- 1. Introduction
- 2. Bragg scattering peak shape function
- 3. Voigt diffraction peak profiles
- 4. Effect on the pair distribution function
- 5. Discussion
- 6. Conclusions
- 7. Experimental procedures
- A1. Gaussian broadening
- A2. Lorentzian broadening
- A3. Combining several broadenings
- Supporting information
- References
- 1. Introduction
- 2. Bragg scattering peak shape function
- 3. Voigt diffraction peak profiles
- 4. Effect on the pair distribution function
- 5. Discussion
- 6. Conclusions
- 7. Experimental procedures
- A1. Gaussian broadening
- A2. Lorentzian broadening
- A3. Combining several broadenings
- Supporting information
- References
research papers
Effects of Voigt diffraction peak profiles on the pair distribution function
aDepartment of Chemistry, Aarhus University, Langelandsgade 140, Aarhus C, 8000, Denmark
*Correspondence e-mail: bo@chem.au.dk
Powder diffraction and pair distribution function (PDF) analysis are well established techniques for investigation of atomic configurations in crystalline materials, and the two are related by a Fourier transformation. In diffraction experiments, structural information, such as crystallite size and microstrain, is contained within the peak profile function of the diffraction peaks. However, the effects of the PXRD (powder X-ray diffraction) peak profile function on the PDF are not fully understood. Here, all the effects from a Voigt diffraction peak profile are solved analytically, and verified experimentally through a high-quality X-ray total scattering measurement on Ni powder. The Lorentzian contribution to the microstrain broadening is found to result in Voigt-shaped PDF peaks. Furthermore, it is demonstrated that an improper description of the Voigt shape during model
leads to overestimation of the atomic displacement parameter.1. Introduction
Determination of the atomic configuration within crystalline materials is of huge interest for the development and optimization of modern functional materials. Every characteristic of a material, such as chemical reactivity, atomic movement, electronic properties, thermal properties or interaction with electromagnetic radiation, is ultimately governed by the structure. Probing the structure of a material can be carried out in a non-destructive manner through diffraction techniques, such as powder X-ray or neutron diffraction (PXRD or PND).
The coherently scattered intensity observed when shining X-rays or neutrons onto a crystalline powder can be separated into two major categories: (i) the Bragg scattering from the spatial and time-averaged crystalline structure and (ii) the diffuse scattering due to deviations from the average. Bragg scattering from powders has been used for structural analysis for many decades with well established analysis techniques such as ). Diffuse scattering, on the other hand, is typically orders of magnitude less intense than Bragg scattering and has only more recently been subjected to quantitative analysis.
(Rietveld, 1969Structural analysis using the pair distribution function (PDF) incorporates both the Bragg and diffuse scattering. The PDF is obtained by Fourier transformation of the total scattering (TS) pattern and is intuitively interpreted as a histogram of interatomic distances containing information on both the average structure and deviations. The deviations are often local effects observed in the short-range region of the PDF. Consequently, PDF analysis has been very successful for determining atomic configurations in nanomaterials and glasses where long-range order is limited (Bøjesen et al., 2016; Christiansen et al., 2020; Billinge, 2019; Keen, 2020). Current state-of-the-art instruments for collecting TS patterns include dedicated synchrotron X-ray and neutron time-of-flight (TOF) beamlines.
In q space), the Bragg scattering is concentrated in diffraction peaks due to the long-range structural order. The widths of the Bragg peaks, and how they are altered by different broadening effects, are quite well understood. In (real space or r space), however, the long-range effects on the PDF peaks are only partially understood, especially regarding non-constant and non-Gaussian broadening contributions to the diffraction peak profile. Appreciation of these effects is important for correct data treatment during structural modelling. One case is the inherent asymmetry of neutron TOF diffraction peaks which results in r-dependent PDF peak shifts (Jeong et al., 2005; Olds et al., 2018). In this study, we present the effects of symmetric Voigt-shaped diffraction peaks on the PDF, which is the most common peak shape for Bragg scattering in a total X-ray scattering experiment.
