Connectivity Enhanced Safe Neural Network Planner for Lane Changing in Mixed Traffic

02/06/2023
by   Xiangguo Liu, et al.
0

Connectivity technology has shown great potentials in improving the safety and efficiency of transportation systems by providing information beyond the perception and prediction capabilities of individual vehicles. However, it is expected that human-driven and autonomous vehicles, and connected and non-connected vehicles need to share the transportation network during the transition period to fully connected and automated transportation systems. Such mixed traffic scenarios significantly increase the complexity in analyzing system behavior and quantifying uncertainty for highly interactive scenarios, e.g., lane changing. It is even harder to ensure system safety when neural network based planners are leveraged to further improve efficiency. In this work, we propose a connectivity-enhanced neural network based lane changing planner. By cooperating with surrounding connected vehicles in dynamic environment, our proposed planner will adapt its planned trajectory according to the analysis of a safe evasion trajectory. We demonstrate the strength of our planner design in improving efficiency and ensuring safety in various mixed traffic scenarios with extensive simulations. We also analyze the system robustness when the communication or coordination is not perfect.

READ FULL TEXT
research
01/22/2022

Neural Network based Interactive Lane Changing Planner in Dense Traffic with Safety Guarantee

Neural network based planners have shown great promises in improving per...
research
07/07/2021

Can Connected Autonomous Vehicles really improve mixed traffic efficiency in realistic scenarios?

Connected autonomous vehicles (CAVs) can supplement the information from...
research
03/04/2023

Interactive Trajectory Planner for Mandatory Lane Changing in Dense Non-Cooperative Traffic

When the traffic stream is extremely congested and surrounding vehicles ...
research
01/23/2020

Trajectory Planning for Connected and Automated Vehicles: Cruising, Lane Changing, and Platooning

Autonomy and connectivity are considered among the most promising techno...
research
01/22/2022

Physics-Aware Safety-Assured Design of Hierarchical Neural Network based Planner

Neural networks have shown great promises in planning, control, and gene...
research
09/30/2020

Facilitating Connected Autonomous Vehicle Operations Using Space-weighted Information Fusion and Deep Reinforcement Learning Based Control

The connectivity aspect of connected autonomous vehicles (CAV) is benefi...
research
06/13/2021

Experimental Analysis of Trajectory Control Using Computer Vision and Artificial Intelligence for Autonomous Vehicles

Perception of the lane boundaries is crucial for the tasks related to au...

Please sign up or login with your details

Forgot password? Click here to reset