milk and Tomato Juice Production: An Optimization Study with ANCOVA.

Funding

This research received no external funding.

Institutional Review Board Statement

Not Applicable.

Informed Consent Statement

Not Applicable.

Data Availability Statement

The data presented in this study are available upon request from the corresponding author.

Conflicts of Interest

The author declares no conflict of interest.

References

  1. Jiménez-Sánchez, C.; Lozano-Sánchez, J.; Segura-Carretero, A.; Fernandez-Gutierrez, A. Alternatives to conventional thermal treatments in fruit-juice processing. Part 1: Techniques and applications. Crit. Rev. Food Sci. Nutr. 2017, 57, 501–523. [Google Scholar] [CrossRef] [PubMed]
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Figure 1. Adjusted means with 95% confidence intervals for heat transfer in tomato juice production.
Figure 1. Adjusted means with 95% confidence intervals for heat transfer in tomato juice production.
Blsf 26 00068 g001
Figure 2. Adjusted means with 95% confidence intervals for heat transfer in milk production.
Figure 2. Adjusted means with 95% confidence intervals for heat transfer in milk production.
Blsf 26 00068 g002
Table 1. Data for heat transfer in tomato juice production [9].
Table 1. Data for heat transfer in tomato juice production [9].
Alumina (wt./v. %)Reynolds Number (Re)Overall Heat Transfer Coefficient (W/m2/K)
02001700
02502150
22001800
22502250
42002000
42502500
Table 2. Data for heat transfer in milk production [10].
Table 2. Data for heat transfer in milk production [10].
Carbon Nanotube (wt./wt. %)Peclet Number (Pe)Convective Heat Transfer Coefficient (W/m2/K)
0574700
010001040
0.35574800
0.3510001220
0.55574880
0.5510001340
Table 3. ANCOVA calculations for heat transfer in tomato juice production.
Table 3. ANCOVA calculations for heat transfer in tomato juice production.
Variance
Source
Degree of FreedomSum of SquareMean Square ValueF-Valuep-Value
Alumina (wt./v. %)2110,833.33355,416.667133.0000.007
Re1326,666.667326,666.667784.0000.001
Residual2833.333416.667----
Total5438,333.33387,666.667----
Table 4. Resulting ANCOVA equations for heat transfer in tomato juice production.
Table 4. Resulting ANCOVA equations for heat transfer in tomato juice production.
Alumina
(wt./v. %)
Equation
0Overall Heat Transfer Coefficient = −175.000 + (9.333 × Re)
2Overall Heat Transfer Coefficient = −75.000 + (9.333 × Re)
4Overall Heat Transfer Coefficient = 150.000 + (9.333 × Re)
Table 5. ANCOVA calculations for heat transfer in milk production.
Table 5. ANCOVA calculations for heat transfer in milk production.
Variance
Source
Degree of FreedomSum of SquareMean Square ValueF-Valuep-Value
Carbon Nanotube
(wt./wt. %)
258,133.33329,066.66715.5710.060
Pe1248,066.667248,066.667132.8930.007
Residual23733.3331866.667----
Total5309,933.33361,986.667----
Table 6. Resulting ANCOVA equations for heat transfer in milk production.
Table 6. Resulting ANCOVA equations for heat transfer in milk production.
Carbon Nanotube (wt./wt. %)Equation
0Convective heat transfer coefficient = 118.717 + (0.955 × Pe)
0.35Convective heat transfer coefficient = 258.717 + (0.955 × Pe)
0.55Convective heat transfer coefficient = 358.717 + (0.955 × Pe)
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MDPI and ACS Style

Ozcakir, G. Effect of Nanofluids on Heat Transfer in Milk and Tomato Juice Production: An Optimization Study with ANCOVA. Biol. Life Sci. Forum 2023, 26, 68. https://doi.org/10.3390/Foods2023-14963

AMA Style

Ozcakir G. Effect of Nanofluids on Heat Transfer in Milk and Tomato Juice Production: An Optimization Study with ANCOVA. Biology and Life Sciences Forum. 2023; 26(1):68. https://doi.org/10.3390/Foods2023-14963

Chicago/Turabian Style

Ozcakir, Gamze. 2023. "Effect of Nanofluids on Heat Transfer in Milk and Tomato Juice Production: An Optimization Study with ANCOVA" Biology and Life Sciences Forum 26, no. 1: 68. https://doi.org/10.3390/Foods2023-14963

APA Style

Ozcakir, G. (2023). Effect of Nanofluids on Heat Transfer in Milk and Tomato Juice Production: An Optimization Study with ANCOVA. Biology and Life Sciences Forum, 26(1), 68. https://doi.org/10.3390/Foods2023-14963

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