Universally optimal staffing of Erlang-A queues facing uncertain arrival rates

IF 0.8 4区 管理学 Q4 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research Letters Pub Date : 2024-01-01 DOI:10.1016/j.orl.2023.107061
Yaşar Levent Koçağa
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Abstract

In many service systems, the staffing decisions must be made before the arrival rate is known with certainty. Thus, it is more appropriate to consider the arrival rate as a random variable at the time of the staffing decision. Motivated by this observation, we study the staffing problem in a service system modeled as an Erlang-A queue facing a random arrival rate. For linear staffing costs, linear waiting costs, and a cost per customer abandonment, we propose a policy that is based on modifying the well-known square-root safety staffing policy to explicitly account for the randomness in the arrival rate. Our primary contribution is to show that our proposed policy is “universally optimal”, i.e., irrespective of the magnitude of randomness in the arrival rate, the optimality gap between our proposed policy and the exact optimal policy remains bounded as the system size grows large. This is important because earlier performance guarantees for Erlang-A queues either (1) are not universal and offer performance guarantees that depend on the magnitude of uncertainty in the arrival rate or (2) are universal but assume a deterministic arrival rate. The practical relevance of this provable robustness is that our proposed policy is a “one-size-fits-all” as it is guaranteed to perform well for all levels of arrival rate uncertainty.

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面对不确定到达率的 Erlang-A 队列的普遍最优人员配置
在许多服务系统中,必须在确切知道到达率之前做出人员配置决策。因此,在做出人员配置决策时,将到达率视为随机变量更为合适。受此启发,我们研究了一个以 Erlang-A 队列为模型、面临随机到达率的服务系统中的人员配置问题。对于线性人员配备成本、线性等待成本和每个客户的放弃成本,我们提出了一种基于修改著名的平方根安全人员配备策略的政策,以明确考虑到达率的随机性。我们的主要贡献在于证明了我们提出的政策是 "普遍最优 "的,也就是说,无论到达率的随机性有多大,随着系统规模的扩大,我们提出的政策与精确最优政策之间的最优性差距仍然是有界的。这一点非常重要,因为以前的 Erlang-A 队列性能保证要么(1)不具有普遍性,提供的性能保证取决于到达率的不确定性大小;要么(2)具有普遍性,但假设到达率是确定的。这种可证明的鲁棒性的实际意义在于,我们提出的策略是 "一刀切 "的,因为它能保证在所有到达率不确定性水平下都有良好的性能。
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来源期刊
Operations Research Letters
Operations Research Letters 管理科学-运筹学与管理科学
CiteScore
2.10
自引率
9.10%
发文量
111
审稿时长
83 days
期刊介绍: Operations Research Letters is committed to the rapid review and fast publication of short articles on all aspects of operations research and analytics. Apart from a limitation to eight journal pages, quality, originality, relevance and clarity are the only criteria for selecting the papers to be published. ORL covers the broad field of optimization, stochastic models and game theory. Specific areas of interest include networks, routing, location, queueing, scheduling, inventory, reliability, and financial engineering. We wish to explore interfaces with other fields such as life sciences and health care, artificial intelligence and machine learning, energy distribution, and computational social sciences and humanities. Our traditional strength is in methodology, including theory, modelling, algorithms and computational studies. We also welcome novel applications and concise literature reviews.
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