应用贝叶斯网络估计公交站点换乘概率

M. Zhuk, H. Pivtorak, I. Gits, Mariana Kozak
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引用次数: 0

摘要

优化公共交通运营期间的换乘是提高交通质量的重要组成部分之一。有几个因素影响乘客对换乘的看法:从运输服务用户的个人特征到路线网络的参数、行程特征和换乘站点的设计。构建贝叶斯网络的方法是解决复杂系统预测问题的有效方法之一,以寻找不同类型的输入数据对停站换乘概率的影响关系。当两个原因结合在一起时,乘客需要转乘:需要在两个运输区域之间旅行,以及在这些运输区域之间缺乏直接的公共交通路线。出行需求的数量将取决于出发区域的居民数量,而没有直达路线的概率将取决于从该区域出发的路线总数。在PTV Visum软件环境中进行了模拟(以利沃夫市为例),以确定这些因素对停站改变概率的影响。结果得到了公交系统各站点换乘乘客总量的数据,并将其划分为在该站点下车的乘客数量,在该站点换乘的乘客数量,以及前往另一个站点(最高200米)换乘的乘客数量。在车站换乘的平均等待时间取决于通过该站的路线数量和交通的规律性。严格遵守交通时刻表有助于减少换乘的平均等待时间。对利用基于现场观测数据的计算和利用模型计算其中一个站点的转移概率的结果进行了比较,以检查模型的充分性。计算概率为0.16,模拟概率为0.12。
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Application of bayesian networks to estimate the probability of a transfer at a public transport stop
Optimizing transfers during public transport operations is one of the essential components of improving the quality of transport. Several factors influence the passenger's perception of a transfer: from the personal characteristics of the user of transport services to the parameters of the route network, trip characteristics and the design of transfer stops. The method of constructing Bayesian networks was used as one of the effective methods for solving problems of forecasting complex systems to find the relationship between different types of input data that affect the probability of making a transfer at a stop. The need for a transfer arises for a passenger when two reasons are combined: the need to make a trip between two transport areas and the lack of a direct public transport route between these transport areas. The number of needs for trip will depend on the number of residents in the departure zone, and the probability of not having a direct route will depend on the total number of routes departing from this zone. A simulation was carried out in the PTV Visum software environment (on the example of Lviv city) to determine the impact of these factors on the probability of changing at a stop. As a result, data were obtained on the total amount of passenger exchange at the stops of the public transportation system with distribution into the number of passengers disembarking at the stop, the number of passengers transferring at this stop, and the number of passengers going (up to 200 m) to another stop to transfer. The average waiting time for a transfer at a stop depends on both the number of routes passing through the stop and the regularity of traffic. Strict adherence to traffic schedules helps to reduce the average waiting time for a transfer. A comparison of the results of calculating the probability of a transfer at one of the stops using calculations based on field observation data and using modeling was carried out to check the adequacy of the modeling. The calculated probability is 0.16, the simulated probability is 0.12.
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