μ子自旋光谱学的自动计算工作流程

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY Digital discovery Pub Date : 2025-01-10 DOI:10.1039/D4DD00314D
Ifeanyi J. Onuorah, Miki Bonacci, Muhammad M. Isah, Marcello Mazzani, Roberto De Renzi, Giovanni Pizzi and Pietro Bonfà
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引用次数: 0

摘要

正介子自旋和弛豫光谱是一种成熟的研究材料的实验技术。它提供了一种局部探针,通常补充了磁系统研究中的散射技术,并代表了显示强非相干散射或中子吸收的材料的有价值的替代方案。计算方法可以有效地量化实验观测信号背后的微观相互作用,从而大大提高了该技术的预测能力。在这里,我们提出了一套有效的算法和工作流,致力于这项任务的自动化。特别地,我们采用了所谓的DFT+μ过程,其中系统在密度泛函理论(DFT)框架中被表征,μ子被建模为氢杂质。我们设计了一个自动化的策略来获得候选的介子停止点,它们与原子核的偶极相互作用,以及与电子基态的超精细相互作用。我们在经过充分研究的化合物上验证了该方法的实施,显示了我们的方案在准确性和使用简单性方面的有效性。
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Automated computational workflows for muon spin spectroscopy

Positive muon spin rotation and relaxation spectroscopy is a well established experimental technique for studying materials. It provides a local probe that generally complements scattering techniques in the study of magnetic systems and represents a valuable alternative for materials that display strong incoherent scattering or neutron absorption. Computational methods can effectively quantify the microscopic interactions underlying the experimentally observed signal, thus substantially boosting the predictive power of this technique. Here, we present an efficient set of algorithms and workflows devoted to the automation of this task. In particular, we adopt the so-called DFT+μ procedure, where the system is characterized in the density functional theory (DFT) framework with the muon modeled as a hydrogen impurity. We devise an automated strategy to obtain candidate muon stopping sites, their dipolar interaction with the nuclei, and hyperfine interactions with the electronic ground state. We validate the implementation on well-studied compounds, showing the effectiveness of our protocol in terms of accuracy and simplicity of use.

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