Transfer learning-based physics-informed neural networks for magnetostatic field simulation with domain variations

IF 1.6 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Numerical Modelling-Electronic Networks Devices and Fields Pub Date : 2024-07-03 DOI:10.1002/jnm.3264
Jonathan Rainer Lippert, Moritz von Tresckow, Herbert De Gersem, Dimitrios Loukrezis
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Abstract

Physics-informed neural networks (PINNs) provide a new class of mesh-free methods for solving differential equations. However, due to their long training times, PINNs are currently not as competitive as established numerical methods. A promising approach to bridge this gap is transfer learning (TL), that is, reusing the weights and biases of readily trained neural network models to accelerate model training for new learning tasks. This work applies TL to improve the performance of PINNs in the context of magnetostatic field simulation, in particular to resolve boundary value problems with geometrical variations of the computational domain. The suggested TL workflow consists of three steps. (a) A numerical solution based on the finite element method (FEM). (b) A neural network that approximates the FEM solution using standard supervised learning. (c) A PINN initialized with the weights and biases of the pre-trained neural network and further trained using the deep Ritz method. The FEM solution and its neural network-based approximation refer to an computational domain of fixed geometry, while the PINN is trained for a geometrical variation of the domain. The TL workflow is first applied to Poisson's equation on different 2D domains and then to a 2D quadrupole magnet model. Comparisons against randomly initialized PINNs reveal that the performance of TL is ultimately dependent on the type of geometry variation considered, leading to significantly improved convergence rates and training times for some variations, but also to no improvement or even to performance deterioration in other cases.

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基于迁移学习的物理信息神经网络用于磁场变化的磁静电场模拟
物理信息神经网络(PINN)为微分方程的求解提供了一类全新的无网格方法。然而,由于训练时间较长,PINNs 目前的竞争力还不如成熟的数值方法。迁移学习(TL)是弥合这一差距的一种有前途的方法,即重复使用已训练好的神经网络模型的权重和偏差,以加速新学习任务的模型训练。这项研究将 TL 应用于提高磁静电场模拟中 PINN 的性能,特别是解决计算域几何变化的边界值问题。建议的 TL 工作流程包括三个步骤。(a) 基于有限元法(FEM)的数值解决方案。 (b) 利用标准监督学习逼近 FEM 解决方案的神经网络。(c) 使用预训练神经网络的权重和偏置初始化 PINN,并使用深度 Ritz 方法进一步训练。有限元求解及其基于神经网络的近似值指的是一个几何形状固定的计算域,而 PINN 则是针对该计算域的几何形状变化进行训练的。TL 工作流程首先应用于不同二维域上的泊松方程,然后应用于二维四极磁体模型。与随机初始化的 PINN 进行比较后发现,TL 的性能最终取决于所考虑的几何变化类型,在某些变化情况下,收敛速度和训练时间显著提高,但在其他情况下,TL 的性能没有提高,甚至有所下降。
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来源期刊
CiteScore
4.60
自引率
6.20%
发文量
101
审稿时长
>12 weeks
期刊介绍: Prediction through modelling forms the basis of engineering design. The computational power at the fingertips of the professional engineer is increasing enormously and techniques for computer simulation are changing rapidly. Engineers need models which relate to their design area and which are adaptable to new design concepts. They also need efficient and friendly ways of presenting, viewing and transmitting the data associated with their models. The International Journal of Numerical Modelling: Electronic Networks, Devices and Fields provides a communication vehicle for numerical modelling methods and data preparation methods associated with electrical and electronic circuits and fields. It concentrates on numerical modelling rather than abstract numerical mathematics. Contributions on numerical modelling will cover the entire subject of electrical and electronic engineering. They will range from electrical distribution networks to integrated circuits on VLSI design, and from static electric and magnetic fields through microwaves to optical design. They will also include the use of electrical networks as a modelling medium.
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