Devitrification-Induced Tailoring of Microstructure and Strength in Aluminum High-Entropy Alloy Powder for Cold Spray Deposition
JOURNAL OF THERMAL SPRAY TECHNOLOGY(2024)
Florida International University
Abstract
The development of high-strength cold spray deposits using amorphous/nanocrystalline aluminum high-entropy alloy (Al HEA) powder is hindered by the lack of understanding of correlations between powder microstructure and its deformation behavior. In this study, gas-atomized Al HEA powder (Al90.05-Y4.4-Ni4.3-Co0.9-Sc0.35 at.
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Key words
aluminum high-entropy alloy powder,cold spray process maps,devitrification,deposition efficiency,single particle compression
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