Knowledge Base Repository

In addition to research papers, the Design Society is developing several valuable resources for those interested in the study of design. These include a repository of PhD theses, a library of case studies and transcripts of design activities, and an archive of our newsletters. Please note that these resources are accessible exclusively to Design Society members.

Minimizing occupant loads in vehicle crashes through reinforcement learning-based restraint system design: assessing performance and transferability

Janis Mathieu (1,2), Parul Gupta (3), Michael Di Roberto (1), Michael Vielhaber (2)


Type:
Year:
2024
Editor:
Mario Štorga, Stanko Škec, Tomislav Martinec, Dorian Marjanović, Neven Pavković, Marija Majda Škec
Author:
Series:
DESIGN
Institution:
1: Porsche Engineering Group GmbH, Germany; 2: Saarland University, Germany; 3: Ilmenau University of Technology, Germany
Section:
Artificial Intelligence and Data-Driven Design
Page(s):
2139-2148
DOI number:
ISSN:
2732-527X (Online)
Abstract:
The optimization of mechanical behavior in safety systems during crash scenarios consistently poses challenges in vehicle development. Hence, a reinforcement learning-based approach for optimizing restraint systems in frontal impacts is proposed. The trained agent, which adjusts five parameters simultaneously, is capable of minimizing loads on a seen and unseen anthropomorphic test device on the co-driver position and is thus able of transferring knowledge. A hundred times higher rate of convergence to reach a similar optimum compared to a global optimization algorithm has been achieved.
Keywords:

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