Interpolation in hierarchical fuzzy rule bases

Laszlo T. Koczy*, Kaoru Hirota, Leila Muresan

*Corresponding author for this work

Research output: Contribution to conferencePaperpeer-review

31 Citations (Scopus)

Abstract

A major issue in the field of fuzzy applications is the complexity of the algorithms used. In order to obtain efficient methods, it is necessary to reduce complexity without losing the easy interpretability of the components. One of the possibilities to achieve complexity reduction is to combine fuzzy rule interpolation with the use of hierarchical structured fuzzy rule bases, as proposed by Sugeno. As an interpolation method the KH interpolation is used, but other techniques are also suggested. The difficulty of applying this method is that it is often impossible to determine a partition of any subspace of the original state space so that in all elements of the partition the number of variables can be locally reduced. Instead of this, a sparse fuzzy partition is searched for and so the local reduction of dimensions will be usually possible. In this case however, interpolation in the sparse partition itself, i.e. interpolation in the meta-rule level is necessary. This paper describes a method how such a multi-level interpolation is possible.

Original languageEnglish
Pages471-477
Number of pages7
Publication statusPublished - 2000
Externally publishedYes
EventFUZZ-IEEE 2000: 9th IEEE International Conference on Fuzzy Systems - San Antonio, TX, USA
Duration: 7 May 200010 May 2000

Conference

ConferenceFUZZ-IEEE 2000: 9th IEEE International Conference on Fuzzy Systems
CitySan Antonio, TX, USA
Period7/05/0010/05/00

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