Experimental and Artificial Neural Network Modeling Study on Soot Formation in Premixed Hydrocarbon Flames
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BRONZE
Green Open Access
Yes
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No
Abstract
The formation of soot in premixed flames of methane, ethane, propane, and butane was studied at three different equivalence ratios. Soot particle sizes, number densities, and volume fractions were determined using classical light scattering measurement techniques. The experimental data revealed that the soot properties were sensitive to the fuel type and combustion parameter equivalence ratio. Increase in equivalence ratio increased the amount of soot formed for each fuel. In addition, methane flames showed larger particle diameters at higher distances above the burner surface and propane, ethane, and butane flames came after the methane flames, respectively. Three-layer, feed-forward type artificial neural networks having seven input neurons, one output neuron, and five hidden neurons for soot particle diameter predictions and seven hidden neurons for volume fraction predictions were used to model the soot properties. The network could not be trained and tested with sufficient accuracy to predict the number density due to a large data range and greater uncertainty in determination of this parameter. The number of complete data set used in the model was 156. There was a good agreement between the experimental and predicted values, and neural networks performed better when predicting output parameters (i.e. soot particle diameters and volume fractions) within the limits of the training data.
Description
Keywords
Soot, Hydrocarbon flames, Combustion, Light scattering, Artificial neural networks, Soot, Artificial neural networks, Hydrocarbon flames, Combustion, Light scattering
Fields of Science
0211 other engineering and technologies, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
İnal, F., Tayfur, G., Melton, T. R., and Senkan, S. M. (2003). Experimental and artificial neural network modeling study on soot formation in premixed hydrocarbon flames. Fuel, 82(12), 1477-1490. doi:10.1016/S0016-2361(03)00060-7
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OpenCitations Citation Count
11
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Volume
82
Issue
12
Start Page
1477
End Page
1490
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CrossRef : 9
Scopus : 13
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Mendeley Readers : 24
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13
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11
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885
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553
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