1. How does the ML modeling workflow enhance post irradiation examination?
The ML modeling workflow enhances post irradiation examination by integrating multi-scaled microscopic images from SEM, STEM images, and EDS data. It provides quantitative results on the distribution of -U and UZr 2 phase, as well as the detection and classification of pores. This workflow is the first to use cross-linked materials characterization methods for ML model development, allowing for highly transferable models for pore detection and classification in irradiated metallic fuel. The framework accelerates quantitative analysis and bridges the gap between PIE observation and fuel performance modeling efforts, ultimately accelerating fuel qualification.
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