Engineering and TechnologyCommunications Materials
Accelerated discovery of high-strength aluminum alloys by machine learning
J. Li, Y. Zhang, et al.
This study explores the innovative Al-Zn-Mg-Cu alloy system, achieving an impressive ultimate tensile strength of 952 MPa and 6.3% elongation through machine learning-based optimization. The research led by Jiaheng Li and colleagues showcases the potential of machine learning in advancing high-performance aluminum alloys.
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