Please use this identifier to cite or link to this item: http://13.232.72.61:8080/jspui/handle/123456789/410
Title: Development of an Online Static Power System Security Assessment Module Using Artificial Neural Networks in 118- Bus Test System.
Authors: Lekshmi, M.
Sowmya
Nagaraj, M. S.
Keywords: Electrical engineering
Electronics Engineering
Newton Raphson method
Issue Date: Dec-2014
Publisher: RES Publication
Citation: Lekshmi, M., Sowmya., & Nagaraj, M. S. (2014). Development of an Online Static Power System Security Assessment Module Using Artificial Neural Networks in 118-Bus Test System. Development, 2(6). 74-79.
Abstract: Contingency analysis is an important task in today’s power system. Fast and accurate contingency analysis is some of the major issues. In this paper two types of Artificial Neural Network (ANN) viz. Multilayer feed forward neural network (MLFFN) and Radial basis function network (RBFN) are used to implement online static security assessment. Newton Raphson (NR) method is done on an IEEE 118-test bus system and Composite Security Index (CSI) is calculated. Loads are varied from the base case values and for each load condition, line flow and bus voltages are calculated using a model based on the NR load flow method for training an ANN with the help of back propagation algorithm. Expected range of load variation and randomly selected 20-contingencies are tested in the training ANN model. The results obtained by the above ANN methods are matched with NR methods. The CSI is found out for various loads and contingencies in MLFFN and RBFN. The computation time required for MLFFN and RBFN is compared with NR method and found that RBFN is using less computation time average of 35.67291s
URI: http://13.232.72.61:8080/jspui/handle/123456789/410
ISSN: e-2320-7868
Appears in Collections:Articles

Files in This Item:
File Description SizeFormat 
Development of an Online Static Power.pdf657.21 kBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.