(2. Bragg scattering peak shape function
In the ideal case of an infinitely large crystal and a perfect instrument, the Bragg scattering will assume the shape of a Dirac δ function. In an actual experiment, however, the observed peaks will be broadened to a finite width due to a combination of sample and instrumental effects.
Sample Bragg peak broadening effects primarily stem from two contributions: crystallite size and microstrain (Keijser et al., 1982; Jiang et al., 1999). For samples where both effects are present, the Williamson–Hall method can be used to distinguish the two (Williamson & Hall, 1953). Crystallite size broadening can be characterized by the Scherrer equation (Langford & Wilson, 1978; Dinnebier & Billinge, 2008). This equation states that the size broadening of a Bragg peak is inversely proportional to the average crystallite thickness of the coherent crystallographic domain perpendicular to the direction represented by the Bragg peak. Specifically, the peak integral breadth1 follows a dependency with magnitude given by a shape factor K, crystallite thickness L and wavelength λ. For spherical crystallites with the same thickness in all directions, the relation can simply be written as
The Scherrer equation is applicable for crystallite thicknesses from about 100 nm down to a few nm. For larger crystallites, the broadening effect is negligible and other contributions will dominate the peak shape. For smaller crystallites, the definition of Bragg scattering breaks down and the scattering must be described by other means, such as the Debye equation (Scardi & Gelisio, 2016; Moscheni et al., 2018). The Scherrer equation above is expressed in angular space. By applying the transformation equation from angular to given by , the Scherrer equation in is obtained as . This demonstrates that size broadening is constant in Empirical observations show that size broadening is primarily Lorentzian in nature (Weidenthaler, 2011).
The second sample broadening effect is microstrain. To first approximation, it arises when the unit-cell size is not identical for every cell, which can be observed in crystalline structures with defects, such as interstitial atoms or dislocations (Rodríguez-Carvajal et al., 1991; Kanno et al., 2021). In this case, the diffraction conditions will be fulfilled in slightly different directions in different regions of the crystallite, resulting in peak broadening with a dependency (Dinnebier & Billinge, 2008). Intuitively, the broadening has to be larger at higher angles since peak positions in angular or become increasingly sensitive to the unit-cell dimensions. The transformation equation can be applied to obtain a reciprocal-space dependency of , i.e. a linear dependency on the reciprocal-space coordinate q. Microstrain broadening can be both Gaussian and/or Lorentzian in nature (Stephens, 1999).
Instrumental broadening effects stem from several contributions, which are all dependent on the experimental parameters. These include the monochromaticity and coherence length of the incident beam, the geometry of diffraction, the spatial profile of the beam, the detector resolution, and the projection of the illuminated sample volume on the detector.
In principle, all of the sample and instrumental broadening contributions can be accounted for during data modelling by a fundamental parameters approach (Mendenhall et al., 2015). In many cases, however, a phenomenological approach is taken instead, where the observed peak shape is described using a pre-selected function with appropriate angular or q-space dependencies. Through empirical observations, the Voigt function, which is a convolution between a Gaussian and a Lorentzian function, has been proven most suitable for Bragg scattering peak profiles in PXRD experiments (Langford, 1978; Young & Wiles, 1982).
The Voigt function is challenging to employ during data modelling due to the numerical requirements of computing convolutions. Historically, it has been approximated by the pseudo-Voigt function, which is a linear combination rather than a convolution. In 1987, Thompson, Cox and Hastings (Thompson et al., 1987) defined a unique pseudo-Voigt peak shape function with five different peak profile parameters, three of them taking size and strain broadening into account. Their pseudo-Voigt function was parameterized such that the Gaussian and Lorentzian contributions could be easily separated, which meant that the refined peak profile parameters were directly relatable to physical parameters, such as crystallite size and strain. For this reason, the Thompson–Cox–Hastings (TCH) pseudo-Voigt peak profile function has become exceedingly commonplace in model against PXRD data. Its definition can be seen in the supporting information.
However, with the advent of modern computers and better algorithms for constructing peak shapes (Coelho et al., 2015; Coelho, 2018), the pseudo-Voigt approximation is no longer a necessity. For studying the effects of common diffraction peak shapes on the PDF, we will thus invoke the full Voigt peak shape in both the analytical derivation and experimental investigation.
