TY - JOUR PY - 2022// TI - On the analytical probabilistic modeling of flow transmission across nodes in transportation networks JO - Transportation research record A1 - Lu, Jing A1 - Osorio, Carolina SP - 209 EP - 225 VL - 2676 IS - 12 N2 - 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 r links, each with a space capacity of one, the model has a complexity of O(r?). 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.
Language: en
LA - en SN - 0361-1981 UR - http://dx.doi.org/10.1177/03611981221094829 ID - ref1 ER -