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Multi-band low-noise microwave-signal-receiving system with a photonic frequency down-conversion and transfer-learning network

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Abstract

In this Letter, we propose and demonstrate a multi-band signal-receiving system, powered by photonic frequency down-conversion and transfer learning. A photonic frequency down-conversion system directly receives the microwave signals, and the transfer-learning network (TLN) lowers the noise in the signals. In addition to the effectiveness of denoising, the TLN also features ultra-fast retraining for signals of different types or different multi-band frequencies. Experimental results showed that the proposed microwave-signal-receiving system can improve the signal-to-noise (SNR) ratio of signals of different types, SNR, and duty cycles. For network retraining, the TLN requires only three times less data and 10 times less time consumption than conventional training methods.

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Data Availability

Data underlying the results presented in this Letter are not available at this time but may be obtained from the authors upon reasonable request. The code of the TLN is available for download in Ref. [17].

17. S. Yi, T. Qiu, S. Xu, and W. Zou, “TLN,” GitHub (2021) [accessed .23 November 2020], https://github.com/717297azbcgh/TLN.

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