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Reprint of: Data-driven robust optimization under correlated uncertainty: A case study of production scheduling in ethylene plant

机译:转载:相关不确定性下数据驱动的稳健优化:乙烯工厂生产调度的案例研究

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摘要

To hedge against the fluctuations generated from continuous production processes, practical solutions can be obtained through robust optimization induced by the classical uncertainty sets. However, uncertainties are sometimes correlated in industrial scheduling problems because of the connected process and various random factors. To capture and enrich the valid information of uncertainties, copulas are introduced to estimate the joint probability distribution and simulate mutual scenarios for uncertainties. Cutting planes are generated to remove unnecessary uncertain scenarios in the uncertainty sets, and then robust formulations induced by the cut set are proposed to reduce conservatism and improve the robustness of scheduling solutions. A real-world process of ethylene plant is introduced as the numerical case, and high-dimensional data-driven uncertainty sets are illustrated in detail. The proposed models are proved to control the fluctuation of consumed fuel gas below a lower level of conservatism. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为了避免连续生产过程中产生的波动,可以通过经典不确定性集引起的强大优化来获得实用的解决方案。然而,由于过程的相互联系和各种随机因素的影响,不确定性有时与工业调度问题相关。为了捕获和丰富不确定性的有效信息,引入了copulas来估计联合概率分布并模拟不确定性的相互情况。生成割平面以消除不确定性集中不必要的不​​确定场景,然后提出由割集引入的鲁棒公式,以减少保守性并提高调度解决方案的鲁棒性。作为数值案例,介绍了乙烯工厂的实际过程,并详细说明了高维数据驱动的不确定性集。实践证明,所提出的模型可以将消耗的燃气波动控制在较低的保守度以下。 (C)2017 Elsevier Ltd.保留所有权利。

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