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On the Analytical Probabilistic Modeling of Flow Transmission Across Nodes in Transportation Networks

Jing Lü, Carolina Osorio

2022Transportation Research Record Journal of the Transportation Research Board39 citationsDOI

Abstract

This paper focuses on the analytical probabilistic modeling of vehicular traffic. It formulates a stochastic node model. It then formulates a network model by coupling the node model with the link model of Lu and Osorio (2018), which is a stochastic formulation of the traffic-theoretic link transmission model. The proposed network model is scalable and computationally efficient, making it suitable for urban network optimization. For a network with [Formula: see text] links, each with a space capacity of one, the model has a complexity of [Formula: see text]. The network model yields the marginal distribution of link states. The model is validated versus a simulation-based network implementation of the stochastic link transmission model. The validation experiments consider a set of small networks with intricate traffic dynamics. For all scenarios, the proposed model accurately captures the traffic dynamics. The network model is used to address a signal control problem. Compared with the probabilistic link model of Lu and Osorio (2018) with an exogenous node model and a benchmark deterministic network loading model, the proposed network model derives signal plans with better performance. The case study highlights the added value of using between-link (i.e., across-node) interaction information for traffic management and accounting for stochasticity in the network.

Topics & Concepts

Traffic generation modelNode (physics)Cell Transmission ModelComputer scienceProbabilistic logicNetwork modelFlow networkNetwork traffic simulationStochastic modellingNetwork simulationTraffic flow (computer networking)Network planning and designScalabilityNetwork dynamicsBenchmark (surveying)Statistical modelMathematical optimizationNetwork traffic controlDistributed computingComputer networkEngineeringData miningMathematicsArtificial intelligenceTraffic congestionDatabaseTransport engineeringGeographyNetwork packetGeodesyStructural engineeringStatisticsDiscrete mathematicsTraffic control and managementTransportation Planning and OptimizationTraffic Prediction and Management Techniques