Gao et al., 2020 - Google Patents
Applying improved optical recognition with machine learning on sorting Cu impurities in steel scrapGao et al., 2020
View PDF- Document ID
- 9406848657872995013
- Author
- Gao Z
- Sridhar S
- Spiller D
- Taylor P
- Publication year
- Publication venue
- Journal of Sustainable Metallurgy
External Links
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 …
- 229910000831 Steel 0 title abstract description 37
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