Abstract
A static end-point prediction model based on automatic optimization is proposed to predict the end-point carbon content and temperature of the basic oxygen furnace (BOF) steelmaking. Initially, redundant features in the samples are eliminated through mechanistic analysis, and violin plots are employed to minimize the impact of outliers. Subsequently, Spearman correlation analysis is utilized to identify statistically significant features influencing the end-point, hence constructing a highly interpretable feature set. Finally, leveraging the advantages of the lévy-flying algorithm (LWOA), which offers simplicity in parameter tuning and strong global search capabilities, the parameters of the projection wavelet weighted twin support vector regression (PWWTSVR) objective function are optimized. These parameters include the regularization parameter
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