A Lane Merge Coordination Model for a V2X Scenario
- URL: http://arxiv.org/abs/2010.10426v1
- Date: Tue, 20 Oct 2020 16:36:06 GMT
- Title: A Lane Merge Coordination Model for a V2X Scenario
- Authors: Luis Sequeira, Adam Szefer, Jamie Slome and Toktam Mahmoodi
- Abstract summary: We present an application for lane merge coordination based on a centralised system, for connected cars.
The application comprises of a Traffic Orchestrator as the main component.
We apply machine learning and data analysis to predict whether a connected vehicle can successfully complete the cooperative manoeuvre of a lane merge.
- Score: 1.2387676601792896
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Cooperative driving using connectivity services has been a promising avenue
for autonomous vehicles, with the low latency and further reliability support
provided by 5th Generation Mobile Network (5G). In this paper, we present an
application for lane merge coordination based on a centralised system, for
connected cars. This application delivers trajectory recommendations to the
connected vehicles on the road. The application comprises of a Traffic
Orchestrator as the main component. We apply machine learning and data analysis
to predict whether a connected vehicle can successfully complete the
cooperative manoeuvre of a lane merge. Furthermore, the acceleration and
heading parameters that are necessary for the completion of a safe merge are
elaborated. The results demonstrate the performance of several existing
algorithms and how their main parameters were selected to avoid over-fitting.
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