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Zeitschriftenartikel:

C. Halbwidl, T. Sobottka, A. Gaal, W. Sihn:
"Deep Reinforcement Learning as an Optimization Method for the Configuration of Adaptable, Cell-Oriented Assembly Systems";
Procedia CIRP (eingeladen), 104 (2021), S. 1221 - 1226.



Kurzfassung englisch:
This paper investigates the feasibility and performance of Deep Reinforcement Learning (RL) as a method for optimizing assembly cell configurations in adaptable cell-oriented assembly systems (ACAS). ACAS can be as productive as conventional assembly lines, while offering greater flexibility and resilience. However, optimizing their layout configuration and resource assignment poses a complex challenge for conventional optimization methods. A RL and simulation-based method is evaluated in an ACAS use-case setting, including a benchmark with metaheuristics. The findings show the limitations of RL for static aspects of the optimization problem, but also indicate RL´s considerable benefits for dynamic optimization tasks in ACAS.

Schlagworte:
Reinforcement Learning; Modular Assembly System; Configuration; Simulation-based Optimization


"Offizielle" elektronische Version der Publikation (entsprechend ihrem Digital Object Identifier - DOI)
http://dx.doi.org/10.1016/j.procir.2021.11.205


Erstellt aus der Publikationsdatenbank der Technischen Universität Wien.