Vehicle Dynamic
Vehicle dynamics research focuses on accurately modeling and predicting a vehicle's behavior, primarily to enhance safety and performance in autonomous driving systems. Current research emphasizes hybrid approaches combining physics-based models with data-driven techniques like neural networks (including Physics-Informed Neural Networks and Transformers), Gaussian Processes, and meta-learning algorithms, often incorporating Kalman filtering for noise management. These advancements aim to improve the accuracy and robustness of vehicle models, particularly under challenging conditions like high speeds and varied terrains, leading to safer and more efficient autonomous vehicles and improved traffic simulation.
Papers
DEMO: A Dynamics-Enhanced Learning Model for Multi-Horizon Trajectory Prediction in Autonomous Vehicles
Chengyue Wang, Haicheng Liao, Kaiqun Zhu, Guohui Zhang, Zhenning Li
Online Adaptive Platoon Control for Connected and Automated Vehicles via Physics Enhanced Residual Learning
Peng Zhang, Heye Huang, Hang Zhou, Haotian Shi, Keke Long, Xiaopeng Li