Reinforcement Twinning for Hybrid Control of Flapping-Wing Drones
Romain Poletti, Lorenzo Schena, Lilla Koloszar, Joris Degroote, and Miguel Alfonso Mendez

TL;DR
This paper introduces a hybrid reinforcement learning approach combining model-based and model-free methods for controlling flapping-wing drones, leveraging adaptive digital twins and transfer learning to improve flight performance.
Contribution
It proposes a novel reinforcement twinning algorithm that integrates adaptive digital twins with reinforcement learning for hybrid drone control, enhancing robustness and efficiency.
Findings
Hybrid approach outperforms pure model-free methods.
Adaptive digital twin improves control accuracy.
Method effective under various initialization scenarios.
Abstract
Controlling the flight of flapping-wing drones requires versatile controllers that handle their time-varying, nonlinear, and underactuated dynamics from incomplete and noisy sensor data. Model-based methods struggle with accurate modeling, while model-free approaches falter in efficiently navigating very high-dimensional and nonlinear control objective landscapes. This article presents a novel hybrid model-free/model-based approach to flight control based on the recently proposed reinforcement twinning algorithm. The model-based (MB) approach relies on an adjoint formulation using an adaptive digital twin, continuously identified from live trajectories, while the model-free (MF) approach relies on reinforcement learning. The two agents collaborate through transfer learning, imitation learning, and experience sharing using the real environment, the digital twin and a referee. The latter…
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Taxonomy
TopicsBiomimetic flight and propulsion mechanisms
