Faculty of Physics, Warsaw University of Technology, Warsaw, Poland.
J Comput Chem. 2021 Apr 30;42(11):740-745. doi: 10.1002/jcc.26493. Epub 2021 Feb 14.
This study aims to apply artificial neural networks for the prediction of the lattice parameters of materials with stannite- and kesterite-type structure, and to compare the results of predictions with that obtained in the calculations exploiting the density functional theory. Crystallographic data for 49 compounds with stannite-type structure and for four compounds with the kesterite-type structure are found and, based on it, crystal structures are calculated using the density functional theory (DFT) method in a two-step relaxation procedure for all compounds. An multilayer Perceptron is constructed, which then is trained on gathered crystallographic data. Values predicted by a neural network (lattice parameters) are compared with experimental data and with results of DFT calculations. Moreover, a global optimization method (the Uspex code) is used to find potentially novel crystal structures for investigated chemical compositions. The results are discussed in the term of advantages and disadvantages of each method.
本研究旨在应用人工神经网络预测具有硫镍矿型和方黄铜矿型结构的材料的晶格参数,并将预测结果与利用密度泛函理论计算得到的结果进行比较。本研究找到了 49 种具有硫镍矿型结构的化合物和 4 种具有方黄铜矿型结构的化合物的晶体学数据,并在此基础上,使用密度泛函理论(DFT)方法,通过两步弛豫程序,对所有化合物的晶体结构进行了计算。构建了一个多层感知器(MLP),然后在收集到的晶体学数据上进行训练。通过神经网络预测的值(晶格参数)与实验数据和 DFT 计算结果进行了比较。此外,还使用全局优化方法(Uspex 代码)来寻找研究化学成分的潜在新型晶体结构。结果从每种方法的优缺点方面进行了讨论。