An in situ USAXS-SAXS-WAXS study of precipitate size distribution evolution in a model Ni-based alloy

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Abstract

Intermetallic γ′ precipitates typically strengthen nickel-based superalloys. The shape, size and spatial distribution of strengthening precipitates critically influence alloy strength, while their temporal evolution characteristics determine the high-temperature alloy stability. Combined ultra-small-, small- and wide-angle X-ray scattering (USAXS-SAXS-WAXS) analysis can be used to evaluate the temporal evolution of an alloy's precipitate size distribution (PSD) and phase structure during in situ heat treatment. Analysis of PSDs from USAXS-SAXS data employs either least-squares fitting of a preordained PSD model or a maximum entropy (MaxEnt) approach, the latter avoiding a priori definition of a functional form of the PSD. However, strong low-q scattering from grain boundaries and/or structure factor effects inhibit MaxEnt analysis of typical alloys. This work describes the extension of Bayesian-MaxEnt analysis methods to data exhibiting structure factor effects and low-q power law slopes and demonstrates their use in an in situ study of precipitate size evolution during heat treatment of a model Ni-Al-Si alloy.Combined ultra-small-, small- and wide-angle X-ray scattering (USAXS-SAXS-WAXS) provides in situ evaluation of the precipitate size distribution (PSD) and phase structure temporal evolution during heat treatment. A method for extraction of an arbitrary PSD in the presence of interparticle interactions is described and illustrated for study of PSD evolution.

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Andrews, R. N., Serio, J., Muralidharan, G., & Ilavsky, J. (2017). An in situ USAXS-SAXS-WAXS study of precipitate size distribution evolution in a model Ni-based alloy. Journal of Applied Crystallography, 50(3), 734–740. https://doi.org/10.1107/S1600576717006446

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