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Robust fuzzy control of PV systems with parametric uncertainties

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Panel Discussion
  • Session
  • Tuesday, 04 June 2013
  • 00:4 - 00:4
  • Duration: 12 mins
  • Publication date: 04 Jun 2013
  • Location: IETTV_Room, IETTV_Venue, Birmingham, United Kingdom
  • Part of event Control and Automation Conference 2013

About the session

This presentation describes a new robust nonlinear fuzzy control (RNFC) problem for uncertain nonlinear systems and also presents a Takagi-Sugeno (TS) fuzzy model-based maximum power control approach. First, a maximum-power-voltage-based control scheme and direct maximum power control scheme are introduced for maximum power point tracking (MPPT). Furthermore, the MPPT's robustness to cope with varying atmosphere and system uncertainties is also discussed. Second, a nonlinear system with parametric uncertainties is represented by the TS fuzzy model. Next, in order to reduce the number of measured signals, a TS fuzzy observer is established for state feedback. Then the concept of parallel design compensation (PDC) is employed to design an RNFC from the TS fuzzy models. The sufficient conditions are formulated in the format of linear matrix inequalities (LMIs) to obtain the observer and controller gains. The effectiveness of the proposed controller design methodology is finally demonstrated through a photovoltaic (PV) panel array to maximize the PV power.

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Speaker

  • EK

    Elkhatib Kamal

    Université Lille Nord de France, Laboratoire d'Automatique, Génie Informatique et Signal (LAGIS), PhD Student

    He is currently a Ph.D Student in the University of Lille, Laboratory of Automatic, Computer Engineering and Signal (LAGIS), France. His research interests include analysis, and design of intelligent control systems such as fuzzy control, neuro fuzzy control, robust control, model-based fault diagnosis, fault-tolerant systems and his main current research areas are wind energy, solar energy and modern power systems.
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