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RWTH Publication No: 963364 2023   |
TITLE |
A data-driven microscopic on-ramp model based on macroscopic network flows |
AUTHORS |
Niklas Kolbe, Moritz Berghaus, Eszter Kalló, Michael Herty, Markus Oeser |
ABSTRACT |
While macroscopic traffic flow models consider traffic as a fluid, microscopic traffic flow models
describe the dynamics of individual vehicles. Capturing macroscopic traffic phenomena remains
a challenge for microscopic models, especially in complex road sections such as on-ramps, In
this paper, we propose a microscopic model for on-ramps derived from a macroscopic network
flow model calibrated to real traffic data. The microscopic flow-based model requires additional
assumptions regarding the acceleration and the merging behavior on the on-ramp to maintain
consistency with the mean speeds, traffic flow and density predicted by the macroscopic model.
To evaluate the model’s performance, we conduct traffic simulations assessing speeds,
accelerations, lane change positions, and risky behavior. Our results show that, although the
proposed model may not fully capture all traffic phenomena of on-ramps accurately, it performs
better than the Intelligent Driver Model (IDM) in most evaluated aspects. While the IDM is almost
completely free of conflicts, the proposed model evokes a realistic amount and severity of conflicts
and can therefore be used for safety analysis. |
KEYWORDS |
Traffic flow theory, Macroscopic traffic models, Car-following models, On-ramps,
Trajectory data, Traffic simulation |