A cost effective off-line method for equivalent circuit parameter estimation of an induction motor using hybrid of genetic algorithm and particle swarm optimization (HGAPSO) is proposed. The HGAPSO inherits the advantages of both genetic algorithm (GA) and particle swarm optimization (PSO). The parameter estimation methodology describes a method for estimating the steady-state equivalent circuit parameters from the motor performance characteristics, which is normally available from the nameplate data or experimental tests. In this paper, the problem formulation uses the starting torque, the full load torque, the maximum torque, and the full load power factor which are normally available from the manufacturer data. The proposed method is use...
This paper presents a two-stage optimization of the parameters of a seven-parameter equivalent circu...
This paper applies genetic algorithms to the problem of induction motor parameter determination. Gen...
This paper proposes a hybrid Newton-Raphson and genetic algorithm for the estimation of double cage ...
The steady-state equivalent circuit parameters of an induction motor can be estimated using the oper...
Abstract: The steady-state equivalent circuit parameters of an induction motor can be estimated usin...
The parameters of electric machines play a substantial role in the control system which, in turn, ha...
Abstract: The current paper presents an adaptive system identification/parameter estimation algorith...
The estimated parameters accuracy of poly-phase induction motors is crucial for effective performanc...
Abstract: Induction motor is most frequently used electric machine in various applications due to it...
This work shows the comparison among three evolutionary algorithms used to estimate the parameters o...
This paper presents the particle swarm optimization based equivalent circuit estimation (PSOBECE) me...
Abstract — This paper presents a new technique for induction motor parameter identification. The pro...
The paper deals with methods of identification of the parameters of an induction motor model using g...
The paper deals with methods of identification of the parameters of an induction motor model using g...
The strengths and weaknesses of correlation algorithm, simulated annealing algorithm, and particle s...
This paper presents a two-stage optimization of the parameters of a seven-parameter equivalent circu...
This paper applies genetic algorithms to the problem of induction motor parameter determination. Gen...
This paper proposes a hybrid Newton-Raphson and genetic algorithm for the estimation of double cage ...
The steady-state equivalent circuit parameters of an induction motor can be estimated using the oper...
Abstract: The steady-state equivalent circuit parameters of an induction motor can be estimated usin...
The parameters of electric machines play a substantial role in the control system which, in turn, ha...
Abstract: The current paper presents an adaptive system identification/parameter estimation algorith...
The estimated parameters accuracy of poly-phase induction motors is crucial for effective performanc...
Abstract: Induction motor is most frequently used electric machine in various applications due to it...
This work shows the comparison among three evolutionary algorithms used to estimate the parameters o...
This paper presents the particle swarm optimization based equivalent circuit estimation (PSOBECE) me...
Abstract — This paper presents a new technique for induction motor parameter identification. The pro...
The paper deals with methods of identification of the parameters of an induction motor model using g...
The paper deals with methods of identification of the parameters of an induction motor model using g...
The strengths and weaknesses of correlation algorithm, simulated annealing algorithm, and particle s...
This paper presents a two-stage optimization of the parameters of a seven-parameter equivalent circu...
This paper applies genetic algorithms to the problem of induction motor parameter determination. Gen...
This paper proposes a hybrid Newton-Raphson and genetic algorithm for the estimation of double cage ...