4.4 Article

WhatEELS. A python-based interactive software solution for ELNES analysis combining clustering and NLLS

Journal

ULTRAMICROSCOPY
Volume 232, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ultramic.2021.113403

Keywords

Electron energy loss spectroscopy (EELS); Energy loss near edge structure (ELNES); Non-linear least squares fitting (NLLS); Clustering analysis; Oxidation state analysis; Elemental quantification

Categories

Funding

  1. Spanish Ministery of Science and Innovation (MICINN) [PID2019-106165GB-C21]
  2. Spanish Research Network [RED2018-102609-T]
  3. Spanish Ministry of Enviroment (MITECO) [PID2019107106RB-C3119S01452-006]
  4. Generalitat de Catalunya [NANOEN2017 SGR 1421, MIND-2017 SGR 776]
  5. FI-AGAUR Research Fellowship Program (FI grant) [2018FI_B_00360]

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The study highlights the analysis of energy loss near edge structures in EELS for precise characterization of elemental oxidation states and local atomic coordination. It emphasizes the importance of combining nonlinear least squares fitting with clustering analysis and provides a convenient software solution called WhatEELS.
The analysis of energy loss near edge structures in EELS is a powerful method for a precise characterization of elemental oxidation states and local atomic coordination with an outstanding lateral resolution, down to the atomic scale. Given the complexity and sizes of the EELS spectrum images datasets acquired by the state-of-theart instrumentation, methods with low convergence times are usually preferred for spectral unmixing in quantitative analysis, such as multiple linear least squares fittings. Nevertheless, non-linear least squares fitting may be a superior choice for analysis in some cases, as it eliminates the need of calibrated reference spectra and provides information for each of the individual components included in the fitted model. To avoid some of the problems that the non-linear least squares algorithms may suffer dealing with mixed composition samples and, thus, a model comprised by a large number of individual curves we proposed the combination of clustering analysis for segmentation and non-linear least squares fitting for spectral analysis. Clustering analysis is capable of a fast classification of pixels in smaller subsets divided by their spectral characteristics, and thus increases the control over the model parameters in separated regions of the samples, classified by their specific compositions. Furthermore, along with this manuscript we provide access to a selfcontained and expandable modular software solution called WhatEELS. It was specifically designed to facilitate the combined use of clustering and NLLS, and includes a set of tools for white-lines analysis and elemental quantification. We successfully demonstrated its capabilities with a control sample of mesoporous cerium oxide doped with praseodymium and gadolinium, which posed challenging case-study given its spectral characteristics.

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