Deep Learning-Based Fast Full-Wave Electromagnetic Forward Solver Using Physics-Induced Loss

被引:0
作者
Guo, Xingyue [1 ]
Yao, He Ming [2 ]
Liu, Yuanan [1 ]
Ng, Michael [3 ]
机构
[1] Beijing Univ Posts & Telecommun, Sch Elect Engn, Beijing 100876, Peoples R China
[2] Tsinghua Univ, Dept Automat, Beijing 100084, Peoples R China
[3] Hong Kong Baptist Univ, Dept Math, Hong Kong 999077, Peoples R China
来源
IEEE ANTENNAS AND WIRELESS PROPAGATION LETTERS | 2024年 / 23卷 / 09期
基金
中国国家自然科学基金;
关键词
Training; Scattering; Mathematical models; Loss measurement; Decoding; Convolution; Method of moments; Convolutional neural network; deep learning (DL); electromagnetic forward process; real time; INVERSE-SCATTERING PROBLEMS; HIGH-CONTRAST; NETWORK;
D O I
10.1109/LAWP.2024.3424940
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
In this letter, a new deep learning (DL) solver is introduced, offering a rapid and effective full-wave computational method for simulating the electromagnetic forward (EMF) process. The core of this solver is the deep residual convolutional neural network (DRCNN) architecture. The DRCNN ingests the incident EM field along with the permittivity contrast distribution within the specified region of interest (ROI), and in turn, it generates the resultant EM field that is influenced by the incident EM wave. During its offline training, an EM scattering simulation tool has been developed to calculate the EM scattered fields. The loss function includes two distinct components: the data-induced loss, which quantifies the discrepancy between the DRCNN's predicted total EM fields and the actual labeled EM fields and the physics-induced loss, which measures the variance between the EM scattered fields derived from the actual labeled total EM fields and the scattered fields generated from the DRCNN's predictions. The training of this proposed EMF solver only relies on a simple synthetic dataset. Compared with traditional approaches, the proposed DL solver addresses EMF issues with notable precision while significantly cutting down on computational duration. Numerical benchmarks have demonstrated the viability of this DL solver.
引用
收藏
页码:2817 / 2821
页数:5
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