3. Voigt diffraction peak profiles
The Voigt function is a convolution between a Gaussian and a Lorentzian function with individual width parameters, and , respectively. The subscript q denotes the reciprocal-space width and the function is defined as
To incorporate the effects of size and strain broadening, the widths are given by a sum of a constant term K and a linear q-dependent term . For the Gaussian function, the two terms must be added in quadrature. The sums are given below and the subscripts G and L denote contributions to the widths of the Gaussian and Lorentzian functions, respectively:
Here, is the `standard deviation' of the Gaussian function while is the half width at half-maximum (HWHM) of the Lorentzian function. The two constant terms ( and ) are related to size-broadening effects and the two linear terms ( and ) are related to strain-broadening effects. The four parameters are directly relatable to the parameters of the TCH peak profile function by considering the transformation from angular to Z and Y parameters, which are the -dependent Gaussian and Lorentzian TCH parameters, respectively. The linear contributions ( and ) correspond to the U and X parameters, which are the -dependent Gaussian and Lorentzian TCH parameters, respectively.
The constant terms and correspond to theConsidering the effects on the PDF, three out of four parameters are well understood, at least in the approximation of solely Gaussian or Lorentzian diffraction peaks. In the case of constant peak profiles in q, Gaussian or Lorentzian, a powder diffraction pattern can be interpreted as a convolution between intensity-weighted -functions and the peak profile function. This makes the Fourier convolution theorem applicable. The theorem states that the Fourier transform of a convolution is equal to the product of the Fourier transforms of the convolved functions. The Fourier transform of the intensity-weighted -functions corresponds to the `ideal' PDF without any peak damping or broadening other than from atomic vibration, and the Fourier transform of the constant peak profile function is essentially an envelope function that damps the `ideal' PDF. Additionally, the Fourier convolution theorem also explains the effect of the limited experimental range of qmax. The range can be imposed on a powder pattern by multiplication with a Heaviside function, which then causes the PDF to be convolved with its Fourier transform, i.e. a sinc function.
For a constant Gaussian peak profile (, , , ), the Fourier transform is also a Gaussian. This type of damping is well known and, for instance, parameterized with Qdamp in the popular PDF software PDFgui (Farrow et al., 2007). For a constant Lorentzian peak shape (), the Fourier transform is an exponentially decaying function. Because of the Lorentzian nature of size broadening, this type of damping can be characterized with a size-determining parameter during PDF The size parameter sp-diameter in PDFgui closely approximates an exponential damping.
Unfortunately, the Fourier convolution theorem is not applicable to linearly broadened peak profile functions, as the powder diffraction pattern can no longer be expressed as a convolution because of the non-constant peak profiles. Instead, the Fourier transform has to be performed by hand. In a note by Thorpe et al. (2002), the transformation is carried out for a linearly broadened Gaussian peak profile () with some minor approximations to show that the corresponding PDF peaks will be Gaussians broadened by . Here, is the constant and `intrinsic' PDF peak width from atomic vibrations, commonly described by the Debye–Waller factor in The second term, , is the linear dependency for the Gaussian width in multiplied with the direct-space coordinate r. This effect is parameterized with Qbroad in PDFgui.
The PDF peak broadening from a linearly broadened Lorentzian peak profile function () has not been previously reported in the literature. Neither has the effect of a combination of Gaussian and Lorentzian diffraction peak profiles. Inspired by the approach taken by Thorpe et al. (2002), the Voigt function defined herein with four peak width dependencies has been used to derive the full effects on the PDF. The derivation is shown in Appendix A.
