Insights into Prismatic Loop Formation in Irradiated Fe–Cr Alloys from Hypothesis-Driven Active Learning and Causal Analysis

循环(图论) 辐照 材料科学 冶金 物理 数学 核物理学 组合数学
作者
Saurabh Ghosh,Anthony Tom,Dwaipayan Dasgupta,Ayana Ghosh,Brian D. Wirth
出处
期刊:ACS applied energy materials [American Chemical Society]
卷期号:7 (15): 6123-6134 被引量:2
标识
DOI:10.1021/acsaem.4c00485
摘要

Neutron and electron irradiation experimental studies conducted on body-centered cubic Fe and Fe–Cr alloys have established two prismatic dislocation loop populations, which have Burgers vectors of either a/2$\\langle$111$\\rangle$ or a$\\langle$100$\\rangle$. Here, the loop formation depends on factors such as dose (D), dose rate (D<sub>rt</sub>), temperature (T), chromium content (Cr%), and other alloying elements. Hence, it is important to understand how irradiation-induced dislocation loops evolve conditional upon the loop characteristics, such as loop density (DD), average loop size d̅, and irradiation parameters (D, D<sub>rt</sub>, T, and irradiation type), which is still an active area of research. To understand these complex structure–property relationships, machine learning (ML) is employed in a three-step approach. This includes imputing missing data with a k-nearest neighbor, generating functionalized features, and assessing feature importance with random forest classification and regression. Physics-based features are incorporated in a hypothesis-driven active learning scheme to overcome data unavailability challenges. Insights obtained from ML models (i) to categorize dislocation loop types, show the highest correlation with d̅; (ii) Log(DD), obtained through mathematical formulations involving D, Cr%, d̅, and T (e.g., Log(DD) ~ D + exp(-Cr%) + 1/d̅ and log(DD) ~ D + exp(-Cr%) + 1/T). Hypothesis-driven active learning is able to predict Log(DD) in which the experimental date is not known. Causal models verify cause–effect relationships for dislocation loop classification and irradiation factors in FeCr alloys.
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