شماره ركورد كنفرانس :
4518
عنوان مقاله :
Prediction of improved cyclone system efficiency: Multi objective optimization by hybrid approach based on the genetic algorithm and artificial neural network
Author/Authors :
J. Sargolzaei , M. Alizadeh , M. Haghighi Asl Department of chemical engineering, Ferdowsi university of Mashhad, Mashhad, Iran, , M. Shirvani
كليدواژه :
Dust Removal , Jet-Impingement , Genetic Algorithm , Neural Network
عنوان كنفرانس :
The 7th International Chemical Engineering Congress & Exhibition (IChEC 2011
چكيده لاتين :
An integrated process which is proposed for improving dust removal efficiency of cyclones in
another paper is considered here for simulation by Artifitial Neural Networks (ANNs) and hybrid
ANN and Genetic Algorithm (GA). The process incorporates of two cyclones coupled with a
specially designed cylindrical chamber, which includes a rotating tube inside it with air-impinging
nozzles drilled on the peripheral surface of the tube. The chamber includes a tube with nozzles on its
peripheral surface from which jet-impingement flow throws the particles nearer to wall of the
chamber. Efficiency of the jet-impingement chamber, as a function of the feed flow rate, recycle
flow rate, jet-impingement flow rate as well as the jet-impingement tube rotational speed has been
tested on a pilot scale apparatus of the process for fitting and simulating by ANN and hybrid ANN
and GA. ANN and hybrid ANN and GA were able to accurately capture the non-linear
characteristics of the chamber even for a new condition that has not been used in the training process
(tested data).