4. Effect on the pair distribution function
In S(q) can be expressed as an integral of the `ideal' structure function S0(q) and the reciprocal-space peak profile broadening function :
the TS structure functionIn cases where only depends on q and as , the integral will be a convolution, but this is not otherwise the case. The effect on the PDF can be written as a similar integral in where the `ideal' PDF G0(r) is modified by the direct-space function :
The relation between and is given by the following expression:
The function has been derived in the case of a Gaussian and Lorentzian diffraction peak profile in Appendix A. The results can be simplified to give two types of effects: an r-dependent damping and an r-dependent broadening of PDF peaks. The nth peak of the PDF, Pn(r), positioned around rn, is damped by D(rn) and convolved by according to
where the damping and broadening functions are summarized in Table 1.
|
It can be noted that the constant terms and only contribute to damping while the linear terms and only contribute to broadening. To provide an intuitive overview of the damping and broadening on the PDF, the effects of the individual width-determined parameters are visualized in Fig. 1. Note that the four effects are primarily long range but, for demonstrative purposes, have been highly exaggerated in Fig. 1. In Fig. 1(a), the `ideal' PDF is shown, where isotropic and uncorrelated thermal motion of the atoms is assumed. Here, there is zero damping and the PDF peak profile is Gaussian with a constant width solely determined by the Debye–Waller factor. In Fig. 1(b), the PDF peaks are damped by a Gaussian envelope due to constant Gaussian diffraction peaks. The peak width is still governed by the Debye–Waller factor. In Fig. 1(c), the PDF peaks are damped by an exponentially decaying envelope function, corresponding to the Fourier transform of a constant Lorentzian peak profile, and the are still solely determined by the Debye–Waller factor. In Fig. 1(d), the effect of a linearly broadened Gaussian diffraction peak profile is shown. The PDF peaks become increasingly wider with r in a Gaussian manner. Each peak can be described by a convolution of the `ideal' peak profile and the -dependent peak profile, which totals a peak width of for a peak positioned at rn. Even though the maximum intensity of peaks at high r is decreased, there is no peak damping as the integral of every peak is equal to that of the `ideal' PDF. The area remains directly proportional to the atomic and is affected by neither the Debye–Waller factor nor the peak broadening function. In Fig. 1(e), the effect of a linearly broadened Lorentzian diffraction peak profile is shown. In this case, the increase with r in a Lorentzian manner and the peak shape is a convolution between a Gaussian and a Lorentzian, i.e. a Voigt function. Again, the total area is equal to that of the `ideal' PDF. The total width cannot be easily represented analytically but a good approximation to the FWHM of a Voigt peak is shown in the supporting information (Olivero & Longbothum, 1977).
In essence, the broadening from a linearly broadened Gaussian or Lorentzian diffraction peak profile will cause an `extra' broadening to the PDF peaks, which is most pronounced at high r. Surprisingly, in the case of a linearly broadened Lorentzian, the resulting PDF peaks are Voigt functions. This result can also be generalized to the case of a Voigt diffraction peak profile with both Gaussian and Lorentzian contributions, as shown in the derivation in Appendix A.
The Voigt shape of PDF peaks is important for performing accurate structural analysis in the case of strained crystalline materials, since microstrain effects result in significant linear Lorentzian broadening. To demonstrate this, the case of a Ni powder with a significant amount of microstrain is presented in Figs. 2 and 3.
In Fig. 2, the TS pattern from Ni is shown alongside the Rietveld model. The diffraction peak profiles were found to be most adequately described by the two peak profile parameters and , which demonstrates that the Ni crystallites are subject to a significant degree of microstrain. The Gaussian and Lorentzian contributions were approximately equal and an adequate peak profile could not be found by only one or the other. The constant contributions refined to negligible values when included in the model, and were therefore set to zero. The good agreement factor (low ) and high visual conformity show that the model is adequate. The primary difference between the model and data, especially around the first two peaks ([111] and [200]), is attributed to stacking faults in the cubic close-packing of Ni (Longo & Martorana, 2008; Soleimanian & Mojtahedi, 2015). The two peaks exhibit slightly different shapes, which was not accounted for in the structural models.
