Thomas Penfold, Luke Watson, Clelia Middleton, Tudur David, Sneha Verma, thomas pope, Julia Kaczmarek, Conor Douglas Rankine
{"title":"Machine-Learning Strategies for the Accurate and Efficient Analysis of X-ray Spectroscopy","authors":"Thomas Penfold, Luke Watson, Clelia Middleton, Tudur David, Sneha Verma, thomas pope, Julia Kaczmarek, Conor Douglas Rankine","doi":"10.1088/2632-2153/ad5074","DOIUrl":null,"url":null,"abstract":"\n Computational spectroscopy has emerged as a critical tool for researchers looking to achieve both qualitative and quantitative interpretations of experimental spectra. Over the past decade, increased interactions between experiment and theory have created a positive feedback loop that has stimulated developments in both domains. In particular, the increased accuracy of calculations has led to them becoming an indispensable tool for the analysis of spectroscopies across the electromagnetic spectrum. This progress is especially well demonstrated for short-wavelength techniques, e.g. core-hole (X-ray) spectroscopies, whose prevalence has increased following the advent of modern X-ray facilities including third-generation synchrotrons and X-ray free-electron lasers (XFELs). While calculations based on well-established wavefunction or density-functional methods continue to dominate the greater part of spectral analyses in the literature, emerging developments in machine-learning algorithms are beginning to open up new opportunities to complement these traditional techniques with fast, accurate, and affordable 'black-box' approaches. This Topical Review recounts recent progress in data-driven/machine-learning approaches for computational X-ray spectroscopy. We discuss the achievements and limitations of the presently-available approaches and review the potential that these techniques have to expand the scope and reach of computational and experimental X-ray spectroscopic studies.","PeriodicalId":503691,"journal":{"name":"Machine Learning: Science and Technology","volume":"79 9","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-05-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Machine Learning: Science and Technology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1088/2632-2153/ad5074","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Computational spectroscopy has emerged as a critical tool for researchers looking to achieve both qualitative and quantitative interpretations of experimental spectra. Over the past decade, increased interactions between experiment and theory have created a positive feedback loop that has stimulated developments in both domains. In particular, the increased accuracy of calculations has led to them becoming an indispensable tool for the analysis of spectroscopies across the electromagnetic spectrum. This progress is especially well demonstrated for short-wavelength techniques, e.g. core-hole (X-ray) spectroscopies, whose prevalence has increased following the advent of modern X-ray facilities including third-generation synchrotrons and X-ray free-electron lasers (XFELs). While calculations based on well-established wavefunction or density-functional methods continue to dominate the greater part of spectral analyses in the literature, emerging developments in machine-learning algorithms are beginning to open up new opportunities to complement these traditional techniques with fast, accurate, and affordable 'black-box' approaches. This Topical Review recounts recent progress in data-driven/machine-learning approaches for computational X-ray spectroscopy. We discuss the achievements and limitations of the presently-available approaches and review the potential that these techniques have to expand the scope and reach of computational and experimental X-ray spectroscopic studies.
计算光谱学已成为研究人员对实验光谱进行定性和定量解释的重要工具。在过去十年中,实验与理论之间的互动日益频繁,形成了一个正反馈循环,促进了这两个领域的发展。特别是,计算精度的提高使其成为分析整个电磁波谱的不可或缺的工具。这种进步在短波长技术(如芯孔(X 射线)光谱)方面体现得尤为明显,随着包括第三代同步加速器和 X 射线自由电子激光器(XFEL)在内的现代 X 射线设备的出现,这种技术的普及率也在不断提高。虽然基于成熟的波函数或密度函数方法的计算仍在文献中的光谱分析中占主导地位,但机器学习算法的新兴发展已开始为利用快速、准确和经济实惠的 "黑盒 "方法补充这些传统技术带来新的机遇。本专题综述回顾了计算 X 射线光谱学数据驱动/机器学习方法的最新进展。我们讨论了目前可用方法的成就和局限性,并回顾了这些技术在扩大计算和实验 X 射线光谱研究的范围和影响力方面的潜力。