Author/Authors :
Rezai, B Department of Mining and Metallurgy Engineering - Amirkabir University of Technology (Tehran Polytechnic) - Tehran, Iran , Khoshjavan, S Department of Mining and Metallurgy Engineering - Amirkabir University of Technology (Tehran Polytechnic) - Tehran, Iran , Moshashaei, K Department of Mechanic - Islamic Azad University - Khoy branch - Khoy, Iran
Abstract :
In this research work, the effects of flotation parameters on coking coal flotation
combustible material recovery (CMR) were studied by the artificial neural networks
(ANNs) method. The input parameters of the network were the pulp solid weight
content, pH, collector dosage, frother dosage, conditioning time, flotation retention time,
feed ash content, and rotor rotation speed. In order to select the most efficient model for
this work, the outputs of different models were compared with each other. A five-layer
ANN was found to be optimum with the architecture of 8, 15, 10, and 5 neurons in the
input layer, and the first hidden, second hidden, and third hidden layers, respectively, as
well one neurons in the output layer. In this work, the training, testing, validating, and
data square correlation coefficients (R2) were achieved to be 0.995, 0.999, 0.999, and
0.998, respectively. The sensitivity analysis showed that the rotor speed and the solid
weight content had the highest and lowest effects on CMR, respectively. It was verified
that the predicted ANN values coincided very well with the experimental results.
Keywords :
Combustible Material Recovery , Coking Coal , Flotation , Artificial Neural Networks , Back-Propagation Neural Network