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   Estimation of gas holdup and input power in froth flotation using artificial neural network  
   
نویسنده shahbazi b. ,rezai b. ,chehreh chelgani s. ,koleini s.m.j. ,noaparast m.
منبع iranian journal of materials science and engineering - 2015 - دوره : 12 - شماره : 1 - صفحه:12 -19
چکیده    Multivariable regression and artificial neural network procedures were used to modeling of the input power and gas holdup of flotation. the stepwise nonlinear equations have shown greater accuracy than linear ones where they can predict input power,and gas holdup with the correlation coefficients of 0.79 thereby 0.51 in the linear,and r2=0.88 versus 0.52 in the non linear,respectively. for increasing accuracy of predictions,feed-forward artificial neural network (fann) was applied. fanns with 2-2-5-5,and 2-2-3-2-2 arrangements,were capable to estimating of the input power and gas holdup,respectively. they were achieved quite satisfactory correlations of 0.96 in testing stage for input power prediction,and 0.64 for gas holdup prediction.
کلیدواژه Artificial neural network; Flotation; Gas holdup; Input power; Regression
آدرس department of mining engineering,science and research branch,islamic azad university, ایران, amirkabir university of technology, Department of Mining Engineering, ایران, Islamic Azad University, Science and Research Branch, Department of Mining Engineering, ایران, tarbiat modares university, Department of Mining Engineering, ایران, university of tehran, Department of Mining Engineering, ایران
 
     
   
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