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引用次数: 0
摘要
铅(镁1/3铌2/3)O3-铅钛氧化物(PMN-PT)压电陶瓷具有优异的压电特性,应用广泛。调整 PMN/PT 的固溶体比率和不同浓度的元素掺杂是调节其压电系数的主要方法。这些可控条件的结合导致陶瓷中可能存在的成分呈指数级增长,这使得通过额外的实验或理论计算来扩展样本数据并非易事。本文提出了一种物理嵌入式机器学习方法,以克服获取不同成分的 Sm 掺杂 PMN-PT 陶瓷的压电系数和居里温度的困难。与全数据驱动模型相比,物理嵌入式机器学习能够通过铁电特性之间的潜在相关性学习基于小数据集的非线性变化规则。根据模型输出,我们探索了不同 Sm 掺杂量下的形态相边界 (MPB) 位置。我们还找到了具有最佳压电特性和综合性能的元件。此外,我们还根据获得的结果建立了一个数据库,通过该数据库,我们可以根据具体需求快速找到掺杂 Sm 的 PMN-PT 陶瓷的最佳成分。
Physics-embedded machine learning search for Sm-doped PMN-PT piezoelectric ceramics with high performance
Pb(Mg1/3Nb2/3)O3–PbTiO3 (PMN-PT) piezoelectric ceramics have excellent piezoelectric properties and are used in a wide range of applications. Adjusting the solid solution ratios of PMN/PT and different concentrations of elemental doping are the main methods to modulate their piezoelectric coefficients. The combination of these controllable conditions leads to an exponential increase of possible compositions in ceramics, which makes it not easy to extend the sample data by additional experimental or theoretical calculations. In this paper, a physics-embedded machine learning method is proposed to overcome the difficulties in obtaining piezoelectric coefficients and Curie temperatures of Sm-doped PMN-PT ceramics with different components. In contrast to all-data-driven model, physics-embedded machine learning is able to learn nonlinear variation rules based on small datasets through potential correlation between ferroelectric properties. Based on the model outputs, the positions of morphotropic phase boundary (MPB) with different Sm doping amounts are explored. We also find the components with the best piezoelectric property and comprehensive performance. Moreover, we set up a database according to the obtained results, through which we can quickly find the optimal components of Sm-doped PMN-PT ceramics according to our specific needs.
期刊介绍:
Chinese Physics B is an international journal covering the latest developments and achievements in all branches of physics worldwide (with the exception of nuclear physics and physics of elementary particles and fields, which is covered by Chinese Physics C). It publishes original research papers and rapid communications reflecting creative and innovative achievements across the field of physics, as well as review articles covering important accomplishments in the frontiers of physics.
Subject coverage includes:
Condensed matter physics and the physics of materials
Atomic, molecular and optical physics
Statistical, nonlinear and soft matter physics
Plasma physics
Interdisciplinary physics.