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Hybrid Associative Classification Model for Mild Steel Defect Analysis

机译:温和钢缺​​陷分析混合关联分类模型

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Quality of the steel coil manufactured in a steel plant is influenced by several parameters during the manufacturing process. Coiling temperature deviation defect is one of the major issues. This defect causes steels metallurgical properties to diverge in the final product. In order to find the cause of this defect, various parameter values sensed by sensors are stored in database. Many approaches exist to analyze these data in order to find the cause of the defect. This paper presents a novel model HACDC (Hybrid Associative Classification with Distance Correlation) to analyze causality for coiling temperature deviation. Due to the combination of association rule, distance correlation and ensemble techniques we achieve an accuracy of 95% which is quite better than other approaches. Moreover, to the best of our knowledge, this is the first implementation of random forest algorithm in analyzing steel coil defects.
机译:在钢铁厂制造的钢卷的质量受制造过程中几个参数的影响。卷积温度偏差缺陷是主要问题之一。该缺陷使钢冶金属性在最终产品中分歧。为了找到该缺陷的原因,传感器感测的各种参数值存储在数据库中。存在许多方法来分析这些数据以找到缺陷的原因。本文提出了一种新型的HACDC(具有距离相关性的混合关联分类)来分析用于卷积温度偏差的因果关系。由于关联规则,距离相关和集合技术的组合,我们达到了95%的准确性,这比其他方法更好。此外,据我们所知,这是在分析钢圈缺陷时的随机森林算法的第一次实现。

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