Affiliation:
1. The Chinese University of Hong Kong
2. Princeton University
3. Beijing University of Posts and Telecommunications
4. Queen’s University
Abstract
Integrated photonic neural networks (PNNs) are at the forefront of AI
computing, leveraging light’s unique properties, such as large
bandwidth, low latency, and potentially low power consumption.
Nevertheless, the integrated optical components are inherently
sensitive to external disturbances, thermal interference, and various
device imperfections, which detrimentally affect computing accuracy
and reliability. Conventional solutions use complicated control
methods to stabilize optical devices and chip, which result in high
hardware complexity and are impractical for large-scale PNNs. To
address this, we propose a training approach to enable control-free,
accurate, and energy-efficient photonic computing without adding
hardware complexity. The core idea is to train the parameters of a
physical neural network towards its noise-robust and energy-efficient
region. Our method is validated on different integrated PNN
architectures and is applicable to solve various device imperfections
in thermally tuned PNNs and PNNs based on phase change materials. A
notable 4-bit improvement is achieved in micro-ring resonator-based
PNNs without needing complex device control or power-hungry
temperature stabilization circuits. Additionally, our approach reduces
the energy consumption by tenfold. This advancement represents a
significant step towards the practical, energy-efficient, and
noise-resilient implementation of large-scale integrated PNNs.
Funder
Innovation and Technology
Fund
Shun Hing Institute of Advanced
Engineering
Chinese University of Hong
Kong
University Grants Committee