Title :
Novel algorithm for online voltage stability assessment based on feed forward neural network
Author :
Kamalasadan, S. ; Srivastava, A.K. ; Thukaram, D.
Author_Institution :
Div. of Eng. & Comput. Technol., Univ. of West Florida, FL
Abstract :
This paper presents an artificial feed forward neural network (FFNN) approach for the assessment of power system voltage stability. A novel approach based on the input-output relation between real and reactive power, as well as voltage vectors for generators and load buses is used to train the neural net (NN). The input properties of the feed forward network are generated from offline training data with various simulated loading conditions using a conventional voltage stability algorithm based on the L-index. The neural network is trained for the L-index output as the target vector for each of the system loads. Two separate trained NN, corresponding to normal loading and contingency, are investigated on the 367 node practical power system network. The performance of the trained artificial neural network (ANN) is also investigated on the system under various voltage stability assessment conditions. As compared to the computationally intensive benchmark conventional software, near accurate results in the value of L-index and thus the voltage profile were obtained. Proposed algorithm is fast, robust and accurate and can be used online for predicting the L-indices of all the power system buses. The proposed ANN approach is also shown to be effective and computationally feasible in voltage stability assessment as well as potential enhancements within an overall energy management system in order to determining local and global stability indices
Keywords :
energy management systems; feedforward neural nets; power engineering computing; power system stability; reactive power; artificial feedforward neural network; energy management system; generator voltage vectors; global stability indices; intensive benchmark conventional software; load buses; offline training data; online voltage stability assessment; power system voltage stability; reactive power; voltage profile; Artificial neural networks; Feedforward neural networks; Feeds; Neural networks; Power generation; Power system simulation; Power system stability; Reactive power; Training data; Voltage; Artificial Neural Network; Back Propagation method; Quasi Newton and Levenberg Marquardt Algorithms; Voltage Stability;
Conference_Titel :
Power Engineering Society General Meeting, 2006. IEEE
Conference_Location :
Montreal, Que.
Print_ISBN :
1-4244-0493-2
DOI :
10.1109/PES.2006.1709621