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通过高通量相场模拟和机器学习优化压电纳米复合材料。

Optimizing Piezoelectric Nanocomposites by High-Throughput Phase-Field Simulation and Machine Learning.

机构信息

School of Optoelectronic Science and Engineering, University of Electronic Science and Technology of China, Chengdu, 610054, P. R. China.

School of Materials Science and Engineering, The Pennsylvania State University, University Park, PA, 16802, USA.

出版信息

Adv Sci (Weinh). 2022 May;9(13):e2105550. doi: 10.1002/advs.202105550. Epub 2022 Mar 11.

Abstract

Piezoelectric nanocomposites with oxide fillers in a polymer matrix combine the merit of high piezoelectric response of the oxides and flexibility as well as biocompatibility of the polymers. Understanding the role of the choice of materials and the filler-matrix architecture is critical to achieving desired functionality of a composite towards applications in flexible electronics and energy harvest devices. Herein, a high-throughput phase-field simulation is conducted to systematically reveal the influence of morphology and spatial orientation of an oxide filler on the piezoelectric, mechanical, and dielectric properties of the piezoelectric nanocomposites. It is discovered that with a constant filler volume fraction, a composite composed of vertical pillars exhibits superior piezoelectric response and electromechanical coupling coefficient as compared to the other geometric configurations. An analytical regression is established from a linear regression-based machine learning model, which can be employed to predict the performance of nanocomposites filled with oxides with a given set of piezoelectric coefficient, dielectric permittivity, and stiffness. This work not only sheds light on the fundamental mechanism of piezoelectric nanocomposites, but also offers a promising material design strategy for developing high-performance polymer/inorganic oxide composite-based wearable electronics.

摘要

具有氧化物填充剂的压电纳米复合材料结合了氧化物的高压电响应以及聚合物的柔韧性和生物相容性的优点。了解材料选择和填充剂-基质结构的作用对于实现复合材料在柔性电子产品和能量收集器件中的应用所需的功能至关重要。在此,通过高通量相场模拟系统地揭示了氧化物填充剂的形态和空间取向对压电、机械和介电性能的影响。研究发现,在恒定的填充剂体积分数下,与其他几何构型相比,由垂直柱组成的复合材料具有更优异的压电响应和机电耦合系数。基于线性回归的机器学习模型建立了一个分析回归,可用于预测具有给定压电系数、介电常数和刚度的氧化物填充纳米复合材料的性能。这项工作不仅揭示了压电纳米复合材料的基本机制,而且为开发基于高性能聚合物/无机氧化物复合材料的可穿戴电子产品提供了一种有前途的材料设计策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f4c4/9069389/1fa838ac9957/ADVS-9-2105550-g006.jpg

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