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Locally Optimal Takagi-Sugeno Fuzzy Controllers

Locally Optimal Takagi-Sugeno Fuzzy Controllers. Mohammad javad Yazdanpanah yazdan@ut.ac.ir. Amir massoud Farahmand amir@cs.ualberta.ca. Department of Electrical and Computer Engineering University of Tehran Tehran, Iran. Fuzzy Control. Successful in many applications Ease of use

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Locally Optimal Takagi-Sugeno Fuzzy Controllers

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  1. Locally Optimal Takagi-Sugeno Fuzzy Controllers Mohammad javad Yazdanpanah yazdan@ut.ac.ir Amir massoud Farahmand amir@cs.ualberta.ca Department of Electrical and Computer Engineering University of Tehran Tehran, Iran

  2. Fuzzy Control • Successful in many applications • Ease of use • Intuitive and interpretable • Powerful nonlinear controller Department of Electrical and Computer Engineering University of Tehran

  3. Takagi-Sugeno Plant Model , Theorem 1.The continuous uncontrolled T-S fuzzy system is globally quadratically stable if there exists a common positive definite matrix P such that Department of Electrical and Computer Engineering University of Tehran

  4. Parallel Distributed Compensation Stability condition: Department of Electrical and Computer Engineering University of Tehran

  5. Locally Optimal Design Linearization Locally optimal design Department of Electrical and Computer Engineering University of Tehran

  6. Experiments: Problem description • Nonlinear Mass-Spring-Damper system Department of Electrical and Computer Engineering University of Tehran

  7. Experiments: Fuzzy Settings The dynamics of the plant is approximated using Gaussian membership function Approximation error Department of Electrical and Computer Engineering University of Tehran

  8. Experiments: Stabilization (I) Comparison of T-S controller (bold) and linear controller (dotted) with different initial conditions Both TS and linear controller are stable in this case. However, the behavior of fuzzy controller is smoother and with lower overshoot. Department of Electrical and Computer Engineering University of Tehran

  9. Experiments: Stabilization (II) The linear controller is not stable in this case, but the fuzzy controller can handle it easily. Department of Electrical and Computer Engineering University of Tehran Response of T-S controller to (10 0)'

  10. Experiments: Performance Comparison , , Department of Electrical and Computer Engineering University of Tehran

  11. Fig. 3. Performance region comparison for different performance indices: (Q=1, R=1), (Q=10, R=1), and (Q=1, R=10), from left to right, respectively (dark region means linear one has better performance). Experiments: Performance Comparison Department of Electrical and Computer Engineering University of Tehran

  12. Conclusions and Suggestions • Conclusions • Stable Fuzzy Controller • Local Optimality • How close is it to the global optimal solution?! • Suggestions • Comparison with other T-S controllers • Modeling error and stability (polytopic systems) • Considering the effect of membership functions explicitly Department of Electrical and Computer Engineering University of Tehran

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