Automatic design of fuzzy logic controller using a genetic algorithm—to predict power requirement and surface finish in grinding

@article{Nandi2004AutomaticDO,
  title={Automatic design of fuzzy logic controller using a genetic algorithm—to predict power requirement and surface finish in grinding},
  author={A. Nandi and D. K. Pratihar},
  journal={Journal of Materials Processing Technology},
  year={2004},
  volume={148},
  pages={288-300}
}
  • A. Nandi, D. K. Pratihar
  • Published 2004
  • Engineering
  • Journal of Materials Processing Technology
  • Abstract We have developed a method for automatic design of fuzzy logic controller (FLC) using a genetic algorithm (GA). The performance of an FLC depends on its knowledge base (KB), which consists of membership function distributions (also known as data base) and rule base. To design a proper KB of the FLC, the designer should have a thorough knowledge of the process to be controlled. Sometimes, it becomes difficult to gather knowledge of the process beforehand. Thus, designing the proper KB… CONTINUE READING
    34 Citations
    Genetic algorithm based fully automated and adaptive fuzzy logic controller
    • 11
    GA-Fuzzy Approaches: Application to Modeling of Manufacturing Process
    • 10
    Genetically generated double-level fuzzy controller with a fuzzy adjustment strategy
    • 2
    • PDF
    Prediction of Surface Roughness in End Milling Process Using Intelligent Systems: A Comparative Study
    • 8
    • PDF
    Cluster-wise Design of Takagi and Sugeno Approach of Fuzzy Logic Controller
    • 1

    References

    SHOWING 1-10 OF 30 REFERENCES
    Design of fuzzy logic controllers using genetic algorithms
    • Chia-Ju Wu, G. Lin
    • Mathematics
    • IEEE SMC'99 Conference Proceedings. 1999 IEEE International Conference on Systems, Man, and Cybernetics (Cat. No.99CH37028)
    • 1999
    • 95
    A study on finding fuzzy rules for semi-active suspension controllers with genetic algorithm
    • 26
    A study on fuzzy rules discovery using Pseudo-Bacterial Genetic Algorithm with adaptive operator
    • 57
    NN-driven fuzzy reasoning
    • 604
    • PDF