4.7 Article

Estimation of gross calorific value based on coal analysis using regression and artificial neural networks

Journal

INTERNATIONAL JOURNAL OF COAL GEOLOGY
Volume 79, Issue 1-2, Pages 49-54

Publisher

ELSEVIER
DOI: 10.1016/j.coal.2009.04.002

Keywords

Coal; Proximate analysis; Ultimate analysis; Regression; Artificial neural networks

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Relationships of ultimate and proximate analysis of 4540 US coal samples from 25 states with gross calorific value (GCV) have been investigated by regression and artificial neural networks (ANNs) methods. Three set of inputs: (a) volatile matter, ash and moisture (b) C, H, N, O, S and ash (c) C, H (exclusive of moisrure), N, O (exclusive of moisture), S, moisture and ash were used for the prediction of GCV by regression and ANNs. The multivariable regression studies have shown that the model (c) is the most suitable estimator of GCV. Running of the best arranged ANNs structures for the models (a) to (c) and assessment of errors have shown that the ANNs are not better or much different from regression, as a common and understood technique, in the prediction of uncomplicated relationships between proximate and ultimate analysis and coal GCV. (C) 2009 Elsevier B.V. All rights reserved.

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