Avirup Das, Rishabh Dev Yadav, Sihao Sun, Mingfei Sun, Samuel Kaski, Wei Pan
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DroneDiffusion: Robust Quadrotor Dynamics Learning with Diffusion Models
An inherent fragility of quadrotor systems stems from model inaccuracies and
external disturbances. These factors hinder performance and compromise the
stability of the system, making precise control challenging. Existing
model-based approaches either make deterministic assumptions, utilize
Gaussian-based representations of uncertainty, or rely on nominal models, all
of which often fall short in capturing the complex, multimodal nature of
real-world dynamics. This work introduces DroneDiffusion, a novel framework
that leverages conditional diffusion models to learn quadrotor dynamics,
formulated as a sequence generation task. DroneDiffusion achieves superior
generalization to unseen, complex scenarios by capturing the temporal nature of
uncertainties and mitigating error propagation. We integrate the learned
dynamics with an adaptive controller for trajectory tracking with stability
guarantees. Extensive experiments in both simulation and real-world flights
demonstrate the robustness of the framework across a range of scenarios,
including unfamiliar flight paths and varying payloads, velocities, and wind
disturbances.