Abstract
This paper describes an improved self-organizing CPN-based (Counter-Propagation Network) fuzzy system. Two self-organizing algorithms IUSOCPN and ISSOCPN, being unsupervised and supervised respectively, are introduced. The idea is to construct the neural-fuzzy system with a two-phase hybrid learning algorithm, which utilizes a CPN-based nearest-neighbor clustering scheme for both structure learning and initial parameters setting, and a gradient descent method with adaptive learning rate for fine tuning the parameters. The obtained network can be used in the same way as a CPN to model and control dynamic systems, while it has a faster learning speed than the original back-propagation algorithm. The comparative results on the examples suggest that the method is fairly efficient in terms of simple structure, fast learning speed, and relatively high modeling accuracy.
Original language | English |
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Pages (from-to) | 227-236 |
Number of pages | 10 |
Journal | Fuzzy Sets and Systems |
Volume | 130 |
Issue number | 2 |
DOIs | |
Publication status | Published - 1 Sept 2002 |
Keywords
- Back-Propagation learning scheme
- Counterpropagation network
- Fuzzy logic
- Gradient descent method
- Neural network
- Neuro-fuzzy systems
- Self-Organization