题名

A Novel Approach for Generation of Fuzzy Neural Networks

DOI

10.30000/IJFS.200703.0002

作者

Yi Zhou;Meng Joo Er

关键词

Neural networks ; artificial intelligences ; fuzzy systems and reinforcement learning

期刊名称

International Journal of Fuzzy Systems

卷期/出版年月

9卷1期(2007 / 03 / 01)

页次

8 - 13

内容语文

英文

英文摘要

In this paper, a novel approach termed Dynamic Self-Generated Fuzzy Q-Learning (DSGFQL) for automatically generating Fuzzy Neural Networks (FNNs) is presented. The structure and premises of FNNs are to be generated through the reward evaluation and unsupervised approaches while the consequents are trained via a Fuzzy Q-Learning (FQL) approach. The proposed DSGFQL methodology can automatically create, delete and adjust fuzzy neurons without either any priori knowledge or supervised learning. Structure self-identification and automatic parameter estimation are achieved. Fuzzy neurons can be created or deleted dynamically and the membership functions of those fuzzy neurons can be adjusted according to the reward evaluations. Simulation studies on an obstacle avoidance task by a mobile robot show that the proposed DSGFQL algorithm is superior to other existing methodologies.

主题分类 基礎與應用科學 > 資訊科學
被引用次数
  1. 張彥文(2017)。以即時資料為基礎的作業現場製程規劃與彈性管控系統。中原大學資訊管理學系學位論文。2017。1-79。