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Jichao Yin et al.
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INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES
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EXTREME MECHANICS LETTERS
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Kang Gao et al.
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THIN-WALLED STRUCTURES
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Chenxi Lu et al.
Summary: Mechanical metamaterials are architected materials that exhibit exceptional mechanical properties achieved through designed artificial structures. Recent advancements in additive manufacturing have enabled the rapid development of novel metamaterial concepts and reduced the design and validation cycle. This paper provides a detailed review of various topologies based on desired mechanical properties and discusses the manufacturing technologies and future directions for mechanical metamaterials.
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EXTREME MECHANICS LETTERS
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