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贝叶斯协同导航:通过主动学习对材料数字孪生体进行动态设计

Bayesian Conavigation: Dynamic Designing of the Material Digital Twins via Active Learning.

作者信息

Slautin Boris N, Liu Yongtao, Funakubo Hiroshi, Vasudevan Rama K, Ziatdinov Maxim, Kalinin Sergei V

机构信息

Institute for Materials Science and Center for Nanointegration Duisburg-Essen (CENIDE), University of Duisburg-Essen, Essen 45141, Germany.

Center for Nanophase Materials Sciences, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.

出版信息

ACS Nano. 2024 Sep 10;18(36):24898-24908. doi: 10.1021/acsnano.4c05368. Epub 2024 Aug 25.

DOI:10.1021/acsnano.4c05368
PMID:39183496
Abstract

Scientific advancement is universally based on the dynamic interplay between theoretical insights, modeling, and experimental discoveries. However, this feedback loop is often slow, including delayed community interactions and the gradual integration of experimental data into theoretical frameworks. This challenge is particularly exacerbated in domains dealing with high-dimensional object spaces, such as molecules and complex microstructures. Hence, the integration of theory within automated and autonomous experimental setups, or theory in the loop-automated experiment, is emerging as a crucial objective for accelerating scientific research. The critical aspect is to use not only theory but also on-the-fly theory updates during the experiment. Here, we introduce a method for integrating theory into the loop through Bayesian conavigation of theoretical model space and experimentation. Our approach leverages the concurrent development of surrogate models for both simulation and experimental domains at the rates determined by latencies and costs of experiments and computation, alongside the adjustment of control parameters within theoretical models to minimize epistemic uncertainty over the experimental object spaces. This methodology facilitates the creation of digital twins of material structures, encompassing both the surrogate model of behavior that includes the correlative part and the theoretical model itself. While being demonstrated here within the context of functional responses in ferroelectric materials, our approach holds promise for broader applications, such as the exploration of optical properties in nanoclusters, microstructure-dependent properties in complex materials, and properties of molecular systems.

摘要

科学进步普遍基于理论见解、建模和实验发现之间的动态相互作用。然而,这种反馈循环往往很缓慢,包括社区互动的延迟以及实验数据逐渐融入理论框架的过程。在处理高维对象空间的领域,如分子和复杂微观结构,这一挑战尤为突出。因此,将理论整合到自动化和自主实验装置中,即实验中的理论循环自动化,正成为加速科学研究的关键目标。关键在于不仅要使用理论,还要在实验过程中进行实时理论更新。在此,我们介绍一种通过理论模型空间的贝叶斯导航和实验将理论整合到循环中的方法。我们的方法利用代理模型在模拟和实验领域的同步发展,其发展速度由实验和计算的延迟及成本决定,同时调整理论模型中的控制参数,以最小化实验对象空间上的认知不确定性。这种方法有助于创建材料结构的数字孪生体,包括包含相关部分的行为代理模型和理论模型本身。虽然这里是在铁电材料功能响应的背景下进行演示的,但我们的方法有望在更广泛的应用中发挥作用,如纳米团簇光学性质的探索、复杂材料中微观结构相关性质的研究以及分子系统的性质研究。

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