The corresponding Ni PDF and two different . The two models are (green) a Gaussian model with the conventional parameters Qdamp and Qbroad, as defined in PDFgui, and (red) a Voigt model with the and parameters corresponding to linearly broadened Voigt diffraction peak profiles, as shown in Table 1. In the Voigt model, the two damping parameters and were initially included but the refined values were negligible, which is consistent with the result from the They were subsequently excluded from the model.
models are illustrated in Fig. 3As seen by the substantial improvement in agreement factor , the Voigt model describes the PDF to a much more satisfactory degree than the Gaussian model, even though the same number of parameters were applied. This is testimony to the Voigtian shape of the PDF peaks. Furthermore, the refined atomic displacement parameters (ADPs) are significantly different between the two models. The value in the Voigt model [ = 33.6 (1) × 10−4 Å2] is quite similar to the one found from the angular space [ = 31.5 (2) × 10−4 Å2], while the value in the Gaussian model (i.e. PDFgui model) is approximately 30% larger [ = 42.4 (2) × 10−4 Å2]. It was recently found that for a Si powder sample (Beyer et al., 2021), was reproducible in to the values found in when appropriate correlated motion and PDF peak profile parameters were employed. This suggests that the value of in the Gaussian model is significantly overestimated as a direct consequence of the faulty PDF peak profile description. The model incorporates the missing Lorentzian peak broadening by increasing the thermal parameter.
To investigate the impact of Voigt-shaped PDF peaks further, refinements of the two models have been carried out in direct-space ranges with varying lengths. The start point of all ranges was set to 1.0 Å and the end point was varied from 10.0 to 270.0 Å. Selected .
results are shown in Fig. 4In Fig. 4(a), the agreement factors of the Gaussian model are shown to be better at short ranges but those of the Voigt model become superior at long ranges above 80.0 Å. This is also corroborated by the overestimated value of in all ranges and the drop-off in the scale factor for the Gaussian model [Figs. 4(c) and 4(b), respectively]. These two effects cause the peaks in the Gaussian model to become broader and have a lower maximum intensity, which is exactly what is expected from a Gaussian shape refined against peaks with a Lorentzian contribution.
Notably, the overestimation of the in the Gaussian model is significant already at the first few ranges, which is testimony to the improved accuracy of the Voigt model for extraction of physical parameters, even at low r. This holds despite the fact that the agreement factors of the Gaussian model are better at these ranges. It should be noted, however, that the width-determining parameters [ and for the Gaussian and Voigt model, respectively] are strongly correlated at short ranges, meaning that the refined values, even for the Voigt model, could be inaccurate. Nevertheless, rigorous testing of the two models at short ranges showed that the refined values of from the Gaussian model were categorically higher than from the Voigt model. These results illustrate the importance of correct PDF peak profile description for obtaining accurate structural parameters, especially in the case of microstrained crystalline systems.
5. Discussion
The long range and high resolution of the total X-ray scattering data allow for direct comparison between values from the angular/reciprocal- and direct-space refinements. This begs the question of when and whether the direct-space values will converge on those extracted from (a), the lattice parameter does not converge before a range up to 60.0 Å independent of the chosen model. The Gaussian and Lorentzian broadening parameters of the Voigt model converge at around 150.0 Å [Fig. 5(b)], as does the scale factor [Fig. 4(b)]; but the value of from the Voigt model [Fig. 4(c)] only flattens out for the last few, long ranges above 240.0 Å.
As seen in Fig. 5Notably, the values of and lattice parameter a obtained from the Rietveld and the full-range Voigt PDF model do not completely agree, as seen by the systematic deviation from the dashed lines in Fig. 4(b) and Fig. 5(a), respectively. The discrepancy of may be explained by the presence of thermal diffuse scattering (TDS) under the high-order Bragg reflections in the TS pattern (Willis & Pryor, 1975). The additional intensity from TDS will cause the Rietveld model to underestimate the value of ADP to cause a lower damping at high angles. In contrast, the two types of scattering, Bragg and diffuse, are separated in the PDF since the diffuse scattering will only contribute to the low-r region. The value of = 33.6 (1) × 10−4 Å2 found from the full-range PDF model is therefore decoupled from the effects of TDS, which explains the higher value compared with the The discrepancy between the PXRD and PDF lattice parameters may be attributed to the inclusion of line shift parameters in the The -dependent shift parameter is highly correlated with the lattice parameter (87%), meaning that the refined value might deviate from the true value. In the PDF no parameters were included to account for the line shift. The assumption that the two parameters should be equal across the two spaces may therefore not be applicable. Nonetheless, a second Rietveld model, where the lattice parameter was fixed to the value found from the full-range Voigt PDF model, was refined against the TS data. The agreement factor changed slightly from 4.90% to 4.91%, and only minute changes in other parameters were observed. Results are reported in Table S1.
