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Optimal Pricing and Capacity Planning in Operations Management.

机译:运营管理中的最佳定价和容量计划。

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摘要

Pricing and capacity allocation are two important decisions that a service provider needs to make to maximize service quality and profit. This thesis attempts to address the pricing and capacity planning problems in operations management from the following three aspects.;We first study a capacity planning and short-term demand management problem faced by firms with industrial customers that are insensitive to price incentives when placing orders. Industrial customers usually have downstream commitments that make it too costly to instantaneously adjust their schedule in response to price changes. Rather, they can only react to prices set at some earlier time. We propose a hierarchical planning model where price decisions and capacity allocation decisions must be made at different points of times. Customers first sign a service contract specifying how capacity at different times will be priced. Then, when placing an order, they choose the service time that best meets their needs. We study how to price the capacity so that the customers behave in a way that is consistent with a targeted demand profile at the order period. We further study how to optimally allocate capacity. Our numerical computations show that the model improves the operational revenue substantially.;Second, we explore how a profit maximizing firm is to locate a single facility on a general network, to set its capacity and to decide the price to charge for service. Stochastic demand is generated from nodes of the network. Customers demand is sensitive to both the price and the time they expect to spend on traveling and waiting. Considering the combined effect of location and price on the firm's profit while taking into account the demand elasticity, our model provides managerial insights about how the interactions of these decision variables impact the firm's profit.;Third, we extend this single facility problem to a multiple facility problem. Customers have multiple choices for service. The firm maximizes its profit subject to customers' choice criteria. We propose a system optimization model where customers cooperate with the firm to choose the facility for service and a user equilibrium model where customers choose the facilities that provide the best utility to them. We investigate the properties of the optimal solutions. Heuristic algorithms are developed for the user equilibrium model. Our results show that capacity planning and location decisions are closely related to each other. When customers are highly sensitive to waiting time, separating capacity planning and location decisions could result in a highly suboptimal solution.
机译:定价和容量分配是服务提供商需要做出的两个重要决策,以使服务质量和利润最大化。本文试图从以下三个方面来解决运营管理中的定价和容量规划问题。我们首先研究了具有工业客户的企业在下订单时对价格激励不敏感的容量规划和短期需求管理问题。工业客户通常具有下游承诺,这使得响应价格变化即时调整其计划的成本太高。相反,它们只能对较早时候设定的价格做出反应。我们提出了一个分层的计划模型,其中必须在不同的时间点做出价格决策和容量分配决策。客户首先签署服务合同,指定如何定价不同时间的容量。然后,在下订单时,他们会选择最能满足其需求的服务时间。我们研究如何对容量进行定价,以使客户的行为方式与定购期的目标需求状况一致。我们将进一步研究如何优化分配容量。我们的数值计算表明,该模型大大提高了运营收入。第二,我们探讨了利润最大化的公司如何在通用网络上定位单个设施,设置其容量并确定服务收费的价格。随机需求是从网络节点生成的。客户的需求对他们期望花费在旅行和等待上的价格和时间都很敏感。考虑到地点和价格对公司利润的综合影响,同时考虑到需求弹性,我们的模型提供了有关这些决策变量的相互作用如何影响公司利润的管理见解。第三,我们将此单一设施问题扩展为多个设施问题。客户有多种服务选择。该公司根据客户的选择标准最大化其利润。我们提出了一种系统优化模型,在该模型中,客户与公司合作选择服务设施;而在用户均衡模型中,客户选择了为其提供最佳效用的设施。我们调查最佳解决方案的属性。针对用户均衡模型开发了启发式算法。我们的结果表明,容量规划和位置决策彼此密切相关。当客户对等待时间高度敏感时,分开进行容量规划和位置决策可能会导致高度不理想的解决方案。

著录项

  • 作者

    Tong, Dehui.;

  • 作者单位

    University of Toronto (Canada).;

  • 授予单位 University of Toronto (Canada).;
  • 学科 Management.;Operations research.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 137 p.
  • 总页数 137
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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