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Process Monitoring under Closed-loop Control with Performance-relevant Full Decomposition of Slow Feature Analysis

机译:闭环控制下的过程监控,性能相关的完全分解缓慢特征分析

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Close-loop control is widely used in modern industrial process which brings obvious process dynamics. Disturbances on process may be compensated by the control actions, and thus it may have little influence on the process performance like product quality and waste discharge. Therefore, process monitoring without considering the influences of process variations on performance and process dynamics may cause nuisance alarms. To achieve comprehensive process monitoring, performance-relevant full decomposition of slow feature analysis, termed PFDSFA here, is proposed for processes under closed-loop control by simultaneously considering the influences of process variations and control actions on performance and process dynamics. First, the proposed algorithm extracts variations directly relevant to performance variables using canonical correlation analysis. In this way, process variable space can be decomposed into performance-relevant subspace and process-relevant subspace. Next, static and dynamic variations of each subspace are extracted to distinguish operating condition deviations from real faults. The proposed monitoring structure offers a fine-scale decomposition of process variations, and also achieves comprehensive process monitoring of process static and dynamic characteristics. Besides, it can effectively indicate whether a disturbance influences the performance and process dynamics. Finally, the proposed method is applied to the Tennessee Eastman process to terrify the efficacy.
机译:闭环控制广泛应用于现代工业过程,带来了明显的过程动态。对过程的扰动可以通过控制作用来补偿,因此它可能对产品质量和废物放电等过程性能几乎没有影响。因此,过程监控而不考虑过程变化对性能和过程动态的影响可能会导致滋扰警报。为了实现综合过程监测,在此处对PFDSFA进行慢速特征分析的性能相关的完全分解,在闭环控制下,同时考虑过程变化和控制动作对性能和过程动态的影响,提出了闭环控制下的过程。首先,所提出的算法利用规范相关分析提取与性能变量直接相关的变化。以这种方式,过程变量空间可以分解为相关的子空间和过程相关子空间。接下来,提取每个子空间的静态和动态变体以区分与真实故障的操作条件偏差。所提出的监控结构提供了对过程变化的微量分解,还可以实现对过程静态和动态特性的综合过程监控。此外,它可以有效地表明干扰是否会影响性能和过程动态。最后,拟议的方法适用于田纳西州的伊斯曼进程来恐吓疗效。

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