Feasibility of ANFIS-PSO and ANFIS-GA Models in Predicting Thermophysical Properties of Al2O3-MWCNT/Oil Hybrid Nanofluid
暂无分享,去创建一个
Amin Asadi | Ibrahim M Alarifi | I. Alarifi | A. Asadi | H. Nguyen | Ali Naderi Bakhtiyari | Hoang M Nguyen | Ali Naderi Bakhtiyari
[1] A. Asadi,et al. The effect of surfactant and sonication time on the stability and thermal conductivity of water-based nanofluid containing Mg(OH)2 nanoparticles: An experimental investigation , 2017 .
[2] Dervis Karaboga,et al. Adaptive network based fuzzy inference system (ANFIS) training approaches: a comprehensive survey , 2018, Artificial Intelligence Review.
[3] Zhanqiang Liu,et al. Performance Evaluation of Vegetable Oil-Based Nano-Cutting Fluids in Environmentally Friendly Machining of Inconel-800 Alloy , 2019, Materials.
[4] Ozgur Kisi,et al. Assessment of Artificial Intelligence–Based Models and Metaheuristic Algorithms in Modeling Evaporation , 2019, Journal of Hydrologic Engineering.
[5] Huei-Tau Ouyang. Input optimization of ANFIS typhoon inundation forecast models using a Multi-Objective Genetic Algorithm , 2018 .
[6] Yining Wu,et al. A Study on Preparation and Stabilizing Mechanism of Hydrophobic Silica Nanofluids , 2018, Materials.
[7] John H. Holland,et al. Genetic Algorithms and the Optimal Allocation of Trials , 1973, SIAM J. Comput..
[8] M. Afrand,et al. Prediction of rheological behavior of MWCNTs–SiO2/EG–water non-Newtonian hybrid nanofluid by designing new correlations and optimal artificial neural networks , 2018, Journal of Thermal Analysis and Calorimetry.
[9] A. Asadi,et al. On the thermal characteristics of a manifold microchannel heat sink subjected to nanofluid using two-phase flow simulation , 2019, International Journal of Heat and Mass Transfer.
[10] Hooman Yarmand,et al. Assessment of thermal conductivity enhancement of nano-antifreeze containing single-walled carbon nanotubes: Optimal artificial neural network and curve-fitting , 2019, Physica A: Statistical Mechanics and its Applications.
[11] Hosein Marzi,et al. Training ANFIS Using the Enhanced Bees Algorithm and Least Squares Estimation , 2017, Intell. Autom. Soft Comput..
[12] M. Safaei,et al. Nanofluids as secondary fluid in the refrigeration system: Experimental data, regression, ANFIS, and NN modeling , 2019 .
[13] A. Asadi,et al. An experimental and theoretical investigation on the effects of adding hybrid nanoparticles on heat transfer efficiency and pumping power of an oil-based nanofluid as a coolant fluid , 2018 .
[14] David E. Goldberg,et al. Genetic Algorithms in Search Optimization and Machine Learning , 1988 .
[15] Seyed Amin Bagherzadeh,et al. Synthesized CuFe2O4/SiO2 nanocomposites added to water/EG: Evaluation of the thermophysical properties beside sensitivity analysis & EANN , 2018, International Journal of Heat and Mass Transfer.
[16] Wei Gao,et al. The feasibility of genetic programming and ANFIS in prediction energetic performance of a building integrated photovoltaic thermal (BIPVT) system , 2019 .
[17] Riccardo Poli,et al. Particle swarm optimization , 1995, Swarm Intelligence.
[18] Amir Mosavi,et al. Developing an ANFIS-PSO Model to Predict Mercury Emissions in Combustion Flue Gases , 2019, Mathematics.
[19] M. Afrand,et al. Evaluating the effect of temperature and concentration on the thermal conductivity of ZnO-TiO2/EG hybrid nanofluid using artificial neural network and curve fitting on experimental data , 2019, Physica A: Statistical Mechanics and its Applications.
[20] Omid Ali Akbari,et al. A numerical investigation on the effects of mixed convection of Ag-water nanofluid inside a sim-circular lid-driven cavity on the temperature of an electronic silicon chip , 2019, Applied Thermal Engineering.
[21] Wei-Mon Yan,et al. Sensitivity analysis and application of machine learning methods to predict the heat transfer performance of CNT/water nanofluid flows through coils , 2019, International Journal of Heat and Mass Transfer.
[22] C. C. Nwobi-Okoye,et al. Multi-objective optimization and modeling of age hardening process using ANN, ANFIS and genetic algorithm: Results from aluminum alloy A356/cow horn particulate composite , 2019, Journal of Materials Research and Technology.
