Open House Now — Property Listing

Learning Predictive Control with Deep Koopman Operators for Autonomous Vehicle Motion Planning

2026-06-06 · arXiv: 2606.08136

One-line summary

A robotics research paper on Learning Predictive Control with Deep Koopman Operators for Autonomous Vehicle Motion Planning.

Property details

Additional property details will be updated shortly.

Property description

Model Predictive Control (MPC) is widely used for autonomous-vehicle (AV) motion planning, but its real-time applicability is often limited by the need for accurate models and online solution of nonlinear, nonconvex optimization problems in dynamic road environments. Actor-critic reinforcement learning offers a promising alternative for online policy generation, yet its policy-learning process often lacks explicit control-theoretic structure. This article proposes a learning predictive control (LPC) framework with deep Koopman operators for efficient real-time motion planning under nonconvex constraints. To address nonlinear and uncertain vehicle dynamics, a deep-Koopman-based predictor is used to lift the system into an interpretable linear observable space in a data-driven manner. Unlike traditional MPC, which computes open-loop control sequences, the proposed LPC framework yields a closed-loop state-feedback policy within each prediction interval through receding-horizon actor-critic learning. To ensure safety under nonconvex environmental constraints, LPC constructs convex local surrogate representations of obstacles and defines corresponding potential-field functions. These functions and their gradients are directly embedded into the actor-critic structure, enabling efficient, safety-aware policy learning. Extensive simulations and real-world experiments on the HongQi-EHS3 platform demonstrate favorable performance in diverse obstacle-avoidance scenarios in terms of safety, computational efficiency, and driving comfort, compared with benchmark methods such as CBF-MPC and LMPCC.

Links and sources

Interested in this property?

Open House Now can help you schedule a visit, connect with the listing agent, and find similar homes for sale in this neighborhood.

Contact us

Comments

No comments yet. Be the first to share your thoughts on this listing.
Login or register to leave a comment