AlloyManufacturingNet for discovery and design of hardness-elongation synergy in multi-principal element alloys
Author:
Funder
European Research Council
Narodowe Centrum Nauki
Horizon 2020 Framework Programme
Narodowym Centrum Nauki
Horizon 2020
University Grants Commission- Nepal
Publisher
Elsevier BV
Reference79 articles.
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3. Distilling physical origins of hardness in multi-principal element alloys directly from ensemble neural network models;Beniwal;npj Comput. Mater.,2022
4. Deep learning-based hardness prediction of novel refractory high-entropy alloys with experimental validation;Bhandari;Crystals,2021
5. Feature selection in image analysis: a survey;Bolon-Canedo;Artif. Intell. Rev.,2020
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1. PiezoTensorNet: Crystallography informed multi-scale hierarchical machine learning model for rapid piezoelectric performance finetuning;Applied Energy;2024-05
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