Comparison of Gross Calorific Value Estimation of Turkish Coals Using Regression and Neural Networks Techniques
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Date
2012
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Abstract
Gross calorific value (GCV) of coals was estimated using artificial neural networks, linear and non-linear regression techniques. Proximate and ultimate analysis results were collected for 187 different coal samples. Different input data sets were compared, such as both proximate and ultimate analysis data, and only proximate analysis data and only ultimate analysis data. It was observed that the best results were obtained when both proximate analysis and ultimate analysis results were used for estimating the gross calorific value. When the performance of artificial neural networks and regression analysis techniques were compared, it was observed that both artificial neural networks and regression techniques were promisingly accurate in estimating gross calorific values. In general, most of the models estimated the gross calorific value within ±3% of the expected value.
Description
Metso; Vale; Tata Steel; ESSAR STEEL; TATA CONSULTANCY SERVICES
Keywords
Gross calorific value, Lignites, Neural networks, Proximate analysis, Regression, Ultimate analysis
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26th International Mineral Processing Congress, IMPC 2012: Innovative Processing for Sustainable Growth - Conference Proceedings -- 26th International Mineral Processing Congress, IMPC 2012: Innovative Processing for Sustainable Growth -- 24 September 2012 through 28 September 2012 -- New Delhi -- 97654
Volume
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Start Page
4011
End Page
4023