Noushin Omidvar, Shih-Han Wang, Yang Huang, H. Pillai, Andy Athawale, Siwen Wang, Luke E. K. Achenie, Hongliang Xin
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引用次数: 0
Abstract
As a subfield of artificial intelligence (AI), machine learning (ML) has emerged as a versatile tool in accelerating catalytic materials discovery because of its ability to find complex patterns in high‐dimensional data. While the intricacy of cutting‐edge ML models, such as deep learning, makes them powerful, it also renders decision‐making processes challenging to explain. Recent advances in explainable AI technologies, which aim to make the inner workings of ML models understandable to humans, have considerably increased our capacity to gain insights from data. In this study, taking the oxygen reduction reaction (ORR) on {111}‐oriented Pt monolayer core–shell catalysts as an example, we show how the recently developed theory‐infused neural network (TinNet) algorithm enables a rapid search for optimal site motifs with the chemisorption energy of hydroxyl (OH) as a single descriptor, revealing the underlying physical factors that govern the variations in site reactivity. By exploring a broad design space of Pt monolayer core–shell alloys ( candidates) that were generated from thermodynamically stable bulk structures in existing material databases, we identified novel alloy systems along with previously known catalysts in the goldilocks zone of reactivity properties. SHAP (SHapley Additive exPlanations) analysis reveals the important role of adsorbate resonance energies that originate from ‐band interactions in chemical bonding at metal surfaces. Extracting physical insights into surface reactivity with explainable AI opens up new design pathways for optimizing catalytic performance beyond active sites.
作为人工智能(AI)的一个子领域,机器学习(ML)因其在高维数据中发现复杂模式的能力,已成为加速催化材料发现的多功能工具。虽然深度学习等尖端 ML 模型的复杂性使其功能强大,但也使决策过程的解释变得具有挑战性。可解释的人工智能技术旨在让人类理解 ML 模型的内部运作,它的最新进展大大提高了我们从数据中获得洞察力的能力。在本研究中,我们以{111}导向铂单层核壳催化剂上的氧还原反应(ORR)为例,展示了最近开发的理论注入神经网络(TinNet)算法如何以羟基(OH)的化学吸附能作为单一描述因子,快速搜索最佳位点图案,从而揭示支配位点反应活性变化的潜在物理因素。通过探索从现有材料数据库中热力学稳定的块体结构中生成的铂单层核壳合金(候选材料)的广阔设计空间,我们发现了新型合金体系以及之前已知的反应性金锁区催化剂。SHAP(SHapley Additive exPlanations)分析揭示了吸附共振能的重要作用,这种共振能来源于金属表面化学键中的-带相互作用。利用可解释的人工智能对表面反应性进行物理分析,为优化活性位点以外的催化性能开辟了新的设计途径。