Data-driven robust optimization with multiple kernel learning for refinery planning under price uncertainty

Yuhao Liu, Wangli He, Liang Zhao
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Abstract

Refinery planning is crucial for increased profitability for refineries. However, the markets associated with refinery operations are volatile, resulting in fluctuations in the product price, which can heavily affect the total profit of refineries. This paper is intended to develop a data-driven robust optimization (DDRO) framework for refinery planning under price uncertainty. Firstly, historical data of the product prices is collected and a multiple kernel learning (MKL) algorithm is proposed to construct the uncertainty set to capture the price uncertainty. Then, based on the derived uncertainty set, a DDRO model of refinery planning is developed and a tractable robust counterpart is reformulated by using the dual transformation, which is directly solved by using the solver. Finally, an industrial case of refinery planning is researched to illustrate the applicability of the proposed approach, which demonstrates that the proposed approach has a better balance between the total profit and robustness for refinery planning than the deterministic method.
价格不确定条件下炼油厂规划的多核学习数据驱动鲁棒优化
炼油厂规划对提高炼油厂的盈利能力至关重要。然而,与炼油厂业务相关的市场是不稳定的,导致产品价格波动,这可能严重影响炼油厂的总利润。本文旨在为价格不确定性下的炼油厂规划开发一个数据驱动的鲁棒优化(DDRO)框架。首先,收集产品价格的历史数据,提出多核学习(MKL)算法构建不确定性集来捕捉价格的不确定性;然后,基于导出的不确定性集,建立了炼油厂规划的DDRO模型,并利用对偶变换重新构造了一个可处理的鲁棒模型,并用求解器直接求解该模型。最后,通过炼油厂规划的实例研究,验证了所提方法的适用性,结果表明,所提方法比确定性方法在炼油厂规划的总利润和鲁棒性之间有更好的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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