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首页> 外文期刊>Journal of advanced transportation >Calibrating Path Choices and Train Capacities for Urban Rail Transit Simulation Models Using Smart Card and Train Movement Data
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Calibrating Path Choices and Train Capacities for Urban Rail Transit Simulation Models Using Smart Card and Train Movement Data

机译:使用智能卡和火车移动数据校准城市轨道交通仿真模型的校准路径选择和培训能力

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Transit network simulation models are often used for performance and retrospective analysis of urban rail systems, taking advantage of the availability of extensive automated fare collection (AFC) and automated vehicle location (AVL) data. Important inputs to such models, in addition to origin-destination flows, include passenger path choices and train capacity. Train capacity, which has often been overlooked in the literature, is an important input that exhibits a lot of variabilities. The paper proposes a simulation-based optimization (SBO) framework to simultaneously calibrate path choices and train capacity for urban rail systems using AFC and AVL data. The calibration is formulated as an optimization problem with a black-box objective function. Seven algorithms from four branches of SBO solving methods are evaluated. The algorithms are evaluated using an experimental design that includes five scenarios, representing different degrees of path choice randomness and crowding sensitivity. Data from the Hong Kong Mass Transit Railway (MTR) system is used as a case study. The data is used to generate synthetic observations used as “ground truth.” The results show that the response surface methods (particularly constrained optimization using response surfaces) have consistently good performance under all scenarios. The proposed approach drives large-scale simulation applications for monitoring and planning.
机译:过境网络仿真模型通常用于城市铁路系统的性能和回顾性分析,利用广泛的自动票价收集(AFC)和自动车辆位置(AVL)数据的可用性。除了原始目的地流动之外,此类模型的重要输入包括乘客路径选择和列车容量。培训能力往往被忽视的文献,是一个重要的意见,它表现出大量的变量。本文提出了一种基于模拟的优化(SBO)框架,以同时使用AFC和AVL数据校准城市铁路系统的路径选择和列车能力。将校准标配制为具有黑匣子目标函数的优化问题。评估来自SPO求解方法的四个分支的七种算法。使用实验设计评估算法,该实验设计包括五种场景,代表不同程度的路径选择随机性和拥挤敏感性。来自香港传统铁路(MTR)系统的数据作为案例研究。数据用于生成用作“地面真理”的合成观察。结果表明,响应面方法(特别是使用响应表面的约束优化)在所有场景下都具有始终如一的性能。该方法推动了大规模仿真应用来监控和规划。

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