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Stochastic data-driven optimization for multi-class dynamic pricing and capacity allocation in the passenger railroad transportation

机译:乘客铁路运输中多级动态定价和容量分配的随机数据驱动优化

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As for any passenger transportation service provider, pricing and capacity management are two critical tools for the profitability of a passenger railroad service provider: pricing affects the demand for the services and the capacity management sets the availability of the services in advance. In this study, an expert system is developed as a decision support tool for a passenger railroad service provider's integrated pricing and capacity management problem, which has great significance for the success of the service provider. Considering the demand uncertainty, we first formulate the integrated pricing and capacity management problem as a stochastic nonlinear integer programming (SNLIP) model. This model includes dynamic pricing and dynamic capacity allocation decisions for multiple service classes over a planning horizon in order to maximize profit. Also, several key characteristics of the passenger railroad service operations are captured in the model. Due to inherent demand uncertainty as well as the dynamic nature of the problem, a fast and efficient solution approach is needed. Therefore, a simulation-based procedure embedded in a simulated annealing method is proposed to solve the model. Several real-life cases from Fadak Five-Star Trains (an Iranian luxurious passenger railroad service provider) are presented to demonstrate the model and the solution approach. The results of the case studies show the operational and profitability impacts of using the proposed decision support tool as well as its potential capabilities for practical use by other service providers. (C) 2020 Elsevier Ltd. All rights reserved.
机译:至于任何乘客运输服务提供商,定价和容量管理是乘客铁路服务提供商盈利能力的两个关键工具:定价影响服务的需求,并提前提供服务的可用性。在这项研究中,专家系统是作为乘客铁路服务提供商的综合定价和容量管理问题的决策支持工具,对服务提供商的成功具有重要意义。考虑到需求不确定性,首先将综合定价和容量管理问题作为随机非线性整数编程(SNLIP)模型。该模型包括针对规划地平线的多个服务类的动态定价和动态容量分配决策,以最大化利润。此外,在模型中捕获了乘客铁路服务操作的若干关键特性。由于固有的需求不确定性以及问题的动态性质,需要快速高效的解决方案方法。因此,提出了一种嵌入模拟退火方法的基于模拟的过程来解决模型。提出了来自Fadak五星级列车(伊朗豪华客车服务提供商)的几种现实案例,以展示模型和解决方案方法。案例研究结果表明,使用所提出的决策支持工具以及其他服务提供商的实际使用能力的操作和盈利能力。 (c)2020 elestvier有限公司保留所有权利。

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