Cooperative Adaptive Cruise Control for Connected Autonomous Vehicles by Factoring Communication-Related Constraints
Chaojie Wang, Siyuan Gong, Anye Zhou, Tao Li, Srinivas Peeta

TL;DR
This paper introduces a dynamic optimization strategy for communication topologies in cooperative adaptive cruise control, improving string stability in autonomous vehicle platoons under unreliable V2V communication conditions.
Contribution
It proposes the CACC-OIFT method that adaptively optimizes information flow topologies in real-time to enhance platoon stability amid communication failures.
Findings
CACC-OIFT significantly improves string stability over fixed IFT strategies.
Numerical experiments validate the effectiveness of CACC-OIFT in NS-3 simulations.
The approach outperforms passive adaptive schemes in unreliable communication scenarios.
Abstract
Emergent cooperative adaptive cruise control (CACC) strategies being proposed in the literature for platoon formation in the Connected Autonomous Vehicle (CAV) context mostly assume idealized fixed information flow topologies (IFTs) for the platoon, implying guaranteed vehicle-to-vehicle (V2V) communications for the IFT assumed. Since CACC strategies entail continuous information broadcasting, communication failures can occur in congested CAV traffic networks, leading to a platoon's IFT varying dynamically. To enhance the performance of CACC strategies, this study proposes the idea of dynamically optimizing the IFT for CACC, labeled the CACC-OIFT strategy. Under CACC-OIFT, the vehicles in the platoon cooperatively determine in real-time which vehicles will dynamically deactivate or activate the "send" functionality of their V2V communication devices to generate IFTs that optimize the…
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