Data di Pubblicazione:
2023
Abstract:
This paper investigates a finite-control set model-predictive control (FCS-MPC) algorithm to enhance the performance of a synchronous reluctance machine drive. Particular emphasis is placed on the definition of the cost function enabling a computationally light implementation while targeting good transient and steady-state performance. In particular, this work proposes the inclusion of an integral term into the cost function to ensure zero steady-state errors thus compensating for any model inaccuracies. A control effort term is also considered in the formulation of the cost function to achieve a high ratio between the sampling frequency and the average switching frequency. After a comprehensive simulation study showing the advantages of the proposed approach over the conventional FCS-MPC for a wide range of operating conditions, several experimental test results are reported. The effectiveness of the proposed control approach, including a detailed analysis of the effect of the load and speed variations, is thus fully verified providing useful guidelines for the design of a direct model predictive controller of synchronous reluctance motor drives. IEEE
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Behavioral research; Cost functions; Electric drives; Electric inverters; Electric machine control; Predictive control systems; Reluctance motors, Behavioral science; Cost-function; Finite control set; Finite control set model predictive control; Model-predictive control; Predictive models; Set models; Steady state; Steady state performance; Synchronous reluctance machine; Two-level voltage-source inverte; Voltage source inverter; Voltage-source inverter, Model predictive control; Behavioral sciences; Control systems; Cost function; finite control set model predictive control; Inductance; Predictive models; Steady-state; steady-state performance; Switches; Synchronous reluctance machine; two-level voltage-source inverter
Elenco autori:
Riccio, J.; Karamanakos, P.; Odhano, S.; Tang, M.; Di Nardo, M.; Zanchetta, P.
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