학술논문

Nanophotonic Cavity Based Synapse for Scalable Photonic Neural Networks
Document Type
Periodical
Source
IEEE Journal of Selected Topics in Quantum Electronics IEEE J. Select. Topics Quantum Electron. Selected Topics in Quantum Electronics, IEEE Journal of. 28(6: High Density Integr. Multipurpose Photon. Circ.):1-8 Jan, 2022
Subject
Engineered Materials, Dielectrics and Plasmas
Photonics and Electrooptics
Synapses
Wavelength division multiplexing
Photonics
Optical waveguides
Tuning
Throughput
Silicon
Photonic integrated circuits
photonic neural networks
Language
ISSN
1077-260X
1558-4542
Abstract
The bandwidth and energy demands of neural networks has spurred tremendous interest in developing novel neuromorphic hardware, including photonic integrated circuits. Although an optical waveguide can accommodate hundreds of channels with THz bandwidth, the channel count of photonic systems is always bottlenecked by the devices within. In WDM-based photonic neural networks, the synapses, i.e. network interconnections, are typically realized by microring resonators (MRRs), where the WDM channel count ($N$) is bounded by the free-spectral range of the MRRs. For typical Si MRRs, we estimate $N \leq 30$ within the C-band. This not only restrains the aggregate throughput of the neural network but also makes applications with high input dimensions unfeasible. We experimentally demonstrate that photonic crystal nanobeam based synapses can be FSR-free within C-band, eliminating the bound on channel count. This increases data throughput as well as enables applications with high-dimensional inputs like natural language processing and high resolution image processing. In addition, the smaller physical footprint of photonic crystal nanobeam cavities offers higher tuning energy efficiency and a higher compute density than MRRs. Nanophotonic cavity based synapse thus offers a path towards realizing highly scalable photonic neural networks.