Multi-Robot and Multi-Agent Systems demonstrate collective (swarm) intelligence through systematic and distributed integration of local behaviors in a group. Agents sharing knowledge about the mission and environment can enhance performance at individual and mission levels. However, this is difficult to achieve, partly due to the lack of a generic framework for transferring part of the known knowledge (behaviors) between agents. This paper presents a new knowledge representation framework and a transfer strategy called KT-BT: Knowledge Transfer through Behavior Trees. The KT-BT framework follows a query-response-update mechanism through an online Behavior Tree framework, where agents broadcast queries for unknown conditions and respond with...
In this paper, we consider multi-agent system in which every agents have own tasks that differs each...
openMost of the theoretical foundations which have contributed to shape Artificial Intelligence (AI)...
The design of effective, robust and autonomous controllers for multi-agent and multi-robot systems i...
Achieving knowledge sharing within an artificial swarm system could lead to significant development ...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...
Abstract—This paper presents a framework, called the knowl-edge co-creation framework (KCF), for het...
Multi-robot teams have potential advantages over a single robot. Robots in a team can serve differen...
Experience forms the basis of learning. It is crucial in the development of human intelligence, and...
Using each other's knowledge and expertise in learning - what we call cooperation in learning- is on...
This paper proposes the concept of basis behaviors as ubiquitous general building blocks for synthes...
This theresis addresses on-going research called BRIDS(Bio-insect and artificial Robot Interaction b...
Abstract A well known problem in the design of the control system for a swarm of ro-bots concerns th...
Autonomous robot navigation involves many challenges and difficulties which are augmented when multi...
technical reportKnowledge representation is a traditional field in artificial intelligence. Research...
The diverse behavior representation schemes and learning paradigms being investigated within the rob...
In this paper, we consider multi-agent system in which every agents have own tasks that differs each...
openMost of the theoretical foundations which have contributed to shape Artificial Intelligence (AI)...
The design of effective, robust and autonomous controllers for multi-agent and multi-robot systems i...
Achieving knowledge sharing within an artificial swarm system could lead to significant development ...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...
Abstract—This paper presents a framework, called the knowl-edge co-creation framework (KCF), for het...
Multi-robot teams have potential advantages over a single robot. Robots in a team can serve differen...
Experience forms the basis of learning. It is crucial in the development of human intelligence, and...
Using each other's knowledge and expertise in learning - what we call cooperation in learning- is on...
This paper proposes the concept of basis behaviors as ubiquitous general building blocks for synthes...
This theresis addresses on-going research called BRIDS(Bio-insect and artificial Robot Interaction b...
Abstract A well known problem in the design of the control system for a swarm of ro-bots concerns th...
Autonomous robot navigation involves many challenges and difficulties which are augmented when multi...
technical reportKnowledge representation is a traditional field in artificial intelligence. Research...
The diverse behavior representation schemes and learning paradigms being investigated within the rob...
In this paper, we consider multi-agent system in which every agents have own tasks that differs each...
openMost of the theoretical foundations which have contributed to shape Artificial Intelligence (AI)...
The design of effective, robust and autonomous controllers for multi-agent and multi-robot systems i...