Unsupervised Deep Learning for Structural Health Monitoring

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-05-17 DOI:10.3390/bdcc7020099
R. Boccagna, M. Bottini, M. Petracca, Alessia Amelio, G. Camata
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引用次数: 1

Abstract

In the last few decades, structural health monitoring has gained relevance in the context of civil engineering, and much effort has been made to automate the process of data acquisition and analysis through the use of data-driven methods. Currently, the main issues arising in automated monitoring processing regard the establishment of a robust approach that covers all intermediate steps from data acquisition to output production and interpretation. To overcome this limitation, we introduce a dedicated artificial-intelligence-based monitoring approach for the assessment of the health conditions of structures in near-real time. The proposed approach is based on the construction of an unsupervised deep learning algorithm, with the aim of establishing a reliable method of anomaly detection for data acquired from sensors positioned on buildings. After preprocessing, the data are fed into various types of artificial neural network autoencoders, which are trained to produce outputs as close as possible to the inputs. We tested the proposed approach on data generated from an OpenSees numerical model of a railway bridge and data acquired from physical sensors positioned on the Historical Tower of Ravenna (Italy). The results show that the approach actually flags the data produced when damage scenarios are activated in the OpenSees model as coming from a damaged structure. The proposed method is also able to reliably detect anomalous structural behaviors of the tower, preventing critical scenarios. Compared to other state-of-the-art methods for anomaly detection, the proposed approach shows very promising results.
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结构健康监测的无监督深度学习
在过去的几十年里,结构健康监测在土木工程领域变得越来越重要,并通过使用数据驱动的方法,努力实现数据采集和分析过程的自动化。目前,自动化监测处理中出现的主要问题是建立一种稳健的方法,涵盖从数据采集到产出生产和解释的所有中间步骤。为了克服这一限制,我们引入了一种专门的基于人工智能的监测方法,用于近实时评估结构的健康状况。所提出的方法基于无监督深度学习算法的构建,目的是为从建筑物上的传感器获取的数据建立一种可靠的异常检测方法。预处理后,数据被输入到各种类型的人工神经网络自动编码器中,这些编码器经过训练以产生尽可能接近输入的输出。我们在铁路桥的OpenSees数值模型生成的数据和位于拉文纳历史塔(意大利)的物理传感器获取的数据上测试了所提出的方法。结果表明,该方法实际上将OpenSees模型中激活损坏场景时产生的数据标记为来自损坏的结构。所提出的方法还能够可靠地检测塔架的异常结构行为,防止出现关键情况。与其他最先进的异常检测方法相比,所提出的方法显示出非常有希望的结果。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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