NEURAL-NETWORK MODELING OF A 200MW BOILER SYSTEM

Citation
G. Irwin et al., NEURAL-NETWORK MODELING OF A 200MW BOILER SYSTEM, IEE proceedings. Control theory and applications, 142(6), 1995, pp. 529-536
Citations number
16
Categorie Soggetti
Instument & Instrumentation","Engineering, Eletrical & Electronic
ISSN journal
13502379
Volume
142
Issue
6
Year of publication
1995
Pages
529 - 536
Database
ISI
SICI code
1350-2379(1995)142:6<529:NMOA2B>2.0.ZU;2-Y
Abstract
A feedforward neural network is trained on noisy data from a validated computer simulation of a 200 MW oil fired, drum-type turbogenerator u nit at Ballylumford power station in Northern Ireland. Local nonlinear models, based on a multilayer perceptron with one hidden layer, are s hown to give comparable predictive results to those obtained from line ar multivariable ARMAX models. Neural modelling issues like the dimens ion of the input vector, training with noisy data, training algorithms and model validation are highlighted and discussed. A global nonlinea r neural network boiler model is developed and shown to produce signif icantly improved predictions of the plant outputs across the complete operating range. It is concluded that neural networks can constitute a powerful tool for nonlinear modelling and identification of industria l plant.