Thanks to the support provided by the faster, more reliable, and more capable new generation of cellular networks, i.e. 5G, the C-AVOID project delivered two main frameworks for the automotive sector:
• a methodology that allows predicting collisions at urban intersections well in advance, so that human drivers and autonomous vehicles can avoid the imminent danger;
• an optimization framework that coordinates autonomous vehicles in congested road sections, so to improve safety and use efficiently the transportation network.
The high level of accuracy in detecting collisions ahead of time achieved in C-AVOID is possible thanks to vehicles’ trajectory predictions at urban intersections of unprecedented precision, even if drivers have a large set of possible maneuvers ahead. This is obtained thanks to wireless connectivity, which allows collecting of vast data from the area of interest from both vehicles and infrastructure. Trajectory predictions are then built “learning” the drivers' future decisions based on: the status of surrounding vehicles, the lane and the speed used by vehicles approaching the intersection, and the status of the road infrastructure, e.g. of the traffic lights.
Thanks to wireless connectivity, C-AVOID also proposes a new optimization framework that is able to coordinate autonomous vehicles approaching an intersection. The framework accounts for sensor measurement inaccuracies, e.g. due to imprecise GPS readings, leaving among vehicles a dynamic safe distance that ensures no collisions. The overall objective of the proposed solution is to reduce the average vehicle crossing time, effectively improving the efficiency of the road transportation networks. The formulation of the obtained optimization framework is quite general, and it was easily adapted also to 3 dimensions, i.e. to Unmanned Aerial Vehicles.
Finally, in the above-mentioned applications, C-AVOID explored different trade-offs: between solution optimality and communication/computational overhead; between running the algorithms at the vehicles, or running them in a centralized fashion within the cellular network infrastructure.
The project thus far delivered seven scientific publications, which include three prestigious journal publications to: (i) the IEEE Transactions on Intelligent Transportation Systems, (ii) the Journal of Intelligent & Robotic Systems, and (iii) the EURASIP Journal on Wireless Communications and Networking; and four conference publications to: (i) the IEEE Vehicular Technology Conference (twice); (ii) the IEEE International Intelligent Transportation Systems Conference, and (iii) the International Symposium on Modeling and Optimization in Mobile, Ad hoc, and Wireless Networks. Three more scientific publications are either under submission or close to be submitted.