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Economic model predictive control of nonlinear process systems using multiple empirical models

机译:使用多个经验模型的非线性过程系统的经济模型预测控制

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Economic model predictive control (EMPC) is a feedback control technique that attempts to tightly integrate economic optimization and feedback control since it is a predictive control scheme that is formulated with an objective function representing the process economics. As its name implies, EMPC requires the availability of a dynamic model to compute its control actions and such a model may be obtained either through application of first-principles or though system identification techniques. However, in industrial practice, it may be difficult in general to obtain an accurate first-principles model of the process. Motivated by this, in the present work, Lyapunov-based economic model predictive control (LEMPC) is designed with multiple linear empirical models. The different models are used to more accurately predict the behavior of a nonlinear system over a larger state-space region compared to using a single empirical linear model only. The LEMPC scheme is applied to a chemical process example to demonstrate its closed-loop stability and performance properties as well as significant computational advantages.
机译:经济模型预测控制(EMPC)是一种试图将经济优化与反馈控制紧密集成的反馈控制技术,因为它是一种预测控制方案,由代表过程经济学的目标函数制定而成。顾名思义,EMPC需要使用动态模型来计算其控制动作,并且可以通过应用第一性原理或通过系统识别技术来获得这样的模型。但是,在工业实践中,通常可能难以获得该过程的准确的第一原理模型。因此,在本工作中,基于Lyapunov的经济模型预测控制(LEMPC)具有多个线性经验模型。与仅使用单个经验线性模型相比,使用不同的模型可以更准确地预测较大状态空间区域上非线性系统的行为。 LEMPC方案应用于化学过程示例,以证明其闭环稳定性和性能特性以及显着的计算优势。

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