Improved Understanding of Industrial Process Relationships Through Conditional Path Modelling With Process PLS

Tim Offermans, Lynn Hendriks, Geert H. van Kollenburg, Ewa Szymańska, L. Buydens, J. Jansen
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引用次数: 3

Abstract

Understanding how different units of an industrial production plant are operationally related is key to improving production quality and sustainability. Data science has proven indispensable in obtaining such understanding from vast amounts of historical process data. Path modelling is a valuable statistical tool to obtain such information from historical production data. Investigating how relationships within a process are affected by multiple production conditions and their interactions can however provide an even deeper understanding of the plant’s daily operation. We therefore propose conditional path modelling as an approach to obtain such improved understanding, demonstrated for a milk protein powder production plant. For this plant we studied how the relationships between different production units and steps are dependent on factors like production line, different seasons and product quality range. We show how the interaction of such factors can be quantified and interpreted in context of daily plant operation. This analysis revealed an augmented insight into the process that can be readily placed in the context of the plant’s structure and behavior. Such insights can be vital to identify and improve upon shortcomings in current plant-wide monitoring and control routines.
通过过程PLS的条件路径建模提高对工业过程关系的理解
了解工业生产工厂的不同单元如何在操作上相互关联是提高生产质量和可持续性的关键。事实证明,要从大量历史过程数据中获得这样的理解,数据科学是不可或缺的。路径建模是一种有价值的统计工具,可以从历史生产数据中获得此类信息。然而,调查一个过程中的关系如何受到多种生产条件的影响,以及它们之间的相互作用,可以更深入地了解工厂的日常运作。因此,我们提出条件路径建模作为一种方法来获得这种改进的理解,为牛奶蛋白粉生产工厂演示。对于该工厂,我们研究了不同生产单元和步骤之间的关系如何取决于生产线,不同季节和产品质量范围等因素。我们展示了这些因素的相互作用如何在日常工厂操作的背景下被量化和解释。这一分析揭示了对这一过程的深入了解,可以很容易地将其置于植物结构和行为的背景下。这种见解对于识别和改进目前全厂监测和控制程序中的缺陷至关重要。
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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