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Recursive fuzzy c-means clustering for recursive fuzzy identification of time-varying processes
Authors:Dov?an Dejan  Skrjanc Igor
Affiliation:
  • Faculty of Electrical Engineering Tr?aška 25, Ljubljana, Slovenia
  • Abstract:In this paper we propose a new approach to on-line Takagi-Sugeno fuzzy model identification. It combines a recursive fuzzy c-means algorithm and recursive least squares. First the method is derived and than it is tested and compared on a benchmark problem of the Mackey-Glass time series with other established on-line identification methods. We showed that the developed algorithm gives a comparable degree of accuracy to other algorithms. The proposed algorithm can be used in a number of fields, including adaptive nonlinear control, model predictive control, fault detection, diagnostics and robotics. An example of identification based on a real data of the waste-water treatment process is also presented.
    Keywords:Recursive fuzzy _method=retrieve&  _eid=1-s2  0-S001905781100005X&  _mathId=si3  gif&  _pii=S001905781100005X&  _issn=00190578&  _acct=C000051805&  _version=1&  _userid=1154080&  md5=5385ff0aa8d686268a0cc578addb2504')" style="cursor:pointer  c-means clustering" target="_blank">" alt="Click to view the MathML source" title="Click to view the MathML source">c-means clustering  Recursive fuzzy identification  Clustering  Online recursive identification
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