DocumentCode :
473603
Title :
Power system on-line transient stability assessment based on relevance vector learning mechanism
Author :
Zhi-gang, Du ; Lin, Niu ; Jian-guo, Zhao
Author_Institution :
Nat. Natural Sci. Found. of China under Grant, Beijing
fYear :
2007
fDate :
3-6 Dec. 2007
Firstpage :
1327
Lastpage :
1331
Abstract :
One of the most challenging problems in real-time operation of power system is the prediction of transient stability. Fast and accurate techniques are imperative to achieve on-line transient stability assessment (TSA). This problem has been approached by various machine learning algorithms, however they find a class decision estimate rather than a probabilistic confidence of the class distribution. To counter the shortcoming of common machine learning methods, a novel machine learning technique, i.e. ´relevance vector machine´ (RVM), for TSA is presented in this paper. RVM is based on a probabilistic Bayesian learning framework, and as a feature it can yield a decision function that depends on only a very fewer number of so-called relevance vectors. The proposed method is tested on a practical power system, and compared with a state-of-the-art ´support vector machine´ (SVM) classifier. The classification performance is evaluated using false discriminate rate (FDR). It is demonstrated that the RVM classifier can yield a decision function that is much sparser than the SVM classifier while providing more higher classification accuracy. Consequently, the RVM classifier greatly reduces the computational complexity, making it more suitable for real-time implementation.
Keywords :
learning (artificial intelligence); power system analysis computing; power system transient stability; probability; support vector machines; false discriminate rate; machine learning algorithms; power system online transient stability; probabilistic Bayesian learning framework; relevance vector learning mechanism; support vector machine classifier; transient stability assessment; Bayesian methods; Counting circuits; Learning systems; Machine learning; Machine learning algorithms; Power system stability; Power system transients; Real time systems; Support vector machine classification; Support vector machines; Transient stability prediction; relevance vector machine; support vector machine;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Power Engineering Conference, 2007. IPEC 2007. International
Conference_Location :
Singapore
Print_ISBN :
978-981-05-9423-7
Type :
conf
Filename :
4510232
Link To Document :
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