According to the analytical derivation, the values of and stated in Figs. 2 and 3 should be equal across the two spaces if the peak profiles were perfect Voigt functions. This is of course not the case since the Voigt shape is merely an empirical observation and not necessarily the inherent peak profile of the TS pattern. Furthermore, structural effects, such as stacking faults or anisotropic morphologies (Longo & Martorana, 2008; Beyer et al., 2020), may cause alteration of the peak shape along specific crystallographic directions. Alternating peak shapes are not accounted for in the derivation presented herein. The difference between and for the Ni PXRD and PDF models, which is most pronounced in the switching between primarily Gaussian in the PXRD () to primarily Lorentzian in the PDF (), could originate from either of these effects. The disagreement between the two remains a challenge for performing a combined PXRD and PDF dual-space analysis, where a single set of parameters would be employed for both the angular and direct-space data.
The Voigtian shape of PDF peaks is not described in the literature or incorporated in commonplace r since the broadening scales linearly with r. The instrumental broadening in a TS experiment is typically so severe that the PDF diminishes at relatively low r. Also, many PDF studies are carried out on nanomaterials, where the crystalline size broadening terminates the PDF at low r. (iii) The PDF peak shape at high r is difficult to infer from visual inspection due to extensive peak overlap. Even for a well resolved, high-range PDF with a significant Lorentzian contribution, the inadequacy of a Gaussian description may be difficult to deduce.
programs known by the authors. It has been overlooked for three reasons: (i) the Lorentzian contribution to diffraction peak profiles is often constant or negligible. For a constant contribution, the effect will be a damping that does not affect the PDF peak shape. For a negligible contribution in the effect is also negligible in (ii) The Voigt shape is most pronounced at highThe shortcomings of the Gaussian model for the Ni PDF presented herein can be generalized to any material that exhibits microstrain. During typical Qdamp and Qbroad are fixed to the instrumental values found by of a calibrant PDF, often from a LaB6, CeO2, or even Ni powder. An obvious challenge with this procedure is that the Qbroad parameter may be significantly affected by both Gaussian and Lorentzian microstrain effects from the sample itself. If the microstrain is Gaussian, then it will be entirely described by Qbroad, which requires inclusion of Qbroad as a parameter. If the microstrain broadening is Lorentzian, or a mix between the two, the Qbroad parameter will try to encompass the Lorentzian broadening. As demonstrated herein, this can lead to inaccurate ADPs.
of a PDF model, the two Gaussian parameters6. Conclusions
The effects of a Voigt diffraction peak profile in a TS pattern on the corresponding PDF have been solved analytically. Linear Lorentzian broadening, typically present in crystalline materials with a significant amount of microstrain, was shown to cause Voigt peak shapes in the PDF. This was verified experimentally from high-quality TS data from a Ni powder. PDF model Qdamp and Qbroad, was shown to cause a significant overestimation of the ADPs compared with the value obtained in A Voigt model, which takes the Lorentzian contribution into account, was successful in reproducing the reciprocal-space value. By refining the Gaussian and Voigt models in varying ranges of the PDF, the Voigt model was shown to be more appropriate even in the low-r region. The results presented herein demonstrate the importance of applying adequate peak profiles during PXRD and PDF modelling for obtaining accurate structural parameters.
