Title :
An adaptive power system stabilizer using on-line trained neural networks
Author :
Shamsollahi, P. ; Malik, O.P.
Author_Institution :
Dept. of Electr. & Comput. Eng., Calgary Univ., Alta., Canada
fDate :
12/1/1997 12:00:00 AM
Abstract :
This paper presents an approach to the design of an adaptive power system stabilizer (PSS) based on on-line trained neural networks. Only the inputs and outputs of the generator are measured and there is no need to determine the states of the generator. The proposed neural adaptive PSS (NAPSS) consists of an adaptive neuro-identifier (ANI), which tracks the dynamic characteristics of the plant, and an adaptive neuro-controller (ANC) to damp the low frequency oscillations. These two subnetworks are trained in an on-line mode utilizing the backpropagation method. The use of a single-element error vector along with a small network simplifies the learning algorithm in terms of computation time. The improvement of the dynamic performance of the system is demonstrated by simulation studies for a variety of operating conditions and disturbances
Keywords :
adaptive control; backpropagation; neural nets; neurocontrollers; power system control; power system stability; adaptive neuro-controller; adaptive power system stabilizer; backpropagation method; dynamic characteristics; learning algorithm; low frequency oscillations; neural adaptive PSS; on-line trained neural networks; operating conditions; operating disturbances; simulation studies; single-element error vector; Adaptive control; Adaptive systems; Control systems; Neural networks; Power system control; Power system dynamics; Power system interconnection; Power system modeling; Power system stability; Power systems;
Journal_Title :
Energy Conversion, IEEE Transactions on