PMSM transient response optimization by end-to-end optimal control
Speed responses of motors, especially Permanent Magnet Synchronous Motors (PMSMs), are increasing in importance for recent applications, such as electric vehicles or quadrotors. These applications require quick acceleration performance. However, commercial controllers are based mainly on Proportiona...
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Zusammenfassung: | Speed responses of motors, especially Permanent Magnet Synchronous Motors
(PMSMs), are increasing in importance for recent applications, such as electric
vehicles or quadrotors. These applications require quick acceleration
performance. However, commercial controllers are based mainly on
Proportional-Integral (PI) controllers, which are suitable for eliminating
steady-state errors but unsuitable for transient response optimization. In this
paper, we replaced whole conventional controllers with an end-to-end Recurrent
Neural Network (RNN) that has a regularized transition matrix. Our end-to-end
controller directly minimizes the transient response time on the basis of
optimal control theory. Computer-simulated results show that speed response
indices improved using the RNN rather than a PI controller, while both were
under comparable power losses. The current vector trajectories of the RNN
showed that the RNN could automatically determine arbitrary trajectories in the
flux-weakening region in accordance with an arbitrarily designed loss function.
In contrast, the traditional flux-weakening methods using PI controllers have
pre-determined current vector trajectories. |
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DOI: | 10.48550/arxiv.2402.03820 |