Performance Analysis of Transfer-Learning Based Physics-Informed Neural Network for Effective Shape Variation Adaptation with Varying Hyper-parameters

被引:0
|
作者
Han J.-H. [2 ]
Choi E.-J. [2 ]
Hong S.-K. [1 ]
机构
[1] Dept. of System and Control Engineering, Hoseo University
[2] Dept. of Information Control Engineering, Hoseo University
关键词
Deep Learning; Hyper-parameter; PINN; Pre-processing; Ritz method; Transfer learning;
D O I
10.5370/KIEE.2023.72.10.1149
中图分类号
学科分类号
摘要
One of the most time-consuming parts of designing an electrical device is optimizing the geometry. Optimization involves fine-tuning dimensions such as slot widths and airgap lengths from a base geometry to meet user needs. FEA(Finite Element Analysis) is typically used to verify this performance. However, conventional FEA requires a separate analysis if the analysis geometry is varied even slightly. This causes a very long time consumption, and a transfer learning-based PINN(Physics-Informed Neural Network) is proposed to solve this problem. Since PINNs are at the basic level worldwide, their performance is analyzed according to hyper-parameters such as model parameters (e.g. weights or biases), preprocessing methods, activation functions, and the number of training data to increase their performance. Based on the analyzed hyper-parameters, the performance of the transfer learning-based PINN is verified under the condition of varying the airgap length of the E-I core. © 2023 Korean Institute of Electrical Engineers. All rights reserved.
引用
收藏
页码:1149 / 1158
页数:9
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