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Data-Driven Approaches Toward Smarter Additive Manufacturing

期刊

ADVANCED INTELLIGENT SYSTEMS
卷 3, 期 12, 页码 -

出版社

WILEY
DOI: 10.1002/aisy.202100014

关键词

additive manufacturing; artificial intelligence; machine learning; material designs; tool paths; topology optimizations

资金

  1. Knight @ KIC Engineering Graduate Fellowship

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The latest industrial revolution, Industry 4.0, is driven by digital manufacturing and additive manufacturing technologies, which have expanded the design space for materials and structures. The increasing use of data-driven tools accelerates the exploration and optimization of this design space.
The latest industrial revolution, Industry 4.0, is driven by the emergence of digital manufacturing and, most notably, additive manufacturing (AM) technologies. The simultaneous material and structure forming in AM broadens the material and structural design space. This expanded design space holds a great potential in creating improved engineering materials and products that attract growing interests from both academia and industry. A major aspect of this growing interest is reflected in the increased adaptation of data-driven tools that accelerate the exploration of the vast design space in AM. Herein, the integration of data-driven tools in various aspects of AM is reviewed, from materials design in AM (i.e., homogeneous and composite material design) to structure design for AM (i.e., topology optimization). The optimization of AM tool path using machine learning for producing best-quality AM products with optimal material and structure is also discussed. Finally, the perspectives on the future development of holistically integrated frameworks of AM and data-driven methods are provided.

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