Lane-Change in Dense Traffic With Model Predictive Control and Neural Networks

Abstract: 

This article presents an online smooth-path lane-change control framework. We focus on dense traffic where intervehicle space gaps are narrow, and cooperation with surrounding drivers is essential to achieve the lane-change maneuver. We propose a two-stage control framework that harmonizes model predictive control (MPC) with generative adversarial networks (GANs) by utilizing driving intentions to generate smooth lane-change maneuvers. To improve performance in practice, the system is augmented with an adaptive safety boundary and a Kalman filter to mitigate sensor noise. Simulation studies are investigated at different levels of traffic density and cooperativeness of other drivers. The simulation results support the effectiveness, driving comfort, and safety of the proposed method.

Author: 
Bae, Sangjae
Isele, David
Nakhaei, Alireza
Xu, Peng
Añon, Alexandre Miranda
Choi, Chiho
Fujimura, Kikuo
Moura, Scott
Publication date: 
March 1, 2023
Publication type: 
Journal Article
Citation: 
Bae, S., Isele, D., Nakhaei, A., Xu, P., Añon, A. M., Choi, C., Fujimura, K., & Moura, S. (2023). Lane-Change in Dense Traffic With Model Predictive Control and Neural Networks. IEEE Transactions on Control Systems Technology, 31(2), 646–659. https://doi.org/10.1109/TCST.2022.3193923