空分系统多参数模型预测控制的智能制造策略

Dustin Kenefake, Iosif Pappas, Styliani Avraamidou, Burcu Beykal, Hari S. Ganesh, Yanan Cao, Yajun Wang, Joannah Otashu, Simon Leyland, Jesus Flores-Cerrillo, Efstratios N. Pistikopoulos
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引用次数: 5

摘要

信息系统数字化和自动化的最新趋势导致了制造系统的工业4.0革命。随着通过云通信的集成“智能”系统的出现,收集和操作系统数据成为为这些复杂系统开发最佳控制策略的关键,但也是具有挑战性的组成部分。在这项工作中,我们提出了一个策略,以解决这一问题的空分装置(ASU)的案例研究。我们的方法包括通过高保真建模开发ASU控制器,研究数据驱动的降阶模型,并为高保真模型提供可实现的控制策略。将高保真模型连接到智能制造平台可以集成到其他智能制造工具和应用程序中。由于高保真模型对于在线优化任务(如模型预测控制)在计算上具有挑战性,因此生成代理模型来表示高保真模型的行为。然后将得到的降阶模型嵌入到模型预测控制公式中,通过多参数规划对整个过程进行最优控制。为了减少计算量,提出了一种基于求解一小部分多参数程序的多参数方法。然后,我们通过在高保真模型上部署开发的控制器来关闭环路,以便在实际工业工厂中使用它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A smart manufacturing strategy for multiparametric model predictive control in air separation systems

Recent trends in digitization and automation of information systems have led to the Industry 4.0 revolution in manufacturing systems. With the emergence of integrated “smart” systems that communicate through the cloud, collecting and manipulating the system data became a key yet, challenging component for developing optimal control strategies for these complex systems. In this work, we propose a strategy to address this problem with the case study on an air separation unit (ASU). Our approach involves developing an ASU's controllers via high-fidelity modeling, studies in data-driven reduced-order models, and providing implementable control policies for the high-fidelity model. Connecting the high-fidelity model to a smart manufacturing platform allows integration into other smart manufacturing tools and applications. Since the high-fidelity model is computationally challenging for online optimization tasks, such as model predictive control, surrogate models are generated that represent the high-fidelity model's behavior. The derived reduced-order models are then embedded into a model predictive control formulation for the optimal control of the whole process through multiparametric programming. A multiparametric approach based on solving a small portion of the multiparametric program is proposed to reduce the computational overhead. We then close the loop by deploying the developed controllers on the high-fidelity model for tuning with prospects of employing them on the real industrial plant.

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