Perspective: Machine Learning in Design for 3D/4D Printing

Author:

Sun Xiaohao1,Zhou Kun2,Demoly Frédéric34,Zhao Ruike Renee5,Qi H. Jerry1

Affiliation:

1. Georgia Institute of Technology The George W. Woodruff School of Mechanical Engineering, , Atlanta, GA 30332

2. Nanyang Technological University Singapore Centre for 3D Printing, School of Mechanical and Aerospace Engineering, , 50 Nanyang Avenue, Singapore 639798

3. Belfort-Montbeliard University of Technology (UTBM) ICB UMR 6303 CNRS, , 90010 Belfort , France ;

4. Institut universitaire de France (IUF) , Paris , France

5. Stanford University Department of Mechanical Engineering, , Stanford, CA 94305

Abstract

Abstract3D/4D printing offers significant flexibility in manufacturing complex structures with a diverse range of mechanical responses, while also posing critical needs in tackling challenging inverse design problems. The rapidly developing machine learning (ML) approach offers new opportunities and has attracted significant interest in the field. In this perspective paper, we highlight recent advancements in utilizing ML for designing printed structures with desired mechanical responses. First, we provide an overview of common forward and inverse problems, relevant types of structures, and design space and responses in 3D/4D printing. Second, we review recent works that have employed a variety of ML approaches for the inverse design of different mechanical responses, ranging from structural properties to active shape changes. Finally, we briefly discuss the main challenges, summarize existing and potential ML approaches, and extend the discussion to broader design problems in the field of 3D/4D printing. This paper is expected to provide foundational guides and insights into the application of ML for 3D/4D printing design.

Funder

Air Force Office of Scientific Research

Hewlett-Packard Development Company

Publisher

ASME International

Subject

Mechanical Engineering,Mechanics of Materials,Condensed Matter Physics

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