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Antiseismic Method of Prestressed Fabricated Building Structure under Intelligent Big Data

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  • Zhonghong Li
  • Yong Huang

Abstract

Compared with traditional buildings, prefabricated buildings have the advantages of simple construction technology, low construction requirements, and shorter construction time, which can generate more economic benefits for the construction industry. In order to study the seismic capacity of prestressed fabricated building structures under intelligent big data, this article takes fabricated frame structures as the research object and the reinforced walls at the nodes as the starting point to study the damage patterns and energy dissipation capabilities of different seismic waves on the structure. In order to observe the overall seismic performance, the fabricated frame structure was used. The results of the study found that the prestressed fabricated building structure has the best seismic effect when the axial compression is 0.3, and the prestressed degree is below 0.5, which meets the seismic requirements. Therefore, the prestressed degree of the prestressed fabricated building structure should be below 0.5. According to statistics on the results of structural residual deformation and steel bar deformation of buildings under different seismic waves, it can be found that the prestressed fabricated building structure has better self-recovery ability and can better respond to earthquakes with different seismic waves.

Suggested Citation

  • Zhonghong Li & Yong Huang, 2021. "Antiseismic Method of Prestressed Fabricated Building Structure under Intelligent Big Data," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-12, November.
  • Handle: RePEc:hin:jnlmpe:9834770
    DOI: 10.1155/2021/9834770
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