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Dynamic network-level models directly addressing ride-sourcing services can be useful for the development of efficient traffic management strategies both for city and company operators. Recent developments presented models under equilibrium situations for several ride-sourcing service settings and dynamic models focusing on ride-hailing (solo rides), but no work addressed ridesplitting (option for shared rides) in dynamic settings. In this work, we sought to develop a dynamic aggregated network model capable of representing ride-sourcing services and private vehicles macroscopically in a multi-region urban network. To address this, we combined the use of Macroscopic Fundamental Diagram (MFD) with a detailed state-space and state-transition description embracing private vehicles and ride-sourcing vehicles in their several activities to formulate adequate mass conservation equations. Accumulation-based MFD dynamic models might experience additional errors due to the strong variations of trip lengths, e.g. when vehicles are cruising for passengers. We integrate the so-called M-model that utilizes one additional set of state variables, the total remaining distance to be traveled for a region. We show that the model can accurately forecast the vehicles’ conditions in short-term predictions (up to 30 minutes ahead of time). Later, a comparison with a benchmark model showed lower errors in the proposed model in all states. The development of such a model prepares the path towards the development of real-time feedback based management policies such as repositioning strategies for idle ride-sourcing vehicles and the development of regulations over ride-sourcing in congested areas.
Michel Bierlaire, Cloe Cortes Balcells, Rico Krüger
Ekaterina Krymova, Nicola Parolini, Andrea Kraus, David Kraus, Daniel Lopez, Yijin Wang, Markus Scholz, Tao Sun
François Maréchal, Jonas Schnidrig, Tuong-Van Nguyen