Modelling of Daily Long-Term Urban Road Traffic Flow Distribution: A Poisson Process Approach  

Modelling of Daily Long-Term Urban Road Traffic Flow Distribution: A Poisson Process Approach

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作  者:Jojo D. Lartey Jojo D. Lartey(Department of Natural Science, Heritage Christian University Ghana, Accra, Ghana)

机构地区:[1]Department of Natural Science, Heritage Christian University Ghana, Accra, Ghana

出  处:《Open Journal of Modelling and Simulation》2025年第1期89-105,共17页建模与仿真(英文)

摘  要:Road traffic flow forecasting provides critical information for the operational management of road mobility challenges, and models are used to generate the forecast. This paper uses a random process to present a novel traffic modelling framework for aggregate traffic on urban roads. The main idea is that road traffic flow is random, even for the recurrent flow, such as rush hour traffic, which is predisposed to congestion. Therefore, the structure of the aggregate traffic flow model for urban roads should correlate well with the essential variables of the observed random dynamics of the traffic flow phenomena. The novelty of this paper is the developed framework, based on the Poisson process, the kinematics of urban road traffic flow, and the intermediate modelling approach, which were combined to formulate the model. Empirical data from an urban road in Ghana was used to explore the model’s fidelity. The results show that the distribution from the model correlates well with that of the empirical traffic, providing a strong validation of the new framework and instilling confidence in its potential for significantly improved forecasts and, hence, a more hopeful outlook for real-world traffic management.Road traffic flow forecasting provides critical information for the operational management of road mobility challenges, and models are used to generate the forecast. This paper uses a random process to present a novel traffic modelling framework for aggregate traffic on urban roads. The main idea is that road traffic flow is random, even for the recurrent flow, such as rush hour traffic, which is predisposed to congestion. Therefore, the structure of the aggregate traffic flow model for urban roads should correlate well with the essential variables of the observed random dynamics of the traffic flow phenomena. The novelty of this paper is the developed framework, based on the Poisson process, the kinematics of urban road traffic flow, and the intermediate modelling approach, which were combined to formulate the model. Empirical data from an urban road in Ghana was used to explore the model’s fidelity. The results show that the distribution from the model correlates well with that of the empirical traffic, providing a strong validation of the new framework and instilling confidence in its potential for significantly improved forecasts and, hence, a more hopeful outlook for real-world traffic management.

关 键 词:Poisson Process Macroscopic Traffic Flow Urban Road Long-Term Forecast Multiple Entries-Exits Dynamics 

分 类 号:TN9[电子电信—信息与通信工程]

 

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