High Power Laser and Particle Beams, Volume. 31, Issue 8, 83201(2019)
Evaluation of electromagnetic shielding effectiveness for loaded metallic enclosures with apertures based on machine learning
A machine learning based evaluation method for shielding effectiveness(SE) of loaded metallic enclosures with apertures under electromagnetic wave radiation is proposed. The SEs of a variety of metallic enclosures loaded with different printed circuit boards (PCBs) is calculated using full wave analysis simulation in the frequency range of 0-5 GHz, and 5250 samples are obtained. The random forest model which is one of the popular machine learning aggression algorithms is employed to train stochastically the selected 4200 samples. Consequently, the model capable to fast predict the SE for loaded shielding enclosures characterized by 16 parameters is implemented. The rest 1050 samples are used to verify the proposed random forest model. Results show that the proposed model can quickly predict the electromagnetic shielding effectiveness of the enclosure loaded with PCBs.
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Liu Zhengyang, Yan Liping, Zhao Xiang. Evaluation of electromagnetic shielding effectiveness for loaded metallic enclosures with apertures based on machine learning[J]. High Power Laser and Particle Beams, 2019, 31(8): 83201
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Received: Mar. 22, 2019
Accepted: --
Published Online: Jul. 25, 2019
The Author Email: Zhengyang Liu (sculiuzhengyang@163.com)