APP-PHAIMar 8, 2024

Inverse Design of Photonic Crystal Surface Emitting Lasers is a Sequence Modeling Problem

arXiv:2403.05149v11 citationsh-index: 7
Originality Incremental advance
AI Analysis

This addresses the data inefficiency problem in AI-driven inverse design for photonic engineers, though it is incremental as it builds on existing sequential modeling approaches.

The paper tackles the labor-intensive inverse design of Photonic Crystal Surface Emitting Lasers (PCSEL) by introducing PiT, a Transformer-based framework that models it as a sequence problem, achieving superior performance and data efficiency compared to traditional reinforcement learning methods.

Photonic Crystal Surface Emitting Lasers (PCSEL)'s inverse design demands expert knowledge in physics, materials science, and quantum mechanics which is prohibitively labor-intensive. Advanced AI technologies, especially reinforcement learning (RL), have emerged as a powerful tool to augment and accelerate this inverse design process. By modeling the inverse design of PCSEL as a sequential decision-making problem, RL approaches can construct a satisfactory PCSEL structure from scratch. However, the data inefficiency resulting from online interactions with precise and expensive simulation environments impedes the broader applicability of RL approaches. Recently, sequential models, especially the Transformer architecture, have exhibited compelling performance in sequential decision-making problems due to their simplicity and scalability to large language models. In this paper, we introduce a novel framework named PCSEL Inverse Design Transformer (PiT) that abstracts the inverse design of PCSEL as a sequence modeling problem. The central part of our PiT is a Transformer-based structure that leverages the past trajectories and current states to predict the current actions. Compared with the traditional RL approaches, PiT can output the optimal actions and achieve target PCSEL designs by leveraging offline data and conditioning on the desired return. Results demonstrate that PiT achieves superior performance and data efficiency compared to baselines.

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