Modeling of Magnetization Processes of 3-D-Printed Fe–Si Components by Means of an Artificial Neural Network Implemented in a Finite-Element Scheme

IF 4.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Open Journal of the Industrial Electronics Society Pub Date : 2025-10-13 DOI:10.1109/OJIES.2025.3620857
Marco Stella;Antonio Faba;Vittorio Bertolini;Francesco Riganti-Fulginei;Lorenzo Sabino;Hans Tiismus;Ants Kallaste;Ermanno Cardelli
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Abstract

Presently, iron–silicon (Fe–Si) alloys are considered the optimal materials for the fabrication of magnetic cores for electric motors. Additive manufacturing (AM) facilitates the fabrication of Fe–Si alloys with elevated silicon concentrations, highly advantageous to limit the electric conductivity and maximize the magnetic permeability. Given the novelty of the approach, there is a paucity of research on hysteresis modeling and simulations of components fabricated by AM. In this article, the focus is on a Fe–Si 3.7% wt Si fabricated by AM. The hysteresis has been modeled by means of an artificial neural network (ANN) trained on the quasi-static (1 Hz) hysteresis loops measured using the volt-amperometric experimental setup on the bulk material, a full-section toroid. The trained ANN is subsequently implemented in a finite-element method (FEM) software to simulate the hysteresis on a material sample with air gaps and at higher frequencies never seen in the training phase. This work demonstrates, for the first time, the robust predictive capability of an ANN–FEM framework. A key contribution is the validation of the model under purely predictive conditions, using a geometry and frequency range entirely unseen during training. The simulated results have been compared with measurements and with results obtained with the classical Jiles–Atherton (JA) model. The correlation between the ANN results and the experimental data is substantial, consistent with the JA results, and in certain instances, superior.
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三维打印铁硅元件磁化过程的有限元人工神经网络建模
目前,铁硅(Fe-Si)合金被认为是制造电机磁芯的最佳材料。增材制造(AM)促进了高硅浓度Fe-Si合金的制造,对限制电导率和最大化磁导率非常有利。由于该方法的新颖性,对增材制造部件的迟滞建模和仿真研究较少。在本文中,重点是通过AM制造的Fe-Si 3.7% wt Si。利用伏安实验装置在块状材料(全截面环面)上测量的准静态(1hz)磁滞回线训练了人工神经网络(ANN),建立了磁滞回线模型。训练后的人工神经网络随后在有限元方法(FEM)软件中实现,以模拟具有气隙的材料样品上的滞回,并且在训练阶段从未见过更高的频率。这项工作首次证明了ANN-FEM框架的鲁棒预测能力。一个关键的贡献是在纯预测条件下验证模型,使用在训练中完全看不见的几何形状和频率范围。将模拟结果与测量结果以及经典Jiles-Atherton (JA)模型的结果进行了比较。人工神经网络结果与实验数据之间的相关性是实质性的,与JA结果一致,在某些情况下,甚至更好。
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来源期刊
IEEE Open Journal of the Industrial Electronics Society
IEEE Open Journal of the Industrial Electronics Society ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
10.80
自引率
2.40%
发文量
33
审稿时长
12 weeks
期刊介绍: The IEEE Open Journal of the Industrial Electronics Society is dedicated to advancing information-intensive, knowledge-based automation, and digitalization, aiming to enhance various industrial and infrastructural ecosystems including energy, mobility, health, and home/building infrastructure. Encompassing a range of techniques leveraging data and information acquisition, analysis, manipulation, and distribution, the journal strives to achieve greater flexibility, efficiency, effectiveness, reliability, and security within digitalized and networked environments. Our scope provides a platform for discourse and dissemination of the latest developments in numerous research and innovation areas. These include electrical components and systems, smart grids, industrial cyber-physical systems, motion control, robotics and mechatronics, sensors and actuators, factory and building communication and automation, industrial digitalization, flexible and reconfigurable manufacturing, assistant systems, industrial applications of artificial intelligence and data science, as well as the implementation of machine learning, artificial neural networks, and fuzzy logic. Additionally, we explore human factors in digitalized and networked ecosystems. Join us in exploring and shaping the future of industrial electronics and digitalization.
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