research papers
Modelling dynamical 3D electron diffraction intensities. II. The role of inelastic scattering
aDepartment of Physics, Durham University, South Road, Durham, DH1 3LE, United Kingdom
*Correspondence e-mail: b.g.mendis@durham.ac.uk
The strong interaction of high-energy electrons with a crystal results in both dynamical
and inelastic events, particularly phonon and plasmon excitation, which have relatively large cross sections. For accurate it is therefore important to uncover the impact of on the Bragg beam intensities. Here a combined Bloch wave–Monte Carlo method is used to simulate phonon and plasmon scattering in crystals. The simulated thermal and plasmon diffuse scattering are consistent with experimental results. The simulations also confirm the empirical observation of a weaker unscattered beam intensity with increasing energy loss in the low-loss regime, while the Bragg-diffracted beam intensities do not change significantly. The beam intensities include the diffuse scattered background and have been normalized to adjust for the It is speculated that the random azimuthal scattering angle during inelastic events transfers part of the unscattered beam intensity to the inner Bragg reflections. should not significantly influence provided there are no artefacts from any background subtraction, since the relative intensity of the diffracted beams (which includes the diffuse scattering) remains approximately constant in the low energy loss regime.Keywords: inelastic diffuse scattering; phonons; plasmons; Bloch waves.
1. Introduction
Three-dimensional electron diffraction (3D-ED) is a rapidly emerging technique for et al., 2007; Mugnaioli et al., 2009; Zhang et al., 2010; Nederlof et al., 2013; Gemmi et al., 2019). Since electrons are charged, it is possible to analyse nanometre-sized crystals that would otherwise be too small for X-ray diffraction. However, even for these relatively thin samples the Bragg-diffracted intensities must be treated dynamically for accurate results (Palatinus et al., 2015a; Klar et al., 2023; Cleverley & Beanland, 2023). Despite the inevitable improvement in the R factors for electron diffraction are still larger than the corresponding X-ray values (Klar et al., 2023). The discrepancy could be due to a number of reasons, such as a non-uniform crystal shape (most calculations assume the specimen to be a parallel-sided slab), crystal mosaicity, extraneous surface layers and surface damage, or specimen bending. In all but the very thinnest samples, however, will be omnipresent, particularly low-energy excitations such as thermal diffuse scattering (TDS) from phonons and plasmon scattering (Egerton, 1996). In general, energy filtering improves the solution (Gemmi & Oleynikov, 2013; Eggeman et al., 2013; Yang et al., 2022), although there are also reports where no benefits were observed (Palatinus et al., 2015a). Latychevskaia & Abrahams (2019) have argued that mitigates strong in protein crystals, so that useful information can still be extracted from relatively thick specimens.
characterization within a transmission electron microscope (KolbBloch waves (Hirsch et al., 1965; Spence & Zuo, 1992) are often used for simulating 3D-ED data (Palatinus et al., 2015b), but in its current form this approach is not particularly suitable for For example, TDS is modelled phenomenologically by introducing an imaginary term to the atom scattering factor, the so-called `absorptive form factor' (Hall & Hirsch, 1965; Bird & King, 1990). This results in a depletion of intensity as the electron beam propagates through the crystal. The missing intensity is the TDS, and no details about its angular distribution, such as Kikuchi bands, can be obtained. The standard method for simulating TDS is therefore multislice (Cowley & Moodie, 1957; Kirkland, 2010) coupled with frozen phonons (Loane et al., 1991). Recently, Monte Carlo methods have also been introduced to simulate plasmon scattering using multislice (Mendis, 2019; Barthel et al., 2019; Mendis et al., 2020; Mendis, 2023a). Despite multislice being better at modelling it is not very convenient for simulating 3D-ED data sets. This is because of the need to create supercells that satisfy periodic boundary conditions, which is impossible to achieve in an electron diffraction tomography series. In principle, it is possible to minimize aliasing artefacts with large supercells and a Hanning window, although this increases the computing cost. The Bloch wave method, on the other hand, only requires the crystal as input and can therefore easily be adapted to different specimen orientations and/or beam incident angles (e.g. precession electron diffraction).
In this work, the Monte Carlo method of Mendis (2019) is combined with Bloch waves to simulate both phonon and plasmon In this new scheme there is no loss of electron intensity due to TDS, and all features in the diffraction pattern, including Kikuchi bands, are reproduced. Using both experiment and simulation, it is shown that has an important effect on the relative intensities of Bragg reflections with respect to the unscattered beam. The paper is organized as follows. In Section 2 the theory behind Bloch wave is presented. Section 3 outlines the experimental and simulation methodologies, while results are presented in Section 4. The paper concludes with a discussion on the implications of for (Section 5).
