Hydraulic modeling of slag cover surface in top-blown molten bath smelting processes assisted by machine learning
Kai Yang,
Bo Yu,
Jianxin Pan
et al.
Abstract:Variation of the slag cover surface (SCS) in the oxygen-enriched top-blown molten bath smelting process is critical for the smelting efficiency of a complex Cu–S concentrate. However, capturing these variation characteristics is difficult because of the high temperature inside the molten bath and the dynamic complexity of the smelting process. In this work, machine learning (i.e., U-net algorithm and support vector machine) is combined with a skillful hydraulic model (i.e., gas–liquid two-phase top-blown agita… Show more
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