Machine-learning for designing nanoarchitectured materials by dealloying

Machine learning-augmented materials design is an emerging method for rapidly developing new materials. It is especially useful for designing new nanoarchitectured materials, whose design parameter space is often large and complex. Metal-agent dealloying, a materials design method for fabricating na...

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Veröffentlicht in:Communications materials 2022-11, Vol.3 (1), p.1-12, Article 86
Hauptverfasser: Zhao, Chonghang, Chung, Cheng-Chu, Jiang, Siying, Noack, Marcus M., Chen, Jiun-Han, Manandhar, Kedar, Lynch, Joshua, Zhong, Hui, Zhu, Wei, Maffettone, Phillip, Olds, Daniel, Fukuto, Masafumi, Takeuchi, Ichiro, Ghose, Sanjit, Caswell, Thomas, Yager, Kevin G., Chen-Wiegart, Yu-chen Karen
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Sprache:eng
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Zusammenfassung:Machine learning-augmented materials design is an emerging method for rapidly developing new materials. It is especially useful for designing new nanoarchitectured materials, whose design parameter space is often large and complex. Metal-agent dealloying, a materials design method for fabricating nanoporous or nanocomposite from a wide range of elements, has attracted significant interest. Here, a machine learning approach is introduced to explore metal-agent dealloying, leading to the prediction of 132 plausible ternary dealloying systems. A machine learning-augmented framework is tested, including predicting dealloying systems and characterizing combinatorial thin films via automated and autonomous machine learning-driven synchrotron techniques. This work demonstrates the potential to utilize machine learning-augmented methods for creating nanoarchitectured thin films. Nanoporous metals produced by metal agent dealloying are attractive for multiple applications. Here, a machine learning-augmented framework is reported for predicting, synthesizing and characterizing ternary systems for dealloying.
ISSN:2662-4443
2662-4443
DOI:10.1038/s43246-022-00303-w