DocumentCode :
11311
Title :
Online Static Security Assessment Module Using Artificial Neural Networks
Author :
Sunitha, R. ; Kumar, Sreerama Kumar ; Mathew, Abraham T.
Author_Institution :
Dept. of Electr. Eng., Nat. Inst. of Technol. Calicut, Calicut, India
Volume :
28
Issue :
4
fYear :
2013
fDate :
Nov. 2013
Firstpage :
4328
Lastpage :
4335
Abstract :
Fast and accurate contingency selection and ranking method has become a key issue to ensure the secure operation of power systems. In this paper multi-layer feed forward artificial neural network (MLFFN) and radial basis function network (RBFN) are proposed to implement the online module for power system static security assessment. The security classification, contingency selection and ranking are done based on the composite security index which is capable of accurately differentiating the secure and non-secure cases. For each contingency case as well as for base case condition, the composite security index is computed using the full Newton Raphson load flow analysis. The proposed artificial neural network (ANN) models take loading condition and the probable contingencies as the input and assess the system security by screening the credible contingencies and ranking them in the order of severity based on composite security index. The numerical results of applying the proposed approach to IEEE 118-bus test system demonstrate its effectiveness for online power system static security assessment. The comparison of the ANN models with the model based on Newton Raphson load flow analysis in terms of accuracy and computational speed indicate that the proposed model is effective and reliable in the fast evaluation of the security level of power systems. The proposed online static security assessment (OSSA) module realized using the ANN models are found to be suited for online application.
Keywords :
IEEE standards; feedforward neural nets; load flow; power engineering computing; power system security; radial basis function networks; ANN models; IEEE 118-bus test system; MLFFN; Newton Raphson load flow analysis; OSSA module; RBFN; artificial neural network models; artificial neural networks; composite security index; contingency selection; multilayer feed forward artificial neural network; online application; online power system static security assessment; online static security assessment; online static security assessment module; power system secure operation; power system static security assessment; radial basis function network; ranking method; Composite security index; contingency screening and ranking; multi-layer feed forward neural network; online static security assessment; radial basis function network;
fLanguage :
English
Journal_Title :
Power Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
0885-8950
Type :
jour
DOI :
10.1109/TPWRS.2013.2267557
Filename :
6547732
Link To Document :
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