Bridging the Gap between ABM and MAS: A Disaster-Rescue Simulation Using Jason and NetLogo
Authored by Luna-Ramirez Wulfrano Arturo, Maria Fasli
Date Published: 2018
DOI: 10.3390/computers7020024
Sponsors:
No sponsors listed
Platforms:
Jason
NetLogo
Model Documentation:
Other Narrative
Flow charts
Model Code URLs:
Model code not found
Abstract
An agent is an autonomous computer system situated in an environment to
fulfill a design objective. Multi-Agent Systems aim to solve problems in
a flexible and robust way by assembling sets of agents interacting in
cooperative or competitive ways for the sake of possibly common
objectives. Multi-Agent Systems have been applied to several domains
ranging from many industrial sectors, e-commerce, health and even
entertainment. Agent-Based Modeling, a sort of Multi-Agent Systems, is a
technique used to study complex systems in a wide range of domains. A
natural or social system can be represented, modeled and explained
through a simulation based on agents and interactions. Such a simulation
can comprise a variety of agent architectures like reactive and
cognitive agents. Despite cognitive agents being highly relevant to
simulate social systems due their capability of modelling aspects of
human behaviour ranging from individuals to crowds, they still have not
been applied extensively. A challenging and socially relevant domain are
the Disaster-Rescue simulations that can benefit from using cognitive
agents to develop a realistic simulation. In this paper, a Multi-Agent
System applied to the Disaster-Rescue domain involving cognitive agents
based on the Belief-Desire-Intention architecture is presented. The
system aims to bridge the gap in combining Agent-Based Modelling and
Multi-Agent Systems approaches by integrating two major platforms in the
field of Agent-Based Modeling and Belief-Desire Intention multi-agent
systems, namely, NetLogo and Jason.
Tags
Agent-based modelling
Agent
Multi-agent systems
NetLogo
Bdi agents
Jason
Disaster-rescue simulations