Learning Resource Scheduling with High Priority Users using Deep Deterministic Policy Gradients

Autoren: S. Gracla, E. Beck, C. Bockelmann, A. Dekorsy
Kurzfassung:

Advances in mobile communications capabilities open the door for closer integration of pre-hospital and in-hospital care processes. For example, medical specialists are enabled to guide on-site paramedics and are, in turn, supplied with live vitals or visuals. Consolidating such performance-critical applications with the highly complex workings of mobile communications requires solutions both reliable and performant, but also easy to integrate with existing systems. This paper explores the application of Deep Deterministic Policy Gradient (DDPG) methods for learning a communications resource scheduling algorithm with special regards to priority users. Different from popular Deep-Q-Network methods, the DDPG is able to produce continuous-valued output. With light post-processing, the resulting scheduler is able to achieve high performance on a flexible sum-utility goal.

Dokumenttyp: Konferenzbeitrag
Veröffentlichung: IEEE, Seoul/Online, Südkorea, 16. - 20. Mai 2022
Konferenz: IEEE International Conference on Communications
Dateien:
Learning Resource Scheduling with High Priority Users using Deep Deterministic Policy Gradients
00_paper_high_priority_ddpg_allocation_ant_website.pdf327 KB
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Zuletzt aktualisiert am 12.05.2023 von S. Gracla
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