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Automating selective area electron diffraction phase identification using machine learning
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作者 M.Mika N.Tomczak +2 位作者 c.finney J.Carter A.Aitkaliyeva 《Journal of Materiomics》 SCIE CSCD 2024年第4期896-905,共10页
Selective area electron diffraction(SAED)patterns can provide valuable insight into the structure of a material.However,the manual identification of collected patterns can be a significant bottleneck in the overall ph... Selective area electron diffraction(SAED)patterns can provide valuable insight into the structure of a material.However,the manual identification of collected patterns can be a significant bottleneck in the overall phase classification workflow.In this work,we utilize the recent advances in computer vision and machine learning(ML)to automate the indexing of SAED patterns.The performance of six different ML algorithms is demonstrated using metallic plutonium-zirconium alloys.The most successful approach trained a neural network(NN)to make a classification of the phase and zone axis,and then utilized a second NN to synthesize multiple independent predictions of different tilts in a single sample to make an overall phase identification.The results demonstrate that automated SAED phase identification using ML is a viable route to accelerate materials characterization. 展开更多
关键词 Selective area electron diffraction Machine learning Phase identification Metallic fuels Pu alloys
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