cs.AI updates on arXiv.org 09月03日
神经控制革命:6D磁悬浮新突破
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本文提出首个6D磁悬浮神经控制器,通过神经网络直接将传感器数据和参考姿态映射到线圈电流命令,实现高效、鲁棒的控制系统,为复杂物理系统中的学习型神经网络控制提供实际可行性。

arXiv:2509.01388v1 Announce Type: cross Abstract: Magnetic levitation is poised to revolutionize industrial automation by integrating flexible in-machine product transport and seamless manipulation. It is expected to become the standard drive for automated manufacturing. However, controlling such systems is inherently challenging due to their complex, unstable dynamics. Traditional control approaches, which rely on hand-crafted control engineering, typically yield robust but conservative solutions, with their performance closely tied to the expertise of the engineering team. In contrast, neural control learning presents a promising alternative. This paper presents the first neural controller for 6D magnetic levitation. Trained end-to-end on interaction data from a proprietary controller, it directly maps raw sensor data and 6D reference poses to coil current commands. The neural controller can effectively generalize to previously unseen situations while maintaining accurate and robust control. These results underscore the practical feasibility of learning-based neural control in complex physical systems and suggest a future where such a paradigm could enhance or even substitute traditional engineering approaches in demanding real-world applications. The trained neural controller, source code, and demonstration videos are publicly available at https://sites.google.com/view/neural-maglev.

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神经控制 磁悬浮 自动化制造 神经网络 控制系统
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