| Literature DB >> 32272574 |
Milad Sadeghzadeh1, Heydar Maddah2, Mohammad Hossein Ahmadi3, Amirhosein Khadang2, Mahyar Ghazvini4, Amirhosein Mosavi5,6,7,8, Narjes Nabipour9.
Abstract
In this paper, an artificial neural network is implemented for the sake of predicting the thermal conductivity ratio of <span class="Chemical">TiO2-Al2O3/<span class="Chemical">water nanofluid. <span class="Chemical">TiO2-Al2O3/<span class="Chemical">water in the role of an innovative type of nanofluid was synthesized by the sol-gel method. The results indicated that 1.5 vol.% of nanofluids enhanced the thermal conductivity by up to 25%. It was shown that the heat transfer coefficient was linearly augmented with increasing nanoparticle concentration, but its variation with temperature was nonlinear. It should be noted that the increase in concentration may cause the particles to agglomerate, and then the thermal conductivity is reduced. The increase in temperature also increases the thermal conductivity, due to an increase in the Brownian motion and collision of particles. In this research, for the sake of predicting the thermal conductivity of <span class="Chemical">TiO2-Al2O3/<span class="Chemical">water nanofluid based on volumetric concentration and temperature functions, an artificial neural network is implemented. In this way, for predicting thermal conductivity, SOM (self-organizing map) and BP-LM (Back Propagation-Levenberq-Marquardt) algorithms were used. Based on the results obtained, these algorithms can be considered as an exceptional tool for predicting thermal conductivity. Additionally, the correlation coefficient values were equal to 0.938 and 0.98 when implementing the SOM and BP-LM algorithms, respectively, which is highly acceptable.Entities:
Keywords: TiO2-Al2O3/water; artificial neural network; nanofluid; thermal conductivity
Year: 2020 PMID: 32272574 PMCID: PMC7221607 DOI: 10.3390/nano10040697
Source DB: PubMed Journal: Nanomaterials (Basel) ISSN: 2079-4991 Impact factor: 5.076
Figure 1Schematic of nanocomposite synthesis.
Figure 2SEM images of nanoparticles after dispersion (20% alumina and 80% titanium).
Figure 3The results of the specific heat capacity of the nanocomposite.
Figure 4The results of the thermal conductivity coefficient of the nanocomposite.
Figure 5Variations in thermal conductivity coefficient of nanofluid with temperature and concentration of nanoparticles.
Figure 6(a) Contour plots, (b) 3D, and (c) proposed model for the thermal conductivity coefficient (Temperature is in °C and phi (Volumetric Concentration (%)).
Figure 7Viscosity variations of nanofluid with temperature and nanoparticle concentrations.
Figure 8Contour graphs (3D) describing the model’s (a to c) viscosity (Vis) distribution. (T (temperature) and phi (Volumetric Concentration (%)).
Input parameters’ range.
| Parameter | Range |
|---|---|
| Temperature (°C) | 10–70 |
| Volumetric Concentration (%) | 0.25–6 |
Figure 9The structure of the neurons used and the quantity of assigned data.
Figure 10Correlation coefficient data based on investigating the predicted and experimental thermal conductivity ratio.
Figure 11Results based on the correlation coefficient of thermal conductivity ratio. (a) Training, (b) Validation, (c) Test, (d) totally).