Deakin University
Browse

Application of neural networks as an auxiliary technique in the modelling of power station

conference contribution
posted on 2004-01-01, 00:00 authored by K Ghamami, Eric Hu
Artificial neural network (NN) is an alternative way (to conventional physical or chemical based modeling technique) to solve complex ill-defined problems. Neural networks trained from historical data are able to handle nonlinear problems and to find the relationship between input data and output data when there is no obvious one between them. Neural Networks has been successfully used in control, robotic, pattern recognition, forecasting areas. This paper presents an application of neural networks in finding some key factors eg. heat loss factor in power station modeling process. In the conventional modeling of power station, these factors such as heat loss are normally determined by experience or “rule of thumb”. To get an accurate estimation of these factors special experiment needs to be carried out and is a very time consuming process. In this paper the neural networks (technique) is used to assist this difficult conventional modeling process. The historical data from a real running brown coal power station in Victoria has been used to train the neural network model and the outcomes of the trained NN model will be used to determine the factors in the conventional energy modeling of the power stations that is under the development as a part of an on-going ARC Linkage project aiming to detail modeling the internal energy flows in the power station.

History

Title of proceedings

AUPEC 2004 : Australasian Universities Power Engineering Conference Brisbane, Australia

Event

AUPEC : Australasian Universities Power Engineering Conference (2004 : Brisbane, Australia)

Pagination

1 - 6

Publisher

University of Queensland, School of Information Technology & Electrical Engineering

Location

Brisbane, Australia

Place of publication

Brisbane, Qld

Start date

2004-09-26

End date

2004-09-29

ISBN-13

9781864997750

ISBN-10

1864997753

Language

eng

Publication classification

E1 Full written paper - refereed

Editor/Contributor(s)

G Walker

Usage metrics

    Research Publications

    Categories

    No categories selected

    Keywords

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC