Certified Coil Geometry Learning for Short-Range Magnetic Actuation and Spacecraft Docking Application
arXiv cs.RO / 4/24/2026
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Key Points
- The paper proposes a learning-based method to approximate an exact magnetic-field interaction model needed for precise, fast magnetic actuation in applications including spacecraft docking and formation control.
- It addresses the high computational cost of exact Biot–Savart-based modeling by replacing dipole approximations with a learned coefficient-matrix mapping from inter-satellite currents to forces and torques.
- Unlike earlier approximations, the proposed framework maintains accuracy during close-proximity operations, reducing the risk of unstable behavior and collisions.
- The method includes a certified error bound tied to the number of training samples, and it can generalize across coils of different sizes via geometric transformations without retraining.
- Effectiveness is demonstrated through both numerical simulations and experimental validation using a spacecraft docking scenario under challenging conditions.
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