将材料信息学引入电介质设计

M. Sato
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引用次数: 0

摘要

使用机器学习技术来发现和设计新材料已经变得越来越普遍。大数据使机器学习技术能够做出准确的预测。然而,实验数据并不丰富,特别是在介电性能方面。此外,聚合物的性能不仅取决于单体的结构,还取决于聚合物的长度、形态、添加剂等,这使问题进一步复杂化。在这里,我们回顾了与计算和数据驱动介电材料设计相关的最新研究成果。首先,我们展示了如何使用小数据集准确预测气体的介电特性,并进一步发现可能优于现有SF6替代气体的新分子。然后我们证明了通过适当的特征工程可以预测聚合物/无机填料复合材料的热学和电学性能。主要研究结果如下:(1)与我们的直觉一致,一般来说,准确预测介电性能比预测热性能或力学性能困难;(2)工艺条件对聚合物的电性能有特别大的影响;(3)了解影响宏观性能的底层物理,就可以合理准确地预测各种材料的介电性能。(4)机器学习帮助我们了解控制介电性能的因素,(5)它也可以用来指导实验或提供测试标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing materials informatics to dielectrics design
It has become increasingly common to use machine learning techniques for discovering and designing novel materials. Big data enables machine learning techniques to make accurate predictions. However, experimental data are not abundant especially in the case of dielectric properties. In addition, the properties of polymers depend not only on the structure of monomers but also on the length of polymers, morphology, additives, and so on which further complicates the problem. Here, we review our latest research outcomes that are related to computational and data-driven dielectric materials design. First, we show how we were able to accurately predict the dielectric properties of gases using a small data set and further discover new molecules that can potentially outperform existing SF6 alternative gases. Then we show that by proper feature engineering it is possible to predict the thermal and electrical properties of polymer/inorganic filler composites. The main findings are as follows: (1) in line with our intuition, in general, accurate prediction of dielectric properties is difficult compared to the prediction of thermal or mechanical properties, (2) the process condition has an especially great impact on the electric properties of polymers, (3) with the knowledge of the underlying physics affecting the macroscopic properties, one can predict the dielectric properties of various materials with reasonable accuracy, (4) machine learning helps us understand the factors that control the dielectric properties, and (5) it can also be used to guide experiments or to provide testing standards.
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