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Parameterizations of data-driven nonlinear dynamic process models for fast scheduling calculations

机译:数据驱动的非线性动态过程模型的参数化,用于快速调度计算

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摘要

Global competition and increasingly complex product slates and supply chains motivate a continuous drive towards enterprise-wide optimization and integrated decision-making in the chemical process industries. Integration of production scheduling and process control poses particular challenges: the resulting optimization problems tend to be high-dimensional and nonlinear, calling for development of new computational methods. In this work, we propose a novel modeling framework for integrated scheduling and control. We build on existing methods which use data-driven Hammerstein-Wiener models to represent the dynamics of scheduling-relevant) process variables. This model structure is leveraged to reduce the size of the scheduling optimization problem, by identifying parsimonious parametric representations of the underlying dynamics. The advantages of the approach are demonstrated on two case studies, in which the computational effort is shown to be significantly reduced compared to existing methods, while still capturing the relevant process dynamics. (C) 2019 Elsevier Ltd. All rights reserved.
机译:全球竞争以及日益复杂的产品和供应链促使人们不断地朝着化学加工行业的企业范围内的优化和综合决策制定目标迈进。生产计划和过程控制的集成带来了特殊的挑战:由此产生的优化问题往往是高维和非线性的,需要开发新的计算方法。在这项工作中,我们提出了一种用于集成调度和控制的新颖建模框架。我们建立在现有方法的基础上,这些方法使用数据驱动的Hammerstein-Wiener模型来表示与调度相关的过程变量的动态。通过识别底层动态的简约参数表示,利用此模型结构来减少调度优化问题的大小。在两个案例研究中证明了该方法的优势,其中与现有方法相比,计算量显着减少,同时仍可获取相关的过程动态。 (C)2019 Elsevier Ltd.保留所有权利。

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