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Optimizing airborne wind energy with reinforcement learning.

N Orzan1,2, C Leone1,3, A Mazzolini1,4

  • 1The Abdus Salam International Center for Theoretical Physics ICTP, 34151, Trieste, Italy.

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Summary
This summary is machine-generated.

Airborne wind energy uses kites for power generation. Reinforcement learning efficiently controls kites for towing vehicles, offering a simple strategy without needing complex aerodynamic models.

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Area of Science:

  • Renewable Energy Systems
  • Aerodynamics
  • Artificial Intelligence

Background:

  • Airborne wind energy (AWE) technology harnesses wind power using airborne devices like kites and gliders.
  • Dynamic control of airfoil orientation is crucial for maximizing AWE performance.
  • Turbulent aerodynamics presents significant challenges for conventional control methods.

Purpose of the Study:

  • To address the control optimization problem in airborne wind energy systems.
  • To explore the application of reinforcement learning for dynamic control of AWE devices.
  • To develop an efficient control strategy for kite-based power generation.

Main Methods:

  • Utilizing reinforcement learning (RL) for adaptive control without prior system knowledge.
  • Simulating a controlled environment to train the RL agent.
  • Developing an RL algorithm based on intuitive observations and transparent interpretation.

Main Results:

  • The reinforcement learning agent successfully learned to control a kite in a simulated environment.
  • The developed control strategy proved efficient for towing a vehicle over long distances.
  • The optimal strategy was interpretable as a simple set of maneuvering instructions.

Conclusions:

  • Reinforcement learning offers a viable solution for optimizing control in airborne wind energy systems.
  • This approach bypasses the need for complex analytical models of turbulent aerodynamics.
  • The RL-based strategy provides an efficient and understandable method for AWE device control.