2. Bloch wave inelastic scattering
within a perfect crystal is (Spence & Zuo, 1992where φg(z) is a column vector of Bragg-diffracted wavefunctions at depth z and A is the so-called structure matrix, whose elements are defined by
sg and ξg are the deviation parameter and extinction distance, respectively, for the reciprocal vector g, while K is the incident electron wavenumber with component Kn along the specimen surface normal. Strictly speaking, the incident wavevector must be corrected for the mean inner potential of the crystal, although this has only a small effect on high-energy electron diffraction. The matrix exponential in equation (1) is conveniently evaluated by first performing an eigen decomposition of the structure matrix, i.e.
where c(j) is the eigenvector and γ(j) the eigenvalue. Note that A is a N×N square matrix and c(j) is a N×1 column vector. There are N solutions of c(j) and γ(j) that satisfy equation (3), which can be used to re-express equation (1) as
where C is a square matrix consisting of all eigenvector solutions c(j), and is a diagonal matrix with the N values of along its diagonal. Starting from the illumination conditions at the entrance surface, i.e. φg(0), the elastically scattered Bragg beam intensities |φg(z)|2 can be calculated at any given depth within the crystal using equation (4).
Next we consider a). Therefore, Monte Carlo methods can be applied to phonon and plasmon The principle is illustrated schematically in Fig. 1(a). The incident electron travels a distance s before undergoing which causes a deflection in the electron trajectory by polar and azimuthal angles θ and ϕ, respectively. The parameters s, θ and ϕ are estimated using computer-generated random numbers, in a manner that is consistent with the physics of the underlying scattering mechanism (Joy, 1995). As an example, for uncorrelated phonons (i.e. atoms vibrating independently of one another) and plasmons, there is no azimuthal dependence in the scattering, so that ϕ can be estimated using a uniform random number () in the range [0, 1],
It can be shown that, for highly delocalized excitations, such as low-momentum phonons and plasmons, the incident electrons effectively show particle-like behaviour (Mendis, 2020The scattering pathlength s, on the other hand, obeys a with λ. To estimate s we first define a uniform random number (RNDs) in the range [0, 1], which can also be expressed as (Mendis, 2019)
Inverting this expression we obtain
The pathlength is estimated using a computer-generated random number and equation (7), such that the calculated values for s obey the required The for plasmons can be measured experimentally from an electron energy-loss spectrum (Mendis, 2019). For uncorrelated phonons the TDS differential scattering (σTDS) for a single atom is (Pennycook & Jesson, 1991)
where Ω is the scattering solid angle, f(q) is the atom scattering factor and B is the Debye–Waller factor. The scattering vector magnitude is given by . The uncorrelated phonon λph is then (Joy, 1995)
where Nv is the density and is the total TDS scattering obtained by integrating equation (8) over all solid angles.
The polar scattering angle θ can be similarly estimated using a uniform random number () in the range [0, 1]. For plasmons the result is (Mendis, 2020b)
where θE and θc are the characteristic and critical angles, respectively, for plasmon scattering (Egerton, 1996). The equivalent random number for uncorrelated phonon scattering is
where we have made use of the relation . Equation (11) does not have a straightforward analytical solution. Therefore, is first numerically evaluated for different values of θ. To estimate the phonon polar scattering angle, a uniform random number within the range [0, 1] is computer generated and the corresponding θ value obtained by interpolating the versus θ data points (Joy, 1995).
Low-energy phonon and plasmon excitations have a negligible effect on the incident electron wavenumber. For example, a 17 eV plasmon energy-loss event in silicon changes the wavenumber of a 200 kV electron by ∼0.004%. However, phonon and plasmon excitation do alter the electron trajectory [Fig. 1(a)], and for small scattering angles the ratio (K/Kn) will be largely unchanged. Therefore, only the deviation parameter sg in the structure matrix diagonal terms will vary as a result of [equation (2)]. The new sg value is easily determined from the electron wavevector K′ following (Spence & Zuo, 1992),
The structure matrix must contain a sufficiently large number of elements (diffracted beams) to accommodate the change in wavevector following θE (e.g. 0.04 mrad for Si at 200 kV; Section 3). However, for some phonon events the scattering angle can be as large as 100 mrad [see Fig. 4(a)]. In practice, the number of beams is limited by the computational cost, so that some high-angle phonon events will not be simulated as accurately as low-angle Fig. 1(b) shows single (plasmon or phonon) at a depth s in a specimen of thickness t. The elastic wavefunction at a depth s is, from equation (4), given by
For plasmons this is generally not an issue, due to the extremely small characteristic angleHere, Ce and are the eigenvectors and eigenvalues, respectively, obtained by eigen decomposition of the structure matrix for [equation (3)]. Following the wavefunction at the exit surface is
where Ci and are the new eigenvectors and eigenvalues obtained by eigen decomposition of the structure matrix for The calculation must be repeated for multiple configurations and the diffracted beam intensities added incoherently to give statistically accurate values, i.e.
where Ig(t) is the averaged diffracted beam intensity and is the diffracted beam exit wavefunction for the {s, θ, ϕ} configuration [equation (14)]. For uncorrelated phonon scattering, the s, θ and ϕ probability distributions are given by
dP(s) is the probability of phonon scattering between s and s + ds, and similarly for dP(θ) and dP(ϕ). Equivalent expressions for correlated phonon scattering can be found in the supporting information. The probabilities for plasmon scattering are (Mendis, 2023a)
where λpl is the plasmon mean free path.
