THERMAL SCIENCE
International Scientific Journal
COMPARATIVE ANALYSIS OF CFD AND ANFIS FOR PREDICTING HEAT TRANSFER ENHANCEMENT IN WATER-FE2O3 NANOFLUIDS ACROSS VARIOUS FLOW REGIONS
ABSTRACT
Models for enhancement of heat transfer in nanofluids made wide use of adaptive neural fuzzy inference system (ANFIS) and the multi-phase mixture model in recent years. These models originate from two separate but complementary branches of engineering: computational mechanics and machine intelligence. Not only have prior studies used only a small subset of nanofluid and flow parameters in their analyses, but no one has ever compared the two methods to determine which one is more applicable to certain flow regimes to forecast how much heat transfer development nanofluids will exhibit. The purpose of this study was to compare the accuracy of two methods – CFD and ANFIS in predicting the heat transfer improvement of water-Fe2O3 nanofluid for variety of nanofluid formations and flow characteristics, and recommend the method that would be most useful in predicting this enhancement for each flow regime. While ANFIS consistently outperforms the mixture models in prediction of nanofluid heat transfer enhancement, the latter can sometimes produce results that differ greatly from experimental correlation; however, for nanofluid configurations, the mixture model’s predictions can be dependable (with 1% error).
KEYWORDS
PAPER SUBMITTED: 2023-04-12
PAPER REVISED: 2023-10-19
PAPER ACCEPTED: 2023-11-15
PUBLISHED ONLINE: 2024-02-18
THERMAL SCIENCE YEAR
2024, VOLUME
28, ISSUE
Issue 1, PAGES [743 - 753]
- Sundar, L. S., et al., ANFIS Based Effectiveness and Number of Transfer Units Predictions of MWCNT/ Water Nanofluids Flow in A Double Pipe U-Bend Heat Exchanger, Case Studies in Thermal Engineering, 43 (2023), 102645
- Selimefendigil, F., H. F. Oztop, Magnetic Field Effects on The Forced Convection of CuO-Water Nanofluid-Flow in a Channel with Circular Cylinders and Thermal Predictions Using ANFIS, Int. J. Mech. Sci., 146-147 (2018), Oct., pp. 9-24
- Altarazi, F., et al., Analysis and Implementation of Thermal Heat Exchanger Tube Performance with Helically Pierced Twisted Tape Inserts Using ANFIS Model, Math. Probl. Eng., 2021 (2021), ID1734909
- Wen, T., et al., Experimental Study on the Thermal and Flow Characteristics of ZnO/Water Nanofluid in Mini-Channels Integrated with GA-Optimized ANN Prediction and CFD Simulation, Int. J. Heat Mass Transf., 178 (2021), 121617
- Bahnemiri, H, A., et al., Numerical investigation and Artificial Brain Structure-Based Modelling to Predict the Heat Transfer of Hybrid Ag/Au Nanofluid in a Helical Tube Heat Exchanger, Advances in Mechanical Engineering, 15 (2023), 9
- Polat, M. E., Cadirci, S., Artificial Neural Network Model and Multi-Objective Optimization of Micro-Channel Heat Sinks with Diamond-Shaped Pin Fins, Int. J. Heat Mass Transf., 194 (2022), 123015
- Dey, P. S., et al., Development of GEP and ANN Model to Predict the Unsteady Forced Convection over a Cylinder, Neural Comput. Appl., 27 (2016), 8, pp. 2537-2549
- Tikadar, A., Kumar, S., Machine Learning Approach to Predict Heat Transfer and Fluid-Flow Characteristics of Integrated Pin Fin-Metal Foam Heat Sink, Numerical Heat Transfer - Part B: Fundamentals, On-line first, doi.org/10.10180/10407790.2023.2266772, 2023
- Koroleva, A. P., et al., Application of Machine Learning Methods for Investigating the Heat Transfer Enhancement Performance in a Circular Tube with Artificial Roughness, Journal of Physics: Conference Series, 1675 (2020), 012008
- Liaw, K. L., et al., Enhanced Turbulent Convective Heat Transfer in Helical Twisted Multilobe Tubes, Int. J. Heat Mass Transf., 202 (2023), 123687
- Tikadar, A., Kumar, S., Investigation of Thermal-Hydraulic Performance of Metal-Foam Heat Sink Using Machine Learning Approach, Int. J. Heat Mass Transf., 199 (2022), 123438
- Hajialigol, N., Daghigh, R., The Evaluation of the First and Second Laws of Thermodynamics for the Pulsating MHD Nanofluid-Flow Using CFD and Machine Learning Approach, Journal Taiwan Inst. Chem. Eng., 148 (2023), 104782
- Damavandi, M. D., et al., Pareto Optimal Design of Swirl Cooling Chambers with Tangential Injection Using CFD, GMDH-Type of ANN and NSGA-II Algorithm, International Journal of Thermal Sciences, 122 (2017), Dec., pp. 102-114
- Koroleva, A. P. et al., Investigation on Heat Transfer Enhancement in a Circular Pipe with Artificial Roughness, Journal of Physics: Conference Series, 1683 (2020), 022105
- Ayli, E., Kocak, E., Prediction of the Heat Transfer Performance of Twisted Tape Inserts by Using Artificial Neural Networks, Journal of Mechanical Science and Technology, 36 (2022), 9, pp. 4849-4858
- Tafarroj, M. M., et al., Multi-Purpose Prediction of the Various Edge Cut Twisted Tape Insert Characteristics: Multilayer Perceptron Network Modelling, Journal Therm. Anal. Calorim., 145 (2021), 4, pp. 2005-2020
- Girimurugan, R., et al., Application of Deep Learning to the Prediction of Solar Irradiance through Missing Data, International Journal of Photoenergy, 2023 (2023), ID4717110
- Alghamdi, W., et al., Turbulence Modelling through Deep Learning: An in-Depth Study of Wasserstein GAN, Proceedings, 4th Int. Conf. on Smart Electronics and Comm., Trichy, India, 2023
- Aslan, E., et al., LBM Curved Boundary Treatments for Pulsatile Flow on Convective Heat Transfer and Friction Factor in Corrugated Channels, Proc. Inst Mech. Eng. C. J. Mech. Eng. Sci., On-line first, doi.org/10.1177/09544062231194904, 2023
- Dey, P., Das, A., Numerical Analysis and Prediction of Unsteady Forced Convection over a Sharp and Rounded Edged Square Cylinder, Journal of Applied Fluid Mechanics, 9 (2016), 3, pp. 1189-1199
- Salimi, S., et al., Heat Transfer Enhancement of Serpentine Channels with Twisted Tape Insert by Computational Fluid Dynamics and Artificial Intelligence, Canadian Journal of Chemical Engineering, On-line first, doi.org/10.1002/cjce.25108, 2023