Source code for the publication: Reinforcement Learning with Model Predictive Control for Highway Ramp Metering
doi: 10.4121/d5074606-82f4-40e9-93cd-cf27f22e501d
Source code for the implementation and simulation of a learning-based ramp metering control strategy with the goal of improving highway traffic flow management, where the proposed solution embeds model-based Reinforcement Learning methodologies in a Model Predictive Control framework, thus enabling the adaptation of the controller in order to improve automatically its performance based solely on observed closed-loop data. Simulations on a highway network benchmark demonstrate significant reduction in congestion and improved constraint satisfaction compared to an imprecise, non-learning initial controller, showcasing the efficacy of the proposed methodology.
- 2023-12-12 first online
- 2024-10-23 published, posted
- CLariNet (grant code 101018826) [more info...] European Research Council
DATA
To access the source code, use the following command:
git clone https://data.4tu.nl/v3/datasets/add8f7ac-02b4-41cc-9015-5d4ebc92d055.git "mpcrl-for-ramp-metering "