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Novelty Detection in Projected Spaces for Structural Health Monitoring

机译:投影空间中的新颖性检测,用于结构健康监测

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The aim of Structural Health Monitoring (SHM) is to detect and identify damages in man-made structures such as bridges by monitoring features derived from vibration data. A usual approach is to deal with vibration measurements, obtained by acceleration sensors during the service life of the structure. In this case, only normal data from healthy operation are available, so damage detection becomes a novelty detection problem. However, when prior knowledge about the structure is limited, the set of candidate features that can be extracted from the set of sensors is large and dimensionality reduction of the input space can result in more precise and efficient novelty detectors. We assess the effect of linear, nonlinear, and random projection to low-dimensional spaces in novelty detection by means of probabilistic and nearest-neighbor methods. The methods are assessed with real-life data from a wooden bridge model, where structural damages are simulated with small added weights.
机译:结构健康监测(SHM)的目的是通过监测源自振动数据的特征来检测和识别人造结构(例如桥梁)中的损坏。通常的方法是处理在结构的使用寿命期间由加速度传感器获得的振动测量值。在这种情况下,只有正常运行的正常数据可用,因此损坏检测成为一种新颖性检测问题。然而,当关于结构的先验知识受到限制时,可以从传感器集合中提取的候选特征集合很大,并且输入空间的尺寸减小可以导致更精确和有效的新颖性检测器。我们通过概率和最近邻方法评估在新颖性检测中对低维空间进行线性,非线性和随机投影的效果。这些方法是使用来自木桥模型的实际数据进行评估的,其中,结构损失可以用较小的附加重量进行模拟。

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