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Estimation of heat transfer in oscillating annular flow using artifical neural networks
Authors:Unal Akdag  M. Aydin Komur  A. Feridun Ozguc
Affiliation:1. Institute of Thermofluids, School of Mechanical Engineering, University of Leeds, UK;2. Refrigeration Department, Eng. Division, South Oil Company, Ministry of Oil, Basra, Iraq;3. Department of Thermofluids, Faculty of Mechanical Engineering, Universiti Teknologi Malaysia, 81310 Skudai, Johor Bahru, Malaysia;4. Department of Energy Engineering, Technical College of Engineering, Duhok Polytechnic University (DPU), 61 Zakho Road, 1006 Mazi Qr, Duhok-Kurdistan Region, Iraq;5. Department of Mechanical Engineering, KBU International College, 47800 Petaling Jaya, Selangor, Malaysia;6. Department of oil and gas Engineering, International university of technology twintech, Haddeh street, Sana''a, Yemen
Abstract:In this study, the prediction of heat transfer from a surface having constant heat flux subjected to oscillating annular flow is investigated using artificial neural networks (ANNs). An experimental study is carried out to estimate the heat transfer characteristics as a function of some input parameters, namely frequency, amplitude, heat flux and filling heights. In the experiments, a piston cylinder mechanism is used to generate an oscillating flow in a liquid column at certain frequency and amplitude. The cycle-averaged values are considered in the calculation of heat transfer using the control volume approach. An experimentally evaluated data set is prepared to be processed with the use of neural networks. Back propagation algorithm, the most common learning method for ANNs, is used for training and testing the network. Results of the experiments and the ANN are in close agreements with errors less than 5%. The study showed that the ANNs could be used effectively for modeling oscillating flow heat transfer in a vertical annular duct.
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