KT-BT: A Framework for Knowledge Transfer Through Behavior Trees in
Multi-Robot Systems
- URL: http://arxiv.org/abs/2209.02886v1
- Date: Wed, 7 Sep 2022 02:17:04 GMT
- Title: KT-BT: A Framework for Knowledge Transfer Through Behavior Trees in
Multi-Robot Systems
- Authors: Sanjay Sarma Oruganti Venkata, Ramviyas Parasuraman, Ramana Pidaparti
- Abstract summary: Multi-Robot and Multi-Agent Systems demonstrate collective (swarm) intelligence through systematic and distributed integration of local behaviors.
This paper presents a new knowledge representation framework and a transfer strategy called KT-BT: Knowledge Transfer through Behavior Trees.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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 appropriate knowledge using a condition-action-control sub-flow. We embed
a novel grammar structure called stringBT that encodes knowledge, enabling
behavior sharing. We theoretically investigate the properties of the KT-BT
framework in achieving homogeneity of high knowledge across the entire group
compared to a heterogeneous system without the capability of sharing their
knowledge. We extensively verify our framework in a simulated multi-robot
search and rescue problem. The results show successful knowledge transfers and
improved group performance in various scenarios. We further study the effects
of opportunities and communication range on group performance, knowledge
spread, and functional heterogeneity in a group of agents, presenting
interesting insights.
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