using the conventional Gaussian PDF parameters,7. Experimental procedures
TS data of a Ni powder (Pierce Inorganics, ICSD #52231, et al., 2019; Kato & Shigeta, 2020) at the RIKEN Materials Science beamline BL44B2 (Kato et al., 2010; Kato & Tanaka, 2016) at the SPring-8 synchrotron radiation facility. The incident X-ray energy was 25.301 (1) keV [λ = 0.49003 (1) Å] as calibrated through Le Bail (Le Bail, 2005) of LaB6 (NIST SRM660b, Black et al., 2011) data. The data were collected in the angular range from 3° to 155° 2θ corresponding to a Qmax of ∼25 Å−1. The angular resolution was 0.005°. Data were also collected from an empty glass capillary under equal conditions. The PDFgetX3 algorithm (Juhás et al., 2013) was used to transform the TS pattern from which the background was removed by subtracting the data from the empty glass capillary. The reciprocal-space range was 1.0 to 24.0 Å−1 and the ad hoc correction parameter [see Juhás et al. (2013) for the definition] set to 1.05. The PDF was computed in a range from 0.0 to 500.0 Å with a step size of 0.01 Å.
) packed in a glass capillary with an inner diameter of 0.3 mm were collected at 300 K on the OHGI detector (KatoRefinement of both angular and direct-space data was carried out using the TOPAS-Academic v6 software (Coelho et al., 2011; Coelho, 2018). For the angular space the range was set to 8–123° 2θ. The incident beam was assumed completely polarized in the horizontal plane. The background was fitted using a ninth-degree Chebyshev polynomial. Diffraction peak profiles were fitted using Voigt functions with angular dependencies corresponding to constant and linearly broadened peaks in (See the supporting information for the custom-made TOPAS v6 macro used for implementation.) The number of peak profile parameters was minimized by iteratively inspecting the agreement factors and correlation matrix. The two peak profile parameters and were found to yield an adequate description. The remaining parameters of the Rietveld model included a scale factor, lattice parameter, ADP and a -dependent line shift parameter. The Rietveld model was refined using 10 000 iterations. After each convergent iteration, a random value between −25% and 25% of the converged value from the previous iteration was added to the ADP. The updated value was used as a starting point for the next iteration. The same was applied to the peak profile parameters with a random value between −50% and 50% of their converged values. The converged iteration with the lowest agreement factor was selected as the final model.
The direct-space PDF model refinements were carried out in the range of 1.0–250.0 Å. A convolution with a sinc function was included to account for the Fourier ripples produced by the experimental limits of qmin and qmax (Chung & Thorpe, 1997). The refined parameters included a scale factor, lattice parameter, ADP and a 1/r-dependent correlated motion parameter . Both 1/r- and 1/r2-dependent parameters ( and , respectively) were tested but the former was found most adequate. Two different models with different damping and broadening parameters were applied: a Gaussian model and a Voigt model. The Gaussian model included the conventional parameters Qdamp and Qbroad as defined in the PDFgui software (Farrow et al., 2007). The Voigt model included the corresponding broadening parameters to linear Gaussian and Lorentzian broadening (i.e. and ), which were implemented by the custom-made TOPAS macro shown in the supporting information. A constant weighting scheme was applied to each model, which were refined with 1000 iterations. After each convergent iteration, random values between −25% and 25% of the converged values from the previous iteration were added to the ADP, Qdamp, Qbroad, and parameters. The updated values were used as a starting point for the next iteration. The converged iteration with the lowest agreement factor was selected as the final model.
PDF model refinements were also carried out in varying ranges using the two models described above. The start point of all ranges was set to 1.0 Å while the end point was varied from 10.0 to 270.0 Å in steps of 10.0 Å. A constant weighting scheme was employed but the weights of the last 5% of points in all ranges were set to zero to circumvent the problem related to convolutions in TOPAS (see the supporting information). Each range was refined with 1000 iterations. After each convergent iteration, a random value between −25% and 25% of the converged value from the previous iteration was added to the ADP. The updated value was used as a starting point for the next iteration. The converged iteration with the best agreement factor was selected as the final model.
APPENDIX A
Derivation of the effects on the PDF from broadened diffraction peaks
This derivation follows the same approach used by Thorpe et al. (2002), where the derivation for a Gaussian broadening is given. Here the derivation for Gaussian, Lorentzian and a combination of both will be presented.
