The question of what is the best way to develop an agent-based simulation model becomes more important as this paradigm is more and more used. Clearly, general model development processes can be used, but these do not solve the major problems of actually deciding about the agents' structure and behavior. In this contribution we introduce the MABLe methodology for analyzing and designing agent simulation models that relies on adaptive agents, where the agent helps the modeler by proposing a suitable behavior program. We test our methodology in a pedestrian evacuation scenario. Results demonstrate the agents can learn and report back to the modeler a behavior that is interestingly better than a hand-made model
Crowd simulation is gaining an increasing amount of importance in recent years for a variety of purp...
Contains fulltext : 55853.pdf (publisher's version ) (Closed access)To simulate ad...
This article gives an introduction to agent-based modeling and simulation (ABMS). After a general di...
We propose that learning agents (LAs) be incorporated into simulation environments in order to model...
Agent-based simulation methods are a relatively new way to address complex systems. Usually, the ide...
Item does not contain fulltextAgent-based simulation methods are a relatively new way to address com...
We propose that learning agents (LAs) be incorporated into simulation environments in order to model...
Agent-based simulation can be used for efficient and effective training of human operators and decis...
Agent-based modelling and simulation (ABMS), whether simple toy models or complex data-driven ones, ...
Agent-based simulation is a convenient method to analyse different strategies for specific scenarios...
Abstract. Agent-based simulation is being recognized as a useful tool for the study of social system...
Designing the agent model in a multiagent simulation is a challenging task due to the generative nat...
Constructing and executing an agent-based model provides many advantages in comparison to traditiona...
Agent-based modeling (ABM) is a powerful tool for model complex and heterogeneous systems as pedestr...
Agent-based simulation (ABS) is an approach to modeling systems comprised of individual, autonomous,...
Crowd simulation is gaining an increasing amount of importance in recent years for a variety of purp...
Contains fulltext : 55853.pdf (publisher's version ) (Closed access)To simulate ad...
This article gives an introduction to agent-based modeling and simulation (ABMS). After a general di...
We propose that learning agents (LAs) be incorporated into simulation environments in order to model...
Agent-based simulation methods are a relatively new way to address complex systems. Usually, the ide...
Item does not contain fulltextAgent-based simulation methods are a relatively new way to address com...
We propose that learning agents (LAs) be incorporated into simulation environments in order to model...
Agent-based simulation can be used for efficient and effective training of human operators and decis...
Agent-based modelling and simulation (ABMS), whether simple toy models or complex data-driven ones, ...
Agent-based simulation is a convenient method to analyse different strategies for specific scenarios...
Abstract. Agent-based simulation is being recognized as a useful tool for the study of social system...
Designing the agent model in a multiagent simulation is a challenging task due to the generative nat...
Constructing and executing an agent-based model provides many advantages in comparison to traditiona...
Agent-based modeling (ABM) is a powerful tool for model complex and heterogeneous systems as pedestr...
Agent-based simulation (ABS) is an approach to modeling systems comprised of individual, autonomous,...
Crowd simulation is gaining an increasing amount of importance in recent years for a variety of purp...
Contains fulltext : 55853.pdf (publisher's version ) (Closed access)To simulate ad...
This article gives an introduction to agent-based modeling and simulation (ABMS). After a general di...