An anomaly pattern detection for bridge structural response considering time-varying temperature coefficients

Structures - Tập 46 - Trang 285-298 - 2022
Yuan Ren1, Qiaowei Ye1, Xiang Xu1, Qiao Huang1, Ziyuan Fan1, Chong Li2, Weijie Chang3
1School of Transportation, Southeast University, 2 Sipailou, Nanjing, 210096, Jiangsu, China
2Department of Engineering, CCCC Highway Bridge National Engineering Research Center Co. Ltd, 85 Deshengmenwai, 10088, Beijing, China
3Department of Engineering, Zhejiang Zhoushan Cross-Sea Bridge Co. Ltd, 170 Lingangdonglu, Zhoushan, 316031, Zhejiang, China

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