启停条件的迭代实时优化方法

A. R. G. Mukkula, Afaq Ahmad, S. Engell
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引用次数: 2

摘要

迭代实时优化方法能够在存在结构和参数工厂模型不匹配的情况下识别出真正的过程优化。然而,在收敛到最优过程时,它们可能会受到响应于测量噪声的持续过程扰动的影响,这是低效的。在本文中,我们提出了迭代优化方案在收敛到工厂最优时的关闭策略和过程行为发生变化时迭代优化的启动策略,以避免性能损失。我们采用统计过程监控的技术来制定适当的条件来检测过程中的变化。结合一种强大的实时优化方法,即二次逼近修正器自适应(MAWQA),分析了所提出的启动和关闭策略的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Start-up and Shut-down Conditions for Iterative Real-Time Optimization Methods
Iterative real-time optimization methods are able to identify the real process optimum in the presence of structural and parametric plant-model mismatch. However, upon converging to the process optimum they may suffer from generating ongoing process perturbations in response to measurement noise which are inefficient. In this paper, we propose a strategy for the shut-down of the iterative optimization schemes upon convergence to the plant optimum and a strategy for the start-up of the iterative optimization when a change in the process behavior occurs, in order to avoid a loss of performance. We employ techniques from statistical process monitoring to formulate appropriate conditions to detect a change in the process. The performance of the proposed start-up and shut-down strategies in combination with a powerful real-time optimization method namely, modifier adaptation with quadratic approximation (MAWQA), is analyzed using a chemical engineering case study.
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