Evaluating equation (15) can be time consuming. An alternative way of determining Ig(t) is to randomly select {s, θ, ϕ} inelastic configurations and calculate the average of . The s, θ and ϕ values are chosen using computer-generated random numbers [i.e. equations (5), (7), (10) and (11)]. Since the configurations are chosen at random, further weighting by the probability distribution functions is not required.
The above discussion has focused on single (a)]. Therefore, where multiple is involved, it is important to keep track of the electron wavevector with respect to a fixed frame of reference. This is easily achieved using Euler rotation matrices (Mendis, 2019).
although it is clear that the general methodology can be extended to multiple as well. The polar and azimuthal scattering angles are defined with respect to the electron trajectory prior to [Fig. 13. Experimental and simulation methods
Silicon was used as a test specimen, since it is readily available as defect-free single crystals, and because its plasmon excitations have been well characterized (Mendis, 2019; Barthel et al., 2019). An ion-beam polished Si [110] single-crystal sample was examined at 200 kV in a JEOL 2100F field-emission gun transmission electron microscope. Energy-filtered diffraction patterns were acquired with parallel-beam illumination and a Gatan Tridiem electron energy-loss spectroscopy (EELS) imaging filter equipped with an Ultrascan 1000 CCD camera. Four separate 10 eV energy windows, centred around the zero-loss peak, single (17 eV) and double (34 eV) plasmon energy and Si L2,3 core loss edge onset (100 eV), were used for energy filtering. The intensities of the diffraction patterns were within the linear response range of the CCD camera (see the supporting information). The EELS measured specimen thickness is 2.4 inelastic mean free paths, or ∼1990 Å for an inelastic value of ∼830 Å, calculated using the method of Malis et al. (1988).
Kirkland's (2010) atom scattering factors were used to calculate the Bloch wave structure matrix. The simulation contained 625 zero-order Laue zone (ZOLZ) beams, including the unscattered beam. The atom scattering factor was only parameterized up to a 12 Å−1 scattering vector magnitude, and therefore this was set as the upper limit for calculating the total TDS scattering , as well as the upper limit of integration in the denominator for [equation (11)]. In practice, this truncation should have little effect on the accuracy, since the atom scattering factor has already decreased to an insignificant value at the cut-off. The r.m.s. thermal vibration of silicon atoms is 0.078 Å (Kirkland, 2010), which gives a Debye–Waller factor B of 0.12 Å2. The phonon at 200 kV, calculated using equation (9), is 7724 Å. This is a considerably larger value than the plasmon for silicon, which has been experimentally measured using EELS to be 1050 Å (Mendis, 2019). The longer for phonons is consistent with the results of Vos & Winkelmann (2019). The plasmon characteristic scattering angle is given by θE = ΔE/2Eo, where ΔE is the plasmon energy loss and Eo is the primary beam energy (Egerton, 1996). For Si at 200 kV, θE = 0.04 mrad. The plasmon critical angle θc = 19.1 mrad is obtained by fitting simulation to experiment (Barthel et al., 2019). θc has been corrected for the difference in acceleration voltage, i.e. 300 kV in Barthel et al. (2019), using the fact that the critical scattering vector qc ≃ Kθc is a constant. For energy-filtered diffraction, the number of plasmon events was chosen to match the desired energy window. For example, the diffraction pattern at 17 eV contains only single plasmon scattering, that at 34 eV contains double plasmon scattering etc. All the simulation results are for [110]-Si at 200 kV. The specimen thickness of 1990 Å is the same as the experimental value.
4. Results and discussion
4.1. Experimental results
Figs. 2(a)–2(d) show experimental energy-filtered [110]-Si selected-area diffraction patterns at `zero' energy loss, single plasmon (17 eV), double plasmon (34 eV) and Si L2,3 core loss edge onset (100 eV). The 10 eV energy window used for acquisition cannot discriminate between phonon energy losses, and therefore all diffraction patterns contain some amount of thermal diffuse scattering.
Two trends are noticeable from the data. The first is that the diffracted beams become more diffuse with energy loss. This is clear from the radially averaged intensity profile for the 000 unscattered beam, shown in Fig. 2(e) for each energy-filtered diffraction pattern. The results are consistent with the observations of Eaglesham & Berger (1994), who reported a higher fraction of diffuse plasmon scattering outside the diffraction discs of a focused electron beam. Second, with increasing energy loss the intensity of the unscattered 000 beam decreases, resulting in an overall increase in the relative intensity of the Bragg reflections. Table 1 lists intensities for the 000, , 002 and beams for each energy-filtered diffraction pattern. The intensity was extracted from a square region 300 pixels (i.e. 5.3 mrad scattering angle) wide, centred around the reflection of interest, which was large enough to include much of the diffuse scattering for that beam. The beam intensity was normalized by dividing by the total intensity for the entire diffraction pattern. Each set of Bragg beams contains multiple reflections that are symmetry related, e.g. there are four -type reflections in the [110] from which the errors in Table 1 were estimated. The intensity ratios for Bragg-diffracted beams with respect to the 000 beam are also listed. Although there is a systematic decrease in the unscattered beam intensity with energy loss, the Bragg-diffracted beam intensities remain largely unchanged within the measurement error, so that overall there is a net increase in the Bragg beam intensity ratios (Table 1). For example, a single plasmon scattering event can change the and 002 intensity ratio from ∼0.4 to 0.5, a relative increase of 25%. The higher energy loss Si L2,3 edge has an even greater effect on the intensity ratio, but the for core loss excitation is comparatively small compared with plasmons (Egerton, 1996). Note that the decrease in 000 beam intensity is not due to a smaller scattering at high energy loss, since the total intensity of each diffraction pattern is separately normalized to unity.
