Approximation accuracy analysis of fuzzy systems as function approximators | IEEE Journals & Magazine | IEEE Xplore

Approximation accuracy analysis of fuzzy systems as function approximators


Abstract:

This paper establishes the approximation error bounds for various classes of fuzzy systems (i.e., fuzzy systems generated by different inferential and defuzzification met...Show More

Abstract:

This paper establishes the approximation error bounds for various classes of fuzzy systems (i.e., fuzzy systems generated by different inferential and defuzzification methods). Based on these bounds, the approximation accuracy of various classes of fuzzy systems is analyzed and compared. It is seen that the class of fuzzy systems generated by the product inference and the center-average defuzzifier has better approximation accuracy and properties than the class of fuzzy systems generated by the min inference and the center-average defuzzifier, and the class of fuzzy systems defuzzified by the MoM defuzzifier. In addition, it is proved that fuzzy systems can represent any linear and multilinear function and explicit expressions of fuzzy systems generated by the MoM defuzzified method are given.
Published in: IEEE Transactions on Fuzzy Systems ( Volume: 4, Issue: 1, February 1996)
Page(s): 44 - 63
Date of Publication: 29 February 1996

ISSN Information:


Contact IEEE to Subscribe

References

References is not available for this document.