首页> 外文期刊>Acta Crystallographica, Section B. Structural science, crystal engineering and materials >Predicting displacements of octahedral cations in ferroelectric perovskites using machine learning
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Predicting displacements of octahedral cations in ferroelectric perovskites using machine learning

机译:使用机器学习预测铁电钙锡八面体阳离子的位移

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摘要

In ferroelectric perovskites, displacements of cations from the high-symmetry lattice positions in the paraelectric phase break the spatial inversion symmetry. Furthermore, the relative magnitude of ionic displacements correlate strongly with ferroelectric properties such as the Curie temperature. As a result, there is interest in predicting the relative displacements of cations prior to experiments. Here, machine learning is used to predict the average displacement of octahedral cations from its high-symmetry position in ferroelectric perovskites. Published octahedral cation displacements data from density functional theory (DFT) calculations are used to train machine learning models, where each cation is represented by features such as Pauling electronegativity,Martynov-Batsanov electronegativity and the ratio of valence electron number to nominal charge. Average displacements for ten new octahedral cations for which DFT data do not exist are predicted. Predictions are validated by comparing them with new DFT calculations and existing experimental data. The outcome of this work has implications in the design and discovery of novel ferroelectric perovskites.
机译:在铁电钙钛矿中,阳离子的位移来自高对称晶格位置的步骤中的晶格位置破坏了空间反转对称性。此外,离子位移的相对幅度与诸如居里温度的铁电性能强烈相关。结果,有兴趣在实验前预测阳离子的相对位移。这里,机器学习用于预测铁电钙钛矿中的高对称位置的八面体阳离子的平均位移。发布的八面体阳离子位移来自密度泛函理论(DFT)计算的数据用于训练机器学习模型,其中每个阳离子由诸如鲍林电负性,Martynov-Batsanov电气的特征和价电子数与标称电荷的比率表示。预测DFT数据不存在的十个新八面体阳离子的平均位移。通过将其与新DFT计算和现有的实验数据进行比较来验证预测。这项工作的结果对新型铁电普罗夫斯基斯的设计和发现有影响。

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