Comprehending the properties of complex nanoscale materials requires not just study of their morphology, but also determining the distribution and quantity of specific elements or phases, and the nature of bonding within these. Here we present quantitative 3D elemental and bonding mapping of a complex boron nitride based nanoparticle. This is achieved through a combination of electron energy-loss spectroscopy (EELS) in the scanning transmission electron microscope (STEM), novel EELS analysis methods and compressed sensing tomographic reconstruction [1].
For this study, a low-loss and core-loss STEM-EELS tilt series of spectrum images was recorded over the angular range -70° to 70° with a 17.5° tilt increment. The experiment was performed at 80 kV using a Tecnai Osiris with Gatan Enfinium spectrometer equipped with DualEELS. Figure 1a shows the high angle annular-dark field (HAADF) tilt-series images of the nanoparticle studied. The nanoparticle clearly possesses intricate structure, but the HAADF images are not fully revealing, obviating need for tomographic and analytical investigation.
EELS can achieve accurate absolute quantification of elemental composition without the need for standards, opening the door to quantitative analytical tomography. Moreover, the fine structure exhibited within the first tens of eV above an EELS ionisation edges is related to the local density of states, and hence, carries a wealth of information about the electronic environment of the ionised atom. However, direct measurement of the fine structure of pure compounds is only possible in homogeneous materials and in atomically resolved EELS of two-dimensional mono-layered materials. More commonly, EELS measurements comprise a linear combination of the fine structure corresponding to different atomic environments. Here we have devised a novel method to extract the fine structure of individual compounds from a multi-dimensional EELS dataset, based on a combination of curve fitting [2] and blind source separation [3]. Major practical complications with curve fitting for EELS quantification, especially in multi-dimensional datasets, are ill-conditioning and divergence of non-linear optimisation. To address this we have developed a new parallel Smart Adaptive Multidimensional Fitting (SAMFire) algorithm that learns the starting parameters from the dataset as the fitting progresses [4]. The analysis reveals that the particle is composed of boron (in different compounds), nitrogen, oxygen, carbon, silicon and calcium (Figure 1b, c). The EELS data analysis was performed using HyperSpy [5].
Tomographic reconstruction of the obtained tilt series of EELS elemental and bonding maps was performed using the FISTA algorithm with 3D total variation regularization [6]. Figure 2 displays a 3D visualization of the three boron compounds found in the sample, namely boron oxide, pure boron and boron nitride. Despite the small number of tilt series maps, the tomographic reconstruction reveals comprehensively the details of this complex 3D structure and provides new insight on the growth mechanism of the particle.
[1] R. Leary et al. Ultramicroscopy 131 (2013): 70–91
[2] T. Manoubi et al. Microscopy Microanalysis Microstructures 1.1 (1990): 23-39.
[3] F. de la Peña et al. Ultramicroscopy 111.2 (2011): 169-176.
[4] T. Ostasevicius et al. (in preparation).
[5] F. de la Peña et al. (2016). HyperSpy 0.8.4. Zenodo. 10.5281/zenodo.46897. http://hyperspy.org
[*] All authors acknowledge the support received from the European Union Seventh Framework Program under Grant Agreement 312483 – ESTEEM2 (Integrated Infrastructure Initiative – I3) . FDLP, TO, RKL and PM acknowledge support from the ERC under grant number 291522-3DIMAGE; and FDLP and CD under grant number 259619 PHOTO EM. RKL acknowledges a Junior Research Fellowship at Clare College. RA acknowledges funding from the Spanish MINECO (FIS2013-46159-C3-3-P), and from the EU under Grant Agreement 604391 Graphene Flagship.
Figures:

Figure 1. a) STEM HAADF tilt-series of the particle studied. b) Boron bonding maps at 0° tilt obtained by curve fitting quantification of the fine structure of the boron K EELS ionisation edge. c) Elemental maps at 0° tilt of all other elements present in the sample obtained by curve fitting EELS quantification. Scale bars: 30 nm.

Figure 2. Isosurface visualisation of the tomographic reconstruction of the EELS bonding maps for boron displayed in Figure 1b; pure boron (yellow), boron oxide (red) and boron nitride (blue). The isosurfaces have been sectioned to visualise the interior of the shell. The boron oxide seems to “leak” through an opening at the top of the boron nitride shell.
To cite this abstract:
Francisco de la Peña, Tomas Ostaševičius, Rowan K. Leary, Caterina Ducati, Paul A. Midgley, Raúl Arenal; Quantitative elemental and bonding EELS tomography of a complex nanoparticle. The 16th European Microscopy Congress, Lyon, France. https://emc-proceedings.com/abstract/quantitative-elemental-and-bonding-eels-tomography-of-a-complex-nanoparticle/. Accessed: September 21, 2023« Back to The 16th European Microscopy Congress 2016
EMC Abstracts - https://emc-proceedings.com/abstract/quantitative-elemental-and-bonding-eels-tomography-of-a-complex-nanoparticle/