Harnessing optoelectronic noises in a photonic generative network
Author(s) -
Changming Wu,
Xiaoxuan Yang,
Heshan Yu,
Ruoming Peng,
Ichiro Takeuchi,
Yiran Chen,
Mo Li
Publication year - 2022
Publication title -
science advances
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.928
H-Index - 146
ISSN - 2375-2548
DOI - 10.1126/sciadv.abm2956
Subject(s) - computer science , photonics , artificial neural network , bandwidth (computing) , interconnectivity , electronic engineering , noise (video) , resilience (materials science) , multiplication (music) , artificial intelligence , optoelectronics , telecommunications , materials science , engineering , physics , composite material , image (mathematics) , acoustics
Integrated optoelectronics is emerging as a promising platform of neural network accelerator, which affords efficient in-memory computing and high bandwidth interconnectivity. The inherent optoelectronic noises, however, make the photonic systems error-prone in practice. It is thus imperative to devise strategies to mitigate and, if possible, harness noises in photonic computing systems. Here, we demonstrate a photonic generative network as a part of a generative adversarial network (GAN). This network is implemented with a photonic core consisting of an array of programable phase-change memory cells to perform four-element vector-vector dot multiplication. The GAN can generate a handwritten number (“7”) in experiments and full 10 digits in simulation. We realize an optical random number generator, apply noise-aware training by injecting additional noise, and demonstrate the network’s resilience to hardware nonidealities. Our results suggest the resilience and potential of more complex photonic generative networks based on large-scale, realistic photonic hardware.
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