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Deep learning for data anomaly detection and data compression of a long-span suspension bridge

机译:深度学习数据异常检测和长跨度悬架桥的数据压缩

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摘要

Abstract As intelligent sensing and sensor network systems have made progress and low‐cost online structural health monitoring has become possible and widely implemented, large quantities of highly heterogeneous data can be acquired during the monitoring. This has resulted in exceeding the capacity of traditional data analytics techniques, especially in monitoring large‐scale or critical civil structures. In particular, data storage has become a big challenge, hence, resulting in the emergence of data compression and reconstruction as a new area in structural health monitoring (SHM) of large infrastructure systems. SHM data generally include anomalies that can disturb structural analysis and assessment. The fundamental reasons for the abnormality of data are extremely complex. Therefore, reconstruction of the abnormal data is generally difficult and poses serious challenges to achieve high‐accuracy after data has been compressed. Considering these significant challenges, in this paper, a novel deep‐learning‐enabled data compression and reconstruction framework is proposed that can be divided into two phases: (a) a one‐dimensional Convolutional Neural Network (CNN) that extracts features directly from the input signals is designed to detect abnormal data with validated high accuracy; (b) a new SHM data compression and reconstruction method based on Autoencoder structure is further developed, which can recover the data with high‐accuracy under such a low compression ratio. To validate the proposed approach, acceleration data from the SHM system of a long‐span bridge in China are employed. In the abnormal data detection phase, the results show that the proposed method can detect anomaly with high accuracy. Subsequently, smaller reconstruction errors can be achieved even by using only 10% compression ratio for the normal data.
机译:摘要随着智能感应和传感器网络系统取得进展,低成本的在线结构健康监测已经成为可能和广泛实现,在监测期间可以获得大量的高度异构数据。这导致传统数据分析技术的能力超过了监测大规模或关键的民用结构。特别是,数据存储已经成为一个大挑战,因此导致数据压缩和重建作为大型基础设施系统结构健康监测(SHM)的新领域。 SHM数据通常包括可能扰乱结构分析和评估的异常。数据异常的根本原因非常复杂。因此,重建异常数据通常困难并且在数据被压缩后实现高精度造成严重挑战。考虑到这些重大挑战,在本文中,提出了一种新的深学习的数据压缩和重建框架,可以分为两个阶段:(a)直接从中提取特征的一维卷积神经网络(CNN)。输入信号旨在检测具有验证的高精度的异常数据; (b)进一步开发了一种基于AutoEncoder结构的新SHM数据压缩和重建方法,可以在这种低压缩比下以高精度恢复数据。为了验证所提出的方法,雇用了来自中国长跨度桥梁SHM系统的加速数据。在异常数据检测阶段,结果表明,该方法可以检测高精度的异常。随后,即使使用仅使用10%的正常数据的压缩比也可以实现较小的重建误差。

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