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On line prediction of surface defects in hot bar rolling based on Bayesian hierarchical modeling

机译:基于贝叶斯层次模型的热轧表面缺陷在线预测

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摘要

Steel bar manufacturing process is a multistage process in which melted steel passes through multiple steps to form into a bar or rod of varying diameters. The most common cause of rejection of such products is the surface defects such as seams, scales, cracks etc. Often automated inspection in the form of image analysis is done to predict the formation of such defects. These inspections suffer from the fact that they do not include the process information and hence are not very reliable. This paper presents a novel methodology of prediction of surface defects in bar manufacturing. In this method, the surface images obtained by inspection methodology are decomposed into individual defects based on process knowledge. These are then decomposed into the physical quantities affecting them which are decomposed into design parameters on rolling mill. To achieve this decomposition, Bayesian hierarchical modeling is used. Data collected from sensors installed on rolling mill are used for model building and design. After the model is built, it is converted into an automated system called Diagnostics on Rolling Mill (DORM). DORM is installed on rolling mill and its performance is evaluated for several days. It is found that the model performs very closely with manual inspection and predicts surface defects with good accuracy. The Bayesian model also gives an insight into process parameters and physical quantities which affect the individual defects.
机译:钢筋的制造过程是一个多阶段的过程,其中熔融的钢经过多个步骤以形成直径不同的条或棒。拒绝此类产品的最常见原因是表面缺陷,例如接缝,氧化皮,裂缝等。通常会以图像分析的形式进行自动检查,以预测此类缺陷的形成。这些检查受到以下事实的困扰:它们不包括过程信息,因此不是很可靠。本文提出了一种预测棒材制造中表面缺陷的新方法。在这种方法中,通过检查方法获得的表面图像会根据过程知识分解为单个缺陷。然后将这些分解为影响它们的物理量,然后将其分解为轧机的设计参数。为了实现这种分解,使用了贝叶斯分层建模。从安装在轧机上的传感器收集的数据用于模型构建和设计。构建模型后,将其转换为名为轧机诊断(DORM)的自动化系统。 DORM安装在轧机上,其性能经过几天的评估。发现该模型与手动检查的性能非常接近,并且可以很好地预测表面缺陷。贝叶斯模型还可以深入了解影响各个缺陷的工艺参数和物理量。

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