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首页> 外文期刊>Journal of Physics, D. Applied Physics: A Europhysics Journal >Modeling of the impedance data of gadolinia doped ceria based actuators: a distribution function of relaxation times and machine learning approach
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Modeling of the impedance data of gadolinia doped ceria based actuators: a distribution function of relaxation times and machine learning approach

机译:钆掺杂型基于CiRIA基于CiRIA的执行器的阻抗数据的建模:放松时间和机器学习方法的分布功能

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Gadolinia-doped ceria is one of the most extensively examined oxide ion conductors to exhibit large nonclassical electrostriction. The electromechanical response depends on the grain and grain boundaries which can be probed using electrochemical impedance spectroscopy. In this study, we have modeled the impedance spectra from buckled and free standing gadolinia doped ceria (Gd0.2Ce0.8O1.9) membrane in Al/Ti/Gd0.2Ce0.8O1.9/Ti/Al electromechanical device, at different AC excitation voltages (2, 4, 6, 8 and 10 V), and starting from room temperature to 100 degrees C. The analysis of impedance spectrum is commonly done by equivalent circuit modeling to obtain the resistors (R) and capacitors (C). However, to overcome the inherent problems like non-uniqueness, over fitting, presently different approaches have been chosen such as impedance spectroscopy genetic programming (ISGP) and artificial neural networks (ANNs). ISGP finds an analytic form of the distribution function of relaxation times (DFRTs) using impedance spectra. The DFRT analysis reveals that the grain boundary capacitance for the membrane similar to 10(-8)-10(-9) F decreases with increasing temperature and excitation voltages. Besides, neural networks, which are optimized by Bayesian regularization, simulate both the real and imaginary parts of impedance following the pattern of experimental data up to several Hz. The DFRT analysis on this simulated impedance data shows an effect of grain boundaries. Indeed, ANNs as optimized by Levenberg-Marquardt method, can estimate the R and C's for present system with maximum relative errors of 24% and 22%, respectively.
机译:Gadolinia-掺杂的Ceria是最广泛地检查的氧化物离子导体之一,以表现出大型非分化电电伸缩。机电响应取决于使用电化学阻抗光谱可以探测的晶粒和晶界。在这项研究中,我们在Al / Ti / Gd0.2CE0.8O1.9 / Ti / Al机电装置中建模了来自屈曲和自由常规的Gadolinia掺杂的二氧化铈(Gd0.2CE0.8O1.9)膜的阻抗光谱,在不同的AC中激励电压(2,4,6,8和10V),并且从室温开始至100℃。通过等效电路建模通常通过等效电路建模来进行阻抗谱的分析,以获得电阻器(R)和电容器(C)。然而,为了克服非唯一性等固有问题,在拟合,目前的不同方法,例如阻抗光谱遗传编程(ISGP)和人工神经网络(ANNS)。 ISGP使用阻抗光谱找到松弛时间(DFRTS)的分布形式的分析形式。 DFRT分析显示,类似于10(-8)-10(-9)F的膜的晶界电容随着温度和激励电压的增加而降低。此外,通过贝叶斯正则化优化的神经网络,在实验数据模式下,模拟了阻抗的真实和虚部,高达几Hz。该模拟阻抗数据的DFRT分析显示了晶界的效果。实际上,ANNS由Levenberg-Marquardt方法优化,可以分别估计现有系统的R和C,分别具有24%和22%的最大相对误差。

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