Affiliation:
1. Optics Valley Laboratory
Abstract
Optical neural networks have emerged as a promising avenue for
implementing artificial intelligence applications, with matrix
computations being a crucial component. However, the existing
implementations based on microring resonators (MRRs) face bottlenecks
in integration, power efficiency, and scalability, hindering the
practical applications of wavelength division multiplexing (WDM)-based
matrix-vector multiplications at the hardware level. Here we present a
photonic crystal nanobeam cavity (PCNC) matrix core. Remarkably
compact with dimensions reduced to 20µm×0.5µm, the PCNC unit exhibits a thermal
tuning efficiency more than three times that of MRRs. Crucially, it is
immune to the free spectral range constraint, thus able to harness the
wealth of independent wavelength channels provided by WDM. A 3×3 PCNC core chip is demonstrated for
animal face recognition and a six-channel chip is employed for
handwritten digit classification to demonstrate the scalability. The
PCNC solution holds immense promise, offering a versatile platform for
next-generation photonic artificial intelligence chips.
Funder
National Natural Science Foundation of
China
Innovation Project of Optics Valley
Laboratory
Cited by
8 articles.
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