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4.2. Simulation of diffuse scattering distributions
Next we consider Bloch wave . The single-scatter phonon diffraction pattern for [110]-Si is shown in Fig. 3(a). The 1990 Å thick specimen was divided into slices 100 Å thick and the diffraction intensities calculated using equations (15) and (16a)–(16c). The exit wavevector of the inelastically scattered electron beam was used to map the Bragg intensities in equation (15) to the corresponding pixels in the diffraction pattern. In other words, the deflection in electron trajectory during rigidly shifts the Bragg diffraction pattern in Since there is a continuous range of deflection angles, the net result is diffuse scattering. Rigid shifting of the diffraction pattern is theoretically justified for fully delocalized excitations, where it can be shown that the entire inelastic electron wavefunction shows particle-like behaviour (Mendis, 2020a). Such conditions are likely to be satisfied for low-energy phonon and plasmon excitations in small materials such as silicon, since aloof beam EELS scattering measurements have recorded delocalization lengths of ∼10 nm for phonons (Krivanek et al., 2014) and a few nanometres for plasmons (Zhou et al., 2012). The assumption of `infinite' delocalization, and hence rigid shifting of the electron diffraction pattern, may, however, not strictly hold for crystals with large unit cells. For highly localized excitations such as Compton scattering, intensity is largely transferred into the inelastic channel from only a single Bragg beam, leaving the other reflections unaltered (Mendis & Talmantaite, 2022; Mendis, 2023b). The Compton scattering is, however, relatively weak, and is therefore not considered here.
simulations using the Monte Carlo method described in Section 2The angular distribution of the thermal diffuse scattering in Fig. 3(a) contains the expected Kikuchi bands and Kikuchi lines. This is a significant improvement over traditional Bloch wave calculations, which rely on a complex crystal potential to model phonon excitation, and therefore cannot provide any detailed information on the thermal diffuse scattering (Hirsch et al., 1965). Higher-order Laue zone (HOLZ) rings and lines are, however, not present in Fig. 3(a), since only ZOLZ reflections were used in the calculations (Section 3). Although not a fundamental limitation, including HOLZ reflections in the Bloch wave calculation would significantly increase the simulation time, while having little effect on the ZOLZ beam intensities (Spence & Zuo, 1992). Sharp Bragg peaks are also not apparent in Fig. 3(a). This is because only incident electrons that have undergone exactly one phonon scattering event are simulated, which invariably results in a non-zero deflection angle [equation (16b)]. Fig. 3(b) is the corresponding diffraction pattern that includes both single phonon scattering and (the square root of the intensity is plotted to reduce the dynamic range). The elastic contribution was calculated using equation (13), with s being set equal to the specimen thickness t. The elastic intensities were also weighted by , the fraction of incident electrons not undergoing any phonon scattering, as determined by Poisson statistics. Fig. 3(b) is closer to the experimental `zero' energy loss filtered diffraction pattern in this work [Fig. 2(a)], which includes both elastic and phonon losses due to the limited energy resolution. The only difference is the degree of phonon scattering, i.e. Fig. 3(b) is limited to a single phonon excitation, while the experiment will measure both single and multiple phonon scattering.
The simulated single plasmon scattered diffraction pattern is shown in Fig. 3(c). The 1990 Å thick specimen was divided into slices 100 Å thick and the diffraction intensities calculated using equations (15) and (17a)–(17c). Due to the plasmon scattering angle, there is zero intensity at the exact Bragg positions, but this is not observed experimentally [Fig. 2(b)]. Unlike the phonon case, the missing Bragg intensity cannot be explained by purely elastic scattered electrons, since Fig. 2(b) was acquired at the single plasmon energy-loss value of 17 eV. Thus the intensity dip must be a real feature in the energy-filtered diffraction pattern. In practice, however, it would be difficult to observe this feature experimentally, due to the extremely small characteristic angle for plasmon scattering (0.04 mrad). Such a narrow intensity decrease is likely to be `smeared out' by the point spread function of the detector, any imperfections in the crystal, and the incident-beam convergence angle. The intensity dip is only visible in Fig. 3(b) due to the finite size (0.5 mrad) of the pixels in the simulation, and because a perfectly parallel incident beam and ideal detector are assumed. The simulation also shows broad `halos' around the Bragg positions, which are indeed observed experimentally [Figs. 2(b) and 2(e)]. Note that similar halos were not observed for thermal diffuse scattering [Figs. 2(a), 2(e) and 3(a)]. This is easily explained by examining equation (8), which indicates that the uncorrelated phonon intensity decreases to zero at small scattering vector magnitudes q.
