Title :
Estimation of Composite Load Model Parameters Using an Improved Particle Swarm Optimization Method
Author :
Regulski, P. ; Vilchis-Rodriguez, D.S. ; Djurovic, S. ; Terzija, V.
Author_Institution :
Sch. of Electr. & Electron. Eng., Univ. of Manchester, Manchester, UK
Abstract :
Power system loads are one of the crucial elements of modern power systems and, as such, must be properly modelled in stability studies. However, the static and dynamic characteristics of a load are commonly unknown, extremely nonlinear, and are usually time varying. Consequently, a measurement-based approach for determining the load characteristics would offer a significant advantage since it could update the parameters of load models directly from the available system measurements. For this purpose and in order to accurately determine load model parameters, a suitable parameter estimation method must be applied. The conventional approach to this problem favors the use of standard nonlinear estimators or artificial intelligence (AI)-based methods. In this paper, a new solution for determining the unknown load model parameters is proposed-an improved particle swarm optimization (IPSO) method. The proposed method is an AI-type technique similar to the commonly used genetic algorithms (GAs) and is shown to provide a promising alternative. This paper presents a performance comparison of IPSO and GA using computer simulations and measured data obtained from realistic laboratory experiments.
Keywords :
artificial intelligence; genetic algorithms; nonlinear estimation; particle swarm optimisation; power system parameter estimation; GA; IPSO method; artificial intelligence; composite load model parameter estimation method; genetic algorithm; improved particle swarm optimization method; load characteristic; load model parameter; measurement-based approach; nonlinear estimator; power system load; Computational modeling; Estimation; Load modeling; Mathematical model; Power system dynamics; Power system stability; Reactive power; Composite load (CL) model; load modeling; nonlinear parameter estimation; particle swarm optimization (PSO);
Journal_Title :
Power Delivery, IEEE Transactions on
DOI :
10.1109/TPWRD.2014.2301219