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APL Photonics, volume 10, issue 3

PIC2O-Sim: A physics-inspired causality-aware dynamic convolutional neural operator for ultra-fast photonic device time-domain simulation

Pingchuan Ma 1
Хаою Ян 2
Zhengqi Gao 3
Duane Boning 3
Jiaqi Gu 1
1
 
School of Electrical, Computer and Energy Engineering, Arizona State University 1 , Tempe, Arizona 85281,
2
 
NVIDIA Inc. 2 , 11001 Lakeline Blvd. Suite #100 Bldg. 2, Austin, Texas 78717,
3
 
Department of Electrical Engineering and Computer Science, Massachusetts Institute of Technology 3 , Boston, Massachusetts 02139,
Publication typeJournal Article
Publication date2025-03-01
Journal: APL Photonics
scimago Q1
wos Q1
SJR1.880
CiteScore10.3
Impact factor5.4
ISSN23780967
Abstract

Optical simulation plays an important role in photonic hardware design flow. The finite-difference time-domain (FDTD) method is widely adopted to solve time-domain Maxwell equations. However, FDTD is known for its prohibitive runtime cost as it iteratively solves Maxwell equations and takes minutes to hours to simulate a single device. Recently, AI has been applied to realize orders-of-magnitude speedup in partial differential equation solving. However, AI-based FDTD solvers for photonic devices have not been clearly formulated. Directly applying off-the-shelf models to predict the optical field dynamics shows unsatisfying fidelity and efficiency since the model primitives are agnostic to the unique physical properties of Maxwell equations and lack algorithmic customization. In this work, we thoroughly investigate the synergy between neural operator designs and the physical property of Maxwell equations and introduce a physics-inspired AI-based FDTD prediction framework PIC2O-Sim. PIC2O-Sim features a causality-aware dynamic convolutional neural operator as its backbone model that honors the space–time causality constraints via careful receptive field configuration and explicitly captures the permittivity-dependent light propagation behavior via an efficient dynamic convolution operator. Meanwhile, we explore the trade-offs among prediction scalability, fidelity, and efficiency via a multi-stage partitioned time-bundling technique in autoregressive prediction. Multiple key techniques have been introduced to mitigate iterative error accumulation while maintaining efficiency advantages during autoregressive field prediction. Extensive evaluations on three challenging photonic device simulation tasks have shown the superiority of our PIC2O-Sim method, showing 51.2% lower roll-out prediction error, 23.5 times fewer parameters than state-of-the-art neural operators, providing 133–310× or 31–89× higher simulation speed than an open-source single-process or eight-process parallel FDTD numerical solver.

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Ma P. et al. PIC2O-Sim: A physics-inspired causality-aware dynamic convolutional neural operator for ultra-fast photonic device time-domain simulation // APL Photonics. 2025. Vol. 10. No. 3.
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Ma P., Ян Х., Gao Z., Boning D., Gu J. PIC2O-Sim: A physics-inspired causality-aware dynamic convolutional neural operator for ultra-fast photonic device time-domain simulation // APL Photonics. 2025. Vol. 10. No. 3.
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TY - JOUR
DO - 10.1063/5.0242728
UR - https://pubs.aip.org/app/article/10/3/036104/3338201/PIC2O-Sim-A-physics-inspired-causality-aware
TI - PIC2O-Sim: A physics-inspired causality-aware dynamic convolutional neural operator for ultra-fast photonic device time-domain simulation
T2 - APL Photonics
AU - Ma, Pingchuan
AU - Ян, Хаою
AU - Gao, Zhengqi
AU - Boning, Duane
AU - Gu, Jiaqi
PY - 2025
DA - 2025/03/01
PB - AIP Publishing
IS - 3
VL - 10
SN - 2378-0967
ER -
BibTex
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@article{2025_Ma,
author = {Pingchuan Ma and Хаою Ян and Zhengqi Gao and Duane Boning and Jiaqi Gu},
title = {PIC2O-Sim: A physics-inspired causality-aware dynamic convolutional neural operator for ultra-fast photonic device time-domain simulation},
journal = {APL Photonics},
year = {2025},
volume = {10},
publisher = {AIP Publishing},
month = {mar},
url = {https://pubs.aip.org/app/article/10/3/036104/3338201/PIC2O-Sim-A-physics-inspired-causality-aware},
number = {3},
doi = {10.1063/5.0242728}
}
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