Fig. 3(d) shows the plasmon diffuse scattering plotted on a square root intensity scale, in order to highlight weak features in the diffraction pattern. The plasmon diffuse scattering is free of Kikuchi band contrast, unlike that for phonons [Fig. 3(a)]. Kikuchi bands are formed by the inelastic diffuse intensity that has been deflected towards crystal planes at the so that strong diffraction is possible (Hirsch et al., 1965). This is easily achieved with phonons, which can have large scattering angles [see Fig. 4(a)], but for plasmons the diffuse intensity has a more narrow distribution due to the small characteristic angle θE. The fraction of plasmon scattered electrons at the is therefore small, so that the contrast of any Kikuchi bands will be weak. For example, at the 4 mrad for the reflection in silicon (200 kV electron beam), the plasmon differential scattering has decreased to 0.01% of its maximum value, assuming a Lorentzian dependence (Egerton, 1996).
To reproduce the plasmon energy-filtered results in Figs. 2(b) and 2(c), both plasmon and phonon scattering must be included in the simulation. Although the number of plasmon events is fixed by the energy loss, the experimental diffraction patterns can still contain multiple phonon scattering, since a 10 eV window was used for the energy filtering. Therefore, in the simulations phonon events were selected at random, while keeping the number of plasmon excitations fixed. For example, consider simulating the single plasmon energy-filtered diffraction pattern. First the plasmon scattering depth s was estimated using a computer-generated random number and equation (7). Phonon excitation can occur prior to plasmon scattering (i.e. at depths smaller than s), as well as after the plasmon event (i.e. at depths larger than s). For the former, phonon scattering depths were estimated using equation (7); multiple phonon events are allowed, as long as the cumulative scattering path length does not exceed s (there are, however, no phonon events if the first scattering depth is larger than s). A similar procedure was used to simulate phonon excitation following the plasmon event, as the electron beam propagates to the specimen exit surface. Due to there will be a change in the electron wavevector at the specimen exit surface, which gives rise to the diffuse background intensity in the diffraction pattern. Since inelastic events are chosen at random, multiple iterations of electron-beam propagation through the specimen must be incoherently averaged to produce a numerically converged result (in this work 50 000 iterations were used). Double plasmon energy-filtered diffraction patterns can also be simulated in a similar manner, except that there are now two plasmon scattering events interspersed with multiple phonon excitation.
Fig. 4(a) is the simulated average radial intensity profile for the 000 unscattered beam at `zero' loss energy filtering. The simulation contains elastic and phonon scattered electrons, but no plasmon losses. The peak intensity of the 000 beam has been normalized to unity. The thermal diffuse scattering is six orders of magnitude smaller than the 000 beam peak intensity and shows a broad maximum between 10 and 40 mrad in scattering angle. The overall shape is similar to TDS scattering from a single atom (Pennycook & Jesson, 1991) and has its origin in equation (8). The simulated average radial intensity profiles for the 000 unscattered beam at single and double plasmon loss energy filtering are shown superimposed in Fig. 4(b). The plasmon diffuse intensity is more concentrated around the 000 beam, and although TDS is also present it is too weak to be seen in the full intensity scale of Fig. 4(b). Figs. 4(c) and 4(d) compare the experimental and simulated radial intensity profiles for single and double plasmon energy losses, respectively. The experimental data were obtained from Fig. 2(e). The simulated profiles [Fig. 4(b)] were convolved with the experimental `zero' loss profile [Fig. 2(e)], which is assumed to be representative of the point spread function of the detector, as well as any crystal imperfections and beam convergence [note that for a perfect crystal the main peak of the `zero' loss profile should be a delta function; Fig. 4(a)]. Even after convolution, the simulated profiles are slightly narrower than the experimental ones, which may be due to errors in the plasmon scattering parameters (e.g. the characteristic angle θE is too small) or because a Lorentz model does not accurately describe the plasmon differential (Egerton, 1996). A direct comparison of the convolved simulated profiles with all experimental profiles in Fig. 2(e) can be found in the supporting information.
4.3. Energy-filtered diffracted beam intensities
Table 2 lists the simulated beam intensities and Bragg beam intensity ratios for `zero' loss, single and double plasmon energy-filtered diffraction patterns. The equivalent result at the Si L2,3 core loss edge would require a transition matrix element calculation (Maslen & Rossouw, 1984; Allen et al., 2015), which is not attempted here. The intensity of the 000 beam and Bragg beam intensity ratios in Table 2 do not agree with the corresponding experimental values (Table 1). This could be partly due to inaccuracies in modelling as is evident from Figs. 4(c) and 4(d). Often there is also poor agreement between (elastic scattering) simulations and experimental `static' electron diffraction patterns, acquired at a fixed specimen orientation and incident wavevector (Klar et al., 2023). The discrepancy has been attributed to complex specimen shapes, sample bending, crystal mosaicity etc. Similar artefacts may be present in our measurements as well. Although some of the simulated values may not be in perfect agreement with the experimental results, they nevertheless capture the important trends, i.e. the unscattered 000 beam intensity systematically decreases with energy loss, leading to an overall increase in the Bragg beam intensity ratios.
