Abstract

The accurate prediction of molten steel temperature is of great significance to the control of tapping temperature in ladle furnace. The more accurate the prediction is the better performance the controller will attain. In order to further improve the accuracy of existing data-driven predictive models, we propose a dynamic ensemble for regression to predict molten steel temperature. In contrast to existing ensemble models, we only select one base model with the highest competence from the pool for each test pattern, rather than fusing all base models. We can thus alleviate the effect of weak base models on the ensemble. Specifically, the operation of dynamic selection can be implemented by estimating the competence of all base models in the region of competence. In addition, the proposed ensemble generation method has taken into account the diversity and accuracy, which are crucial factors of deriving better ensembles. In order to investigate the effectiveness of our predictor, we compare it with several competitors proposed in literature on a real-world dataset. The experimental result has approved the superiority of our predictor.

Highlights

  • Ladle furnace (LF) is the critical secondary refining facility in the manufacturing process of iron and steel

  • We propose an ensemble model for molten steel temperature prediction

  • " We develop a more accurate predictive model for molten steel temperature in LF, which is significant in practical applications

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Summary

INTRODUCTION

Ladle furnace (LF) is the critical secondary refining facility in the manufacturing process of iron and steel. Manually dipping a special lance with thermocouple into the molten steel to measure the temperature is very time consuming (at least one minute) All these harsh conditions will trigger great challenges to the process control system. Wang: Molten Steel Temperature Prediction in Ladle Furnace Using a Dynamic Ensemble for Regression accuracy of these hybrid models from the corresponding literatures. In literature about molten steel temperature prediction, many machine learning algorithms have been used We categorize these data models into two types, i.e. single models and ensemble models. We propose an ensemble model for molten steel temperature prediction. We conclude the contributions of this paper as followings " We develop a more accurate predictive model for molten steel temperature in LF, which is significant in practical applications.

BASIC KNOWLEDGE
COMPETENCE ESTIMATION
DECISION MAKING
EXPERIMENTS
BASELINES AND CRITERIA
DISCUSSION
Findings
CONCLUSION
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