MAPS: Multi-Fidelity AI-Augmented Photonic Simulation and Inverse Design Infrastructure
- URL: http://arxiv.org/abs/2503.01046v1
- Date: Sun, 02 Mar 2025 22:30:18 GMT
- Title: MAPS: Multi-Fidelity AI-Augmented Photonic Simulation and Inverse Design Infrastructure
- Authors: Pingchuan Ma, Zhengqi Gao, Meng Zhang, Haoyu Yang, Mark Ren, Rena Huang, Duane S. Boning, Jiaqi Gu,
- Abstract summary: Inverse design has emerged as a transformative approach for photonic device optimization.<n>We introduce MAPS, a multi-fidelity AI-augmented photonic simulation and inverse design infrastructure.
- Score: 18.220589086200025
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Inverse design has emerged as a transformative approach for photonic device optimization, enabling the exploration of high-dimensional, non-intuitive design spaces to create ultra-compact devices and advance photonic integrated circuits (PICs) in computing and interconnects. However, practical challenges, such as suboptimal device performance, limited manufacturability, high sensitivity to variations, computational inefficiency, and lack of interpretability, have hindered its adoption in commercial hardware. Recent advancements in AI-assisted photonic simulation and design offer transformative potential, accelerating simulations and design generation by orders of magnitude over traditional numerical methods. Despite these breakthroughs, the lack of an open-source, standardized infrastructure and evaluation benchmark limits accessibility and cross-disciplinary collaboration. To address this, we introduce MAPS, a multi-fidelity AI-augmented photonic simulation and inverse design infrastructure designed to bridge this gap. MAPS features three synergistic components: (1) MAPS-Data: A dataset acquisition framework for generating multi-fidelity, richly labeled devices, providing high-quality data for AI-for-optics research. (2) MAPS-Train: A flexible AI-for-photonics training framework offering a hierarchical data loading pipeline, customizable model construction, support for data- and physics-driven losses, and comprehensive evaluations. (3) MAPS-InvDes: An advanced adjoint inverse design toolkit that abstracts complex physics but exposes flexible optimization steps, integrates pre-trained AI models, and incorporates fabrication variation models. This infrastructure MAPS provides a unified, open-source platform for developing, benchmarking, and advancing AI-assisted photonic design workflows, accelerating innovation in photonic hardware optimization and scientific machine learning.
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