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Transfer Learning for the Behavior Prediction of Microwave Structures

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posted on 2022-11-02, 01:30 authored by Jiteng MaJiteng Ma, Shuping DangShuping Dang, Peizheng Li, Gavin Watkins, Kevin Morris, Mark Beach

Microwave structures behavior prediction is an important research topic in radio frequency (RF) design. In recent years, deep-learning-based techniques have been widely implemented to study microwaves, and they are envisaged to revolutionize this arduous and time-consuming work. However, empirical data collection and neural network training are two significant challenges of applying deep learning techniques to practical RF modeling and design problems. To this end, this letter investigates a transfer-learning-based approach to improve the accuracy and efficiency of predicting microwave structure behaviors. Through experimental comparisons, we validate that the proposed approach can reduce the amount of data required for training while shortening the neural network training time for the behavior prediction of microwave structures. 

Funding

UKRI/EPSRC Prosperity Partnership in Secure Wireless Agile Networks (EP/T005572/1)

Toshiba’s Bristol Research and Innovation Laboratory

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Email Address of Submitting Author

jiteng.ma@bristol.ac.uk

ORCID of Submitting Author

0000-0003-0583-4349

Submitting Author's Institution

University of Bristol

Submitting Author's Country

  • United Kingdom

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