Neuro Fuzzy Controller Based Direct Torque Control for SRM Drive

The integration of neural networks and fuzzy inference system could be formatted into three main categories: cooperative, concurrent and integrated neuro-fuzzy models namely fuzzy associative memories fuzzy rules extraction using self-organizing maps and systems capable of learning fuzzy set parameters. Mamdani and Takagi-Sugeno type integrated neuro-fuzzy systems were further introduced with a focus on some of the salient features and advantages of the different types of integrated neuro-fuzzy models that have been evolved during last decade. This work focus on the implementation of integrated neuro-fuzzy systems also called hybrid controllers. The Mamdani and Sugeno hybrid controllers are incorporated along with direct torque control to generate more accurate voltage space vectors. This helps in controlling the torque ripple and reduce its amplitude to a great extend. The detail description is given in the following sections. MATLAB design is done with the help of MATLAB Compilers from Math works and the results prove the better control of SRM with reduced torque and flux ripples.

[1]  Xianmin Ma,et al.  Neural network speed identification scheme for speed sensor-less DTC induction motor drive system , 2000, Proceedings IPEMC 2000. Third International Power Electronics and Motion Control Conference (IEEE Cat. No.00EX435).

[2]  Antoni Arias,et al.  Novel direct torque control (DTC) scheme with fuzzy adaptive torque-ripple reduction , 2003, IEEE Trans. Ind. Electron..

[3]  Bimal K. Bose,et al.  Expert system, fuzzy logic, and neural network applications in power electronics and motion control , 1994, Proc. IEEE.

[4]  Yen-Shin Lai,et al.  New hybrid fuzzy controller for direct torque control induction motor drives , 2003 .

[5]  Adrian David Cheok,et al.  A new torque and flux control method for switched reluctance motor drives , 2002 .

[6]  I. Takahashi,et al.  High-performance direct torque control of an induction motor , 1989 .

[7]  H.F.E. Soliman,et al.  Direct Torque Control of a Three Phase Induction Motor Using a Hybrid PI/Fuzzy Controller , 2007, 2007 IEEE Industry Applications Annual Meeting.

[8]  Min Li,et al.  Digital Implementation of DTC Based on PSO for Induction Motors , 2006, 2006 6th World Congress on Intelligent Control and Automation.

[9]  B. Kimiaghalam,et al.  Direct Torque Control of induction motors with fuzzy logic controller , 2008, 2008 International Conference on Control, Automation and Systems.

[10]  Zhang Yin-hai An EKF for closed-loop speed estimation of induction motor based on noise model identification by using genetic algorithms , 2005 .

[11]  Sandeep Jain,et al.  Robust adaptive control of variable reluctance stepper motors , 1999, IEEE Trans. Control. Syst. Technol..

[12]  J. Amarnath,et al.  Direct torque control of induction motor based on state feedback and variable structure fuzzy controllers , 2006, 2006 IEEE Power India Conference.

[13]  S. Peresada,et al.  Feedback linearizing control of switched reluctance motors , 1987 .

[14]  Robert D. Lorenz,et al.  Complex rotating vector method for smooth torque control of a saturated switched reluctance motor , 1999, Conference Record of the 1999 IEEE Industry Applications Conference. Thirty-Forth IAS Annual Meeting (Cat. No.99CH36370).

[15]  Barruquer Moner IX. References , 1971 .

[16]  Tong Liu,et al.  Neural network-based model reference adaptive systems for high performance motor drives and motion controls , 2000, Conference Record of the 2000 IEEE Industry Applications Conference. Thirty-Fifth IAS Annual Meeting and World Conference on Industrial Applications of Electrical Energy (Cat. No.00CH37129).

[17]  Hassan-Halleh,et al.  Direct Torque Control of Induction Motors with Fuzzy Logic Controller , 2008 .