A Semi-Supervised Learning-based Dynamic Prediction Method for Semi-molten Condition of Fused Magnesium Furnace

Yichen Zhong, Zhe Zhang, Gaochang Wu
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Abstract

Fused magnesium furnace (FMF) is an important equipment for producing magnesium oxide, which is prone to occurring the semi-molten abnormal condition during the production. If the abnormal condition is not predicted in time, the furnace shell will be burned through, endangering the personal safety of the staff on site. Therefore, it is necessary to predict the semi-molten abnormal condition in time and accurately. Existing machine learning-based methods adopt static models for recognizing and predicting anomaly. However, the model accuracy will degrade as data features shifting over time and melting processes. To address the above problems, this paper proposes a dynamic prediction method for semi-molten abnormal condition of multiple FMFs based on semi-supervised learning. We introduce a consistent regularization strategy and dynamically update the model weights by learning multiple FMF smelting process video data with a sparse set of condition labels. The algorithm is able to dynamically adapt to the shifted data features for accurate anomaly prediction. The proposed algorithm can predict the semi-molten abnormal condition in real time and accurately under the condition of only 1% label, enabling the safe and reliable operation of FMF.
基于半监督学习的熔镁炉半熔状态动态预测方法
熔镁炉是生产氧化镁的重要设备,在生产过程中容易出现半熔融状态异常。如果不及时预测异常情况,就会将炉壳烧穿,危及现场工作人员的人身安全。因此,及时准确地预测半熔异常状态是十分必要的。现有的基于机器学习的方法采用静态模型来识别和预测异常。然而,随着数据特征随时间和融化过程的变化,模型的准确性会降低。针对上述问题,本文提出了一种基于半监督学习的多FMFs半熔异常状态动态预测方法。通过对多个FMF冶炼过程视频数据进行学习,利用稀疏的条件标签集,引入一致性正则化策略,动态更新模型权值。该算法能够动态适应偏移的数据特征,实现准确的异常预测。该算法可以在仅1%标签的情况下实时准确地预测半熔融异常状态,使FMF安全可靠地运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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