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Previous experimental work on energy-filtered diffraction has shown that Bragg peaks can be suppressed at large energy losses ΔE (Egerton, 1996). This occurs when the characteristic scattering angle θE = ΔE/2Eo becomes larger than the θB. In this work, θE for plasmon scattering (0.04 mrad) is two orders of magnitude smaller than the innermost (4 mrad), so that Bragg peaks are clearly visible in the energy-filtered diffraction patterns [Figs. 2(b) and 2(c)]. Because , there should be very little change in the intensity for a given Bragg reflection upon plasmon scattering. However, this need not be the case for the unscattered beam, since the cumulative effect of small amounts of intensity transfer to multiple Bragg beams can potentially lead to a noticeable change in the 000 beam intensity. This is consistent with the data in Tables 1 and 2. It could be argued that the decrease in 000 beam intensity with energy filtering is due to increased diffuse scattering, rather than subtle changes in the Bragg diffraction conditions. This can nevertheless be ruled out, since the experimental and simulated intensities in Tables 1 and 2 already include the diffuse scattering around the beam of interest. For example, the experimental intensities were extracted from a square region (5.3 mrad dimension) wider than the radial intensity profiles for single and double plasmon scattering [Fig. 2(e)]. The intensities in Tables 1 and 2 are normalized with respect to the total diffraction pattern intensity, so that changes in the with energy loss also have no effect on the results.
The azimuthal angle ϕ for plasmon scattering is purely random, and therefore some plasmon events will deflect the incident beam closer to the thereby increasing the intensity for that reflection, while other events will have the opposite effect. Given the random nature of this process it is perhaps surprising that the 000 beam intensity decreases with energy loss, rather than staying roughly constant. Simulations at other specimen thicknesses (i.e. 500, 1000, 1500 and 2500 Å) show a similar trend (see the supporting information), although it is not known if this behaviour is universally valid. The scattering is somewhat analogous to precession electron diffraction, where the incident-beam wavevector can lie anywhere along a hollow cone (Vincent & Midgley, 1994; Midgley & Eggeman, 2015). The plasmon `precession' angle is, however, very small, i.e. of the order of θE. simulations suggest that for small precession angles the 000 beam intensity is generally weaker than for normal beam incidence (see the supporting information). Elastic precession diffraction simulations were therefore performed with the precession angle set to various multiples of the plasmon characteristic scattering angle (i.e. θE, 5θE and 10θE). The azimuthal angle of the incident wavevector was sampled using 500 uniformly spaced points along the precession cone. In Table 3 the precession intensities are compared against the elastic scattered intensities for normal beam incidence. There is a slight decrease in the 000 beam intensity with increasing precession angle, which results in the Bragg intensity ratios also increasing. The changes in 000 beam intensity are, however, much smaller than those in Table 2. This is to be expected, since elastic precession diffraction is not a true like-for-like comparison with in a real sample, which contains both plasmon and (potentially multiple) phonon scattering. The phonon scattering angle [Fig. 4(a)] can also be much larger than the precession angles in Table 3, which are based on θE. Nevertheless, it does seem to provide a plausible explanation for the changes in beam intensities observed at different energy losses, although a more rigorous treatment is required to confirm its validity.
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5. Summary
is often unavoidable in electron diffraction. For example, even if the specimen is only 100 Å thick, ∼10% of electrons will still undergo assuming Poisson statistics and an inelastic of 1000 Å. In this work, a combined Bloch wave–Monte Carlo simulation method is proposed to model Bragg diffraction in the presence of phonon and plasmon excitation, the two mechanisms with the largest cross sections. With this method, it is possible to simulate thermal diffuse scattering accurately, including Kikuchi bands and Kikuchi lines. This is a significant improvement over phenomenological Bloch wave TDS calculations, where the imaginary term in the complex crystal potential depletes the electron-beam intensity as it propagates through the specimen, and where no information on the angular distribution of the TDS intensity is available. The plasmon diffuse intensity, on the other hand, shows no Kikuchi band contrast and is sharply peaked around the unscattered and Bragg beam reflections. This is due to the extremely small characteristic scattering angle for plasmons.
