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Yang et al., 2024 - Google Patents

Evaluation of Energy Utilization Efficiency and Optimal Energy Matching Model of EAF Steelmaking Based on Association Rule Mining

Yang et al., 2024

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Document ID
2581497781443247025
Author
Yang L
Li Z
Hu H
Zou Y
Feng Z
Chen W
Chen F
Wang S
Guo Y
Publication year
Publication venue
Metals

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In the iron and steel industry, evaluating the energy utilization efficiency (EUE) and determining the optimal energy matching mode play an important role in addressing increasing energy depletion and environmental problems. Electric Arc Furnace (EAF) …
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