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基于混合机器学习的同轴线圈设计

Design of coaxial coils using hybrid machine learning.

作者信息

Chen Jun, Wu Zeliang, Bao Guzhi, Chen L Q, Zhang Weiping

机构信息

State Key Laboratory of Precision Spectroscopy, Quantum Institute for Light and Atom, Department of Physics, East China Normal University, Shanghai 200062, People's Republic of China.

School of Physics and Astronomy, and Tsung-Dao Lee Institute, Shanghai Jiao Tong University, Shanghai 200240, People's Republic of China.

出版信息

Rev Sci Instrum. 2021 Apr 1;92(4):045103. doi: 10.1063/5.0040650.

Abstract

A coil system to generate a uniform field is urgently needed in quantum experiments. However, general coil configurations based on the analytical method have not considered practical restrictions, such as the region for coil placement due to holes in the center of the magnetic shield, which could not be directly applied in most of the quantum experiments. In this paper, we develop a coil design method for quantum experiments using hybrid machine learning. The algorithm part consists of a machine learner based on an artificial neural network and a differential evolution (DE) learner. The cooperation of both learners demonstrates its higher efficiency than a single DE learner and robustness in the coil optimization problem compared with analytical proposals. With the help of a DE learner, in numerical simulation, a machine learner can successfully design coaxial coil systems that generate fields whose relative inhomogeneity in a 25 mm-long central region is ∼10 under constraints. In addition, for experiments, a coil system with 0.069% inhomogeneity of the field, designed by a machine learner, is constructed, which is mainly limited by machining the precision of the circuit board. Benefitting from machine learning's high-dimension optimization capabilities, our coil design method is convenient and has potential for various quantum experiments.

摘要

量子实验迫切需要一种能产生均匀场的线圈系统。然而,基于解析方法的一般线圈配置未考虑实际限制,比如由于磁屏蔽中心的孔而导致的线圈放置区域问题,这使得其在大多数量子实验中无法直接应用。在本文中,我们开发了一种使用混合机器学习的量子实验线圈设计方法。该算法部分由基于人工神经网络的机器学习器和差分进化(DE)学习器组成。与解析方法相比,这两种学习器的协同在解决线圈优化问题时展现出比单一DE学习器更高的效率和更强的鲁棒性。在DE学习器的帮助下,通过数值模拟,机器学习器能够成功设计出在约束条件下,25毫米长的中心区域内场的相对不均匀性约为10的同轴线圈系统。此外,为了进行实验,构建了一个由机器学习器设计的场不均匀性为0.069%的线圈系统,其主要受电路板加工精度的限制。受益于机器学习的高维优化能力,我们的线圈设计方法简便易行,在各种量子实验中具有潜力。

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