Title :
Effective identification of a turbogenerator in a SMIB power system using Fuzzy Neural Networks
Author :
Albukhanajer, Wissam A. ; Lefta, Hussein A. ; Ali, Ahmed Abdalla
Author_Institution :
Dept. of Comput., Univ. of Surrey, Guildford, UK
Abstract :
This paper presents modelling and identification of a turbogenerator in a single-machine-infinite-bus (SMIB) power grid utilizing Fuzzy Neural Networks (FuNNs) to construct an online adaptive identifier for the turbogenerator. It is well known that a turbogenerator is a highly nonlinear, fast acting and multivariable system usually connected to a power system. When major power system disturbances occur, protection and control actions are required to stop power system instability and restore the system to a normal state by minimizing the impact of the disturbance. Therefore, effective intelligent techniques are required to model and identify such a complex system. In this paper, a FuNN identifier (FuNNI) of a turbogenerator model is proposed. Computer simulations are carried out to investigate the modelling after deriving the mathematical model of the turbogenerator equipped with a conventional turbine governor and automatic voltage regulator (AVR). Inverse identification scheme is adopted using a multi-input multi-output (MIMO) fuzzy neural network. Empirical results show that the proposed FuNNI is capable of successfully identifying a highly nonlinear turbogenerator system and robust even when the configurations of the plant change due to faults in the power system.
Keywords :
multivariable systems; nonlinear control systems; power system stability; turbogenerators; voltage regulators; FuNN identifier; FuNNI; MIMO fuzzy neural networks; SMIB power system; automatic voltage regulator; conventional turbine governor; intelligent techniques; inverse identification scheme; multi-input multi-output fuzzy neural network; multivariable system; nonlinear turbogenerator system; power system instability; single-machine-infinite-bus power grid; Generators; MIMO; Mathematical model; Power system stability; Turbines; Turbogenerators; Valves; Fuzzy Neural Networks; Turbogenerator; adaptive identification; power systems; single-machine-infinite-bus;
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
DOI :
10.1109/IJCNN.2014.6889607