DOI: 10.1017/pds.2026.10617 ISSN: 2732-527X

A deep reinforcement learning approach for the multi-objective, segment-based generative design of sheet metal components

Christoph Wittig Adão, Saruka Muralitharan, Jiahang Li, Markus Döllken, Sven Matthiesen

ABSTRACT:

Current approaches for the generative design of sheet metal parts only take singular optimization goals into account. This paper presents a concept for a deep reinforcement learning approach to train an agent to generate sheet metal parts by combining segments from a predefined library. Through a weighted reward function, agents can be trained for different or combined optimization goals, such as weight, cost, or sustainability. The resulting agents enable the creation of a pareto front of optimal solutions, supporting efficient exploration of the design space for diverse design objectives.

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