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Design of coaxial coils using hybrid machine learning

  • Jun Chen
  • , Zeliang Wu
  • , Guzhi Bao
  • , L. Q. Chen*
  • , Weiping Zhang
  • *Corresponding author for this work
  • East China Normal University
  • Shanghai Jiao Tong University
  • Shanxi University
  • Shanghai Research Center for Quantum Sciences

Research output: Contribution to journalArticlepeer-review

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 ∼10-6 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.

Original languageEnglish
Article number045103
JournalReview of Scientific Instruments
Volume92
Issue number4
DOIs
StatePublished - 1 Apr 2021

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