首先通过神经网络对纳米催化剂的EXAFS数据进行分析

IF 6 1区 化学 Q2 CHEMISTRY, PHYSICAL Journal of Catalysis Pub Date : 2025-07-01 Epub Date: 2025-04-16 DOI:10.1016/j.jcat.2025.116145
Nicholas Marcella , Ryuichi Shimogawa , Yongchun Xiang , Anatoly I. Frenkel
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引用次数: 0

摘要

了解纳米颗粒催化剂的工作机制需要了解它们的结构和电子描述符,这些描述符通常在operando x射线吸收精细结构(XAFS)光谱实验中测量。我们引入了一个基于神经网络的框架,用于将扩展XAFS (EXAFS)光谱快速映射到结构参数上,作为常用的非线性最小二乘拟合方法的替代方案。我们的方法利用在理论EXAFS上训练的多层感知器,并根据常用纳米颗粒类型的理论测试数据和实验光谱进行验证。该网络有助于降低参数之间的相关性,在存在噪声和故障的情况下实现高精度,并且可以在最少的用户干预下提供实时参数预测。对参数的不确定性也进行了估计。该方法可以很容易地集成到光束线管道或实验室数据分析工作流程中,并具有加速高通量和催化剂表征和测试的潜力。
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First shell EXAFS data analysis of nanocatalysts via neural networks
Understanding the mechanisms of work of nanoparticle catalysts requires the knowledge of their structural and electronic descriptors, often measured in operando X-ray absorption fine structure (XAFS) spectroscopy experiments. We introduce a neural-network-based framework for rapidly mapping the extended XAFS (EXAFS) spectra onto structural parameters as an alternative to the commonly used non-linear least-squares fitting approaches. Our method leverages a multilayer perceptron trained on theoretical EXAFS and validated against theoretical test data and experimental spectra of frequently used nanoparticle types. The network helps lower the correlation between parameters, achieves high accuracy in the presence of noise and glitches, and can provide real-time parameter predictions with minimal user intervention. Parameter uncertainties are estimated as well. This method can be readily integrated into beamline pipelines or laboratory data analysis workflow and has the potential to accelerate high-throughput catalyst characterization and testing.
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来源期刊
Journal of Catalysis
Journal of Catalysis 工程技术-工程:化工
CiteScore
12.30
自引率
5.50%
发文量
447
审稿时长
31 days
期刊介绍: The Journal of Catalysis publishes scholarly articles on both heterogeneous and homogeneous catalysis, covering a wide range of chemical transformations. These include various types of catalysis, such as those mediated by photons, plasmons, and electrons. The focus of the studies is to understand the relationship between catalytic function and the underlying chemical properties of surfaces and metal complexes. The articles in the journal offer innovative concepts and explore the synthesis and kinetics of inorganic solids and homogeneous complexes. Furthermore, they discuss spectroscopic techniques for characterizing catalysts, investigate the interaction of probes and reacting species with catalysts, and employ theoretical methods. The research presented in the journal should have direct relevance to the field of catalytic processes, addressing either fundamental aspects or applications of catalysis.
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