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Quality Traceability of Converter Steelmaking Based on Adaptive Feature Selection and Multiple Linear Regression

机译:基于自适应特征选择和多元线性回归的转炉炼钢质量可追溯性

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Steel production is complicated. A production cycle includes multiple steps, each of which leads to generating a large amount of new data, for production information and experience knowledge as example. Analyzing these data and tracing why they were generated contribute to controlling parameters tuning, so that we could guarantee the quality of steel production. Besides, discovery of abnormal situation helps detect the problem with machine or production flow on time, which is crucial for modifying the models. We focused on locating the key parameters when problem appears during production, and proposed a specific method based on improved adaptive feature selection and multiple linear regression approach to realize process analysis and cause traceability for abnormal production data of the converter steelmaking process. Results of experiment suggest that method proposed in this paper is effective and robust, judging by professional knowledge and technological mechanism.
机译:钢铁生产很复杂。生产周期包括多个步骤,例如,每个步骤都会导致生成大量新数据,以提供生产信息和经验知识。分析这些数据并跟踪它们产生的原因有助于控制参数的调整,以便我们可以保证钢铁生产的质量。此外,发现异常情况有助于及时发现机器或生产流程中的问题,这对于修改模型至关重要。我们集中精力在生产过程中出现问题时定位关键参数,并提出了一种基于改进的自适应特征选择和多元线性回归方法的特定方法,以实现工艺分析并引起转炉炼钢工艺异常生产数据的可追溯性。实验结果表明,从专业知识和技术机制来看,本文提出的方法是有效和鲁棒的。

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