Skip to main content

Write a PREreview

A Mean Field Game Integrated MPC-QP Framework for Collision-Free Multi-Vehicle Control

Posted
Server
Preprints.org
DOI
10.20944/preprints202504.1889.v1

In recent years, rapid progress in autonomous driving has been achieved through advances in sensing, control, and learning. However, as the complexity of traffic scenarios increases, ensuring safe interaction among vehicles remains a formidable challenge. Recent works combining artificial potential fields (APF) with game-theoretic methods have shown promise in modeling vehicle interactions and avoiding collisions. Yet, these approaches often suffer from overly conservative decisions or fail to capture the nonlinear dynamics of real-world driving. To address these limitations, we propose a novel framework that integrates mean field game (MFG) theory with model predictive control (MPC) and quadratic programming (QP). Our approach leverages the aggregate behavior of surrounding vehicles to predict interactive effects and embeds these predictions into an MPC-QP scheme for real-time control. Simulation results in complex driving scenarios demonstrate that our method achieves multiple autonomous driving tasks while ensuring collision-free operation. Furthermore, the proposed framework outperforms popular game-based benchmarks in terms of achieving driving tasks and producing fewer collisions.

You can write a PREreview of A Mean Field Game Integrated MPC-QP Framework for Collision-Free Multi-Vehicle Control. A PREreview is a review of a preprint and can vary from a few sentences to a lengthy report, similar to a journal-organized peer-review report.

Before you start

We will ask you to log in with your ORCID iD. If you don’t have an iD, you can create one.

What is an ORCID iD?

An ORCID iD is a unique identifier that distinguishes you from everyone with the same or similar name.

Start now