Impact of the Connected Vehicles Penetration Rate on the Speed Transition Matrices Accuracy

Autor: Majstorović, Željko, Miletić, Mladen, Čakija, Dino, Dusparić, Ivana, Ivanjko, Edouard, Carić, Tonči
Přispěvatelé: Petrović, Marjana, Dovbischuk, Irina, Cunha, André Luiz
Rok vydání: 2022
Předmět:
Zdroj: Transportation Research Procedia. 64:240-247
ISSN: 2352-1465
DOI: 10.1016/j.trpro.2022.09.029
Popis: The development of the Vehicle to Everything (V2X) communication technology can provide crucial data for traffic analysis on the microscopic level. Real-time data from Connected Vehicles (CVs) opens new research possibilities providing detailed insight into the actual traffic state. Speed Transition Matrices (STMs) can be used for this insight and can be created within a fully observable traffic environment. By introducing CVs into the traffic network, it is possible to obtain a partial observation of the traffic environment. This paper explores how the data collected from CVs can be used for the creation of STMs at an isolated intersection in a simulated environment. An emphasis is given on how the CVs penetration rate impacts the accuracy of the created STM. The results show that by increasing the CVs penetration rate, the STM estimate accuracy is also increased, although the relation between estimate accuracy and the penetration rate is not linear. Obtained results show that the error of STM estimation rapidly decreases in the lower CVs penetration rate range.
Databáze: OpenAIRE