User: Guest  Login
Document type:
IDP-Arbeit
Type detailled:
Experimentell
Author(s):
Rao, R
Title:
Adaptive Scheduling for Production Systems using Deep Reinforcement Learning
Abstract:
This study tackles the multi-objective scheduling problem for hybrid flow shops, focusing on optimizing makespan and tardiness while adapting to user-defined priorities. We propose a reinforcement learning based solution with a time-dynamic environment that enables realtime decision-making. The relative importance of objectives is directly integrated into the observation space. Evaluated across four setups of varying complexity, the approach shows promising results for simpler setups but faces c...     »
Advisor:
Dörr, J.
Referee:
Grunow, M.
Year:
2025
Language:
en
University:
Technical University Munich
 BibTeX