Analysis of Optical Loss and Crosstalk Noise in MZI-based Coherent Photonic Neural Networks
Amin Shafiee, Sanmitra Banerjee, Krishnendu Chakrabarty, Sudeep, Pasricha, Mahdi Nikdast

TL;DR
This paper models optical loss and crosstalk noise in silicon photonic neural networks using Mach-Zehnder interferometers, revealing significant impacts on accuracy and power as networks scale.
Contribution
It introduces a comprehensive bottom-up analytical model for optical loss and crosstalk in coherent SP-NNs, applicable across various architectures and configurations.
Findings
Up to 84% accuracy drop due to loss and crosstalk.
High power penalty observed in large-scale SP-NNs.
Model applicable to different MZI mesh configurations.
Abstract
With the continuous increase in the size and complexity of machine learning models, the need for specialized hardware to efficiently run such models is rapidly growing. To address such a need, silicon-photonic-based neural network (SP-NN) accelerators have recently emerged as a promising alternative to electronic accelerators due to their lower latency and higher energy efficiency. Not only can SP-NNs alleviate the fan-in and fan-out problem with linear algebra processors, their operational bandwidth can match that of the photodetection rate (typically 100 GHz), which is at least over an order of magnitude faster than electronic counterparts that are restricted to a clock rate of a few GHz. Unfortunately, the underlying silicon photonic devices in SP-NNs suffer from inherent optical losses and crosstalk noise originating from fabrication imperfections and undesired optical couplings,…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Photonic and Optical Devices · Optical Network Technologies
