A Quality-Relevant Monitoring Method for Closed-Loop Industrial Processes with Dual Consideration of Static and Dynamic Analysis

Y. Qin, C. Zhao
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引用次数: 2

Abstract

Traditional quality-relevant process monitoring approaches do not consider whether the data are collected in closed-loops, resulting in no attention about influences of feedback control action on quality information. Consequently, if quality-relevant process variations influenced by closed-loops cannot be extracted, they cannot be well monitored and thus complete monitoring results for evaluating the process operating status are exposed to the risk of generating limited insights and even false conclusions. To solve this problem, a monitoring method with dual consideration of quality information and process dynamics is proposed for closed-loop manufacturing processes. Quality-relevant process variations influenced by closed-loop systems are directly separated by a new method, which maximizes the correlation between latent variables and quality indices meanwhile minimizes the slowly varying amplitude of latent variables. The remaining process-relevant process variations are obtained, however, which contain a large amount of dynamics caused by feedback control action. In this way, process data matrix is decomposed into three static subspaces and their corresponding dynamic subspaces. On the basis of this, the proposed method provides a meaningful decomposition through comprehensive consideration of quality interpretability and process dynamics. Finally, the application of the proposed method to a typical chemical process illustrates its efficacy.
一种兼顾静态和动态分析的闭环工业过程质量监控方法
传统的质量相关过程监控方法没有考虑数据是否在闭环中采集,导致没有考虑反馈控制作用对质量信息的影响。因此,如果受闭环影响的与质量相关的过程变化不能被提取出来,它们就不能被很好地监控,因此,用于评价过程运行状态的完整监控结果就有可能产生有限的见解,甚至错误的结论。针对这一问题,提出了一种同时考虑质量信息和过程动力学的闭环制造过程监控方法。通过一种新的方法直接分离受闭环系统影响的质量相关过程变量,使潜在变量与质量指标之间的相关性最大化,同时使潜在变量的缓慢变化幅度最小化。然而,剩下的过程相关的过程变化是可以得到的,其中包含了大量由反馈控制作用引起的动态。将过程数据矩阵分解为三个静态子空间及其对应的动态子空间。在此基础上,通过综合考虑质量可解释性和过程动态性,提出了一种有意义的分解方法。最后,将该方法应用于一个典型的化工过程,验证了其有效性。
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