An Error Correction Method Based on CBR for End Temperature Prediction of Molten Steel in Ladle Furnace
Dongfeng He,
Chengwei Song,
Yuanzheng Guo
et al.
Abstract:Accurately predicting the end temperature of molten steel is significant for controlling ladle furnace (LF) refining. This paper proposes an error correction method called EC-CBR based on case-based reasoning (CBR) to reduce errors in the prediction models caused by discrepancies between actual production data and training data. The proposed method combines the incremental learning advantage of CBR with the ability of other models to fit nonlinear relations. First, a prediction model is established, and histor… Show more
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