PREDICTION OF SOME PHYSICAL PROPERTIES OF NANOFLUIDS INCLUDING VARIOUS METAL OXIDES USING ARTIFICIAL NEURAL NETWORK

被引:0
作者
Raei, Behrouz [1 ]
Bozorgian, Alireza [1 ]
机构
[1] Islamic Azad Univ, Dept Chem Engn, Mahshahr Branch, Mahshahr, Iran
关键词
EFFECTIVE THERMAL-CONDUCTIVITY; HEAT-TRANSFER ENHANCEMENT; DYNAMIC VISCOSITY; FLOW; MECHANISMS; ALGORITHM; MODEL;
D O I
10.33224/rrch.2024.69.1-2.01
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
In this study, physical properties of nanofluids such as viscosity and thermal conductivity are investigated. Although there are many experimental and theoretical correlations and models available to predict these parameters, predictions are highly conflicting because the involved mechanisms are not fully understood. For instance, the predicted values of dynamic viscosity of gamma-Al2O3/water nanofluids (at a volume fraction of 0.001) by different models range between 0.0005623 and 0.0403 kg/m.s and thermal conductivity ranges within 0.866 and 1.551 W/m center dot K under the same conditions. In this work, 184 experimental data of thermophysical properties of various metal oxide nanoparticle including Al2O3, SiO2, TiO2, Fe2O3, MgO, and CuO at a temperature range of 30 to 65 degrees C, diameter range of 10 to 50 nm, and volume fraction between 0.004% to 2% were collected from various publications. In this work, artificial neural network (ANN) has been implemented. The parameters of thermal conductivity and dynamic viscosity have been correlated to nanofluid concentration, temperature, particle size and molecular weight. It has been found that the topography of (4, 4, 4) from the ANN provides about 2% and 1% cross-validating and testing error respectively. Additionally, a sensitivity analysis was performed and the effect of individual parameters was analyzed.
引用
收藏
页码:5 / 17
页数:14
相关论文
共 52 条
[31]   Heat transfer enhancement by using nanofluids in forced convection flows [J].
Maïga, SE ;
Palm, SJ ;
Nguyen, CT ;
Roy, G ;
Galanis, N .
INTERNATIONAL JOURNAL OF HEAT AND FLUID FLOW, 2005, 26 (04) :530-546
[32]   Thermophysical and electrokinetic properties of nanofluids - A critical review [J].
Murshed, S. M. S. ;
Leong, K. C. ;
Yang, C. .
APPLIED THERMAL ENGINEERING, 2008, 28 (17-18) :2109-2125
[33]   Modeling thermal conductivity augmentation of nanofluids using diffusion neural networks [J].
Papari, Mohammad M. ;
Yousefi, Fakhri ;
Moghadasi, Jalil ;
Karimi, Hajir ;
Campo, Antonio .
INTERNATIONAL JOURNAL OF THERMAL SCIENCES, 2011, 50 (01) :44-52
[34]  
Raei B., 2021, J Chem Pet Eng, V55, P117
[35]  
Raei B., 2019, J. Chem. Petroleum Engineer., V53, P25
[36]  
Raei B., 2016, TRANSPORT PHENOMENA, V5, P64, DOI [10.7508/tpnms.2017.01.007, DOI 10.7508/TPNMS.2017.01.007]
[37]   Experimental investigation on heat transfer and flow resistance of drag-reducing alumina nanofluid in a fin-and-tube heat exchanger [J].
Raei, Behrouz ;
Peyghambarzadeh, S. M. ;
Asl, R. Salehi .
APPLIED THERMAL ENGINEERING, 2018, 144 :926-936
[38]   Experimental study of the effect of drag reducing agent on heat transfer and pressure drop characteristics [J].
Raei, Behrouz ;
Shahraki, Farhad ;
Peyghambarzadeh, S. M. .
EXPERIMENTAL HEAT TRANSFER, 2018, 31 (01) :68-84
[39]   Experimental study on the heat transfer and flow properties of γ-Al2O3/water nanofluid in a double-tube heat exchanger [J].
Raei, Behrouz ;
Shahraki, Farhad ;
Jamialahmadi, Mohammad ;
Peyghambarzadeh, S. M. .
JOURNAL OF THERMAL ANALYSIS AND CALORIMETRY, 2017, 127 (03) :2561-2575
[40]   Application of hybrid neural particle swarm optimization algorithm for prediction of MMP [J].
Sayyad, Hossein ;
Manshad, Abbas Khaksar ;
Rostami, Habib .
FUEL, 2014, 116 :625-633