利用深度学习评估磁场

IF 1 4区 工程技术 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Mohammad Mushfiqur Rahman, Arbaaz Khan, D. Lowther, D. Giannacopoulos
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引用次数: 0

摘要

本文的目的是利用深度学习(DL)开发替代模型,以促进EM分析软件的应用。在目前的现状下,电气系统可以在越来越多的产品中找到,这些产品是每个人日常生活的一部分。随着技术的进步,汽车、通信和医疗设备等行业已经被新的电气和电子系统所颠覆。随着时间的推移,电磁(EM)分析软件的使用越来越多,这种系统的创新和发展越来越复杂。这种软件使工程师能够虚拟地设计、分析和优化EM系统,而无需构建物理原型,从而有助于缩短开发周期,从而降低成本。设计/方法/方法模拟电磁问题的工业标准是使用有限差分法或有限元法(FEM)。使用这种方法优化设计过程需要大量的计算资源和时间。随着人工智能的出现,以及用于自动区分的专用工具,深度学习的使用在计算上变得更加高效和便宜。机器学习的这些进步开创了EM模拟的新时代,工程师可以更快地计算结果,同时保持一定的准确性。本文提出了两种不同的模型来计算电磁系统中的磁场分布。第一个模型基于递归神经网络,通过数据驱动的监督学习方法进行训练。第二个模型是第一个模型的扩展,在作者的模型中加入了额外的基于物理的信息。这种受物理定律约束的深度学习模型被称为物理信息神经网络。与使用FEM计算的地面真相相比,解决方案显示出作者的DL模型有希望的准确性,同时减少了计算时间和所需的资源,与文献中的先前实现相比。本文提出了一个神经网络架构,并使用两种不同的学习方法进行训练,即监督和基于物理的学习方法。在不同复杂程度的EM问题上验证了网络与不同学习方法的工作。此外,还对性能准确性和计算成本进行了比较研究,以确定不同架构和学习方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating magnetic fields using deep learning
Purpose The purpose of this paper is to develop surrogate models, using deep learning (DL), that can facilitate the application of EM analysis software. In the current status quo, electrical systems can be found in an ever-increasing range of products that are part of everyone’s daily live. With the advances in technology, industries such as the automotive, communications and medical devices have been disrupted with new electrical and electronic systems. The innovation and development of such systems with increasing complexity over time has been supported by the increased use of electromagnetic (EM) analysis software. Such software enables engineers to virtually design, analyze and optimize EM systems without the need for building physical prototypes, thus helping to shorten the development cycles and consequently cut costs. Design/methodology/approach The industry standard for simulating EM problems is using either the finite difference method or the finite element method (FEM). Optimization of the design process using such methods requires significant computational resources and time. With the emergence of artificial intelligence, along with specialized tools for automatic differentiation, the use of DL has become computationally much more efficient and cheaper. These advances in machine learning have ushered in a new era in EM simulations where engineers can compute results much faster while maintaining a certain level of accuracy. Findings This paper proposed two different models that can compute the magnetic field distribution in EM systems. The first model is based on a recurrent neural network, which is trained through a data-driven supervised learning method. The second model is an extension to the first with the incorporation of additional physics-based information to the authors’ model. Such a DL model, which is constrained by the laws of physics, is known as a physics-informed neural network. The solutions when compared with the ground truth, computed using FEM, show promising accuracy for the authors’ DL models while reducing the computation time and resources required, as compared to previous implementations in the literature. Originality/value The paper proposes a neural network architecture and is trained with two different learning methodologies, namely, supervised and physics-based. The working of the network along with the different learning methodologies is validated over several EM problems with varying levels of complexity. Furthermore, a comparative study is performed regarding performance accuracy and computational cost to establish the efficacy of different architectures and learning methodologies.
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
124
审稿时长
4.2 months
期刊介绍: COMPEL exists for the discussion and dissemination of computational and analytical methods in electrical and electronic engineering. The main emphasis of papers should be on methods and new techniques, or the application of existing techniques in a novel way. Whilst papers with immediate application to particular engineering problems are welcome, so too are papers that form a basis for further development in the area of study. A double-blind review process ensures the content''s validity and relevance.
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