Prediction of Antenna Performance based on Scalable Data-informed Machine Learning Methods

被引:0
作者
Chen, Yiming [1 ]
Demir, Veysel [2 ]
Bhupatiraju, Srirama [3 ]
Elsherbeni, Atef Z. [1 ]
Gavilan, Joselito [3 ]
Stoynov, Kiril [3 ]
机构
[1] Colorado Sch Mines, Dept Elect Engn, Golden, CO 80401 USA
[2] Dept Elect Engn Northern Illinois Univ, Dept Elect Engn, De Kalb, IL 60115 USA
[3] Antenna Grp, Nvidia, SC 95050 USA
来源
APPLIED COMPUTATIONAL ELECTROMAGNETICS SOCIETY JOURNAL | 2024年 / 39卷 / 04期
关键词
Index Terms - Data informed; ensemble; full-wave sim- ulation; machine learning; scalability; stacking; ASSISTED OPTIMIZATION; DESIGN;
D O I
10.13052/2024.ACES.J.390401
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
- This paper proposes a scalable architecture for predicting antenna performance using various data- informed machine learning (DIML) methods. By utilizing the computation power of graphics processing units (GPUs), the architecture takes advantage of hardware (HW) acceleration from the beginning of electromagnetic (EM) full-wave simulation to the final machine learning (ML) validation. A total of 49152 full-wave simulations of a classical microwave patch antenna forms the ML dataset. The dataset contains the performance of patch antenna on six commonly used materials and two standard thicknesses in a wide frequency range from 0.1 to 20 GHz. A total of 13 base ML models are stacked and ensembled in a tabular workflow with performance as 0.970 and 0.933 F 1 scores for two classification models, as well as 0.912 and 0.819 R 2 scores for two regression models. Moreover, an image-based workflow is proposed. The image-based workflow yields the 0.823 R 2 score, indicating a near real-time prediction for all S 11 values from 0.1 to 20 GHz. The proposed architecture requires neither the fine-tuned hyperparameters in the ML-assisted optimization (MLAO) model for specified antenna design nor the pre-knowledge required in the physics-informed models. The fully automated process with data collection and the customized ML pipeline provides the architecture with robust scalability in future work where more antenna types, materials, and performance requirements can be involved. Also, it could be wrapped as a pre-trained ML model as a reference for other antenna designs.
引用
收藏
页码:275 / 290
页数:16
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