화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2022년 봄 (04/20 ~ 04/23, 제주국제컨벤션센터)
권호 28권 1호, p.113
발표분야 [주제 2] 기계학습
제목 AI-based catalyst design
초록 Recently, a combination of the density-functional theory calculation and the automation technique provides a high-throughput screening for a catalysis design. With this method, we have recently developed novel metallic catalysts, which has been collaborated with experiments. On the other hand, a machine-learning has been rapidly penetrating the catalyst design. We have recently developed a machine-learning model (slab graph convolutional neural network, SGCNN) that can rapidly predict adsorption energies at accuracy level of DFT from the catalyst surface-adsorbate structures. Using the SGCNN, we can not only design various catalysts for nitrogen reduction reaction (NRR) and oxygen reduction reaction (ORR), but also predict Pourbaix diagrams of nanoparticle catalysts to evaluate their thermodynamic stability under electrochemical environments. And, in the last part of this work, I will discuss our machine-learning model for inverse design of materials.
저자 한상수
소속 한국과학기술(연)
키워드 생물화공(Biochemical Engineering)
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