Litcius/Paper detail

Photonic Spiking Neural Networks and Graphene-on-Silicon Spiking Neurons

Aashu Jha, Chaoran Huang, Hsuan-Tung Peng, Bhavin J. Shastri, Paul R. Prucnal

2022Journal of Lightwave Technology65 citationsDOI

Abstract

Spiking neural networks are known to be superior over artificial neural networks for their computational power efficiency and noise robustness. The benefits of spiking coupled with the high-bandwidth and low-latency of photonics can enable highly-efficient, noise-robust, high-speed neural processors. The landscape of photonic spiking neurons consists of an overwhelming majority of excitable lasers and a few demonstrations on nonlinear optical cavities. The silicon platform is best poised to host a scalable photonic technology given its CMOS-compatibility and low optical loss. Here, we present a survey of existing photonic spiking neurons, and propose a novel spiking neuron based on a hybrid graphene-on-silicon microring cavity. A comparison among a representative sample of photonic spiking devices is also presented. Finally, we discuss methods employed in training spiking neural networks, their challenges as well as the application domain that can be enabled by photonic spiking neural hardware.

Topics & Concepts

PhotonicsSpiking neural networkComputer scienceArtificial neural networkScalabilitySilicon photonicsRobustness (evolution)Electronic engineeringNeuromorphic engineeringArtificial intelligenceMaterials scienceOptoelectronicsEngineeringGeneChemistryDatabaseBiochemistryNeural Networks and Reservoir ComputingAdvanced Memory and Neural ComputingPhotonic and Optical Devices