SYLGROJul 16, 2025

Deep Bilinear Koopman Model for Real-Time Vehicle Control in Frenet Frame

arXiv:2507.12578v14 citationsh-index: 11IEEE Access
Originality Incremental advance
AI Analysis

This addresses real-time control for autonomous vehicles, though it appears incremental as it builds on existing Koopman operator theory with neural network enhancements.

The paper tackles the challenge of modeling and controlling autonomous vehicles by developing a deep Koopman approach that learns a bilinear model in the Frenet frame, achieving significant reductions in tracking error in hardware-in-the-loop experiments.

Accurate modeling and control of autonomous vehicles remain a fundamental challenge due to the nonlinear and coupled nature of vehicle dynamics. While Koopman operator theory offers a framework for deploying powerful linear control techniques, learning a finite-dimensional invariant subspace for high-fidelity modeling continues to be an open problem. This paper presents a deep Koopman approach for modeling and control of vehicle dynamics within the curvilinear Frenet frame. The proposed framework uses a deep neural network architecture to simultaneously learn the Koopman operator and its associated invariant subspace from the data. Input-state bilinear interactions are captured by the algorithm while preserving convexity, which makes it suitable for real-time model predictive control (MPC) application. A multi-step prediction loss is utilized during training to ensure long-horizon prediction capability. To further enhance real-time trajectory tracking performance, the model is integrated with a cumulative error regulator (CER) module, which compensates for model mismatch by mitigating accumulated prediction errors. Closed-loop performance is evaluated through hardware-in-the-loop (HIL) experiments using a CarSim RT model as the target plant, with real-time validation conducted on a dSPACE SCALEXIO system. The proposed controller achieved significant reductions in tracking error relative to baseline controllers, confirming its suitability for real-time implementation in embedded autonomous vehicle systems.

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