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Feature Extraction and Selection from Vibration Measurements for Structural Health Monitoring

机译:结构性振动测量的特征提取和选择,用于结构健康监测

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Structural Health Monitoring (SHM) aims at monitoring buildings or other structures and assessing their condition, alerting about new defects in the structure when necessary. For instance, vibration measurements can be used for monitoring the condition of a bridge. We investigate the problem of extracting features from lightweight wireless acceleration sensors. On-line algorithms for frequency domain monitoring are considered, and the resulting features are combined to form a large bank of candidate features. We explore the feature space by selecting random sets of features and estimating probabilistic classifiers for damage detection purposes. We assess the relevance of the features in a large population of classifiers. The methods are assessed with real-life data from a wooden bridge model, where structural problems are simulated with small added weights.
机译:结构健康监测(SHM)旨在监测建筑物或其他结构并评估其状况,在必要时提醒结构中的新缺陷。例如,振动测量可用于监视桥的状况。我们调查轻量级无线加速度传感器提取功能的问题。考虑用于频域监视的在线算法,并将产生的功能组合以形成大量候选特征。我们通过选择随机的特征集和估算概率分类器来探索特征空间,以获得损坏检测目的。我们评估了大量分类器中的特征的相关性。这些方法是通过来自木桥模型的现实生活数据评估,其中结构问题是用小的增加的重量模拟。

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