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InvDesFlow: An AI-driven materials inverse design workflow to explore possible high-temperature superconductors

Chinese Physics Letters (CPL), 2024
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Abstract

The discovery of new superconducting materials, particularly those exhibiting high critical temperature (TcT_c), has been a vibrant area of study within the field of condensed matter physics. Conventional approaches primarily rely on physical intuition to search for potential superconductors within the existing databases. However, the known materials only scratch the surface of the extensive array of possibilities within the realm of materials. Here, we develop InvDesFlow, an AI search engine that integrates deep model pre-training and fine-tuning techniques, diffusion models, and physics-based approaches (e.g., first-principles electronic structure calculation) for the discovery of high-TcT_c superconductors. Utilizing InvDesFlow, we have obtained 74 dynamically stable materials with critical temperatures predicted by the AI model to be TcT_c \geq 15 K based on a very small set of samples. Notably, these materials are not contained in any existing dataset. Furthermore, we analyze trends in our dataset and individual materials including B4_4CN3_3 (at 5 GPa) and B5_5CN2_2 (at ambient pressure) whose TcT_cs are 24.08 K and 15.93 K, respectively. We demonstrate that AI technique can discover a set of new high-TcT_c superconductors, outline its potential for accelerating discovery of the materials with targeted properties.

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