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Learning and tuning fuzzy logic controllers through reinforcementsA new method for learning and tuning a fuzzy logic controller based on reinforcements from a dynamic system is presented. In particular, our Generalized Approximate Reasoning-based Intelligent Control (GARIC) architecture: (1) learns and tunes a fuzzy logic controller even when only weak reinforcements, such as a binary failure signal, is available; (2) introduces a new conjunction operator in computing the rule strengths of fuzzy control rules; (3) introduces a new localized mean of maximum (LMOM) method in combining the conclusions of several firing control rules; and (4) learns to produce real-valued control actions. Learning is achieved by integrating fuzzy inference into a feedforward network, which can then adaptively improve performance by using gradient descent methods. We extend the AHC algorithm of Barto, Sutton, and Anderson to include the prior control knowledge of human operators. The GARIC architecture is applied to a cart-pole balancing system and has demonstrated significant improvements in terms of the speed of learning and robustness to changes in the dynamic system's parameters over previous schemes for cart-pole balancing.
Document ID
19920019516
Acquisition Source
Legacy CDMS
Document Type
Technical Memorandum (TM)
Authors
Berenji, Hamid R.
(Sterling Software Moffett Field, CA., United States)
Khedkar, Pratap
(California Univ. Berkeley., United States)
Date Acquired
September 6, 2013
Publication Date
January 1, 1992
Subject Category
Cybernetics
Report/Patent Number
NASA-TM-107875
NAS 1.15:107875
FIA-92-02
Accession Number
92N28759
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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