Experimental energy-filtered diffraction patterns in the low-loss EELS regime for [110]-Si showed that there was a systematic decrease in the 000 beam intensity with increasing energy loss, even after adjusting for differences in the e.g. 1050 Å versus 7724 Å for Si at 200 kV). The precession angle is therefore of the order of the plasmon characteristic scattering angle θE. The precession effect results in a net intensity transfer from the 000 beam to the inner Bragg reflections. The intensity change for a single Bragg reflection will be small, however, since θE is considerably smaller than the Bragg angle.
cross sections. Any changes to the Bragg beam intensities were, however, within the measurement error. Thus, the intensity ratio of a Bragg beam with respect to the unscattered beam increases with energy loss. Simulations are able to reproduce these trends across a wide range of specimen thicknesses. It is speculated that the decrease in 000 beam intensity is due to a precession effect caused by the random change in azimuthal angle of the incident beam during Here the dominant mechanism is plasmon excitation, which has a much shorter than phonons (It is possible to speculate how low-loss ). Therefore, should not have any significant effect on which directly contradicts experimental observations of improved results obtained with energy filtering (Gemmi & Oleynikov, 2013; Eggeman et al., 2013; Yang et al., 2022). According to Yang et al. (2022), energy filtering produces less background and sharper diffraction spots, which makes it easier to extract the diffracted beam intensities. Eggeman et al. (2013) have shown that the inelastic background has a larger influence on weak reflections, resulting in higher R values. In our analysis, however, the background was not subtracted from the diffracted beam intensities (see Section 3). This is especially important for higher energy losses, where a larger fraction of the diffracted beam intensity appears as diffuse scattering [Figs. 2(e) and 4(b)]. Background subtraction in unfiltered diffraction patterns could therefore result in higher R values than with no background subtraction. On energy filtering the diffuse scattering is largely removed, so that any background subtraction will introduce fewer artefacts, resulting in smaller R values. Phonon losses will nevertheless still be present even after energy filtering. Table 2 includes the beam intensities for a fully elastic calculation, which are similar to the values obtained for a `zero' loss simulation that includes both elastic and phonon scattering. This suggests that a fully elastic calculation can be used to refine energy-filtered diffraction data without introducing any further artefacts. Finally, it should be noted that our conclusions are only valid for low energy loss excitations, i.e. phonons and plasmons. If the specimen is very thick, core loss edges and Compton scattering become non-negligible. The latter is also present as diffuse scattering over a large section of The role of these high energy loss events on is unknown.
might influence Typically, the unscattered beam is ignored and only the relative intensities of the Bragg beams are used to solve the For the low energy loss regime, however, the relative intensity ratios between the diffracted beams are approximately constant (Table 1The computer code for this work is available open access from the Durham University research data repository (DOI: https://doi.org/10.15128/r2x920fw895).
6. Related literature
For further literature related to the supporting information, see Martin et al. (2009) and Mendis (2022).
Supporting information
Additional background, tables and figures. DOI: https://doi.org/10.1107/S2053273323010690/tw5007sup1.pdf
References
Allen, L. J., D'Alfonso, A. J. & Findlay, S. D. (2015). Ultramicroscopy, 151, 11–22. Web of Science CrossRef CAS PubMed Google Scholar
Barthel, J., Cattaneo, M., Mendis, B. G., Findlay, S. D. & Allen, L. J. (2019). Phys. Rev. B, 101, 184109. Web of Science CrossRef Google Scholar
Bird, D. M. & King, Q. A. (1990). Acta Cryst. A46, 202–208. CrossRef CAS Web of Science IUCr Journals Google Scholar
Cleverley, A. & Beanland, R. (2023). IUCrJ, 10, 118–130. Web of Science CrossRef CAS PubMed IUCr Journals Google Scholar
Cowley, J. M. & Moodie, A. F. (1957). Acta Cryst. 10, 609–619. CrossRef IUCr Journals Web of Science Google Scholar
Eaglesham, D. J. & Berger, S. D. (1994). Ultramicroscopy, 53, 319–324. CrossRef CAS Web of Science Google Scholar
Egerton, R. F. (1996). Electron Energy-Loss Spectroscopy in the Electron Microscope. New York: Plenum Press. Google Scholar
