This paper proposes an accurate center of gravity (COG) defuzzification method that improves both the system's approximation ability and the control performance of a fuzzy logic controller. The accuracy of the proposed COG defuzzifier is obtained by representing the output membership functions (MFs) with various design parameters such as the centers, widths, and modifiers of MFs and by adjusting these design parameters with Lamarckian co-adaptation of learning and evolution, where the learning performs a local search of design parameters in an individual COG defuzzifier, but the evolution performs a global search of design parameters among a population of various COG defuzzifiers. This co-adaptation scheme allows it to evolve much faster than the nonlearning case and gives a higher possibility of finding an optimal solution due to its wider searching capability. An application to the truck backer-upper control problem of the proposed co-adaptive design method of COG defuzzifier is presented.


    Access

    Access via TIB

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    An accurate COG defuzzifier design by the co-adaptation of learning and evolution


    Contributors:
    Kim, Daijin (author)


    Publication date :

    2000


    Size :

    7 Seiten, 10 Quellen




    Type of media :

    Conference paper


    Type of material :

    Print


    Language :

    English




    Robust, Efficient and Accurate Mesh Adaptation for Turbomachinery CFD Simulations

    Wyman, Nicholas J. / Galpin, Paul / Hansen, Thorsten et al. | AIAA | 2020


    ROBUST, EFFICIENT AND ACCURATE MESH ADAPTATION FOR TURBOMACHINERY CFD SIMULATIONS

    Wyman, Nicholas J. / Galpin, Paul / Hansen, Thorsten et al. | TIBKAT | 2020


    Channel Quality Feedback Enhancements for Accurate URLLC Link Adaptation in 5G Systems

    Pocovi, Guillermo / Esswie, Ali A. / Pedersen, Klaus I. | IEEE | 2020


    An Eulerian Approach with Mesh Adaptation for Highly Accurate 3D Droplet Dynamics Simulations

    Pueyo, Alberto / Baruzzi, Guido / Ozcer, Isik | SAE Technical Papers | 2019


    Behavioural adaptation to vehicle design

    Pfafferott, Ingo | ELBA - Federal Highway Research Institute (BASt) | 1992

    Free access