제어로봇시스템학회:학술대회논문집
- 2001.10a
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- Pages.26.6-26
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- 2001
Self-Structuring Radial -Basis Function Network for Identification of Uncertain Nonlinear Systems
- Jun, Jae-Choon (Korea Univ.) ;
- Park, Jang-Hyun (Korea Univ.) ;
- Yoon, Pil-Sang (Korea Univ.) ;
- Park, Gwi-Tae (Korea Univ.)
- Published : 2001.10.01
Abstract
In this paper we introduce a new algorithm that enables radial basis function network(RBFN) to be structured automatically and guarantees the stability of the RBFN. Because this new algorithm is efficient and also have the advantage of fast computational speed we adopt this algorithm as online learning scheme for uncertain nonlinear dynamical systems. Based on the fact that a 3-layered RBFN can represent a specific nonlinear function reasonably well by linearly combining a set of nonlinear and localized basis functions, we show that this RBFN can identify the nonlinear system very well without knowing the information of the system in advance.
Keywords