Silicon-Based Metastructure Optical Scattering Multiply-Accumulate Computation Chip

Nanomaterials (Basel). 2022 Jun 21;12(13):2136. doi: 10.3390/nano12132136.

Abstract

Optical neural networks (ONN) have become the most promising solution to replacing electronic neural networks, which have the advantages of large bandwidth, low energy consumption, strong parallel processing ability, and super high speed. Silicon-based micro-nano integrated photonic platforms have demonstrated good compatibility with complementary metal oxide semiconductor (CMOS) processing. Therefore, without completely changing the existing silicon-based fabrication technology, optoelectronic hybrid devices or all-optical devices of better performance can be achieved on such platforms. To meet the requirements of smaller size and higher integration for silicon photonic computing, the topology of a four-channel coarse wavelength division multiplexer (CWDM) and an optical scattering unit (OSU) are inversely designed and optimized by Lumerical software. Due to the random optical power splitting ratio and incoherency, the intensities of different input signals from CWDM can be weighted and summed directly by the subsequent OSU to accomplish arbitrary multiply-accumulate (MAC) operations, therefore supplying the core foundation for scattering ONN architecture.

Keywords: coarse wavelength division multiplexer (CWDM); inverse design; metastructure; multiply–accumulate (MAC) operation; optical neural network (ONN); optical scattering unit (OSU); silicon-on-insulator (SOI).