Olawole O C, De D K, Olawole O F, Lamba R, Joel E S, Oyedepo S O, Ajayi A A, Adegbite O A, Ezema F I, Naghdi S, Olawole T D, Obembe O O, Oguniran K O
Department of Physics, Covenant University, Ota, Ogun State, Nigeria.
Sustainable Green Power Technologies, Mansfield, TX, 76063, USA.
Heliyon. 2022 Oct 14;8(10):e11030. doi: 10.1016/j.heliyon.2022.e11030. eCollection 2022 Oct.
The work function, which determines the behaviour of electrons in a material, remains a crucial factor in surface science to understand the corrosion rates and interfacial engineering in making photosensitive and electron-emitting devices. The present article reviews the various experimental methods and theoretical models employed for work function measurement along with their merits and demerits are discussed. Reports from the existing methods of work function measurements that Kelvin probe force microscopy (KPFM) is the most suitable measurement technique over other experimental methods. It has been observed from the literature that the computational methods that are capable of predicting the work functions of different metals have a higher computational cost. However, the stabilized Jellium model (SJM) has the potential to predict the work function of transition metals, simple metals, rare-earth metals and inner transition metals. The metallic plasma model (MPM) can predict polycrystalline metals, while the density functional theory (DFT) is a versatile tool for predicting the lowest and highest work function of the material with higher computational cost. The high-throughput density functional theory and machine learning (HTDFTML) tools are suitable for predicting the lowest and highest work functions of extreme material surfaces with cheaper computational cost. The combined Bayesian machine learning and first principle (CBMLFP) is suitable for predicting the lowest and highest work functions of the materials with a very low computational cost. Conclusively, HTDFTML and CBMLFP should be used to explore the work functions and surface energy in complex materials.
功函数决定了材料中电子的行为,在表面科学中,它仍然是理解腐蚀速率以及制造光敏和电子发射器件时界面工程的关键因素。本文综述了用于功函数测量的各种实验方法和理论模型,并讨论了它们的优缺点。现有功函数测量方法的报告表明,与其他实验方法相比,开尔文探针力显微镜(KPFM)是最合适的测量技术。从文献中可以观察到,能够预测不同金属功函数的计算方法具有较高的计算成本。然而,稳定化的凝胶模型(SJM)有潜力预测过渡金属、简单金属、稀土金属和内过渡金属的功函数。金属等离子体模型(MPM)可以预测多晶金属,而密度泛函理论(DFT)是一种多功能工具,可用于预测材料的最低和最高功函数,但计算成本较高。高通量密度泛函理论和机器学习(HTDFTML)工具适用于以较低的计算成本预测极端材料表面的最低和最高功函数。贝叶斯机器学习和第一原理相结合(CBMLFP)适用于以非常低的计算成本预测材料的最低和最高功函数。总之,应该使用HTDFTML和CBMLFP来探索复杂材料中的功函数和表面能。