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Deep-learning-powered photonic analogto-digital conversion 被引量:13

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摘要 Analog-to-digital converters(ADCs)must be high speed,broadband,and accurate for the development of modern information systems,such as radar,imaging,and communications systems;photonic technologies are regarded as promising technologies for realizing these advanced requirements.Here,we present a deep-learning-powered photonic ADC architecture that simultaneously exploits the advantages of electronics and photonics and overcomes the bottlenecks of the two technologies,thereby overcoming the ADC tradeoff among speed,bandwidth,and accuracy.Via supervised training,the adopted deep neural networks learn the patterns of photonic system defects and recover the distorted data,thereby maintaining the high quality of the electronic quantized data succinctly and adaptively.The numerical and experimental results demonstrate that the proposed architecture outperforms state-ofthe-art ADCs with developable high throughput;hence,deep learning performs well in photonic ADC systems.We anticipate that the proposed architecture will inspire future high-performance photonic ADC design and provide opportunities for substantial performance enhancement for the next-generation information systems.
出处 《Light(Science & Applications)》 SCIE EI CAS CSCD 2019年第1期611-621,共11页 光(科学与应用)(英文版)
基金 supported by the National Natural Science Foundation of China(grant nos 61822508,61571292,and 61535006) the Shanghai Municipal Science and Technology Major Project(2017SHZDZX03).
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