Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, MA, USA.
Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
Nature. 2023 Sep;621(7978):289-294. doi: 10.1038/s41586-023-06393-x. Epub 2023 Sep 13.
Reaction rates at spatially heterogeneous, unstable interfaces are notoriously difficult to quantify, yet are essential in engineering many chemical systems, such as batteries and electrocatalysts. Experimental characterizations of such materials by operando microscopy produce rich image datasets, but data-driven methods to learn physics from these images are still lacking because of the complex coupling of reaction kinetics, surface chemistry and phase separation. Here we show that heterogeneous reaction kinetics can be learned from in situ scanning transmission X-ray microscopy (STXM) images of carbon-coated lithium iron phosphate (LFP) nanoparticles. Combining a large dataset of STXM images with a thermodynamically consistent electrochemical phase-field model, partial differential equation (PDE)-constrained optimization and uncertainty quantification, we extract the free-energy landscape and reaction kinetics and verify their consistency with theoretical models. We also simultaneously learn the spatial heterogeneity of the reaction rate, which closely matches the carbon-coating thickness profiles obtained through Auger electron microscopy (AEM). Across 180,000 image pixels, the mean discrepancy with the learned model is remarkably small (<7%) and comparable with experimental noise. Our results open the possibility of learning nonequilibrium material properties beyond the reach of traditional experimental methods and offer a new non-destructive technique for characterizing and optimizing heterogeneous reactive surfaces.
在空间不均匀、不稳定的界面上的反应速率很难定量描述,然而在许多化学系统(如电池和电催化剂)的工程中却必不可少。通过在位显微镜对这些材料进行实验表征会产生丰富的图像数据集,但由于反应动力学、表面化学和相分离的复杂耦合,从这些图像中学习物理规律的数据驱动方法仍然缺乏。在这里,我们展示了可以从原位扫描透射 X 射线显微镜(STXM)对碳包覆磷酸铁锂(LFP)纳米颗粒的图像中学习不均匀反应动力学。我们将大量的 STXM 图像数据集与热力学一致的电化学相场模型、偏微分方程(PDE)约束优化和不确定性量化相结合,提取自由能景观和反应动力学,并验证它们与理论模型的一致性。我们还同时学习了反应速率的空间异质性,其与通过俄歇电子显微镜(AEM)获得的碳涂层厚度分布非常吻合。在 180000 个图像像素中,与学习模型的平均差异非常小(<7%),与实验噪声相当。我们的研究结果为学习传统实验方法无法达到的非平衡材料特性开辟了可能性,并为非破坏性地表征和优化不均匀反应表面提供了一种新技术。