基于智能卡数据的城域网络时间流分配建模

Lijun Sun, J. Jin
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引用次数: 15

摘要

在复杂的地铁网络中,了解客流分配模式对于保持服务可靠性和在中断时制定有效的应对措施至关重要。在现实中,乘客对不同成本属性的感知可能会随着时间而变化。本文重点研究了客流选择行为的时间变化及其对总体客流分配的影响。为了有效地估计模型参数,我们通过在每次旅行时间观测的路径选择结果中引入潜在变量,将先前的模型修正为缺失数据问题。修正后的模型可以使用期望最大化(EM)算法进行估计。我们将提出的框架应用于新加坡的地铁系统和临时分组智能卡交易。我们发现路线选择系数随时间变化很大。以车内时间计算,换乘时间的相对值在2 ~ 3之间,非高峰时段高于早晚高峰时段。结果表明,在高峰时段,乘客更关心总出行时间,而在非高峰时段,乘客更关心舒适性(如更少的换乘时间)。该框架具有通用性,可应用于其他网络。
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Modeling Temporal Flow Assignment in Metro Networks Using Smart Card Data
Understanding passenger flow assignment patterns in a complex metro network is crucial to maintaining service reliability and developing efficient response during disruption. In reality passengers' perception of different cost attributes may vary with time. This paper focuses on quantifying the temporal variation of passenger route choice behavior and its impact on overall passenger flow assignment. In order to efficiently estimate model parameters, we modify a previous model to a missing data problem by introducing latent variable on route choice outcomes for each travel time observation. The revised model can be estimated using the Expectation-Maximization (EM) algorithm. We apply the proposed framework on Singapore's metro system and temporal grouped smart card transactions. We find that route choice coefficients vary substantially with time. The relative value of transfer time in terms of in-vehicle time ranges from 2 to 3, being higher at off-peak hours than during morning/evening peaks. The result suggests that passenger care more about total travel time during peak hours, whereas comfort (e.g., less transfer time) is of more concern to users during off-peaks. The proposed framework is general and can be applied on other networks.
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