人工神经网络
参数化复杂度
参数统计
背景(考古学)
梯度下降
电磁铁
物理
功能(生物学)
随机梯度下降算法
领域(数学)
磁场
缩小
应用数学
计算机科学
算法
数学优化
人工智能
数学
磁铁
量子力学
统计
生物
古生物学
进化生物学
纯数学
作者
Andrés Beltrán-Pulido,Ilias Bilionis,Dionysios Aliprantis
标识
DOI:10.1109/tec.2022.3180295
摘要
The objective of this paper is to investigate the ability of physics-informed neural networks to learn the magnetic field response as a function of design parameters in the context of a two-dimensional (2-D) magnetostatic problem. Our approach is as follows. First, we present a functional whose minimization is equivalent to solving parametric magnetostatic problems. Subsequently, we use a deep neural network (DNN) to represent the magnetic field as a function of space and parameters that describe geometric features and operating points. We train the DNN by minimizing the physics-informed functional using stochastic gradient descent. Lastly, we demonstrate our approach on a ten-dimensional EI-core electromagnet problem with parameterized geometry. We evaluate the accuracy of the DNN by comparing its predictions to those of finite element analysis.
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