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Quality-relevant dynamic process monitoring based on dynamic total slow feature regression model

机译:基于动态总缓慢特征回归模型的质量相关动态过程监控

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摘要

Slow feature analysis (SFA) can extract the features representing intrinsic properties. Moreover, in an actual industrial process: information can be found in low-frequency data signals. Hence, SFA detects subtle changes more sensitively than other algorithms do. On this basis, a dynamic total slow feature regression is proposed to achieve efficient quality-relevant fault detection for dynamic processes. Initially, lagged measurements are introduced to process variables as additional variables for further obtaining the dynamic information of the industrial process. Then, to solve the information redundancy problem and improve the quality-relevant fault detection performance, total projection method is utilized to divide the process variables into two parts, which are relevant to and independent from quality. Finally, monitoring statistics on two subspaces are constructed to detect quality-relevant and irrelevant faults. The experiment results on the Tennessee Eastman process demonstrates that the proposed method outperforms some other state-of-the-art methods.
机译:慢特征分析(SFA)可以提取代表内在属性的特征。此外,在实际的工业过程中:可以在低频数据信号中找到信息。因此,SFA检测比其他算法更敏感的微妙变化。在此基础上,提出了一种动态总缓慢特征回归,以实现动态过程的高效质量相关的故障检测。最初,将滞后测量引入处理变量作为其他变量,以进一步获得工业过程的动态信息。然后,为了解决信息冗余问题并提高质量相关的故障检测性能,总投影方法用于将过程变量分成两部分,它们与质量相关和独立。最后,构建了两个子空间的监测统计数据以检测质量相关和无关的故障。田纳西州伊斯坦德工艺的实验结果表明,所提出的方法优于其他一些最先进的方法。

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