Robust LNG sales planning under demand uncertainty: A data-driven goal-oriented approach

IF 3 Q2 ENGINEERING, CHEMICAL
Yulin Feng , Xianyu Li , Dingzhi Liu , Chao Shang
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引用次数: 0

Abstract

This paper addresses the liquefied natural gas (LNG) sales planning problem over a pipeline network with a focus on uncertain demands. Generically, the total profit is maximized by seeking optimal transportation and inventory decisions, and robust optimization (RO) has been a viable decision-making strategy to this end, which is however known to suffer from over-conservatism. To circumvent this, a new goal-oriented data-driven RO approach is proposed. First, we adopt data-driven polytopic uncertainty sets based on kernel learning, which yields a compact high-density region from data and assures tractability of RO problems. Based on this, a new goal-oriented RO formulation is put forward to satisfy to the greatest extent the target profit while tolerating slight constraint violations. In contrast to traditional min–max RO scheme, the proposed scheme not only ensures a flexible trade-off but also yields parameters with clear interpretation. The resulting optimization problem turns out to be equivalent to a mixed-integer linear program that can be effectively handled using off-the-shelf solvers. We illustrate the merit of the proposed method in satisfying a prescribed goal with optimized robustness by means of a case study.

需求不确定性下稳健的LNG销售规划:数据驱动的目标导向方法
本文研究了管道网络上的液化天然气(LNG)销售计划问题,重点是不确定的需求。一般来说,总利润通过寻求最佳运输和库存决策来实现最大化,而鲁棒优化(RO)一直是实现这一目标的可行决策策略,但众所周知,它存在过度保守的问题。为了避免这种情况,提出了一种新的面向目标的数据驱动RO方法。首先,我们采用了基于核学习的数据驱动的多面体不确定性集,它从数据中产生了一个紧凑的高密度区域,并确保了RO问题的可处理性。在此基础上,提出了一种新的面向目标的RO公式,以最大限度地满足目标利润,同时容忍轻微的约束违反。与传统的最小-最大RO方案相比,所提出的方案不仅确保了灵活的权衡,而且产生了解释清晰的参数。由此产生的优化问题相当于一个混合整数线性程序,可以使用现成的求解器有效地处理该程序。我们通过案例研究说明了所提出的方法在满足规定目标和优化鲁棒性方面的优点。
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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CiteScore
3.10
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