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    Deep Generative Models in Engineering Design: A Review

    Source: Journal of Mechanical Design:;2022:;volume( 144 ):;issue: 007::page 71704
    Author:
    Regenwetter, Lyle;Nobari, Amin Heyrani;Ahmed, Faez
    DOI: 10.1115/1.4053859
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: 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.
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      Deep Generative Models in Engineering Design: A Review

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    contributor authorRegenwetter, Lyle;Nobari, Amin Heyrani;Ahmed, Faez
    date accessioned2022-12-27T23:17:46Z
    date available2022-12-27T23:17:46Z
    date copyright3/18/2022 12:00:00 AM
    date issued2022
    identifier issn1050-0472
    identifier othermd_144_7_071704.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4288319
    description abstractAutomated 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.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleDeep Generative Models in Engineering Design: A Review
    typeJournal Paper
    journal volume144
    journal issue7
    journal titleJournal of Mechanical Design
    identifier doi10.1115/1.4053859
    journal fristpage71704
    journal lastpage71704_15
    page15
    treeJournal of Mechanical Design:;2022:;volume( 144 ):;issue: 007
    contenttypeFulltext
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