JSAI2022

JSAI2022

Jun 14 - Jul 8, 2022Kyoto International Conference Center+online
The Japanese Society for Artificial Intelligence
JSAI2022

JSAI2022

Jun 14 - Jul 8, 2022Kyoto International Conference Center+online

[1D1-GS-2-03]Integrating Fuzzy Control and Reinforcement LearningLearning membership functions and rule weights

〇Shun Ichige1, Harukazu Igarashi1, Seiji Ishihara2(1. Shibaura Institute of Technology , 2. Tokyo Denki University)
[[Online]]

Keywords:

Fuzzy control,Reinforcement learning,Policy gradient algorithm,Neural network model

One of the recent issues in AI is the black box inside the inference results of machine learning. As an approach to solving this problem, the fusion of fuzzy inference and reinforcement learning, which is based on rules that follow human subjectivity, is an effective method. Igarashi et al. proposed a policy gradient method that uses fuzzy control rules as policies. In their framework, we approximated the membership function with a sigmoid function and learn the parameters in the sigmoid function and rule weights in the speed control problems of a car. As a result of the learning experiment, it was confirmed that appropriate parameter values were obtained. However, even in this case, the approximate form of the membership function was designed by a human. Therefore, we attempted to approximate the membership function with a neural network to see if we can learn the shape of the membership function from scratch. As a result of the learning experiment, we obtained a function shape that closely resembled the shape of the human-designed membership function from the initial values of random parameters. This suggests that the proposed learning method can acquire human fuzzy concepts from scratch.