Load frequency controller design using neural networks

Bevrani, Hassan (2000) Load frequency controller design using neural networks. In 1st Symposium on Power Plant Control & Instrumentation - SPPCI, 2000, Kermanshah, Iran.


This paper presents a suitable neural network based solution for load-frequency control problem in a deregulated environment. The proposed control system ensures that the selected generator companies will automatically track the load changes to keep the system frequency and tie line power interchanges close to specified values. In the proposed control structure, it is assumed that each control area has its own generation, distribution and transmission network, which distribution company is responsible to track area's load and honoring tie-line power exchange contracts with neighbors by securing as much transmission and generation capacity as needed. A power system example is used to illustrate the applied control methodology, and the closed loop system performance is tested for a various load disturbance scenarios.

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ID Code: 15335
Item Type: Conference Paper
Refereed: Yes
Additional Information: For more information, please contact the author.
Divisions: Past > QUT Faculties & Divisions > Faculty of Built Environment and Engineering
Copyright Owner: Copyright 2000 (please consult author)
Deposited On: 27 Oct 2008 00:00
Last Modified: 15 Jan 2009 08:36

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