Generative AI for performance-based design of engineered cementitious composite

Engineered cementitious composite (ECC) has been intensively studied due to its excellent tensile performance. However, classical micro-mechanical design theory of ECC is qualitative and fails to give detailed ECC mixtures at specific tensile parameters. This study aims to develop a performance-base...

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Veröffentlicht in:Composites. Part B, Engineering Engineering, 2023-11, Vol.266, p.110993, Article 110993
Hauptverfasser: Yu, Jie, Weng, Yiwei, Yu, Jiangtao, Chen, Wenguang, Lu, Shuainan, Yu, Kequan
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Sprache:eng
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Zusammenfassung:Engineered cementitious composite (ECC) has been intensively studied due to its excellent tensile performance. However, classical micro-mechanical design theory of ECC is qualitative and fails to give detailed ECC mixtures at specific tensile parameters. This study aims to develop a performance-based mixture design model to generate ECC mixtures using generative AI method. An experimental database consisting of 129 polyethylene fiber reinforced ECC (PE-ECC) records has been built. The database was used to train one invertible neural network model and two artificial neural network models. A series of PE-ECC mixtures were generated by the proposed model based on desired mechanical performance and sustainable requirements. Based on the experimental results, the developed model was proven to compose PE-ECC mixtures that satisfy the target requirements with a maximum deviation of less than 16%. The neural network-based model can be used in various application scenarios (e.g., low-cost ECC and low-carbon ECC), thus promoting the development of ECC materials in the area of research and engineering application.
ISSN:1359-8368
1879-1069
DOI:10.1016/j.compositesb.2023.110993