Incorporating Ephemeral Traffic Waves in A Data-Driven Framework for Microsimulation in CARLA
Alex Richardson, Azhar Hasan, Gabor Karsai, Jonathan Sprinkle

TL;DR
This paper presents a novel data-driven microsimulation framework in CARLA that accurately reproduces real-world traffic wave phenomena using high-fidelity empirical data, enabling realistic testing of traffic control and autonomous driving strategies.
Contribution
It introduces a boundary-driven cosimulation approach that incorporates real traffic wave dynamics into CARLA, achieving full time-space diagram fidelity for the first time.
Findings
Simulated traffic waves closely match real-world data.
Framework successfully models wave formation and dissipation.
Enables realistic testing of autonomous vehicle algorithms.
Abstract
This paper introduces a data-driven traffic microsimulation framework in CARLA that reconstructs real-world wave dynamics using high-fidelity time-space data from the I-24 MOTION testbed. Calibration of road networks in microsimulators to reproduce ephemeral phenomena such as traffic waves for large-scale simulation is a process that is fraught with challenges. This work reconsiders the existence of the traffic state data as boundary conditions on an ego vehicle moving through previously recorded traffic data, rather than reproducing those traffic phenomena in a calibrated microsim. Our approach is to autogenerate a 1 mile highway segment corresponding to I-24, and use the I-24 data to power a cosimulation module that injects traffic information into the simulation. The CARLA and cosimulation simulations are centered around an ego vehicle sampled from the empirical data, with…
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Taxonomy
TopicsTraffic control and management · Traffic Prediction and Management Techniques · Vehicular Ad Hoc Networks (VANETs)
