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Parametric simulation of electron backscatter diffraction patterns through generative models

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摘要 Recently,discriminative machine learning models have been widely used to predict various attributes from Electron Backscatter Diffraction(EBSD)patterns.However,there has never been any generative model developed for EBSD pattern simulation.On one hand,the training of generative models is much harder than that of discriminative ones;On the other hand,numerous variables affecting EBSD pattern formation make the input space high-dimensional and its relationship with the distribution of backscattered electrons complicated.In this study,we propose a framework(EBSD-CVAE/GAN)with great flexibility and scalability to realize parametric simulation of EBSD patterns.Compared with the frequently used forward model,EBSD-CVAE/GAN can take variables more than just orientation and generate corresponding EBSD patterns in a single run.The accuracy and quality of generated patterns are systematically evaluated.The model does not only summarize a distribution of backscattered electrons at a higher level,but also mitigates data scarcity in this field.
出处 《npj Computational Materials》 SCIE EI CSCD 2023年第1期285-294,共10页 计算材料学(英文)
基金 The authors gratefully acknowledge funding from a DoD Vannevar-Bush Faculty Fellowship(N00014-16-1-2821) the computational facilities of the Materials Characterization Facility at CMU under grant#MCF-677785 Use was made of computational facilities purchased with funds from the National Science Foundation(grant#1925717:CC*Compute:A high-performance GPU cluster for accelerated research)and administered by the Center for Scientific Computing(CSC) The CSC is supported by the California NanoSystems Institute and the Materials Research Science and Engineering Center(MRSEC,NSF DMR 1720256)at UC Santa Barbara.
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