%0 Computer Program %A Neustroev, Greg %A de Weerdt, Mathijs %A Verzijbergh, Remco %A Andringa, Sytze %D 2022 %T Source code and data for the experiments presented in Deep Reinforcement Learning for Active Wake Control %U https://data.4tu.nl/articles/software/Source_code_and_data_for_the_experiments_presented_in_Deep_Reinforcement_Learning_for_Active_Wake_Control/19107257/1 %R 10.4121/19107257.v1 %K reinforcement learning %K active wake control %K deep learning %X This is a simulation study to illustrate benefits of reinforcement learning (RL) for active wake control in wind farms. The repository includes a simulator (./code/wind_farm_gym), implementation of RL agents (./code/agent), and configurations for the experiments presented in the paper (./code/configs), as well as the simulation results (./data). For more detailed instructions, see README.md.
%I 4TU.ResearchData