Artificial neural network based robust speed control of permanent magnet synchronous motors

Author:

Pajchrowski Tomasz,Urbański Konrad,Zawirski Krzysztof

Abstract

PurposeThe aim of the paper is to find a simple structure of speed controller robust against drive parameters variations. Application of artificial neural network (ANN) in the controller of PI type creates proper non‐linear characteristics, which ensures controller robustness.Design/methodology/approachThe robustness of the controller is based on its non‐linear characteristic introduced by ANN. The paper proposes a novel approach to neural controller synthesis to be performed in two stages. The first stage consists in training the ANN to form the proper shape of the control surface, which represents the non‐linear characteristic of the controller. At the second stage, the PI controller settings are adjusted by means of the random weight change (RWC) procedure, which optimises the control quality index formulated in the paper. The synthesis is performed using simulation techniques and subsequently the behaviour of a laboratory speed control system is validated in the experimental set‐up. The control algorithms of the system are performed by a microprocessor floating point DSP control system.FindingsThe proposed controller structure with proper control surface created by ANN guarantees expected robustness.Originality/valueThe original method of robust controller synthesis was proposed and validated by simulation and experimental investigations.

Publisher

Emerald

Subject

Applied Mathematics,Electrical and Electronic Engineering,Computational Theory and Mathematics,Computer Science Applications

Reference9 articles.

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4. Vitek, J., Baculak, T., Dodds, S.J. and Perryman, R. (2003), “Near‐time‐optimal control of electrical drives with permanent magnet synchronous motor”, Electrical Power Electronics 2003 (EPE 2003), 2‐4 September 2003, Toulouse, paper on CD‐ROM.

5. Pajchrowski, T. and Zawirski, K. (2004), “Robust speed control of PMSM with neuro and fuzzy technique application”, EPE_PEMC, 2‐4 September 2004, Ryga, paper A71135 on CD‐ROM.

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