网络收益优化中的不确定容量管理

Fabricio Previgliano, Gustavo J. Vulcano
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引用次数: 2

摘要

问题定义:我们研究在资源网络上管理收益优化的不确定能力的问题。这种不确定性可能是由于(i)需要在资源之间重新分配初始容量或(ii)在服务执行时物理容量的随机可用性。学术/实践相关性:分析的控制政策与当前的行业实践保持一致,虚拟容量和投标价格与每个网络资源相关联。卖家从源源不断的顾客那里收取收入。被接纳的请求如果不能在最终的有效容量范围内处理,则会产生罚款成本。目标是使总累计净收入(销售收入减去处罚成本)最大化。这个问题在实践中出现了,例如,当航空公司在最后一刻更换飞机时,以及在货运收入管理中,乘客负荷留下的运力被用于货运时。方法:我们提出了一个随机动态规划公式,并提出了一个随机梯度算法来近似求解该问题。算法的所有极限点都是近似期望净收益函数的平稳点。结果:通过详尽的数值研究,我们表明我们的控制是有效计算的,并且提供的收入几乎始终高于基于广泛采用的确定性线性规划模型的基准所获得的收入。管理含义:我们获得了关于容量不确定性清除时间、容量异构性、网络拥塞以及无法适应先前接受的需求的惩罚的影响的管理见解。我们的方法倾向于在问题的不同参数化之间提供最佳性能。
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Managing Uncertain Capacities for Network Revenue Optimization
Problem definition: We study the problem of managing uncertain capacities for revenue optimization over a network of resources. The uncertainty could be due to (i) the need to reallocate initial capacities among resources or (ii) the random availability of physical capacities by the time of service execution. Academic/practical relevance: The analyzed control policy is aligned with the current industry practice, with a virtual capacity and a bid price associated with each network resource. The seller collects revenues from an arriving stream of customers. Admitted requests that cannot be accommodated within the final, effective capacities incur a penalty cost. The objective is to maximize the total cumulative net revenue (sales revenue minus penalty cost). The problem arises in practice, for instance, when airlines are subject to last-minute change of aircrafts and in cargo revenue management where the capacity left by the passengers’ load is used for freight. Methodology: We present a stochastic dynamic programming formulation for this problem and propose a stochastic gradient algorithm to approximately solve it. All limit points of our algorithm are stationary points of the approximate expected net revenue function. Results: Through an exhaustive numerical study, we show that our controls are computed efficiently and deliver revenues that are almost consistently higher than the ones obtained from benchmarks based on the widely adopted deterministic linear programming model. Managerial implications: We obtain managerial insights about the impact of the timing of the capacity uncertainty clearance, the capacity heterogeneity, the network congestion, and the penalty for not being able to accommodate the previously accepted demand. Our approach tends to offer the best performance across different parameterizations of the problem.
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