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Effect of Galvanising Parameters on Spangle Size Investigated by Data Mining Technique

机译:数据挖掘技术研究镀锌参数对锌花尺寸的影响

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Development of flowery patterns or spangles on the surface of hot dip galvanised steel sheets is a common phenomenon. While elements like lead and antimony are known to be the primary factors contributing to spangle formation, sometimes they grow uncontrollably small or big. In this study, a data mining approach has been used to find a correlation between the spangle size in galvanised sheets, and the process parameters at one of the continuous galvanising lines at Tata Steel. All the process related data were collected from the CRM database, while the information on spangle size was generated through actual measurements. Statistical (factor analysis) and mining (neural classification mining) analyses were carried out. The most significant input variables with respect to spangle size were extracted. The artificial neural network classification model was developed using 849 records for training with a prediction accuracy of 57 percent. Strip thickness appears to be more sensitive amongst the other eight significant parameters. The classification model can be used for prediction of spangle size given the process parameters. It can also be used as an important tool to set and adjust the process parameters to produce a given spangle size.
机译:在热浸镀锌钢板表面上会形成花状图案或光亮花,这是一种普遍现象。虽然众所周知,铅和锑等元素是造成锌片形成的主要因素,但有时它们会不受控制地变大或变大。在这项研究中,已使用一种数据挖掘方法来找到镀锌板中的亮片尺寸与塔塔钢铁公司其中一条连续镀锌线的工艺参数之间的相关性。所有与过程相关的数据都是从CRM数据库中收集的,而有关花键大小的信息是通过实际测量生成的。进行了统计(因子分析)和挖掘(神经分类挖掘)分析。提取了有关亮片大小的最重要的输入变量。人工神经网络分类模型使用849条记录进行了训练,预测准确性为57%。在其他八个重要参数中,带材厚度似乎更为敏感。给定过程参数,分类模型可用于预测花键的大小。它也可以用作设置和调整过程参数以产生给定的花键大小的重要工具。

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