[23] Young-Ju Kim,et al. Experimental Study on Characteristics of Grinded Graphene Nanofluids with Surfactants , 2018, Materials.
[24] Seyed Amin Bagherzadeh,et al. Develop 24 dissimilar ANNs by suitable architectures & training algorithms via sensitivity analysis to better statistical presentation: Measure MSEs between targets & ANN for Fe–CuO/Eg–Water nanofluid , 2019, Physica A: Statistical Mechanics and its Applications.
[25] Seyed Amin Bagherzadeh,et al. A novel sensitivity analysis model of EANN for F-MWCNTs–Fe3O4/EG nanofluid thermal conductivity: Outputs predicted analytically instead of numerically to more accuracy and less costs , 2019, Physica A: Statistical Mechanics and its Applications.
[26] H. Oztop,et al. Numerical analysis and ANFIS modeling for mixed convection of CNT-water nanofluid filled branching channel with an annulus and a rotating inner surface at the junction , 2018, International Journal of Heat and Mass Transfer.
[27] M. Afrand,et al. Effect of sonication characteristics on stability, thermophysical properties, and heat transfer of nanofluids: A comprehensive review. , 2019, Ultrasonics sonochemistry.
[28] Omid Ali Akbari,et al. Numerical investigation of turbulent flow and heat transfer of nanofluid inside a wavy microchannel with different wavelengths , 2019, Journal of Thermal Analysis and Calorimetry.
[29] S. Shamshirband,et al. 1 Developing an ANFIS-PSO Model to Estimate 2 Mercury Emission in Combustion Flue Gases 3 , 2019 .
[30] Arash Karimipour,et al. Electro- and thermophysical properties of water-based nanofluids containing copper ferrite nanoparticles coated with silica: Experimental data, modeling through enhanced ANN and curve fitting , 2018, International Journal of Heat and Mass Transfer.
[31] Abdulwahab A. Alnaqi,et al. Effects of magnetic field on the convective heat transfer rate and entropy generation of a nanofluid in an inclined square cavity equipped with a conductor fin: Considering the radiation effect , 2019, International Journal of Heat and Mass Transfer.
[32] M. Afrand,et al. Heat transfer efficiency of Al2O3-MWCNT/thermal oil hybrid nanofluid as a cooling fluid in thermal and energy management applications: An experimental and theoretical investigation , 2018 .
[33] Stephen U. S. Choi. Enhancing thermal conductivity of fluids with nano-particles , 1995 .
[34] Josua P. Meyer,et al. Experimental investigation and model development for effective viscosity of MgO–ethylene glycol nanofluids by using dimensional analysis, FCM-ANFIS and GA-PNN techniques , 2016 .
[35] Masoud Afrand,et al. Appraising influence of COOH-MWCNTs on thermal conductivity of antifreeze using curve fitting and neural network , 2019, Physica A: Statistical Mechanics and its Applications.
[36] M. Afrand,et al. Evaluation of thermal conductivity of MgO-MWCNTs/EG hybrid nanofluids based on experimental data by selecting optimal artificial neural networks , 2017 .
[37] M. Afrand,et al. An experimental study on stability and thermal conductivity of water/silica nanofluid: Eco-friendly production of nanoparticles , 2019, Journal of Cleaner Production.
[38] Lingen Chen,et al. A review on the utilized machine learning approaches for modeling the dynamic viscosity of nanofluids , 2019, Renewable and Sustainable Energy Reviews.
[39] Xiaofeng Yu,et al. Investigation on Synthesis, Stability, and Thermal Conductivity Properties of Water-Based SnO2/Reduced Graphene Oxide Nanofluids , 2017, Materials.
[40] T. Bakhshpoori,et al. FEASIBILITY OF PSO-ANFIS-PSO AND GA-ANFIS-GA MODELS IN PREDICTION OF PEAK GROUND ACCELERATION , 2018 .
[41] Adnan M. Hussein,et al. Adaptive Neuro-Fuzzy Inference System of friction factor and heat transfer nanofluid turbulent flow in a heated tube , 2016 .
[42] S. Kannaiyan,et al. Modeling of thermal conductivity and density of alumina/silica in water hybrid nanocolloid by the application of Artificial Neural Networks , 2019, Chinese Journal of Chemical Engineering.
[43] Mohammad Hemmat Esfe,et al. Thermal Conductivity Modeling of Aqueous CuO Nanofluids by Adaptive Neuro-Fuzzy Inference System (ANFIS) Using Experimental Data , 2017 .
[44] Shahram Delfani,et al. Experimental investigation and modeling of thermal conductivity of CuO–water/EG nanofluid by FFBP-ANN and multiple regressions , 2017, Journal of Thermal Analysis and Calorimetry.
[45] Robert A. Taylor,et al. Recent advances in modeling and simulation of nanofluid flows—Part II: Applications , 2019, Physics Reports.
