Abstract

Annealing and galvanization production lines in steel mills run continuously to maximize production throughput. As a part of this process, individual steel coils are joined end-to-end using mash seam welding. Weld breaks result in a production loss of multiple days, so non-destructive, data-driven techniques are used to detect and replace poor quality welds in real-time. Statistical models are commonly used to address this problem as they use data readily available from the welding machine and require no specialized equipment. While successful in finding anomalies, these statistical models do not provide insight into the underlying process and are slow to adapt to changes in the machine’s or material’s behavior. We combine knowledge-based and data-driven techniques to create an incremental grey-box welding current prediction model for detecting anomalous welds, resulting in a powerful and interpretable model. In this work, we detail our approach and show evaluation results on industrial welding data collected over a period of 15 months containing behavioral shifts attributed to machine maintenance. Due to its incremental nature, our model resulted in two-thirds fewer rejected welds compared to statistical models, thus greatly reducing production overhead. Grey-box modeling can be applied to other welding features or domains and results in models that are more desirable for the industry.

Highlights

  • Publisher’s Note: MDPI stays neutralIn this paper, we focus on a challenge encountered in the billion-dollar steel production industry: the optimization of the mash seam welding process used in steel mills

  • We focus on a challenge encountered in the billion-dollar steel production industry: the optimization of the mash seam welding process used in steel mills

  • Detecting weak welds is a form of anomaly detection, i.e., anomalous measurements made during the welding process may reflect a deviation in the material or machine and indicate a poor quality weld

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Summary

Introduction

We focus on a challenge encountered in the billion-dollar steel production industry: the optimization of the mash seam welding process used in steel mills. Expectationbased statistical models are currently considered the state-of-the-art anomaly detection methods for mash seam welding. These models estimate a feature as the average of recent measurements made using the same welding program. We investigate whether a grey-box model can outperform state-of-the-art black-box statistical models for predicting welding current in mash seam welding and place these results in the context of anomaly detection. We believe that grey-box models can be a useful tool beyond welding machines Their ability to provide interpretable results and adapt quickly to real-world changes could be a powerful asset in many industries.

Background
Related Literature
Data Description
Current Prediction Model
Physics-Inspired Model
Training the Model
Modeling the Welding Voltage
Evaluation—Predictive Power
Evaluation—Physical Interpretability
Incremental Current Prediction Model
Updating the Model
Evaluation
Welds after a Maintenance Period Transition
Conclusions
Full Text
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