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  • Important Date
  • August 8, 2025

    Deadline for submission of conference reports

  • August 12, 2025

    Deadline for conference registration submission

  • August 15, 2025

    Meeting Registration

  • August 16, 2025, morning

    Opening ceremony and conference reports

  • August 16, 2025, afternoon

    session report

  • August 17, 2025, morning

    Session report and closing ceremony

[Oral Presentation]Rapid seismic response prediction model of bridges with small-sample data based on cluster and multi-level feature fusion deep learning algorithms

Rapid seismic response prediction model of bridges with small-sample data based on cluster and multi-level feature fusion deep learning algorithms
ID:24 View Protection:ATTENDEE Updated Time:2025-07-28 20:13:07 Hits:324 Oral Presentation

Start Time:2025-08-15 19:50 (Asia/Shanghai)

Duration:10min

Session:[S1] 8月15日晚上 研究生分会 » [S1-2] 研究生分会场二

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Abstract
Under earthquake actions, bridge structures may suffer from various forms of damage, which threaten the overall safety of the structure. Traditional finite element methods have high computational costs in nonlinear time-history analysis. In order to rapidly and accurately assess the seismic performance of bridges, a method combined with cluster and multi-level feature fusion deep learning algorithms with low computational cost and high computational accuracy is proposed. To address the challenge of small-sample data, the DTW-Kmedoids time-series clustering framework is proposed to cluster ground motion records and generate the representative small-sample training set for DL model training. The proposed Multi-level feature fusion GRU model with strong generalization capability and high robustness was trained in small-sample scenarios and is capable of accurately and efficiently predicting the nonlinear response of bridge structures under seismic actions. The effectiveness of the proposed method is verified by comparing the computational results with the traditional finite element model. This study provides a novel and efficient solution for seismic response prediction in the small-sample data scenario of bridge engineering.
 
Keywords
Bridge engineering;Multi-level feature fusion mechanism;Clustering strategy;Small-sample data;Seismic response prediction
Speaker
卢春德
博士研究生 华中科技大学

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