Bi-level Mixed-Integer Data-Driven Optimization of Integrated Planning and Scheduling Problems.

Burcu Beykal, Styliani Avraamidou, Efstratios N Pistikopoulos
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引用次数: 3

Abstract

Supply chain management is an interconnected problem that requires the coordination of various decisions and elements across long-term (i.e., supply chain structure), medium-term (i.e., production planning), and short-term (i.e., production scheduling) operations. Traditionally, decision-making strategies for such problems follow a sequential approach where longer-term decisions are made first and implemented at lower levels, accordingly. However, there are shared variables across different decision layers of the supply chain that are dictating the feasibility and optimality of the overall supply chain performance. Multi-level programming offers a holistic approach that explicitly accounts for this inherent hierarchy and interconnectivity between supply chain elements, however, requires more rigorous solution strategies as they are strongly NP-hard. In this work, we use the DOMINO framework, a data-driven optimization algorithm initially developed to solve single-leader single-follower bi-level mixed-integer optimization problems, and further develop it to address integrated planning and scheduling formulations with multiple follower lower-level problems, which has not received extensive attention in the open literature. By sampling for the production targets over a pre-specified planning horizon, DOMINO deterministically solves the scheduling problem at each planning period per sample, while accounting for the total cost of planning, inventories, and demand satisfaction. This input-output data is then passed onto a data-driven optimizer to recover a guaranteed feasible, near-optimal solution to the integrated planning and scheduling problem. We show the applicability of the proposed approach for the solution of a two-product planning and scheduling case study.

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综合规划调度问题的双级混合整数数据驱动优化。
供应链管理是一个相互关联的问题,它需要跨长期(即供应链结构)、中期(即生产计划)和短期(即生产调度)操作的各种决策和要素的协调。传统上,此类问题的决策策略遵循一种顺序方法,即首先做出较长期的决策,并相应地在较低的级别实施。然而,在供应链的不同决策层之间存在共享变量,这些变量决定了整个供应链绩效的可行性和最优性。多级规划提供了一种全面的方法,明确地说明了供应链元素之间的内在层次和相互连接,然而,由于它们是强NP-hard的,因此需要更严格的解决方案策略。在这项工作中,我们使用DOMINO框架,这是一种数据驱动的优化算法,最初是为了解决单领导者单追随者双级混合整数优化问题而开发的,并进一步发展它来解决具有多追随者低级别问题的集成规划和调度公式,这在公开文献中尚未得到广泛关注。通过在预先指定的计划范围内对生产目标进行抽样,DOMINO确定地在每个抽样的每个计划期间解决调度问题,同时考虑到计划、库存和需求满意度的总成本。然后将该输入输出数据传递给数据驱动的优化器,以恢复集成计划和调度问题的保证可行的、接近最优的解决方案。我们展示了所提出的方法在解决两个产品计划和调度案例研究中的适用性。
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