Transient phase fraction and dislocation density estimation from in-situ X-ray diffraction data with a low signal-to-noise ratio using a Bayesian approach to the Rietveld analysis
We describe the analysis of in-situ HT-XRD data of a dual phase stainless steel exposed to a complex thermal cycle of heating, holding and cooling. For the conditions used only low quality diffraction data could be collected. Peak positions, peak areas and peak broadening are modeled by the Rietveld...
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Veröffentlicht in: | Materials characterization 2021-02, Vol.172, p.110860, Article 110860 |
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Sprache: | eng |
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Zusammenfassung: | We describe the analysis of in-situ HT-XRD data of a dual phase stainless steel exposed to a complex thermal cycle of heating, holding and cooling. For the conditions used only low quality diffraction data could be collected. Peak positions, peak areas and peak broadening are modeled by the Rietveld method. The low signal-to noise ratio and the presence of artificial peaks due to tube tails complicate the data evaluation. In a first attempt the parameters are refined by a local optimization procedure (e.g. Levenberg-Marquardt). However, this procedure fails by being caught in one of several local minima. Next, a Bayesian approach with a Markov Chain Monte Carlo (MCMC) algorithm is used as a global optimization procedure to refine the simulated Rietveld diffractograms. Accurate estimates of the evolution of the phase fractions and dislocation densities in martensite and austenite during all stages of the thermal cycle are obtained by this MCMC algorithm. While an approach based on multivariate second order Taylor series completely underestimates the error, the uncertainties in the model parameters could be estimated appropriately from histograms obtained by the MCMC method.
•The simulated diffractograms are analyzed by a Markov Chain Monte Carlo method using Bayesian statistics.•Global optimization as a tool to deal with low signal-to-noise ratio data.•The errors of the dislocation densities cannot be obtained from the covariance matrix.•Distributions of the model parameters (e.g. determined by MCMC) provide a clear error estimation. |
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ISSN: | 1044-5803 1873-4189 |
DOI: | 10.1016/j.matchar.2020.110860 |