DocumentCode :
1271520
Title :
A TSK-type recurrent fuzzy network for dynamic systems processing by neural network and genetic algorithms
Author :
Juang, Chia-Feng
Author_Institution :
Dept. of Electr. Eng., Nat. Chung-Hsing Univ., Taichung, Taiwan
Volume :
10
Issue :
2
fYear :
2002
fDate :
4/1/2002 12:00:00 AM
Firstpage :
155
Lastpage :
170
Abstract :
In this paper, a TSK-type recurrent fuzzy network (TRFN) structure is proposed. The proposal calls for the design of TRFN by either neural network or genetic algorithms depending on the learning environment. A recurrent fuzzy network is described which develops from a series of recurrent fuzzy if-then rules with TSK-type consequent parts. The recurrent property comes from feeding the internal variables, derived from fuzzy firing strengths, back to both the network input and output layers. In this configuration, each internal variable is responsible for memorizing the temporal history of its corresponding fuzzy rule. The internal variable is also combined with external input variables in each rule´s consequence, which shows an increase in network learning ability. TRFN design under different learning environments is next advanced. For problems where supervised training data is directly available, TRFN with supervised learning (TRFN-S) is proposed, and a neural network (NN) learning approach is adopted for TRFN-S design. An online learning algorithm with concurrent structure and parameter learning is proposed. With flexibility of partition in the precondition part, and outcome of TSK-type, the TRFN-S displays both small network size and high learning accuracy. For problems where gradient information for NN learning is costly to obtain or unavailable, like reinforcement learning, TRFN with Genetic learning (TRFN-G) is put forward. The precondition parts of TRFN-G are also partitioned in a flexible way, and all free parameters are designed concurrently by genetic algorithm. Owing to the well-designed network structure of TRFN, TRFN-G, like TRFN-S, is characterized by high learning accuracy. To demonstrate the superior properties of TRFN, TRFN-S is applied to dynamic system identification and TRFN-G to dynamic system control. By comparing the results to other types of recurrent networks and design configurations, the efficiency of TRFN is verified
Keywords :
fuzzy control; fuzzy neural nets; genetic algorithms; identification; learning (artificial intelligence); neurocontrollers; recurrent neural nets; TRFN with genetic learning; TSK-type recurrent fuzzy network; concurrent structure; dynamic system control; dynamic system identification; dynamic systems processing; fuzzy firing strengths; genetic algorithms; learning environment; network learning ability; neural network; online learning algorithm; parameter learning; recurrent fuzzy if-then rules; reinforcement learning; supervised training data; Algorithm design and analysis; Fuzzy systems; Genetic algorithms; History; Input variables; Neural networks; Partitioning algorithms; Proposals; Supervised learning; Training data;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/91.995118
Filename :
995118
Link To Document :
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