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Nonlinear performance seeking control using Fuzzy Model Reference Learning Control and the method of Steepest Descent
Author(s) -
George Kopasakis
Publication year - 1997
Publication title -
33rd joint propulsion conference and exhibit
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.1997-3362
Subject(s) - gradient descent , computer science , fuzzy control system , nonlinear system , method of steepest descent , control theory (sociology) , control (management) , descent (aeronautics) , fuzzy logic , artificial intelligence , mathematical optimization , mathematics , artificial neural network , engineering , physics , quantum mechanics , aerospace engineering
1. Abstract Performance Seeking Control (PSC) attempts to find and control a process at an operating condition that will generate maximum performance. In this paper a nonlinear multivariable PSC methodology will be developed, utilizing the Fuzzy Model Reference Learning Control (FMRLC) and the method of Steepest Descent or Gradient (SDG). This PSC methodology employs the SDG method to find the operating condition that will generate maximum performance. This operating condition is in turn passed to the FMRLC controller as a set point for the control of the process. The conventional SDG algorithm is modified in this paper in order for convergence to occur monotonically. For the FMRLC control, the conventional fuzzy model reference learning control methodology is utilized, with guidelines generated here for effective tuning of the FMRLC controller.

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