A Surrogate model for High Temperature Superconducting Magnets to Predict Current Distribution with Neural Network
- URL: http://arxiv.org/abs/2509.06067v1
- Date: Sun, 07 Sep 2025 14:13:41 GMT
- Title: A Surrogate model for High Temperature Superconducting Magnets to Predict Current Distribution with Neural Network
- Authors: Mianjun Xiao, Peng Song, Yulong Liu, Cedric Korte, Ziyang Xu, Jiale Gao, Jiaqi Lu, Haoyang Nie, Qiantong Deng, Timing Qu,
- Abstract summary: A surrogate model based on a fully connected residual neural network (FCRN) is developed to predict the space-time current density distribution in REBCO solenoids.<n>The model can reliably predict magnetization losses for up to 50% beyond the training range, with maximum errors below 10%.
- Score: 5.2783784579815185
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Finite element method (FEM) is widely used in high-temperature superconducting (HTS) magnets, but its computational cost increases with magnet size and becomes time-consuming for meter-scale magnets, especially when multi-physics couplings are considered, which limits the fast design of large-scale REBCO magnet systems. In this work, a surrogate model based on a fully connected residual neural network (FCRN) is developed to predict the space-time current density distribution in REBCO solenoids. Training datasets were generated from FEM simulations with varying numbers of turns and pancakes. The results demonstrate that, for deeper networks, the FCRN architecture achieves better convergence than conventional fully connected network (FCN), with the configuration of 12 residual blocks and 256 neurons per layer providing the most favorable balance between training accuracy and generalization capability. Extrapolation studies show that the model can reliably predict magnetization losses for up to 50% beyond the training range, with maximum errors below 10%. The surrogate model achieves predictions several orders of magnitude faster than FEM and still remains advantageous when training costs are included. These results indicate that the proposed FCRN-based surrogate model provides both accuracy and efficiency, offering a promising tool for the rapid analysis of large-scale HTS magnets.
Related papers
- Physics Enhanced Deep Surrogates for the Phonon Boltzmann Transport Equation [0.0]
Physics-Enhanced Deep Surrogate (PEDS)<n>Network learns geometry-dependent corrections and a mixing coefficient that interpolates between macroscopic and nano-scale behavior.<n>PEDS reduces training-data requirements by up to 70% compared with purely data-driven baselines.
arXiv Detail & Related papers (2025-11-25T16:25:24Z) - DNN-Based Precoding in RIS-Aided mmWave MIMO Systems With Practical Phase Shift [56.04579258267126]
This paper investigates maximizing the throughput of millimeter wave (mmWave) multiple-input multiple-output (MIMO) systems with obstructed direct communication paths.<n>A reconfigurable intelligent surface (RIS) is employed to enhance transmissions, considering mmWave characteristics related to line-of-sight (LoS) and multipath effects.<n>Deep neural network (DNN) is developed to facilitate faster codeword selection.
arXiv Detail & Related papers (2025-07-03T17:35:06Z) - Resolving Turbulent Magnetohydrodynamics: A Hybrid Operator-Diffusion Framework [0.2999888908665658]
Hybrid machine learning framework is trained on a comprehensive ensemble of high-fidelity simulations with $mathrmRe in 100, 250, 500, 750, 1000, 3000, 10000$.<n>At extreme turbulence levels, it remains the first surrogate capable of recovering the high-wavenumber evolution of the magnetic field.
arXiv Detail & Related papers (2025-07-02T19:33:57Z) - A Surrogate Model for the Forward Design of Multi-layered Metasurface-based Radar Absorbing Structures [3.328784252410173]
We propose a surrogate model that significantly accelerates the prediction of electromagnetic (EM) responses of multi-layered metasurface-based RAS.<n>The proposed model achieved a cosine similarity of 99.9% and a mean square error of 0.001 within 1000 epochs of training.
