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Vibration-based damage detection using online learning algorithm for output-only structural health monitoring

机译:使用在线学习算法的基于振动的损伤检测,用于仅输出的结构健康监测

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摘要

Damage-sensitive features such as natural frequencies are widely used for structural health monitoring; however, they are also influenced by the environmental condition. To address the environmental effect, principal component analysis is widely used. Before performing principal component analysis, the training data should be defined for the normal condition (baseline model) under environmental variability. It is worth noting that the natural change of the normal condition may exist due to an intrinsic behavior of the structural system. Without accounting for the natural change of the normal condition, numerous false alarms occur. However, the natural change of the normal condition cannot be known in advance. Although the description of the normal condition has a significant influence on the monitoring performance, it has received much less attention. To capture the natural change of the normal condition and detect the damage simultaneously, an adaptive statistical process monitoring using online learning algorithm is proposed for output-only structural health monitoring. The novelty aspect of the proposed method is the adaptive learning capability by moving the window of the recent samples (from normal condition) to update the baseline model. In this way, the baseline model can reflect the natural change of the normal condition in environmental variability. To handle both change rate of the normal condition and non-linear dependency of the damage-sensitive features, a variable moving window strategy is also proposed. The variable moving window strategy is the block-wise linearization method using k-means clustering based on Linde-Buzo-Gray algorithm and Bayesian information criterion. The proposed method and two existing methods (static linear principal component analysis and incremental linear principal component analysis) were applied to a full-scale bridge structure, which was artificially damaged at the end of the long-term monitoring. Among the three methods, the proposed method is the only successful method to deal with the non-linear dependency among features and detect the structural damage timely.
机译:诸如自然频率之类的对损伤敏感的特征被广泛用于结构健康监测。但是,它们也受环境条件的影响。为了解决环境影响,主要成分分析被广泛使用。在进行主成分分析之前,应为环境变化下的正常条件(基准模型)定义训练数据。值得注意的是,正常状态的自然变化可能由于结构系统的固有行为而存在。如果不考虑正常情况的自然变化,则会发生许多错误警报。但是,不能预先知道正常状况的自然变化。尽管对正常情况的描述对监视性能有重大影响,但受到的关注却很少。为了捕获正常状况的自然变化并同时检测损坏,提出了一种使用在线学习算法的自适应统计过程监控,用于仅输出结构健康监控。所提出方法的新颖性是通过移动最近样本的窗口(从正常状态)来更新基线模型的自适应学习能力。这样,基线模型可以反映环境变化中正常条件的自然变化。为了处理正常状态的变化率和损伤敏感特征的非线性相关性,还提出了可变移动窗口策略。可变移动窗口策略是基于Linde-Buzo-Gray算法和贝叶斯信息准则的,使用k均值聚类的逐块线性化方法。所提出的方法和两种现有方法(静态线性主成分分析和增量线性主成分分析)被应用于全尺寸桥梁结构,该结构在长期监测的最后被人为破坏了。在这三种方法中,所提出的方法是处理特征之间的非线性依赖性并及时发现结构破坏的唯一成功方法。

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