ASME 2006 Power Conference 2006
DOI: 10.1115/power2006-88057
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Application of Neural Network Combined With CFD Modeling and Combustion Tuning in Large Coal-Fired Boilers

Abstract: The objective of the present work was to develop an optimization method for the prediction of the behavior of coals or coal blends in utility boilers, in order to specify the performance and pollutant emissions during the firing. Two methods have been used to study the performance of single coals or coal blends in power station boilers (1) experimental tests, where the coal/blend was fired in either a power station or in a test rig, and (2) use of coal combustion computational fluid dynamic (CFD). Here we will… Show more

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“…Figure 6 shows that from 25 to 78 epochs and from 579 to 713 epochs, the neural network could not pick up subsets that approached the rules. This is shown in the Validation graph in Figure 6 when the curve began to grow in these gaps [6].…”
Section: Check Of Neural Network Training Schedulesmentioning
confidence: 83%
“…Figure 6 shows that from 25 to 78 epochs and from 579 to 713 epochs, the neural network could not pick up subsets that approached the rules. This is shown in the Validation graph in Figure 6 when the curve began to grow in these gaps [6].…”
Section: Check Of Neural Network Training Schedulesmentioning
confidence: 83%