[46] Kwok-wing Chau,et al. Developing an ANFIS-based swarm concept model for estimating the relative viscosity of nanofluids , 2018, Engineering Applications of Computational Fluid Mechanics.
[47] S. Wongwises,et al. An experimental and theoretical investigation on heat transfer capability of Mg (OH)2/MWCNT-engine oil hybrid nano-lubricant adopted as a coolant and lubricant fluid , 2018 .
[48] Xianting Li,et al. Utilization of ANN and ANFIS models to predict variable speed scroll compressor with vapor injection , 2017 .
[49] I. Alarifi,et al. An experimental investigation on the effects of ultrasonication time on stability and thermal conductivity of MWCNT-water nanofluid: Finding the optimum ultrasonication time. , 2019, Ultrasonics sonochemistry.
[50] Jyh-Shing Roger Jang,et al. ANFIS: adaptive-network-based fuzzy inference system , 1993, IEEE Trans. Syst. Man Cybern..
[51] A. Asadi,et al. Heat transfer performance of two oil-based nanofluids containing ZnO and MgO nanoparticles; a comparative experimental investigation , 2019, Powder Technology.
[52] Saeed Heshmatian,et al. Artificial intelligence in the field of nanofluids: A review on applications and potential future directions , 2019, Powder Technology.
[53] Mohammad Hojjat,et al. Nanofluids as coolant in a shell and tube heat exchanger: ANN modeling and multi-objective optimization , 2020, Appl. Math. Comput..
[54] Ali J. Chamkha,et al. A comprehensive review on mixed convection of nanofluids in various shapes of enclosures , 2019, Powder Technology.
[55] A. Asadi. A guideline towards easing the decision-making process in selecting an effective nanofluid as a heat transfer fluid , 2018, Energy Conversion and Management.
[56] Hossein Bonakdari,et al. Combination of Computational Fluid Dynamics, Adaptive Neuro-Fuzzy Inference System, and Genetic Algorithm for Predicting Discharge Coefficient of Rectangular Side Orifices , 2017 .
[57] I. Alarifi,et al. On the rheological properties of MWCNT-TiO2/oil hybrid nanofluid: An experimental investigation on the effects of shear rate, temperature, and solid concentration of nanoparticles , 2019, Powder Technology.
[58] A. Al-Rashed,et al. Effects on thermophysical properties of carbon based nanofluids: Experimental data, modelling using regression, ANFIS and ANN , 2018, International Journal of Heat and Mass Transfer.
[59] Ahmad Hajinezhad,et al. ANN and ANFIS models to predict the performance of solar chimney power plants , 2015 .
[60] Ali J. Chamkha,et al. On the nanofluids applications in microchannels: A comprehensive review , 2018 .
[61] Siti Mariyam Hj. Shamsuddin,et al. Particle swarm optimization for ANFIS interpretability and accuracy , 2016, Soft Comput..
[62] Mohammad Ataei,et al. Overbreak prediction in underground excavations using hybrid ANFIS-PSO model , 2018, Tunnelling and Underground Space Technology.
[63] Isa Ebtehaj,et al. Optimizing ANFIS for sediment transport in open channels using different evolutionary algorithms , 2017 .
[64] Somchai Wongwises,et al. Recent advances in preparation methods and thermophysical properties of oil-based nanofluids: A state-of-the-art review , 2019, Powder Technology.
[65] Hossein Nejat Pishkenari,et al. Observer design for a nano-positioning system using neural, fuzzy and ANFIS networks , 2019, Mechatronics.
[66] M. Ahmadi,et al. Prediction and modeling of MWCNT/Carbon (60/40)/SAE 10 W 40/SAE 85 W 90(50/50) nanofluid viscosity using artificial neural network (ANN) and self-organizing map (SOM) , 2018, Journal of Thermal Analysis and Calorimetry.
[67] A. Asadi,et al. The effect of temperature and solid concentration on dynamic viscosity of MWCNT/MgO (20–80)–SAE50 hybrid nano-lubricant and proposing a new correlation: An experimental study , 2016 .
[68] Davood Toghraie,et al. Designing artificial neural network on thermal conductivity of Al2O3–water–EG (60–40 %) nanofluid using experimental data , 2016, Journal of Thermal Analysis and Calorimetry.
[69] Camilo A. Franco,et al. An Enhanced Carbon Capture and Storage Process (e-CCS) Applied to Shallow Reservoirs Using Nanofluids Based on Nitrogen-Rich Carbon Nanospheres , 2019, Materials.
[70] A. Dashti,et al. H-2-selective mixed matrix membranes modeling using ANFIS, PSO-ANFIS, GA-ANFIS , 2017 .