On the estimation of statistical uncertainties on powder diffraction and small-angle scattering data from two-dimensional X-ray detectors

Author:

Yang X.,Juhás P.,Billinge S. J. L.ORCID

Abstract

Optimal methods are explored for obtaining one-dimensional powder pattern intensities from two-dimensional planar detectors with good estimates of their standard deviations. Methods are described to estimate uncertainties when the same image is measured in multiple frames as well as from a single frame. The importance of considering the correlation of diffraction points during the integration and the resampling process of data analysis is shown. It is found that correlations between adjacent pixels in the image can lead to seriously overestimated uncertainties if such correlations are neglected in the integration process. Off-diagonal entries in the variance–covariance (VC) matrix are problematic as virtually all data processing and modeling programs cannot handle the full VC matrix. It is shown that the off-diagonal terms come mainly from the pixel-splitting algorithm used as the default integration algorithm in many popular two-dimensional integration programs, as well as from rebinning and resampling steps later in the processing. When the full VC matrix can be propagated during the data reduction, it is possible to get accurate refined parameters and their uncertainties at the cost of increasing computational complexity. However, as this is not normally possible, the best approximate methods for data processing in order to estimate uncertainties on refined parameters with the greatest accuracy from just the diagonal variance terms in the VC matrix is explored.

Publisher

International Union of Crystallography (IUCr)

Subject

General Biochemistry, Genetics and Molecular Biology

Reference27 articles.

1. The use of the serial-correlations concept in the figure-of-merit function for powder diffraction profile fitting

2. E.s.d.'s and estimated probable error obtained in Rietveld refinements with local correlations

3. Bevington, P. R., Robinson, D. K. & Bunce, G. (1992). Data Reduction and Error Analysis for the Physical Sciences, 2nd ed. New York: McGraw-Hill.

4. Boldyreva, E. & Dera, P. (2010). Editors. High-Pressure Crystallography: From Fundamental Phenomena to Technological Applications (NATO Science for Peace and Security Series B: Physics and Biophysics). Dordrecht: Springer.

5. Rapid-acquisition pair distribution function (RA-PDF) analysis

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