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Gao et al., 2020 - Google Patents

Applying improved optical recognition with machine learning on sorting Cu impurities in steel scrap

Gao et al., 2020

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Document ID
9406848657872995013
Author
Gao Z
Sridhar S
Spiller D
Taylor P
Publication year
Publication venue
Journal of Sustainable Metallurgy

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Snippet

Cu impurities in scrap, originating from motors and wires, limit the efficiency of recycling steel scrap, especially for shredded automobile scrap, due to the occurrence of surface hot shortness during hot working resulting from high Cu content. Considering the distinct …
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