Development of Online-learning based Adaptive Anomaly Detection Algorithm for Monitoring Data Analysis on Caisson Type Breakwater

Seung-Seop Jin, Jiyoung Min, Young-Taek Kim, Ryulri Kim
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Abstract

Most port structures are massive and data measured on them sensitively changes to the surrounding environment including sea waves, tides, wind, and other operational conditions so it might be difficult to extract and long-term monitor their own features such as natural frequencies and mode shapes. To solve this problem, an anomaly detection algorithm with online learning was developed for the analysis of monitoring data on the port structures. For this, data were first measured on a 1/50 scaled model of caisson type breakwater through hydraulic model experiments, and the characteristics of data were investigated. Then an unsupervised algorithm was developed to online detect abnormal conditions caused by the drift, which can track the reconstruction error from the principal component analysis and the Euclidean distance between original and reconstructed signals. The experimental results showed that the proposed algorithm could be successfully applied to time-dependent dataset shifts with high accuracy and automatically calculate the threshold based on the adaptive model.
基于在线学习的沉箱式防波堤监测数据分析自适应异常检测算法的开发
大多数港口结构都是巨大的,在其上测量的数据会随着周围环境(包括海浪、潮汐、风和其他操作条件)的敏感变化而变化,因此可能难以提取和长期监测其自身特征(如固有频率和模态振型)。针对这一问题,提出了一种基于在线学习的港口结构监测数据分析异常检测算法。为此,首先在1/50比例的沉箱式防波堤模型上进行了水力模型试验,并对数据特性进行了研究。在此基础上,提出了一种基于主成分分析和原始信号与重构信号之间欧氏距离的无监督在线检测漂移引起的异常情况的算法。实验结果表明,该算法能够成功地应用于时变数据偏移,并能基于自适应模型自动计算阈值。
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