FCMAC - A FUZZIFIED CEREBELLAR MODEL ARTICULATION CONTROLLER WITH SELF-ORGANIZING CAPACITY

被引:57
作者
NIE, JH
LINKENS, DA
机构
[1] UNIV SHEFFIELD, DEPT AUTOMAT CONTROL & SYST ENGN, MAPPIN ST, SHEFFIELD S10 2TN, S YORKSHIRE, ENGLAND
[2] NATL UNIV SINGAPORE, DEPT ELECT ENGN, SINGAPORE 0511, SINGAPORE
关键词
FUZZY CONTROL; NEURAL NETS; LEARNING SYSTEMS; SELF-ORGANIZING SYSTEMS; MODEL REFERENCE CONTROL; MULTIVARIABLE SYSTEMS; BIOMEDICAL;
D O I
10.1016/0005-1098(94)90154-6
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The Albus's Cerebellar Model Articulation Controller (CMAC) network has been used in many practical areas with considerable success. This paper presents a fuzzified CMAC network (FCMAC) acting as a multivariable adaptive controller with the feature of self-organizing association cells and the further ability of self-learning the required teacher signals in real-time. In particular, the original CMAC has been reformulated within a framework of a simplified fuzzy control algorithm (SFCA) and the associated self-learning algorithms have been developed as a result of incorporating the schemes of competitive learning and iterative learning control into the system. By using a similarity-measure-based, instead of coding-algorithm-based, content-addressable scheme, FCMAC is capable of dealing with arbitrary-dimensional continuous input space in a simple manner without involving complicated discretizing, quantizing, coding, and hashing procedures used in the original CMAC. The learning control system described here can be thought of as either a completely unsupervised fuzzy-neural control strategy without relying on the process model or equivalently an automatic real-time knowledge acquisition scheme for the implementation of fuzzy controllers. The proposed approach has been applied to a multivariable blood pressure control problem which is characterized by strong interaction between variables and large time delays.
引用
收藏
页码:655 / 664
页数:10
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