Transregional spatial correlation in cementitious composites revealed by deep learning
编号:292 访问权限:仅限参会人 更新:2024-05-01 11:44:35 浏览:35次 特邀报告

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摘要
Computational microstructure characterisation and reconstruction of materials with a cementitious nature are essential for understanding their behaviour and predicting properties in the macro scale. Modelling cementitious materials with a representative spatial scale with precise characterisation has troubled researchers for decades. Although numerous physical descriptors have been applied for the characterisation of cementitious materials, only a few of them describe high-order information within the microstructure such as spatial arrangements. In this work, we demonstrated the capturing of the spatial correlation in cementitious material using deep convolutional neural networks at multiple scales based on imaging data with nanoscale resolution. Our results revealed the presence of a spatial correlation in the cementitious system and give the first indication of its distribution among the diverse features of the microstructure. We also propose functions of the discovered correlation for representative scale determination of cement materials and suggest the implications for the reconstruction of the cement microstructure based on its spatial correlation.
 
关键词
deep learning,cementitious composites
报告人
林均霖
东南大学

稿件作者
林均霖 东南大学
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重要日期
  • 会议日期

    05月31日

    2024

    06月03日

    2024

  • 05月20日 2024

    摘要截稿日期

  • 05月20日 2024

    初稿截稿日期

  • 06月03日 2024

    注册截止日期

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