Fast Analysis of Power System Stability by Artificial Neural Network

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Abstract:

Power system small signal stability concerns the ability of the power system to maintain stability subject to small disturbances. The analysis of small signal stability often has to deal with high-order system matrix due to the large number of generating units so that it is not easy to calculate and analyze the original system matrix and the whole set of eigenvalues. In this paper a new approach is proposed to take advantage of the specific feature of the parallel structure of artificial neural network for calculating the most critical eigenvalue or all eigenvalues of the unstable oscillation mode. The developed algorithm is tested on a sample power system to validate the feasibility of the proposed method for the calculation of the critical eigenvalue.

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Periodical:

Advanced Materials Research (Volumes 732-733)

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848-851

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Online since:

August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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