Chatter Detection in Hot Strip Mill Process based on Modified Independent Component Analysis

Ha-Nui Jo, Byeong Eon Park, Yumi Ji, Dong-Kuk Kim, Jeong Eun Yang, In-Beum Lee, Jeong Byeol Hong
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Abstract

Multivariate statistical process monitoring (MSPM) have been applied to process monitoring for industrial processes. The conventional method for a statistical monitoring model is principal component analysis (PCA). However, this is not sufficient to extract meaningful information in non-Gaussian data, which is the property of the process data in many industrial processes. Alternatively, the modified independent component analysis (MICA) method can be used to give meaningful information up to higher order statistics, which improves some drawbacks of independent component analysis (ICA) method. In this paper, we propose a protocol to monitor a chatter phenomenon in a hot strip mill process (HSMP) based on modified independent component analysis (MICA). First, we develop the chatter index (CI) that represent the degree of a chatter numerically. The statistical monitoring model for a chatter detection is constructed by using the chatter-free data, which is classified by CI. From the chatter monitoring model, a chatter detection rate of 86.7% is achieved.
基于改进独立分量分析的热连轧过程颤振检测
多元统计过程监控(MSPM)已被应用于工业过程的过程监控中。统计监测模型的传统方法是主成分分析(PCA)。然而,这不足以从非高斯数据中提取有意义的信息,这是许多工业过程中过程数据的属性。另外,改进的独立分量分析(MICA)方法可以提供高阶统计量的有意义信息,从而改善了独立分量分析(ICA)方法的一些缺点。本文提出了一种基于改进独立分量分析(MICA)的热连轧过程颤振监测方案。首先,我们建立了颤振指数(CI),用数值表示颤振的程度。利用无颤振数据构建颤振检测的统计监测模型,并对其进行CI分类。从颤振监测模型来看,实现了86.7%的颤振检出率。
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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