Agent-based modelling and simulation in air transport  

Course Contents Introduction. Agents and Multiagent systems. Agent-based modelling architectures. Examples from air transportation. Emergence in Multiagent systems. Agent-based simulation. Agent-based modeling and simulation tools. Agent-based coordination, planning, and scheduling in air transportation. Nature-inspired approaches to solve optimization problems. Swarm intelligence. Adaptive behavior and learning in agent-based systems. Collaborative decision making in air transportation. Negotiation, auctions, game-theoretic approaches. Agent-based model analysis: sensitivity, uncertainty, robustness. Validation of agent-based models. Study Goals The student has to be able: - to formulate a practical air transportation problem as an agent or a multiagent system model; - to identify appropriate agent-based methods and to apply them; - to implement agent-based models; - to perform agent-based simulation, interpret and analyze simulation results; - to be able to apply agent-based optimization techniques
Presential
English
Agent-based modelling and simulation in air transport
English

Funded by the European Union. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or HaDEA. Neither the European Union nor the granting authority can be held responsible for them. The statements made herein do not necessarily have the consent or agreement of the ASTRAIOS Consortium. These represent the opinion and findings of the author(s).