4.7 Article

Estimation of furnace exit gas temperature (FEGT) using optimized radial basis and back-propagation neural networks

Journal

ENERGY CONVERSION AND MANAGEMENT
Volume 49, Issue 8, Pages 1989-1998

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.enconman.2008.03.011

Keywords

boiler; furnace exit gas temperature (FEGT); prediction neural network; RBF

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The boiler is a very important component of a thermal power plant, and its efficient operation requires continuous online information of various relevant parameters. Furnace exit gas temperature (FEGT) is one such important design/operating parameter. Knowledge of FEGT is not only useful for design of convective heating surface but also helpful for operating actions and decision making. Its online information ensures improvement in economic benefit of the power plant. Non-availability of FEGT on the operator desk greatly limits efficient operation. In this study, a novel method of estimating FEGT using neural network is presented. The training data are first generated by calculating FEGT using heat balances through various heat exchangers. Prediction accuracy and fast response are major advantages in using neural network for estimating FEGT for operator information. Two types of feed forward neural modeling networks, radial basis function and back-propagation network, were applied and compared based on their network simplicity, model building and prediction accuracy. Results are verified on practical data obtained from a 2 10 MW boiler of a thermal power plant. (c) 2008 Elsevier Ltd. All rights reserved.

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