Multiagent reinforcement learning methods to resolve demand capacity balance problems
Spatharis Christos, Kravaris Theocharis, Vouros, George A, Blekas Konstantinos D., Chalkiadakis Georgios, García José Manuel Cordero, Fernandez Esther Calvo
Το work with title Multiagent reinforcement learning methods to resolve demand capacity balance problems by Spatharis Christos, Kravaris Theocharis, Vouros, George A, Blekas Konstantinos D., Chalkiadakis Georgios, García José Manuel Cordero, Fernandez Esther Calvo is licensed under Creative Commons Attribution 4.0 International
Bibliographic Citation
C. Spatharis, T. Kravaris, G. A. Vouros, K. Blekas, G. Chalkiadakis, J.M.C. Garcia and E.C. Fernandez, "Multiagent reinforcement learning methods to resolve demand capacity balance problems," in 10th Hellenic Conference on Artificial Intelligence, 2018. doi: 10.1145/3200947.3201010
https://doi.org/10.1145/3200947.3201010
In this article, we explore the computation of joint policies for autonomous agents to resolve congestions problems in the air traffic management (ATM) domain. Agents, representing flights, have limited information about others’ payoffs and preferences, and need to coordinate to achieve their tasks while adhering to operational constraints. We formalize the problem as a multiagent Markov decision process (MDP) towards deciding flight delays to resolve demand and capacity balance (DCB) problems in ATM. To this end, we present multiagent reinforcement learning methods that allow agents to interact and form own policies in coordination with others. Experimental study on real-world cases, confirms the effectiveness of our approach in resolving the demand-capacity balance problem.