This paper presents a learning-based framework for approximating an exact magnetic-field interaction model, supported by both numerical and experimental validation. High-fidelity magnetic-field interaction modeling is essential for achieving exceptional accuracy and responsiveness across a wide range of fields, including transportation, energy systems, medicine, biomedical robotics, and aerospace robotics. In aerospace engineering, magnetic actuation has been investigated as a fuel-free solution for multi-satellite attitude and formation control. Although the exact magnetic field can be computed from the Biot-Savart law, the associated computational cost is prohibitive, and prior studies have therefore relied on dipole approximations to improve efficiency. However, these approximations lose accuracy during proximity operations, leading to unstable behavior and even collisions. To address this limitation, we develop a learning-based approximation framework that faithfully reproduces the exact field while dramatically reducing computational cost. The proposed method additionally provides a certified error bound, derived from the number of training samples, ensuring reliable prediction accuracy. The learned model can also accommodate interactions between coils of different sizes through appropriate geometric transformations, without retraining. To verify the effectiveness of the proposed framework under challenging conditions, a spacecraft docking scenario is examined through both numerical simulations and experimental validation.
翻译:本文提出了一种基于学习的框架,用于近似精确的磁场相互作用模型,并得到数值与实验验证的支持。高保真磁场相互作用建模对于在交通、能源系统、医学、生物医学机器人及航空航天机器人等广泛领域中实现卓越精度与响应性至关重要。在航空航天工程中,磁驱动已被研究为多卫星姿态与编队控制的无燃料解决方案。尽管精确磁场可通过毕奥-萨伐尔定律计算,但其计算成本过高,因此先前研究多依赖偶极子近似以提高效率。然而,这些近似在近距离操作中会丧失精度,导致不稳定行为甚至碰撞。为解决这一局限,我们开发了一种基于学习的近似框架,在显著降低计算成本的同时忠实复现精确磁场。该方法还提供了基于训练样本数推导的认证误差界,确保可靠的预测精度。学习模型还可通过适当的几何变换适应不同尺寸线圈间的相互作用,无需重新训练。为验证所提框架在挑战性条件下的有效性,通过数值仿真与实验验证对航天器对接场景进行了检验。