This paper proposes a new method based on Artificial Neural Networks for reducing the torque ripple in a non-sinusoidal Synchronous Reluctance Motor. The Lagrange optimization method is used to solve the problem of calculating optimal currents in the d-q frame. A neural control scheme is then proposed as an adaptive solution to derive the optimal stator currents giving a constant electromagnetic torque and minimizing the ohmic losses. Thanks to the online learning capacity of neural networks, the optimal currents can be obtained online in real time. With this neural control, each machine’s parameters estimation errors and current controller errors can be compensated. Simulation and experimental results are presented which confirm the validi...
International audienceThe torque ripple limits the performances of synchronous reluctance machine (S...
Synchronous reluctance machine (SynRM) has been studied widely in order to reduce its high torque ri...
This paper focuses on designing a gain-scheduled (G-S) state feedback controller (SFC) for synchrono...
This paper proposes a new method based on artificial neural networks for reducing the torque ripple ...
International audienceThis paper presents a new method based on Artificial Neural Networks to obtain...
Switched reluctance motor is acquiring major attention because of its simple design, economic develo...
This paper presents a new idea by using the Artificial Neural Networks (ANNs) for estimating the par...
This paper presents a new method by using the Artificial Neural Networks (ANNs) for estimating the p...
This paper briefly describes an approach to determine the optimum magnetic circuit parameters to min...
An inherent torque ripple characterizes switched reluctance technology from conventional technology....
This paper presents a neural network controller for permanent magnet synchronous motor (PMSM). The n...
The main objective of our work is to develop the methods for performance optimization of the SynRM i...
High torque ripple dramatically affects the switched reluctance motor (SRM) application. To reduce t...
Abstract—A new offline current modulation using a neuro-fuzzy compensation scheme for torque-ripple ...
International audienceThe torque ripple limits the performances of synchronous reluctance machine (S...
Synchronous reluctance machine (SynRM) has been studied widely in order to reduce its high torque ri...
This paper focuses on designing a gain-scheduled (G-S) state feedback controller (SFC) for synchrono...
This paper proposes a new method based on artificial neural networks for reducing the torque ripple ...
International audienceThis paper presents a new method based on Artificial Neural Networks to obtain...
Switched reluctance motor is acquiring major attention because of its simple design, economic develo...
This paper presents a new idea by using the Artificial Neural Networks (ANNs) for estimating the par...
This paper presents a new method by using the Artificial Neural Networks (ANNs) for estimating the p...
This paper briefly describes an approach to determine the optimum magnetic circuit parameters to min...
An inherent torque ripple characterizes switched reluctance technology from conventional technology....
This paper presents a neural network controller for permanent magnet synchronous motor (PMSM). The n...
The main objective of our work is to develop the methods for performance optimization of the SynRM i...
High torque ripple dramatically affects the switched reluctance motor (SRM) application. To reduce t...
Abstract—A new offline current modulation using a neuro-fuzzy compensation scheme for torque-ripple ...
International audienceThe torque ripple limits the performances of synchronous reluctance machine (S...
Synchronous reluctance machine (SynRM) has been studied widely in order to reduce its high torque ri...
This paper focuses on designing a gain-scheduled (G-S) state feedback controller (SFC) for synchrono...