基于深度神经网络的铁电材料介电性能预测。

IF 2.6 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES
Jiachen Wang, Ziyu Cui, Xin Zhang, Jikai Zhao, Fan Li, Zhongbin Zhou, Nathan Saye Teah, Yunfei Gao, Gaochao Zhao, Yang Yang
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引用次数: 0

摘要

铁电材料以其独特的电学特性成为材料科学与工程领域的重要研究热点。然而,这些材料的电特性受到多种因素的影响,包括材料成分、微观结构和制备工艺,这些因素带来了相当大的随机性和不确定性。传统的实验和模拟方法往往不足以捕捉这些复杂的相互作用,从而阻碍了材料性能的预测和优化。本文提出了一种利用深度神经网络(dnn)预测铁电材料电性能的新方法。dnn使用实验数据进行训练,并作为代理模型来预测关键电学特性,如介电常数和介电峰值。采用固相反应法制备了(1-x)Na0.5Bi0.5TiO3-xSrZrO3陶瓷,并测定了NBT-xSZ的相结构和电学性能。实验结果表明,深度神经网络模型有效地捕捉了材料成分、制备工艺和微观结构等因素对电性能的复杂影响。预测值与实验结果的差异仍在可接受的范围内。通过对绝对误差(R²)的比较,验证了DNN模型的实用性和可靠性。该模型的强大性能不仅加速了新材料的开发,而且增强了现有材料性能的优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of dielectric properties of ferroelectric materials based on deep neural networks.

Ferroelectric materials have emerged as significant research hotspots within the field of materials science and engineering, primarily due to their unique electrical properties. However, the electrical characteristics of these materials are influenced by various factors, including material composition, microstructure, and preparation processes, which introduce considerable randomness and uncertainty. Traditional experimental and simulation methods are often insufficient for capturing these complex interactions, thereby hindering the prediction and optimization of material performance. This paper presents a novel approach for predicting the electrical properties of ferroelectric materials by utilizing deep neural networks (DNNs). The DNNs are trained using experimental data and serve as a proxy model to predict critical electrical properties, such as the dielectric constant and dielectric peak. The (1-x)Na0.5Bi0.5TiO3-xSrZrO3 ceramics were synthesized via the solid-state reaction method, and both the phase structure and electrical properties of NBT-xSZ were measured. The experimental results indicate that the DNN model effectively captures the intricate influences of factors such as material composition, preparation processes, and microstructure on electrical properties. The discrepancy between predicted values and experimental results remains within an acceptable range. By comparing the absolute error (<5) between measured and predicted data, alongside evaluation metrics such as MAPE, SMAPE, and R², the practicality and reliability of the DNN model are substantiated. The strong performance of this model not only accelerates the development of new materials but also enhances the optimization of the performance of existing materials.

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来源期刊
Science Progress
Science Progress Multidisciplinary-Multidisciplinary
CiteScore
3.80
自引率
0.00%
发文量
119
期刊介绍: Science Progress has for over 100 years been a highly regarded review publication in science, technology and medicine. Its objective is to excite the readers'' interest in areas with which they may not be fully familiar but which could facilitate their interest, or even activity, in a cognate field.
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