DocumentCode
53984
Title
Start-Up Decision of a Rapid-Start Unit for AGC Based on Machine Learning
Author
Saboya, Inmaculada ; Egido, Ignacio ; Rouco, Luis
Author_Institution
Sch. of Eng. (ICAI), Univ. Pontijicia Comillas, Madrid, Spain
Volume
28
Issue
4
fYear
2013
fDate
Nov. 2013
Firstpage
3834
Lastpage
3841
Abstract
Units within a control area, participating in the secondary frequency control, are usually spinning generating units already connected to the network and operating outside their range of optimal performance. This paper deals with an alternative method of providing secondary frequency control called rapid-start (RS). It consists in assigning a regulation band to several offline units (RS units) which are capable of being started and connected rapidly, therefore allowing the online units to function more closely to their nominal power. RS units have commonly been used for peaking generation and for tertiary control reserve, and have been rarely used for secondary control reserve. As RS operation may have economic benefits, since it allows for better dispatch of the other units in the control area, an appropriate algorithm to start up an RS unit needs to be developed. This paper proposes a machine learning based system (MLBS) to be employed in the decision to start up an RS unit while being used to provide secondary frequency control. The decision-making procedure is carried out by a decision tree. The building and implementation of the RS machine learning based system is illustrated for a secondary frequency control zone within the Spanish power system.
Keywords
control engineering computing; decision trees; frequency control; learning (artificial intelligence); power system control; AGC; MLBS; RS operation; Spanish power system; control area; decision tree; decision-making procedure; machine learning based system; offline units; rapid-start unit; regulation band; secondary control reserve; secondary frequency control zone; spinning generating units; start-up decision; tertiary control reserve; Clustering methods; Decision trees; Machine learning; Power system reliability; Clustering; decision tree; machine learning; rapid-start; secondary regulation;
fLanguage
English
Journal_Title
Power Systems, IEEE Transactions on
Publisher
ieee
ISSN
0885-8950
Type
jour
DOI
10.1109/TPWRS.2013.2259267
Filename
6514914
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