摘要
An improved self-organizing CPN-based fuzzy system is proposed in this paper. Associated with the neuro-fuzzy system, there is a twophase hybrid learning algorithm, which utilizes a CPN-based nearest-neighborhood clustering scheme for both structure learning and initial parameters setting, and a gradient descent method with variable learning rate for parameters fine-tuning. By combining the above two methods, the learning speed is much faster than that of the original back-propagation algorithms. The comparative results on the examples suggested that the method has the merits of simple structure, fast learning speed and good modeling accuracy.
源语言 | 英语 |
---|---|
页(从-至) | 93-94 |
页数 | 2 |
期刊 | Chinese Journal of Electronics |
卷 | 10 |
期 | 1 |
出版状态 | 已出版 - 2001 |
指纹
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Zhiming, Z., Yue, W., Ran, T., & Siyong, Z. (2001). An improved self-organizing CPN-based fuzzy system. Chinese Journal of Electronics, 10(1), 93-94.