Title :
Reinforcement structure/parameter learning for neural-network-based fuzzy logic control systems
Author :
Lin, Chin-Teng ; Lee, C. S George
Author_Institution :
Dept. of Control Eng., Nat. Chiao Tung Univ., Hsinchu, Taiwan
fDate :
2/1/1994 12:00:00 AM
Abstract :
This paper proposes a reinforcement neural-network-based fuzzy logic control system (RNN-FLCS) for solving various reinforcement learning problems. The proposed RNN-FLCS is constructed by integrating two neural-network-based fuzzy logic controllers (NN-FLC´s), each of which is a connectionist model with a feedforward multilayered network developed for the realization of a fuzzy logic controller. One NN-FLC performs as a fuzzy predictor, and the other as a fuzzy controller. Using the temporal difference prediction method, the fuzzy predictor can predict the external reinforcement signal and provide a more informative internal reinforcement signal to the fuzzy controller. The fuzzy controller performs a stochastic exploratory algorithm to adapt itself according to the internal reinforcement signal. During the learning process, both structure learning and parameter learning are performed simultaneously in the two NN-FLC´s using the fuzzy similarity measure. The proposed RNN-FLCS can construct a fuzzy logic control and decision-making system automatically and dynamically through a reward/penalty signal or through very simple fuzzy information feedback such as “high,” “too high,“ “low,” and “too low.” The proposed RNN-FLCS is best applied to the learning environment, where obtaining exact training data is expensive. It also preserves the advantages of the original NN-FLC, such as the ability to find proper network structure and parameters simultaneously and dynamically and to avoid the rule-matching time of the inference engine. Computer simulations were conducted to illustrate its performance and applicability
Keywords :
feedforward neural nets; fuzzy control; learning (artificial intelligence); parameter estimation; connectionist model; feedforward multilayer network; fuzzy decision-making system; fuzzy information feedback; fuzzy similarity measure; network structure identification; parameter identification; parameter learning; reinforcement learning problems; reinforcement neural-network-based fuzzy logic control system; reinforcement structure learning; reward/penalty signal; stochastic exploratory algorithm; temporal difference prediction method; Automatic control; Control systems; Decision making; Fuzzy control; Fuzzy logic; Fuzzy systems; Learning; Performance evaluation; Prediction methods; Stochastic processes;
Journal_Title :
Fuzzy Systems, IEEE Transactions on