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首页> 外文期刊>Journal of Intelligent Manufacturing >Knowledge discovery and predictive accuracy comparison of different classification algorithms for mould level fluctuation phenomenon in thin slab caster
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Knowledge discovery and predictive accuracy comparison of different classification algorithms for mould level fluctuation phenomenon in thin slab caster

机译:薄板施舍中模级波动现象不同分类算法的知识发现和预测准确性比较

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摘要

Mould level fluctuation (MLF) is one of the main reasons for surface defects in continuously cast slabs. In these study first, large scale mould level fluctuations has been categorized in three different cases based on actual plant data. Moreover, theoretical formulation has been investigated to better understand the underlying physics of flow. Next, exploratory data analysis is used for preliminary investigation into the phenomenon based on actual plant data. Finally, different classification algorithms were used to classify non-mould level fluctuation cases from MLF cases for two different scenarios- one where all mould level fluctuation cases are considered and in another where only a particular case of mould level fluctuation is considered. Classification algorithm such as recursive partitioning, random forest etc. has been used to identify different casting parameters affecting the phenomenon of mould level fluctuation. 70% of the dataset used as training dataset and rest 30% as the testing dataset. Prediction accuracy of these different classification algorithms along with an ensemble model has been compared on a completely unseen test set. Ladle change operation and superheat temperature has been identified as process parameters influencing the phenomenon of large scale mould level fluctuations.
机译:模具水平波动(MLF)是连续铸造板坯表面缺陷的主要原因之一。在这些研究中,基于实际植物数据的三种不同案例,大规模模级波动已分类。此外,已经研究了理论制剂以更好地理解流动的潜在物理学。接下来,探索性数据分析用于基于实际植物数据的现象初步调查。最后,使用不同的分类算法来对来自MLF情况的非模级波动情况进行分类两种不同的场景 - 在那里考虑所有模具水平波动情况的情况,其中仅考虑特定模具水平波动的特定情况。诸如递归分区,随机森林等的分类算法已经用于识别影响模液水平波动现象的不同铸造参数。 70%的数据集用作训练数据集并将30%作为测试数据集。在完全看不见的测试集上比较了这些不同分类算法的预测准确性以及集合模型。钢包变化操作和过热温度已被确定为影响大规模模具水平波动现象的过程参数。

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