过电位
Boosting(机器学习)
密度泛函理论
人工智能
催化作用
计算机科学
梯度升压
机器学习
化学
钥匙(锁)
氧还原
工作流程
极限(数学)
计算
还原(数学)
集成学习
对偶(语法数字)
可持续能源
过渡金属
电化学
电催化剂
氧还原反应
生化工程
纳米技术
贵金属
产量(工程)
操作员(生物学)
材料科学
作者
Yuejiao Yang,Xiaopei Hu,Yipin Lv,Rongwei Ma,Xinru Wei,Hyun Woo Kim,Jin Yong Lee,Baotao Kang
标识
DOI:10.1021/acs.jpcc.5c06757
摘要
The oxygen reduction reaction (ORR) is critical for sustainable energy solutions, yet noble metal catalysts’ costs limit their scalability. This study investigates transition metal-doped biphenylene network (TM-BPNs) single-atom catalysts (SACs) with tailored nitrogen doping as affordable alternatives. Using density functional theory (DFT), we designed 460 TM-BPNs variants with 3d metals (Sc–Zn), evaluating their structures, electronic properties, and dual stability. Most TM-BPNs displayed quasi-metallic or semiconducting traits and robust thermodynamic and electrochemical stability, indicating synthetic viability. ORR assessments showed high potential, with V5/CCCC-Ni achieving an ultralow overpotential of 0.13 V. A novel approach combining the Extreme Gradient Boosting Regressor (XGBR) and Sure Independence Screening and Sparsifying Operator (SISSO) was developed to predict ORR performance. XGBR, with an R2 of 0.96, identified key features such as the atomic number of TM (NA) and coordination environment influencing ΔG*OH, validated by SHAP analysis. SISSO then derived a 3D descriptor (R2 = 0.89) that elucidates physical properties governing catalysis, enhancing interpretability. This XGBR-SISSO synergy enables rapid screening and mechanistic insight, underscoring N-doping’s role in optimizing TM-BPNs. These findings provide a versatile framework for designing efficient, low-cost ORR electrocatalysts.
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