Adaptive Truck Platooning with Drones: A Decentralized Approach for Highway Monitoring
Fecha
2023-12-06Autor
Estado
info:eu-repo/semantics/publishedVersionMetadatos
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. The increasing demand for efficient and safe transportation systems has led to the development of autonomous vehicles and vehicle platooning. Truck platooning, in particular, offers
numerous benefits, such as reduced fuel consumption, enhanced traffic flow, and increased safety.
In this paper, we present a drone-based decentralized framework for truck platooning in highway
monitoring scenarios. Our approach employs multiple drones, which communicate with the trucks
and make real-time decisions on whether to form a platoon or not, leveraging Model Predictive
Control (MPC) and Unscented Kalman Filter (UKF) for drone formation control. The proposed framework integrates a simple truck model in the existing drone-based simulation, addressing the truck
dynamics and constraints for practical applicability. Simulation results demonstrate the effectiveness
of our approach in maintaining the desired platoon formations while ensuring collision avoidance
and adhering to the vehicle constraints. This innovative drone-based truck platooning system has the
potential to significantly improve highway monitoring efficiency, traffic management, and safety. Our
drone-based truck platooning system is primarily designed for implementation in highway monitoring and management scenarios, where its enhanced communication and real-time decision-making
capabilities can significantly contribute to traffic efficiency and safety. Future work may focus on
field trials to validate the system in real-world conditions and further refine the algorithms based on
practical feedback and evolving vehicular technologies.
Adaptive Truck Platooning with Drones: A Decentralized Approach for Highway Monitoring
Tipo de Actividad
Artículos en revistasISSN
2079-9292Palabras Clave
.truck platooning; MPC; UKF; drones; V2V communication; connected vehicles