An Analog Signal Processing EIC-PIC Solution for Coherent Data Center Interconnects
Shivangi Chugh, Rakesh Ashok, Punit Jain, Sana Naaz, Aboobackkar, Sidhique, and Shalabh Gupta

TL;DR
This paper demonstrates the first integration of a silicon photonic coherent receiver with an electronic carrier phase recovery module, enabling high-speed analog processing for data center interconnects with potential for higher data rates.
Contribution
It introduces a novel integrated silicon photonic coherent receiver combined with an electronic phase recovery module, advancing analog domain processing in optical communications.
Findings
Successful experimental demonstration with QPSK signals
System-level integration of photonic and electronic modules
Potential extension to higher-order modulation formats
Abstract
Data center interconnects (DCIs) will have to support throughputs of 400 Gbps or more per wavelength in the near future. To achieve such high data rates, coherent modulation and detection is used, which conventionally requires high-speed data conversion and signal processing in the digital domain. Alternatively, high-speed signal conditioning and processing could be carried out in co-designed photonic and electronic integrated circuits, in the optical and electrical analog domains, respectively, to achieve reduced power consumption, latency, form factor, and cost. A few demonstrations of analog domain processing electronic integrated circuits (EICs), including those of equalizer and carrier phase recovery (CPR) modules showcase progress in this direction in the literature. In this brief, for the first time, we present integration of a silicon photonic integrated coherent receiver (ICR)…
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Taxonomy
TopicsOptical Network Technologies · Photonic and Optical Devices · Neural Networks and Reservoir Computing