The PDF G(r) is usually defined from the scattering structure function S(q) through a sine transform as
or with integration limits taken as qmin and qmax. Here is assumed to be zero in the intervals [0,qmin[ and , such that the integral from 0 to is identical to the region between qmin and qmax.
We wish to change this sine transform into a Fourier transform to make the derivation more straightforward. As the physically meaningful part of is only defined for positive q, the function can be extended to negative valued to be odd. This means that = and . Using the Euler formula, G(r) can be written as the Fourier transform
with . In the remainder of the derivation, all integrals will have implicit limits of , .
Starting with an unbroadened scattering intensity S0(q) and its corresponding PDF, G0(r), related through
we seek to understand the effect on the PDF by a broadening of the scattering intensity:
where is the reciprocal-space broadening function, assumed to be normalized with respect to . In cases where only depends on q and as , the integral will be a convolution, but this is not otherwise the case. The corresponding PDF is
where
That is, when the scattering is broadened by , the PDF will be modified by .
A1. Gaussian broadening
Let
which is a Gaussian with width modified with a factor of . This factor is approximately unity as long as the peak is significantly narrower than its distance to the origin. The factor is introduced to cancel the in the integral to obtain :
Let the broadening be given by , where and correspond to a constant and linear Gaussian broadening, respectively. [When broadening two Gaussians with widths and , the result is a Gaussian with a width of .] This leads to
In the approximation of isotropic and uncorrelated thermal motion of atoms, the PDF for the unbroadened scattering is given by a summation over Gaussian peaks of the type:
Here, rn is the position of peak n (given by the interatomic distances), An is their amplitude (related to the number and type of atoms) and is their widths (related to the vibration of atoms). The result of the broadening is then:
Each integrant only has nonzero values for close to rn. Using this approximation leads to
This means that each peak is damped by and broadened by a Gaussian from to .
This is also true for a general peak centred at r0, which, under the assumption of the peak being locally peaked and narrow compared with its distance to the origin, will be transformed to
which is a broadening of the peak P0 with a Gaussian of width and damping by a Gaussian envelope function .
A2. Lorentzian broadening
Let
which is a Lorentzian with half width modified, once again, with a factor of (negligible for a narrow peak with sufficient distance to the origin). This gives
Let the broadening be given by , where and correspond to constant and linear Lorentzian broadening contributions, respectively. (When broadening two Lorentzians with widths and , the result is a Lorentzian with a width of .) This leads to
This will affect a general peak centred at r0 (again, under the assumption of the peak being locally peaked and narrow compared with its distance to the origin) as
This is a broadening with a Lorentzian with a half width of and a damping by an exponentially decaying function .
A3. Combining several broadenings
Applying a second broadening to the already broadened scattering data S1
where
That is, it is equivalent to broadening S0 with a total broadening, , obtained by broadening C1 with C2.
This will result in a further broadening of the already broadened PDF:
where
Similarly, this can also be written as
with
equivalent to broadening the initial PDF, G0, with the total broadening obtained by broadening with .
In the case where C1 and C2 are the Gaussian and Lorentzian functions used above, will be a Voigt function with a Gaussian width of and Lorentzian half width of .
A peak in the PDF centred at r0 will then be broadened by a Voigt function with Gaussian width and Lorentzian half width and damped by .
Supporting information
Supporting information. DOI: https://doi.org/10.1107/S2053273321011840/vk5047sup1.pdf
Footnotes
1The peak integral breadth β is the total area under the peak divided by the maximum intensity. For a Lorentzian peak, it is proportional to the full width at half-maximum (FWHM) through β = (Weidenthaler, 2011).
Acknowledgements
Total scattering experiments were performed at the RIKEN Materials Science beamline BL44B2 at SPring-8 with the approval of RIKEN SPring-8 Center (proposal Nos. 20160037 and 20180024). The authors thank the beamline staff for assistance in collecting high-quality total scattering data. Dr Phil Chater, principal beamline scientist at XPDF (I15-1) at the Diamond Light Source, is also gratefully acknowledged for his assistance with the implementation of PDF model TOPAS-Academic v6 software.
in theFunding information
Funding for this research was provided by: Villum Fonden.
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