共 27 条
- [1] Wu Y G, Xiao B Q, Zhu L G, Et al., Current situation analysis and prospect of iron and steel raw material for electric arc furnace steelmaking, Iron Steel, 56, 11, (2021)
- [2] Zhu R, Wu X T, Wei G S, Et al., Development of green and intelligent technologies in electric arc furnace steelmaking processes, Iron Steel, 54, 8, (2019)
- [3] Shangguan F Q, Yin R Y, Li Y, Et al., Dissussion on strategic significance of developing full scrap EAF process in China, Iron Steel, 56, 8, (2021)
- [4] Wang Z L, Gu C, Wang M, Et al., Research progress and application status of deep learning in steelmaking process, Chin J Eng
- [5] Shangguan F Q, Li X P, Zhou J C, Et al., Strategic research on development of steel scrap resources in China, Iron Steel, 55, 6, (2020)
- [6] Ma Y Q., Do iron ore, scrap steel, carbon emission allowance, and seaborne transportation prices drive steel price fluctuations?, Resour Policy, 72, (2021)
- [7] Smirnov N V, Rybin E I., Machine learning methods for solving scrap metal classification task, 2020 International Russian Automation Conference (RusAutoCon), (2020)
- [8] Gao Z J, Sridhar S, Spiller D E, Et al., Applying improved optical recognition with machine learning on sorting Cu impurities in steel scrap, J Sustain Metall, 6, 4, (2020)
- [9] Koyanaka S, Kobayashi K., Automatic sorting of lightweight metal scrap by sensing apparent density and three-dimensional shape, Resour Conserv Recycl, 54, 9, (2010)
- [10] Diaz-Romero D, Sterkens W, Van den Eynde S, Et al., Deep learning computer vision for the separation of Cast-and Wrought-Aluminum scrap, Resour Conserv Recycl, 172, (2021)