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首页> 外文期刊>Journal of Applied Physics >Guided search for desired functional responses via Bayesian optimization of generative model: Hysteresis loop shape engineering in ferroelectrics
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Guided search for desired functional responses via Bayesian optimization of generative model: Hysteresis loop shape engineering in ferroelectrics

机译:通过生成模型的贝叶斯优化的指导搜索所需的功能响应:铁电磁滞环形工程

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摘要

Advances in theoretical modeling across multiple disciplines have yielded generative models capable of high veracity in predicting macroscopic functional responses of materials emerging as a result of complex non-local interactions. Correspondingly, of interest is the inverse problem of finding the model parameter that will yield desired macroscopic responses, such as stress-strain curves, ferroelectric hysteresis loops, etc. Here, we suggest and implement Gaussian process based methods that allow to effectively sample the degenerate parameter space of a complex non-local model to output regions of parameter space which yield desired functionalities. We discuss the specific adaptation of the acquisition function and sampling function to make the process efficient and balance the efficient exploration of parameter space for multiple possible minima and exploitation to densely sample the regions of interest where target behaviors are optimized. This approach is illustrated via the hysteresis loop engineering in ferroelectric materials but can be adapted to other functionalities and generative models.
机译:多学科的理论模型的进展已经产生了能够高能力的生成模型,以预测由于复杂的非局部相互作用而出现的材料的宏观官能反应。相应地,感兴趣的是找到模型参数的逆问题,该模型参数将产生所需的宏观响应,例如应力 - 应变曲线,铁电磁滞回路等,我们建议并实现基于基于高斯过程的方法,以便有效地样本脱掉退化的方法复杂非本地模型的参数空间,以产生所需功能的参数空间的输出区域。我们讨论采集功能和采样功能的具体调整,使过程有效,平衡参数空间的有效探索,以进行多种可能的最小值和剥削,以密集地对目标行为进行优化的感兴趣区域。这种方法通过铁电材料中的滞后环工程来示出,但可以适应其他功能和生成模型。

著录项

  • 来源
    《Journal of Applied Physics》 |2020年第2期|024102.1-024102.8|共8页
  • 作者单位

    The Center for Nanophase Materials Sciences Oak Ridge National Laboratory Oak Ridge Tennessee 37831 USA;

    The Center for Nanophase Materials Sciences Oak Ridge National Laboratory Oak Ridge Tennessee 37831 USA The Computational Sciences and Engineering Division Oak Ridge National Laboratory Oak Ridge Tennessee 37831 USA;

    The Center for Nanophase Materials Sciences Oak Ridge National Laboratory Oak Ridge Tennessee 37831 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
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