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   Artificial neural network approach for the prediction of terminal falling velocity of non-spherical particles through Newtonian and non-Newtonian fluids  
   
نویسنده mirvakili a. ,roohian h. ,chahibakhsh s.
منبع journal of oil, gas and petrochemical technology - 2019 - دوره : 6 - شماره : 1 - صفحه:1 -14
چکیده    The investigation of the terminal falling velocity of non-spherical particles is currently one of the most promising topics in sedimentation technology due to its great significance in many separation processes. in this study, the potential of artificial neural networks (anns) for the prediction of non-spherical particles terminal falling velocity through newtonian and non-newtonian (power law) liquids was investigated using 361 experimental data. anns emerged as the most popular non-linear mathematical models due to their good prediction, simplicity, flexibility and the large capacity which moderate engineering endeavor, and the availability of a large number of training algorithms. the developed ann model demonstrated the acceptable values for the prediction of terminal falling velocities such as the determination coefficient ( r2), mse, and mre which were equal to 0.9729, 0.0023, and 21%, respectively. in an investigation on terminal falling velocity and drag coefficient of spherical and non-spherical particles, it was found that the terminal falling velocity of non-spherical particles to spherical particles was 0.1.
کلیدواژه Artificial Neural Networks ,Terminal falling velocity ,Non-spherical particles ,non-Newtonian fluids
آدرس persian gulf university, faculty of petroleum, gas and petrochemical engineering, chemical engineering department, Iran, shiraz university, environmental research center for petroleum and petrochemical industries, school of chemical and petroleum engineering, Iran, persian gulf university, faculty of petroleum, gas and petrochemical engineering, chemical engineering department, Iran
 
     
   
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