Physics-aware Differentiable Discrete Codesign for Diffractive Optical Neural Networks
September 28, 2022 Β· Declared Dead Β· π 2022 IEEE/ACM International Conference On Computer Aided Design (ICCAD)
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Authors
Yingjie Li, Ruiyang Chen, Weilu Gao, Cunxi Yu
arXiv ID
2209.14252
Category
cs.AI: Artificial Intelligence
Citations
16
Venue
2022 IEEE/ACM International Conference On Computer Aided Design (ICCAD)
Last Checked
4 months ago
Abstract
Diffractive optical neural networks (DONNs) have attracted lots of attention as they bring significant advantages in terms of power efficiency, parallelism, and computational speed compared with conventional deep neural networks (DNNs), which have intrinsic limitations when implemented on digital platforms. However, inversely mapping algorithm-trained physical model parameters onto real-world optical devices with discrete values is a non-trivial task as existing optical devices have non-unified discrete levels and non-monotonic properties. This work proposes a novel device-to-system hardware-software codesign framework, which enables efficient physics-aware training of DONNs w.r.t arbitrary experimental measured optical devices across layers. Specifically, Gumbel-Softmax is employed to enable differentiable discrete mapping from real-world device parameters into the forward function of DONNs, where the physical parameters in DONNs can be trained by simply minimizing the loss function of the ML task. The results have demonstrated that our proposed framework offers significant advantages over conventional quantization-based methods, especially with low-precision optical devices. Finally, the proposed algorithm is fully verified with physical experimental optical systems in low-precision settings.
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