4.7 Article

Data-Driven Modeling of Mach-Zehnder Interferometer-Based Optical Matrix Multipliers

Journal

JOURNAL OF LIGHTWAVE TECHNOLOGY
Volume 41, Issue 16, Pages 5425-5436

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JLT.2023.3263235

Keywords

Machine learning; neuromorphic computing; optical matrix multiplication

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Photonic integrated circuits are advancing optical neural networks, which could potentially outperform electronic counterparts in speed and energy efficiency due to the suitability of optical signals for matrix multiplication. However, programming photonic chips for accurate optical matrix multiplication remains challenging.
Photonic integrated circuits are facilitating the development of optical neural networks, which have the potential to be both faster and more energy efficient than their electronic counterparts since optical signals are especially well-suited for implementing matrix multiplications. However, accurate programming of photonic chips for optical matrix multiplication remains a difficult challenge. Here, we describe both simple analytical models and data-driven models for offline training of optical matrix multipliers. We train and evaluate the models using experimental data obtained from a fabricated chip featuring a Mach-Zehnder interferometer mesh implementing 3-by-3 matrix multiplication. The neural network-based models outperform the simple physics-based models in terms of prediction error. Furthermore, the neural network models are also able to predict the spectral variations in the matrix weights for up to 100 frequency channels covering the C-band. The use of neural network models for programming the chip for optical matrix multiplication yields increased performance on multiple machine learning tasks.

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