A new fuzzy reinforcement learning algorithm that tunes the input and the output parameters of a fuzzy logic controller is proposed in this paper. The proposed algorithm uses three fuzzy inference systems (FISs); one is used as an actor (fuzzy logic controller, FLC), and the other two FISs are used as critics. The proposed algorithm uses the residual gradient value iteration algorithm described in [4] to tune the input and the output parameters of the actor (FLC) of the learning robot. The proposed algorithm also tunes the input and the output parameters of the critics. The proposed algorithm is called the residual gradient fuzzy actor critics learning (RGFACL) algorithm. The proposed algorithm is used to learn a single pursuit-evasion diff...
In this paper, we consider multi-pursuer single-superior-evader pursuit-evasion differential games w...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
One of the reinforcement learning algorithms proposed by Igarashi and Ishihara is a combining method...
In this work, we propose a new fuzzy reinforcement learning algorithm for differential games that ha...
This paper applies fuzzy reinforcement learning along with state estimation to the differential purs...
In this paper we develop a reinforcement fuzzy learning scheme for robots playing a differential gam...
In this paper, we consider a multi-pursuer single-superior-evader pursuit-evasion differential game ...
In this paper a reinforcement fuzzy learning scheme for robots playing a differential game is derive...
In a pursuit-evasion game, the pursuer learning its strategy by any learning algorithm usually captu...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
This paper presents a decentralized learning technique that enables two pursuers or more to capture ...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
In this study a gain scheduling method for the scaling factors of the input variables to the fuzzy l...
In this paper, we consider multi-pursuer single-superior-evader pursuit-evasion differential games w...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
One of the reinforcement learning algorithms proposed by Igarashi and Ishihara is a combining method...
In this work, we propose a new fuzzy reinforcement learning algorithm for differential games that ha...
This paper applies fuzzy reinforcement learning along with state estimation to the differential purs...
In this paper we develop a reinforcement fuzzy learning scheme for robots playing a differential gam...
In this paper, we consider a multi-pursuer single-superior-evader pursuit-evasion differential game ...
In this paper a reinforcement fuzzy learning scheme for robots playing a differential game is derive...
In a pursuit-evasion game, the pursuer learning its strategy by any learning algorithm usually captu...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
This paper presents a decentralized learning technique that enables two pursuers or more to capture ...
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic cont...
In this study a gain scheduling method for the scaling factors of the input variables to the fuzzy l...
In this paper, we consider multi-pursuer single-superior-evader pursuit-evasion differential games w...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
One of the reinforcement learning algorithms proposed by Igarashi and Ishihara is a combining method...