School of Computation, Information and Technology (SoCIT), Technical University of Munich (TUM), Hans-Piloty-Strasse 1, 85748 Garching, Munich, Germany.
Department of Physics, National Institute of Technology Karnataka (NITK), Surathkal, PO: Srinivasnagar-575025, Mangalore, Karnataka, India.
Phys Chem Chem Phys. 2023 May 10;25(18):13170-13182. doi: 10.1039/d3cp00613a.
Adsorption study of environmentally toxic small gas molecules on two-dimensional (2D) materials plays a significant role in analyzing the performance of sensors. In this work, density functional theory (DFT) and machine learning (ML) techniques have been employed to systematically study the adsorption properties of CO, CO, and CH gas molecules on the pristine and defective planar magnesium monolayer, known as magnesene (2D-Mg). The DFT analysis showed that mechanically robust 2D-Mg retains its metallicity in the presence of both mono and di-vacancy defects. Our observations have shown that 2D-Mg, whether defective or pristine, exhibits distinct adsorption behaviors towards CO, CO, and CH gas molecules, including varying chemisorption and physisorption, charge transfer, and distance from the gas molecules. When analyzing the recovery time of gas molecules at room temperature, it is clear that adsorption energy has a direct correlation with the adsorption-desorption cycles, and CH possesses an ultra-low recovery time (15.27 ps) compared to CO (1.04 ns) and CO (0.90 μs) molecules. The analysis showed that defects do not have a significant impact on the work function of 2D-Mg. However, the work function decreased upon adsorption of CH, resulting in improved sensitivity due to changes in the electronic properties. Additionally, we explored supervised ML regression models to evaluate their ability to act as a surrogate for the DFT-based adsorption energy calculation. Using both system statistics and smooth overlap of atomic position (SOAP)-based featurization, we observed that adsorption energies can be predicted with a mean absolute error of 0.10 eV.
环境有毒小气体分子在二维(2D)材料上的吸附研究在分析传感器性能方面起着重要作用。在这项工作中,密度泛函理论(DFT)和机器学习(ML)技术被用于系统地研究原始和有缺陷的平面镁单层(称为镁烯(2D-Mg))上 CO、CO 和 CH 气体分子的吸附特性。DFT 分析表明,机械坚固的 2D-Mg 在存在单空位和双空位缺陷的情况下仍保持其金属性。我们的观察表明,2D-Mg,无论是有缺陷还是原始的,对 CO、CO 和 CH 气体分子表现出不同的吸附行为,包括不同的化学吸附和物理吸附、电荷转移和与气体分子的距离。当分析室温下气体分子的恢复时间时,很明显吸附能与吸附-解吸循环直接相关,与 CO(1.04 ns)和 CO(0.90 μs)分子相比,CH 具有超短的恢复时间(15.27 ps)。分析表明,缺陷对 2D-Mg 的功函数没有显著影响。然而,CH 的吸附导致功函数降低,从而由于电子性质的变化提高了灵敏度。此外,我们探索了监督 ML 回归模型,以评估它们作为基于 DFT 的吸附能计算的替代物的能力。使用系统统计和基于原子位置平滑重叠(SOAP)的特征化,我们观察到吸附能可以用 0.10 eV 的平均绝对误差来预测。