基于深度学习的桥梁健康监测长期缺失风数据恢复

Zhiwei Wang, Wenming Zhang, Yufeng Zhang
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引用次数: 0

摘要

随着桥梁SHM系统电子设备性能的不断恶化,风数据往往长期缺失,给桥梁结构的安全监测带来了障碍。因此,我们提出了一个基于深度神经网络(DNN)利用自由存取数据库(ECMWF)的长期缺失风数据恢复框架。该框架包括一个回归任务(task 1)和一个时间超分辨率任务(task 2)。在task 1中,将ECMWF提供的逐时风数据学习到SHM系统的逐时风数据。在任务2中,将低分辨率风数据上采样为高分辨率风数据(10分钟平均值)。U-net架构为这两个任务中的深度神经网络提供了基础。以苏通大桥为例,验证了该框架的可行性。该方法为恢复长期连续缺失的SHM数据提供了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-term Missing Wind Data Recovery for Bridge Health Monitoring Using Deep Learning
As the performance of the electronic equipment for bridge SHM system deteriorates, wind data often suffer from long-term data missing, which creates barriers for safety monitoring of the bridge structures. Therefore, we proposed a framework for long-term missing wind data recovery based on a deep neural network (DNN) utilizing a free access database (ECMWF). This framework consisted of one regression task (Task 1) and one temporal super-resolution task (Task 2). In Task 1, the hourly wind data provided by ECMWF were learned to the hourly ones of the SHM system. In Task 2, the low-resolution wind data were upsampled to high-resolution ones (10-min averages). The U-net architecture provided the basis for the DNNs in both tasks. The proposed framework's feasibility was verified through a case study of Sutong Bridge. The proposed methodology provides a new perspective for recovering long-term continuous missing SHM data.
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