Online Linear Optimization with Inventory Management Constraints

Lin Yang, M. Hajiesmaili, R. Sitaraman, A. Wierman, Enrique Mallada, W. Wong
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引用次数: 2

Abstract

This paper considers the problem of online linear optimization with inventory management constraints. Specifically, we consider an online scenario where a decision maker needs to satisfy her timevarying demand for some units of an asset, either from a market with a time-varying price or from her own inventory. In each time slot, the decision maker is presented a (linear) price and must immediately decide the amount to purchase for covering the demand and/or for storing in the inventory for future use. The inventory has a limited capacity and can be used to buy and store assets at low price and cover the demand when the price is high. The ultimate goal of the decision maker is to cover the demand at each time slot while minimizing the cost of buying assets from the market. We propose ARP, an online algorithm for linear programming with inventory constraints, and ARPRate, an extended version that handles rate constraints to/from the inventory. Both ARP and ARPRate achieve optimal competitive ratios, meaning that no other online algorithm can achieve a better theoretical guarantee. To illustrate the results, we use the proposed algorithms in a case study focused on energy procurement and storage management strategies for data centers.
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具有库存管理约束的在线线性优化
研究了具有库存管理约束的在线线性优化问题。具体来说,我们考虑一个在线场景,其中决策者需要满足她对某些资产单位的时变需求,这些需求可能来自具有时变价格的市场,也可能来自她自己的库存。在每个时隙中,决策者会看到一个(线性)价格,并且必须立即决定购买的数量,以满足需求和/或储存在库存中以备将来使用。库存的容量有限,可以用于低价购买和储存资产,并在价格高时满足需求。决策者的最终目标是满足每个时隙的需求,同时使从市场购买资产的成本最小化。我们提出了一种用于库存约束线性规划的在线算法ARP,以及一种用于处理进出库存的速率约束的扩展版本ARPRate。ARP和ARPRate都实现了最优竞争比,这意味着没有其他在线算法可以实现更好的理论保证。为了说明结果,我们在数据中心能源采购和存储管理策略的案例研究中使用了所提出的算法。
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