Published March 10, 2025 | Version 1.0.0
Dataset Open

Dataset supporting publication: "Remote-sensing based control of 3D magnetic fields using machine learning for in-operando applications".

  • 1. ROR icon TU Wien
  • 1. TU Wien
  • 2. ROR icon French National Centre for Scientific Research
  • 3. ROR icon Loughborough University
  • 4. ROR icon Danube University Krems
  • 5. ROR icon University of Oviedo

Description

About the dataset

This dataset supports a study where precise 3D magnetic field control is achieved using a hexapole electromagnet system combined with a multi-layer perceptron neural network. The work demonstrates how the neural network enables to calibrate non-linear field responses when direct measurements at the position of interest are not feasible.

The dataset includes code and processed data for reproducing the figures from the associated paper, and is intended to support further research in in-operando experiments that require high-precision field control. For more information about the code and data, please refer to the readme.txt file.

The published paper can be found here: https://doi.org/10.48550/arXiv.2411.10374

Requirements

The code was executed with Python 3.12, the dependencies are listed in requirements.txt.

Licenses

The data is licensed under CC-BY, the code is licensed under MIT.

Files

dataset.zip

Files (13.6 MiB)

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md5:90a91e58a5ee91d826038e01b4f35d3e
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Additional details

Related works

Is supplement to
Journal Article: arXiv:2411.10374v1 (arXiv)

Funding

3DNANOMAG 101001290
European Research Council