Machine learning of the mechanical properties and data-driven design of lead-free solder alloys
Author:
Publisher
Science China Press., Co. Ltd.
Subject
Computer Networks and Communications,Control and Systems Engineering
Link
https://engine.scichina.com/doi/pdf/FE536BC925134B2C90285E8C7C5EC6CC
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5. Tong Z, Wang L, Zhu G. Predicting twin nucleation in a polycrystalline Mg alloy using machine learning methods. Metall Mater Trans A, 2019, 50: 5543-5560.
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