Reliable and explainable machine learning for charge transfer/atomic structure relationships of hydrogenated nanodiamonds

被引:0
|
作者
Wang, Peng [1 ]
Ren, Jingli [1 ]
机构
[1] Zhengzhou Univ, Sch Math & Stat, Zhengzhou 450001, Peoples R China
基金
中国国家自然科学基金;
关键词
Supervised learning; Electron affinity; Ionization potential; Interpretability analysis; FUNCTIONALIZED NANODIAMONDS; ELECTRON-AFFINITY; DIAMOND; DELIVERY; CANCER;
D O I
10.1016/j.diamond.2024.110931
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
A supervised learning model combined with genetic algorithm is proposed to predict charge transfer efficiency of nanodiamonds. The model is chosen among ten models whose parameters are modified by genetic algorithm with ten -fold cross -validation, ensuring the accuracy of model. Generalization ability and reliability are further verified by prediction error and consistency tests of twin nanodiamonds. A hydrogenated surface nanodiamond with low ionization potential and a clean nanodiamond with low electron affinity are designed based on particle swarm optimization. It is further found via SHAP analysis that electron affinity is inhibited by surfaces with a {111} surface below 30 % or a {100} surface above 80 %. Similarly, ionization potential is reduced when the hybrid ratios of sp1 and sp2 are separately greater than 0.501 % or lower than 5.690 %.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] Charge-Transfer Landscape Manifesting the Structure-Rate Relationship in the Condensed Phase Via Machine Learning
    Brian, Dominikus
    Sun, Xiang
    JOURNAL OF PHYSICAL CHEMISTRY B, 2021, 125 (48): : 13267 - 13278
  • [22] Charge Transfer into Organic Thin Films: A Deeper Insight through Machine-Learning-Assisted Structure Search
    Egger, Alexander T.
    Hoermann, Lukas
    Jeindl, Andreas
    Scherbela, Michael
    Obersteiner, Veronika
    Todorovic, Milica
    Rinke, Patrick
    Hofmann, Oliver T.
    ADVANCED SCIENCE, 2020, 7 (15)
  • [23] Machine learning for structure determination and investigating the structure-property relationships of interfaces
    Oda, Hiromi
    Kiyohara, Shin
    Mizoguchi, Teruyasu
    JOURNAL OF PHYSICS-MATERIALS, 2019, 2 (03):
  • [24] Incorporating Polarization and Charge Transfer into a Point-Charge Model for Water Using Machine Learning
    Han, Bowen
    Isborn, Christine M.
    Shi, Liang
    JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2023, 14 (16): : 3869 - 3877
  • [25] Incorporating Polarization and Charge Transfer into a Point-Charge Model for Water Using Machine Learning
    Han, Bowen
    Isborn, Christine M.
    Shi, Liang
    JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2023, : 3869 - 3877
  • [26] Exploring the Polymorphism of Dicalcium Silicates Using Transfer Learning Enhanced Machine Learning Atomic Potentials
    Lopez-Zorrilla, Jon
    Aretxabaleta, Xabier M.
    Manzano, Hegoi
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2024, 20 (17) : 7682 - 7690
  • [27] Machine Learning Architectures for Scalable and Reliable Subject Indexing Fusion, Knowledge Transfer, and Confidence
    Toepfer, Martin
    RESEARCH AND ADVANCED TECHNOLOGY FOR DIGITAL LIBRARIES (TPDL 2017), 2017, 10450 : 644 - 647
  • [28] Vertical Metabolome Transfer from Mother to Child: An Explainable Machine Learning Method for Detecting Metabolomic Heritability
    Lovric, Mario
    Horner, David
    Chen, Liang
    Brustad, Nicklas
    Schoos, Ann-Marie Malby
    Lasky-Su, Jessica
    Chawes, Bo
    Rasmussen, Morten Arendt
    METABOLITES, 2024, 14 (03)
  • [29] Developing an Explainable Machine Learning-Based Personalised Dementia Risk Prediction Model: A Transfer Learning Approach With Ensemble Learning Algorithms
    Danso, Samuel O.
    Zeng, Zhanhang
    Muniz-Terrera, Graciela
    Ritchie, Craig W.
    FRONTIERS IN BIG DATA, 2021, 4
  • [30] Utilization of Machine Learning and Explainable Artificial Intelligence (XAI) for Fault Prediction and Diagnosis in Wafer Transfer Robot
    Jeon, Jeong Eun
    Hong, Sang Jeen
    Han, Seung-Soo
    ELECTRONICS, 2024, 13 (22)