Multiclass anomaly detection in imbalanced structural health monitoring data using convolutional neural network

Zhao, Mengchen, Sadhu, Ayan, Capretz, Miriam
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引用次数: 2

Abstract

Structural health monitoring (SHM) system aims to monitor the in-service condition of civil infrastructures, incorporate proactive maintenance, and avoid potential safety risks. An SHM system involves the collection of large amounts of data and data transmission. However, due to the normal aging of sensors, exposure to outdoor weather conditions, accidental incidences, and various operational factors, sensors installed on civil infrastructures can get malfunctioned. A malfunctioned sensor induces significant multiclass anomalies in measured SHM data, requiring robust anomaly detection techniques as an essential data cleaning process. Moreover, civil infrastructure often has imbalanced anomaly data where most of the SHM data remain biased to a certain type of anomalies. This imbalanced time-series data causes significant challenges to the existing anomaly detection methods. Without proper data cleaning processes, the SHM technology does not provide useful insights even if advanced damage diagnostic techniques are applied. This paper proposes a hyperparameter-tuned convolutional neural network (CNN) for multiclass imbalanced anomaly detection (CNN-MIAD) modelling. The hyperparameters of the proposed model are tuned through a random search algorithm to optimize the performance. The effect of balancing the database is considered by augmenting the dataset. The proposed CNN-MIAD model is demonstrated with a multiclass time-series of anomaly data obtained from a real-life cable-stayed bridge under various cases of data imbalances. The study concludes that balancing the database with a time shift window to increase the database has generated the optimum results, with an overall accuracy of 97.74%.
基于卷积神经网络的不平衡结构健康监测数据多类异常检测
结构健康监测(SHM)系统的目的是监测民用基础设施在役状态,纳入主动维修,避免潜在的安全风险。SHM系统涉及大量数据的收集和数据传输。然而,由于传感器的正常老化、暴露于室外天气条件、意外事件和各种操作因素,安装在民用基础设施上的传感器可能会出现故障。故障传感器会在测量的SHM数据中引起明显的多类异常,需要强大的异常检测技术作为基本的数据清理过程。此外,民用基础设施通常具有不平衡的异常数据,其中大多数SHM数据仍然偏向于某种类型的异常。这种不平衡的时间序列数据给现有的异常检测方法带来了极大的挑战。如果没有适当的数据清理过程,即使采用了先进的损坏诊断技术,SHM技术也无法提供有用的见解。提出了一种用于多类不平衡异常检测(CNN- miad)建模的超参数调谐卷积神经网络(CNN)。通过随机搜索算法对模型的超参数进行调整,以优化模型的性能。通过扩充数据集来考虑平衡数据库的效果。利用实际斜拉桥在各种数据不平衡情况下获得的多类时间序列异常数据,验证了所提出的CNN-MIAD模型。研究得出结论,使用时移窗口来平衡数据库以增加数据库已经产生了最佳结果,总体准确率为97.74%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.70
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0.00%
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审稿时长
13 weeks
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