Litcius/Paper detail

High-throughput hardware deployment of pruned neural network based nonlinear equalization for 100-Gbps short-reach optical interconnect

Mingyuan Li, Wenjia Zhang, Qiao Chen, Zuyuan He

2021Optics Letters21 citationsDOI

Abstract

Hardware implementation of neural network based nonlinear equalizers will encounter tremendous challenges due to a high-throughput data stream and high computational complexity for 100-Gbps short-reach optical interconnects. In this Letter, we propose a parallel pruned neural network equalizer for high-throughput signal processing and minimized hardware resources. The structure of a time-interleaved neural network equalizer with a delay module is deployed in a field programmable gate array with advanced pruned algorithms, demonstrating significant bit error rate reduction for 100-Gbps real-time throughput with 200 parallel channels. Moreover, the dependence of processing throughput, hardware resources, and equalization performance is investigated, showing that over 50% resource reduction without performance degradation can be achieved with the pruning strategy.

Topics & Concepts

ThroughputComputer scienceArtificial neural networkReduction (mathematics)Computer hardwareEqualization (audio)InterconnectionBit error rateSignal processingElectronic engineeringReal-time computingDigital signal processingComputer networkTelecommunicationsWirelessChannel (broadcasting)Artificial intelligenceGeometryMathematicsEngineeringOptical Network TechnologiesPhotonic and Optical DevicesAdvanced Fiber Laser Technologies