Online Adaptive Platoon Control for Connected and Automated Vehicles Via Physical Enhanced Residual Learning

25 Pages Posted: 31 Dec 2024

See all articles by Peng Zhang

Peng Zhang

University of Wisconsin-Madison

Heye Huang

University of Wisconsin-Madison

Hang Zhou

University of Wisconsin-Madison

Haotian Shi

University of Wisconsin-Madison

Keke Long

University of Wisconsin-Madison

Xiaopeng Li

University of Wisconsin-Madison

Abstract

This paper introduces a physically enhanced residual learning (PERL) framework for connected and automated vehicle (CAV) platoon control, addressing the dynamics and unpredictability inherent to platoon systems. The framework first develops a physics-based controller to model vehicle dynamics, using driving speed as input to optimize safety and efficiency. Then the residual controller, based on neural network (NN) learning, enriches the prior knowledge of the physical model and corrects residuals caused by vehicle dynamics. By integrating the physical model with data-driven online learning, the PERL framework retains the interpretability and transparency of physics-based models and enhances the adaptability and precision of data-driven learning, achieving significant improvements in computational efficiency and control accuracy in dynamic scenarios. Simulation and robot car platform tests demonstrate that PERL significantly outperforms pure physical and learning models, reducing average cumulative absolute position and speed errors by up to 58.5% and 40.1% (physical model) and 58.4% and 47.7% (NN model). The reduced-scale robot car platform tests further validate the adaptive PERL framework’s superior accuracy and rapid convergence under dynamic disturbances, reducing position and speed cumulative errors by 72.73% and 99.05% (physical model) and 64.71% and 72.58% (NN model). PERL enhances platoon control performance through online parameter updates when external disturbances are detected. Results demonstrate the advanced framework’s exceptional accuracy and rapid convergence capabilities, proving its effectiveness in maintaining platoon stability under diverse conditions.

Keywords: Physics enhanced residual learning, Connected and automated vehicles, Centralized platoon control, Online adaptive control

Suggested Citation

Zhang, Peng and Huang, Heye and Zhou, Hang and Shi, Haotian and Long, Keke and Li, Xiaopeng, Online Adaptive Platoon Control for Connected and Automated Vehicles Via Physical Enhanced Residual Learning. Available at SSRN: https://ssrn.com/abstract=5077750 or http://dx.doi.org/10.2139/ssrn.5077750

Peng Zhang

University of Wisconsin-Madison ( email )

United States

Heye Huang (Contact Author)

University of Wisconsin-Madison ( email )

Hang Zhou

University of Wisconsin-Madison ( email )

716 Langdon Street
Madison, WI 53706-1481
United States

Haotian Shi

University of Wisconsin-Madison ( email )

Keke Long

University of Wisconsin-Madison ( email )

Xiaopeng Li

University of Wisconsin-Madison ( email )

United States

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