Gen-Fab: A Variation-Aware Generative Model for Predicting Fabrication Variations in Nanophotonic Devices
arXiv cs.CV / 3/13/2026
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Key Points
- Gen-Fab is a Pix2Pix-based conditional GAN that inputs a photonics design layout (GDS) and outputs diverse, high-resolution predictions of fabricated devices to capture fabrication-induced variations at the nanometer scale.
- To enable one-to-many predictions, Gen-Fab injects a latent noise vector at the model bottleneck, allowing multiple plausible outcomes for the same design.
- In evaluations, Gen-Fab outperforms a deterministic U-Net, an MC-Dropout U-Net, and ensembles across accuracy and uncertainty modeling, achieving an IoU of 89.8% and better alignment with real fabrication distributions (lower KL divergence and Wasserstein distance).
- The approach generalizes well to unseen fabrication geometries, indicating strong potential for digital twin workflows to predict variation ranges such as over-etching, under-etching, and corner rounding.
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