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Quality-related Process Monitoring of Industrial Processes based on Key Variable-Slow Feature Analysis

机译:基于关键变量缓慢特征分析的工业流程的质量相关过程监测

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In the industrial production, for the close-loop control, not all faults will affect product quality. To detect quality related fault effectively, a novel method named key variable-slow feature analysis (KV-SFA) is proposed in this work to extend the SFA algorithm to the domain of online quality-related fault detection. Firstly, key quality related process variables are selected via the combination of the least absolute shrinkage and selection operator (LASSO) method and the mechanism knowledge. Secondly, the SFA is conducted in the key variables space to extract slow features for establishing fault detection model. Then, the monitoring statistics are constructed and the control limits are estimated. Finally, the validity and effectiveness of the proposed KV-SFA method are proved through an industrial process.
机译:在工业生产中,对于闭环控制,并非所有故障都会影响产品质量。 为了有效地检测质量相关的故障,在这项工作中提出了一种名为Key变量缓慢特征分析(KV-SFA)的新方法,以将SFA算法扩展到在线质量相关的故障检测域。 首先,通过最小的绝对收缩和选择运算符(套索)方法和机制知识的组合来选择关键质量相关处理变量。 其次,SFA在关键变量空间中进行以提取用于建立故障检测模型的慢速特征。 然后,构建监视统计信息并估计控制限制。 最后,通过工业过程证明了所提出的KV-SFA方法的有效性和有效性。

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