$Ï$-Adapt: A Physics-Informed Adaptation Learning Approach to 2D Quantum Material Discovery
$Ï$-Adapt: A Physics-Informed Adaptation Learning Approach to 2D Quantum Material Discovery
Characterizing quantum flakes is a critical step in quantum hardware engineering because the quality of these flakes directly influences qubit performance. Although computer vision methods for identifying two-dimensional quantum flakes have emerged, they still face significant challenges in estimating flake thickness. These challenges include limited data, poor generalization, sensitivity to domain shifts, and a lack of physical interpretability. In this paper, we introduce one of the first Physics-informed Adaptation Learning approaches to overcome these obstacles. We focus on two main issues, i.e., data scarcity and generalization. First, we propose a new synthetic data generation framework that produces diverse quantum flake samples across various materials and configurations, reducing the need for time-consuming manual collection. Second, we present $Ï$-Adapt, a physics-informed adaptation method that bridges the performance gap between models trained on synthetic data and those deployed in real-world settings. Experimental results show that our approach achieves state-of-the-art performance on multiple benchmarks, outperforming existing methods. Our proposed approach advances the integration of physics-based modeling and domain adaptation. It also addresses a critical gap in leveraging synthesized data for real-world 2D material analysis, offering impactful tools for deep learning and materials science communities.
Hoang-Quan Nguyen、Xuan Bac Nguyen、Sankalp Pandey、Tim Faltermeier、Nicholas Borys、Hugh Churchill、Khoa Luu
物理学信息科学、信息技术
Hoang-Quan Nguyen,Xuan Bac Nguyen,Sankalp Pandey,Tim Faltermeier,Nicholas Borys,Hugh Churchill,Khoa Luu.$Ï$-Adapt: A Physics-Informed Adaptation Learning Approach to 2D Quantum Material Discovery[EB/OL].(2025-07-07)[2025-07-16].https://arxiv.org/abs/2507.05184.点此复制
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