arXiv Detail & Related papers (2025-05-14T09:54:00Z) - Hybrid Quantum Recurrent Neural Network For Remaining Useful Life Prediction [67.410870290301]
We introduce a Hybrid Quantum Recurrent Neural Network framework, combining Quantum Long Short-Term Memory layers with classical dense layers for Remaining Useful Life forecasting.<n> Experimental results demonstrate that, despite having fewer trainable parameters, the Hybrid Quantum Recurrent Neural Network achieves up to a 5% improvement over a Recurrent Neural Network.
arXiv Detail & Related papers (2025-04-29T14:41:41Z) - Accurate Ab-initio Neural-network Solutions to Large-Scale Electronic Structure Problems [52.19558333652367]
We present finite-range embeddings (FiRE) for accurate large-scale ab-initio electronic structure calculations.<n>FiRE reduces the complexity of neural-network variational Monte Carlo (NN-VMC) by $sim ntextel$, the number of electrons.<n>We validate our method's accuracy on various challenging systems, including biochemical compounds and organometallic compounds.
arXiv Detail & Related papers (2025-04-08T14:28:54Z) - Resource-Efficient Beam Prediction in mmWave Communications with Multimodal Realistic Simulation Framework [57.994965436344195]
Beamforming is a key technology in millimeter-wave (mmWave) communications that improves signal transmission by optimizing directionality and intensity.<n> multimodal sensing-aided beam prediction has gained significant attention, using various sensing data to predict user locations or network conditions.<n>Despite its promising potential, the adoption of multimodal sensing-aided beam prediction is hindered by high computational complexity, high costs, and limited datasets.
arXiv Detail & Related papers (2025-04-07T15:38:25Z) - EFKAN: A KAN-Integrated Neural Operator For Efficient Magnetotelluric Forward Modeling [5.564398767957128]
We propose a novel neural operator (FNO) with Kolmogorov-Arnold network (EFKAN)<n>Within the EFKAN framework, the FNO serves as the branch network to calculate the apparent resistivity and phase from the resistivity model in the frequency domain.<n>The proposed method achieves higher accuracy in obtaining apparent resistivity and phase compared to the NO equipped with inversions at the desired frequencies and locations.
arXiv Detail & Related papers (2025-02-04T10:21:14Z) - NeuralMAG: Fast and Generalizable Micromagnetic Simulation with Deep Neural Nets [9.674100498903844]
We introduce NeuralMAG, a deep learning approach to micromagnetic simulation.
Our approach follows the LLG iterative framework but accelerates demagnetizing field computation through the employment of a U-shaped neural network (Unet)
Unlike existing neural methods, NeuralMAG concentrates on the core computation rather than an end-to-end approximation for a specific task, making it inherently generalizable.
arXiv Detail & Related papers (2024-10-19T05:25:08Z) - Scalable Mechanistic Neural Networks for Differential Equations and Machine Learning [52.28945097811129]
We propose an enhanced neural network framework designed for scientific machine learning applications involving long temporal sequences.<n>We reduce the computational time and space complexities from cubic and quadratic with respect to the sequence length, respectively, to linear.<n>Extensive experiments demonstrate that S-MNN matches the original MNN in precision while substantially reducing computational resources.
arXiv Detail & Related papers (2024-10-08T14:27:28Z) - Speed Limits for Deep Learning [67.69149326107103]
Recent advancement in thermodynamics allows bounding the speed at which one can go from the initial weight distribution to the final distribution of the fully trained network.
We provide analytical expressions for these speed limits for linear and linearizable neural networks.
Remarkably, given some plausible scaling assumptions on the NTK spectra and spectral decomposition of the labels -- learning is optimal in a scaling sense.
arXiv Detail & Related papers (2023-07-27T06:59:46Z) - A Meta-Learning Approach to the Optimal Power Flow Problem Under
Topology Reconfigurations [69.73803123972297]
We propose a DNN-based OPF predictor that is trained using a meta-learning (MTL) approach.
The developed OPF-predictor is validated through simulations using benchmark IEEE bus systems.
arXiv Detail & Related papers (2020-12-21T17:39:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.