Collision Risk Assessment Service for Connected Vehicles: Leveraging Vehicular State and Motion Uncertainties

The Internet of Things plays an indispensable role in the development of connected vehicles, which will pave the way for road safety applications. In recent years, the concept of a cooperative collision warning system (CCWS) has been introduced and developed to enhance road safety, and it has been s...

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Veröffentlicht in:IEEE internet of things journal 2021-07, Vol.8 (14), p.11548-11560
Hauptverfasser: Tao, Lu, Watanabe, Yousuke, Li, Yixiao, Yamada, Shunya, Takada, Hiroaki
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container_end_page 11560
container_issue 14
container_start_page 11548
container_title IEEE internet of things journal
container_volume 8
creator Tao, Lu
Watanabe, Yousuke
Li, Yixiao
Yamada, Shunya
Takada, Hiroaki
description The Internet of Things plays an indispensable role in the development of connected vehicles, which will pave the way for road safety applications. In recent years, the concept of a cooperative collision warning system (CCWS) has been introduced and developed to enhance road safety, and it has been seen as a typical Internet-of-Vehicles application. In most CCWSs, it is vital to have a detection mechanism based on trajectory predictions where the uncertainties associated with vehicular state and motion are complex. However, most available approaches in this regard did not consider these uncertainties. Hence, this article proposes a new collision risk assessment (CRA) method where sigma trajectories that include multiple possible trajectories considering multiple aspects of vehicular motion are designed to cope with vehicular uncertainties. Our method is implemented in a novel server-based architecture, which is different from the commonly used vehicle-based controlled CCWSs. The CRA is provided as a service by a cloud server. The proposed method and architecture are validated and evaluated through extensive real-world experiments. Experimental results show that our method outperforms a referenced method in terms of CRA and achieves better robustness in tolerating communication delays and dropouts. Latencies in CRA service were analyzed, and it was found that powerful computing resources provided by cloud servers can significantly decrease computational cost, which will indirectly compensate for communication costs in the future. Based on our high-performance CRA method, the proposed architecture can be regarded as a novel option for CCWS design.
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subjects Cloud computing
Collision avoidance
Collision risk assessment (CRA) service
Computer architecture
Connected vehicles
cooperative collision warning systems (CCWSs)
dynamic map
intelligent transportation systems
Internet of Things
Internet of Vehicles
Risk assessment
Sensors
Servers
Traffic safety
Trajectories
Trajectory
Uncertainty
Vehicles
Warning systems
title Collision Risk Assessment Service for Connected Vehicles: Leveraging Vehicular State and Motion Uncertainties
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