Deep Generative Models in Engineering Design: A Review

被引:79
|
作者
Regenwetter, Lyle [1 ]
Nobari, Amin Heyrani [1 ]
Ahmed, Faez [1 ]
机构
[1] MIT, Dept Mech Engn, Cambridge, MA 02139 USA
关键词
artificial intelligence; data-driven design; design automation; design representation; generative design; machine learning; product design; TOPOLOGY OPTIMIZATION; INVERSE DESIGN; NETWORKS; FLUIDS; 3D;
D O I
10.1115/1.4053859
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Automated design synthesis has the potential to revolutionize the modern engineering design process and improve access to highly optimized and customized products across countless industries. Successfully adapting generative machine learning to design engineering may enable such automated design synthesis and is a research subject of great importance. We present a review and analysis of deep generative machine learning models in engineering design. Deep generative models (DGMs) typically leverage deep networks to learn from an input dataset and synthesize new designs. Recently, DGMs such as feedforward neural networks (NNs), generative adversarial networks (GANs), variational autoencoders (VAEs), and certain deep reinforcement learning (DRL) frameworks have shown promising results in design applications like structural optimization, materials design, and shape synthesis. The prevalence of DGMs in engineering design has skyrocketed since 2016. Anticipating the continued growth, we conduct a review of recent advances to benefit researchers interested in DGMs for design. We structure our review as an exposition of the algorithms, datasets, representation methods, and applications commonly used in the current literature. In particular, we discuss key works that have introduced new techniques and methods in DGMs, successfully applied DGMs to a design-related domain, or directly supported the development of DGMs through datasets or auxiliary methods. We further identify key challenges and limitations currently seen in DGMs across design fields, such as design creativity, handling constraints and objectives, and modeling both form and functional performance simultaneously. In our discussion, we identify possible solution pathways as key areas on which to target the future work.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Beyond Statistical Similarity: Rethinking Metrics for Deep Generative Models in Engineering Design
    Regenwetter, Lyle
    Srivastava, Akash
    Gutfreund, Dan
    Ahmed, Faez
    [J]. COMPUTER-AIDED DESIGN, 2023, 165
  • [2] Deep generative models for peptide design
    Wan, Fangping
    Kontogiorgos-Heintz, Daphne
    de la Fuente-Nunez, Cesar
    [J]. DIGITAL DISCOVERY, 2022, 1 (03): : 195 - 208
  • [3] Molecular design in drug discovery: a comprehensive review of deep generative models
    Cheng, Yu
    Gong, Yongshun
    Liu, Yuansheng
    Song, Bosheng
    Zou, Quan
    [J]. BRIEFINGS IN BIOINFORMATICS, 2021, 22 (06)
  • [4] Performance-Based Generative Design for Parametric Modeling of Engineering Structures Using Deep Conditional Generative Models
    Bucher, Martin Juan Jose
    Kraus, Michael Anton
    Rust, Romana
    Tang, Siyu
    [J]. AUTOMATION IN CONSTRUCTION, 2023, 156
  • [5] Deep Generative Design: Integration of Topology Optimization and Generative Models
    Oh, Sangeun
    Jung, Yongsu
    Kim, Seongsin
    Lee, Ikjin
    Kang, Namwoo
    [J]. JOURNAL OF MECHANICAL DESIGN, 2019, 141 (11)
  • [6] Conditional Molecular Design with Deep Generative Models
    Kang, Seokho
    Cho, Kyunghyun
    [J]. JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2019, 59 (01) : 43 - 52
  • [7] Protein sequence design with deep generative models
    Wu, Zachary
    Johnston, Kadina E.
    Arnold, Frances H.
    Yang, Kevin K.
    [J]. CURRENT OPINION IN CHEMICAL BIOLOGY, 2021, 65 : 18 - 27
  • [8] Recent Trends in Deep Generative Models: a Review
    Turhan, Ceren Guzel
    Bilge, Hasan Sakir
    [J]. 2018 3RD INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND ENGINEERING (UBMK), 2018, : 574 - 579
  • [9] Inverse design of semiconductor materials with deep generative models
    Qin, Chenglong
    Liu, Jinde
    Ma, Shiyin
    Du, Jiguang
    Jiang, Gang
    Zhao, Liang
    [J]. JOURNAL OF MATERIALS CHEMISTRY A, 2024, 12 (34) : 22689 - 22702
  • [10] De novo drug design with deep generative models
    Das, Payel
    [J]. ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2018, 256