OCSYSYMay 14, 2019

The Penetration Rate Effect of Connected and Automated Vehicles in Mixed Traffic Routing

arXiv:1905.0584225 citations
Originality Synthesis-oriented
AI Analysis

Addresses the practical problem of integrating CAVs into existing traffic systems, showing potential benefits for all road users.

The paper studies routing of Connected and Automated Vehicles (CAVs) in mixed traffic with regular vehicles, proposing an algorithm that improves overall travel cost for both CAVs and non-CAVs, with even small CAV penetration rates easing network congestion.

We study the problem of routing Connected and Automated Vehicles (CAVs) in the presence of mixed traffic (coexistence of regular vehicles and CAVs). In this setting, we assume that all CAVs belong to the same fleet, and can be routed using a centralized controller. The routing objective is to minimize a given overall fleet traveling cost (travel time or energy consumption). We assume that regular vehicles (non-CAVs) choose their routing decisions selfishly to minimize their traveling time. We propose an algorithm that deals with the routing interaction between CAVs and regular uncontrolled vehicles. We investigate the effect of assigning system-centric routes under different penetration rates (fractions) of CAVs. To validate our method, we apply the proposed routing algorithms to the Braess Network and to a sub-network of the Eastern Massachusetts (EMA) transportation network using actual traffic data provided by the Boston Region Metropolitan Planning Organization. The results suggest that collaborative routing decisions of CAVs improve not only the cost of CAVs, but also that of the non-CAVs. Furthermore, even a small CAV penetration rate can ease congestion for the entire network.

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