In this paper, we present S-ELF, an evolutionary algorithm that we have developed to learn the context of activation of fuzzy logic controllers implementing fuzzy behaviors for autonomous agent. S-ELF learns context metarules that are used to coordinate basic behaviors in order to perform complex tasks in a partially and imprecisely known environment. Context metarules are expressed in terms of positive and negated fuzzy predicates. We also show how S-ELF can learn robust and portable behaviors, thus reducing the time and e ort to design behavior-based agent
Fuzzy rules cooperate in a Fuzzy Logic Controller (FLC) to produce the best action for a given situa...
We propose an architecture to implement coordination among fuzzy behavior modules for autonomous age...
Fuzzy rules cooperate in a fuzzy logic controller (FLC) to produce the best action for a given situa...
In this paper, we present S-ELF, an evolutionary algorithm that we have developed to learn the conte...
AbstractWe present S-ELF, an evolutionary algorithm that we have developed to learn the context of a...
In this paper, we present our experience in developing behavior-based autonomous agents. We focus on...
We present an approach to support effective learning and adaptation of behaviors for autonomous agen...
. This paper is concerned with the learning of basic behaviors in autonomous robots. In this way, we...
The implementation of behaviors for embodied autonomous agents by means of Fuzzy Logic Controllers (...
This paper is concerned with the learning of basic behaviors in autonomous robots. In this way, we p...
The behavior of agents in complex and dynamic environments cannot be programmed a priori, but needs...
We present ELF, a learning fuzzy classi®er system (LFCS), and its application to the ®eld of Learni...
This paper proposes a fuzzy framework for supervised training of hierarchical, reactive robotic beha...
Fuzzy rules cooperate in a Fuzzy Logic Controller (FLC) to produce the best action for a given situa...
We propose an architecture to implement coordination among fuzzy behavior modules for autonomous age...
Fuzzy rules cooperate in a fuzzy logic controller (FLC) to produce the best action for a given situa...
In this paper, we present S-ELF, an evolutionary algorithm that we have developed to learn the conte...
AbstractWe present S-ELF, an evolutionary algorithm that we have developed to learn the context of a...
In this paper, we present our experience in developing behavior-based autonomous agents. We focus on...
We present an approach to support effective learning and adaptation of behaviors for autonomous agen...
. This paper is concerned with the learning of basic behaviors in autonomous robots. In this way, we...
The implementation of behaviors for embodied autonomous agents by means of Fuzzy Logic Controllers (...
This paper is concerned with the learning of basic behaviors in autonomous robots. In this way, we p...
The behavior of agents in complex and dynamic environments cannot be programmed a priori, but needs...
We present ELF, a learning fuzzy classi®er system (LFCS), and its application to the ®eld of Learni...
This paper proposes a fuzzy framework for supervised training of hierarchical, reactive robotic beha...
Fuzzy rules cooperate in a Fuzzy Logic Controller (FLC) to produce the best action for a given situa...
We propose an architecture to implement coordination among fuzzy behavior modules for autonomous age...
Fuzzy rules cooperate in a fuzzy logic controller (FLC) to produce the best action for a given situa...