An Iterative Machine Learning Approach for Discovering Unexpected Thermal Conductivity Enhancement in Aperiodic Superlattices

P. R. Chowdhury, X. Ruan
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Abstract

While machine learning (ML) has shown increasing effectiveness in optimizing materials properties under known physics, its application in challenging conventional wisdom and discovering new physics still remains challenging due to its interpolative nature. In this work, we demonstrate the potential of using ML for such applications by implementing an adaptive ML-accelerated search process that can discover unexpected lattice thermal conductivity ($\kappa_l$) enhancement instead of reduction in aperiodic superlattices (SLs) as compared to periodic superlattices. We use non-equilibrium molecular dynamics (NEMD) simulations for high-fidelity calculations of $\kappa_l$ for a small fraction of SLs in the search space, along with a convolutional neural network (CNN) which can rapidly predict $\kappa_l$ for a large number of structures. To ensure accurate prediction by the CNN for the target unknown structures, we iteratively identify aperiodic SLs containing structural features which lead to locally enhanced thermal transport, and include them as additional training data for the CNN in each iteration. As a result, our CNN can accurately predict the high $\kappa_l$ of aperiodic SLs that are absent from the initial training dataset, which allows us to identify the previously unseen exceptional structures. The identified RML structures exhibit increased coherent phonon contribution to thermal conductivity owing to the presence of closely spaced interfaces. Our work describes a general purpose machine learning approach for identifying low-probability-of-occurrence exceptional solutions within an extremely large subspace and discovering the underlying physics.
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在非周期超晶格中发现意想不到的热导率增强的迭代机器学习方法
虽然机器学习(ML)在优化已知物理条件下的材料性能方面显示出越来越大的有效性,但由于其插值性质,它在挑战传统智慧和发现新物理方面的应用仍然具有挑战性。在这项工作中,我们通过实现自适应ML加速搜索过程,证明了将ML用于此类应用的潜力,该过程可以发现非周期超晶格(SLs)的意外晶格热导率($\kappa_l$)增强而不是减少。我们使用非平衡分子动力学(NEMD)模拟来高保真地计算搜索空间中一小部分sl的$\kappa_l$,以及卷积神经网络(CNN),它可以快速预测大量结构的$\kappa_l$。为了保证CNN对目标未知结构的准确预测,我们迭代识别包含导致局部热输运增强的结构特征的非周期SLs,并在每次迭代中将其作为CNN的附加训练数据。因此,我们的CNN可以准确地预测初始训练数据集中没有的非周期性SLs的高$\kappa_l$,这使我们能够识别以前未见过的异常结构。由于存在紧密间隔的界面,所确定的RML结构表现出增加的相干声子对导热性的贡献。我们的工作描述了一种通用的机器学习方法,用于在极大的子空间中识别低概率发生的异常解决方案,并发现潜在的物理现象。
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