电介质
材料科学
陶瓷
微波食品加热
钙钛矿(结构)
可预测性
高-κ电介质
凝聚态物理
工程物理
复合材料
光电子学
计算机科学
数学
统计
电信
物理
化学工程
工程类
作者
Yicong Ye,Ziqi Ni,Kaijia Hu,Yahao Li,Yongqian Peng,Xingyu Chen
标识
DOI:10.1016/j.mtcomm.2023.105733
摘要
With the development of communication technology, microwave dielectric ceramics are in increasingly urgent need. Perovskite ceramics, as a kind of microwave dielectric ceramics with large dielectric constant span, have broad application prospects. Predicting material properties before experiments can greatly accelerate the development of materials. Although the existing methods, including classical theory and density functional theory, are of practical use for dielectric constant prediction, unsatisfactory universality and predictability limit rational design of microwave dielectric ceramics. This work aims to develop an uncomplicated method to quickly predict the dielectric constant of perovskite ceramics. According to the element and content of the compound, the dielectric constant can be accurately predicted by our machine learning model. Moreover, the model provides prediction results that are consistent with the experiment, but are completely different from those calculated by C-M equation.
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