DocumentCode
3211725
Title
Artificial Neural Network Based Adaptive Load Shedding for an Industrial Cogeneration Facility
Author
Hsu, Cheng-Ting ; Chuang, Hui-Jen ; Chen, Chao-Shun
Author_Institution
Dept. of Electr. Eng., Southern Taiwan Univ., Tainan
fYear
2008
fDate
5-9 Oct. 2008
Firstpage
1
Lastpage
8
Abstract
This paper presents the design of adaptive load shedding strategy by executing the artificial neural network (ANN) and transient stability analysis for an Industrial cogeneration facility. To prepare the training data set for ANN, the transient stability analysis has been performed to solve the minimum load shedding for various operation scenarios without causing tripping problem of cogeneration units. Various training algorithms have been adopted and incorporated into the back- propagation learning algorithm for the feed-forward neural networks. By selecting the total power generation, total load demand and frequency decay rate as the input neurons of the ANN, the minimum amount of load shedding is determined to maintain the stability of power system. To demonstrate the effectiveness of the ANN minimum load-shedding scheme, the traditional method and the present load shedding schemes of the selected cogeneration system are also applied for comparison and verification of the proposed methodology.
Keywords
cogeneration; industrial power systems; learning (artificial intelligence); load shedding; neural nets; power system analysis computing; power system transient stability; adaptive load shedding; artificial neural network; back-propagation learning algorithm; feed-forward neural networks; frequency decay rate; industrial cogeneration facility; minimum load shedding; total load demand; total power generation; transient stability analysis; Adaptive systems; Artificial neural networks; Cogeneration; Feedforward systems; Industrial training; Power system stability; Power system transients; Stability analysis; Training data; Transient analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Industry Applications Society Annual Meeting, 2008. IAS '08. IEEE
Conference_Location
Edmonton, Alta.
ISSN
0197-2618
Print_ISBN
978-1-4244-2278-4
Electronic_ISBN
0197-2618
Type
conf
DOI
10.1109/08IAS.2008.137
Filename
4658925
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