A Deep Inverse-Mapping Model for a Flapping Robotic Wing
Abstract
In systems control, the dynamics of a system are governed by modulating its inputs to achieve a desired outcome. For example, to control the thrust of a quad-copter propeller the controller modulates its rotation rate, relying on a straightforward mapping between the input rotation rate and the resulting thrust. This mapping can be inverted to determine the rotation rate needed to generate a desired thrust. However, in complex systems, such as flapping-wing robots where intricate fluid motions are involved, mapping inputs (wing kinematics) to outcomes (aerodynamic forces) is nontrivial and inverting this mapping for real-time control is computationally impractical. Here, we report a machine-learning solution for the inverse mapping of a flapping-wing system based on data from an experimental system we have developed. Our model learns the input wing motion required to generate a desired aerodynamic force outcome. We used a sequence-to-sequence model tailored for time-series data and augmented it with a novel adaptive-spectrum layer that implements representation learning in the frequency domain. To train our model, we developed a flapping wing system that simultaneously measures the wing's aerodynamic force and its 3D motion using high-speed cameras. We demonstrate the performance of our system on an additional open-source dataset of a flapping wing in a different flow regime. Results show superior performance compared with more complex state-of-the-art transformer-based models, with 11\% improvement on the test datasets median loss. Moreover, our model shows superior inference time, making it practical for onboard robotic control. Our open-source data and framework may improve modeling and real-time control of systems governed by complex dynamics, from biomimetic robots to biomedical devices.
Cite
Text
Sharvit et al. "A Deep Inverse-Mapping Model for a Flapping Robotic Wing." International Conference on Learning Representations, 2025.Markdown
[Sharvit et al. "A Deep Inverse-Mapping Model for a Flapping Robotic Wing." International Conference on Learning Representations, 2025.](https://mlanthology.org/iclr/2025/sharvit2025iclr-deep/)BibTeX
@inproceedings{sharvit2025iclr-deep,
title = {{A Deep Inverse-Mapping Model for a Flapping Robotic Wing}},
author = {Sharvit, Hadar and Karl, Raz and Beatus, Tsevi},
booktitle = {International Conference on Learning Representations},
year = {2025},
url = {https://mlanthology.org/iclr/2025/sharvit2025iclr-deep/}
}