Affiliation:
1. Chair of Electrical Smart City Systems, Friedrich-Alexander-Universität Erlangen-Nürnberg, Cauerstraße 7, 91058 Erlangen, Germany
Abstract
Microscopic traffic simulations have become increasingly important for research targeting connected vehicles. They are especially appreciated for enabling investigations targeting large areas, which would be practically impossible or too expensive in the real world. However, such large-scale simulation scenarios often lack validation with real-world measurements since these data are often not available. To overcome this issue, this work integrates probe counts from floating car data as reference counts to model a large-scale microscopic traffic scenario with high-resolution detector data. To integrate the frequent probe counts, a road network matching is required. Thus, a novel road network matching method based on a decision tree classifier is proposed. The classifier automatically adjusts its cosine similarity and Hausdorff distance-based similarity metrics to match the network’s requirements. The approach performs well with an F1-score of 95.6%. However, post-processing steps are required to produce a sufficiently consistent detector dataset for the subsequent traffic simulation. The finally modeled traffic shows a good agreement of 95.1%. with upscaled probe counts and no unrealistic traffic jams, teleports, or collisions in the simulation. We conclude that probe counts can lead to consistent traffic simulations and, especially with increasing and consistent penetration rates in the future, help to accurately model large-scale microscopic traffic simulations.
Reference43 articles.
1. Generation and Analysis of a Large-Scale Urban Vehicular Mobility Dataset;Uppoor;IEEE Trans. Mob. Comput.,2014
2. Miucic, R. (2019). Connected Vehicles, Springer.
3. Lobo, S., Neumeier, S., Fernandez, E.M.G., and Facchi, C. (2020, January 26–28). InTAS—The Ingolstadt Traffic Scenario for SUMO. Proceedings of the SUMO User Conference 2020, Virtual.
4. Wang, Y., de Veciana, G., Shimizu, T., and Lu, H. (2018, January 3–6). Deployment and Performance of Infrastructure to Assist Vehicular Collaborative Sensing. Proceedings of the 2018 IEEE 87th Vehicular Technology Conference (VTC Spring), Porto, Portugal.
5. Bajpai, S., Sahoo, G.K., Kumar Das, S., and Singh, P. (2022, January 15–17). An Efficient Inter-Vehicle Communication Framework on Road Traffic Accident Detection using OMNET++ and SUMO. Proceedings of the 2022 IEEE 2nd International Symposium on Sustainable Energy, Signal Processing and Cyber Security (iSSSC), Gunupur, India.