Model Predictive Torque Ripple Reduction with Weighting Factor Optimization Fed by an Indirect Matrix Converter

Uddin, M; Mekhilef, S; Mubin M.; Rivera M.; Rodriguez J.

Abstract

Model predictive control has emerged as a powerful control tool in the field of power converter and drive's system. In this article, a weighting factor optimization for reducing the torque ripple of induction machine fed by an indirect matrix converter is introduced and presented. Therefore, an optimization method is adopted here to calculate the optimum weighting factor corresponding to minimum torque ripple. However, model predictive torque and flux control of the induction machine with conventionally selected weighting factor is being investigated in this article and is compared with the proposed optimum weighting factor based model predictive control algorithm to reduce the torque ripples. The proposed model predictive control scheme utilizes the discrete phenomena of power converter and predicts the future nature of the system variables. For the next sampling period, model predictive method selects the optimized switching state that minimizes a cost function based on optimized weighting factor to actuate the power converter. The introduced weighting factor optimization method in model predictive control algorithm is validated through simulations and shows potential control, tracking of variables with their respective references and consequently reduces the torque ripples corresponding to conventional weighting factor based predictive control method.

Más información

Título según WOS: Model Predictive Torque Ripple Reduction with Weighting Factor Optimization Fed by an Indirect Matrix Converter
Título según SCOPUS: Model predictive torque ripple reduction with weighting factor optimization fed by an indirect matrix converter
Título de la Revista: ELECTRIC POWER COMPONENTS AND SYSTEMS
Volumen: 42
Número: 10
Editorial: TAYLOR & FRANCIS INC
Fecha de publicación: 2014
Página de inicio: 1059
Página final: 1069
Idioma: English
DOI:

10.1080/15325008.2014.913739

Notas: ISI, SCOPUS