Eggeman, A. S., Barnard, J. S. & Midgley, P. A. (2013). Z. Kristallogr. Cryst. Mater. 228, 43–50. Web of Science CrossRef CAS Google Scholar
Gemmi, M., Mugnaioli, E., Gorelik, T. E., Kolb, U., Palatinus, L., Boullay, P., Hovmöller, S. & Abrahams, J. P. (2019). ACS Cent. Sci. 5, 1315–1329. Web of Science CrossRef CAS PubMed Google Scholar
Gemmi, M. & Oleynikov, P. (2013). Z. Kristallogr. Cryst. Mater. 228, 51–58. Web of Science CrossRef ICSD CAS Google Scholar
Hall, C. R. & Hirsch, P. B. (1965). Proc. R. Soc. A, 286, 158–177. CAS Google Scholar
Hirsch, P. B., Howie, A., Nicholson, R. B., Pashley, D. W. & Whelan, M. J. (1965). Electron Microscopy of Thin Crystals. Oxford: Butterworth. Google Scholar
Joy, D. C. (1995). Monte Carlo Modeling for Electron Microscopy and Microanalysis. Oxford University Press. Google Scholar
Kirkland, E. J. (2010). Advanced Computing in Electron Microscopy, 2nd ed. New York: Springer. Google Scholar
Klar, P. B., Krysiak, Y., Xu, H., Steciuk, G., Cho, J., Zou, X. & Palatinus, L. (2023). Nat. Chem. 15, 848–855. Web of Science CSD CrossRef CAS PubMed Google Scholar
Kolb, U., Gorelik, T., Kübel, C., Otten, M. T. & Hubert, D. (2007). Ultramicroscopy, 107, 507–513. Web of Science CrossRef PubMed CAS Google Scholar
Krivanek, O. L., Lovejoy, T. C., Dellby, N., Aoki, T., Carpenter, R. W., Rez, P., Soignard, E., Zhu, J., Batson, P. E., Lagos, M. J., Egerton, R. F. & Crozier, P. A. (2014). Nature, 514, 209–212. Web of Science CrossRef CAS PubMed Google Scholar
Latychevskaia, T. & Abrahams, J. P. (2019). Acta Cryst. B75, 523–531. Web of Science CrossRef IUCr Journals Google Scholar
Loane, R. F., Xu, P. & Silcox, J. (1991). Acta Cryst. A47, 267–278. CrossRef CAS Web of Science IUCr Journals Google Scholar
Malis, T., Cheng, S. C. & Egerton, R. F. (1988). J. Electron Microsc. Tech. 8, 193–200. CrossRef CAS PubMed Web of Science Google Scholar
Martin, A. V., Findlay, S. D. & Allen, L. J. (2009). Phys. Rev. B, 80, 024308. Web of Science CrossRef Google Scholar
Maslen, V. W. & Rossouw, C. J. (1984). Philos. Mag. A, 49, 735–742. CAS Google Scholar
Mendis, B. G., Barthel, J., Findlay, S. D. & Allen, L. J. (2020). Microsc. Microanal. 26, 1147–1157. Web of Science CrossRef CAS PubMed Google Scholar
Mendis, B. G. & Talmantaite, A. (2022). Microsc. Microanal. 28, 1971–1980. Web of Science CrossRef CAS Google Scholar
Mendis, B. G. (2019). Ultramicroscopy, 206, 112816. Web of Science CrossRef PubMed Google Scholar
Mendis, B. G. (2020a). Microscopy, 69, 173–175. Web of Science CrossRef CAS PubMed Google Scholar
Mendis, B. G. (2020b). Ultramicroscopy, 212, 112957. Web of Science CrossRef PubMed Google Scholar
Mendis, B. G. (2022). Ultramicroscopy, 239, 113548. Web of Science CrossRef PubMed Google Scholar
Mendis, B. G. (2023a). Microsc. Microanal. 29, 1111–1123. Web of Science CrossRef CAS PubMed Google Scholar
Mendis, B. G. (2023b). Ultramicroscopy, 245, 113664. Web of Science CrossRef PubMed Google Scholar
Midgley, P. A. & Eggeman, A. S. (2015). IUCrJ, 2, 126–136. Web of Science CrossRef CAS PubMed IUCr Journals Google Scholar
Mugnaioli, E., Gorelik, T. & Kolb, U. (2009). Ultramicroscopy, 109, 758–765. Web of Science CrossRef PubMed CAS Google Scholar
Nederlof, I., van Genderen, E., Li, Y.-W. & Abrahams, J. P. (2013). Acta Cryst. D69, 1223–1230. Web of Science CrossRef CAS IUCr Journals Google Scholar
Palatinus, L., Corrêa, C. A., Steciuk, G., Jacob, D., Roussel, P., Boullay, P., Klementová, M., Gemmi, M., Kopeček, J., Domeneghetti, M. C., Cámara, F. & Petříček, V. (2015a). Acta Cryst. B71, 740–751. Web of Science CrossRef IUCr Journals Google Scholar
Palatinus, L., Petříček, V. & Corrêa, C. A. (2015b). Acta Cryst. A71, 235–244. Web of Science CrossRef IUCr Journals Google Scholar
Pennycook, S. J. & Jesson, D. E. (1991). Ultramicroscopy, 37, 14–38. CrossRef Web of Science Google Scholar
Spence, J. C. H. & Zuo, J. M. (1992). Electron Microdiffraction. New York: Plenum Press. Google Scholar
Vincent, R. & Midgley, P. A. (1994). Ultramicroscopy, 53, 271–282. CrossRef CAS Web of Science Google Scholar
Vos, M. & Winkelmann, A. (2019). New J. Phys. 21, 123018. Web of Science CrossRef Google Scholar
Yang, T., Xu, H. & Zou, X. (2022). J. Appl. Cryst. 55, 1583–1591. Web of Science CrossRef ICSD CAS IUCr Journals Google Scholar
Zhang, D., Oleynikov, P., Hovmöller, S. & Zou, X. (2010). Z. Kristallogr. 225, 94–102. Web of Science CrossRef CAS Google Scholar
Zhou, W., Pennycook, S. J. & Idrobo, J.-C. (2012). Ultramicroscopy, 119, 51–56. Web of Science CrossRef CAS PubMed Google Scholar
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