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Multiresolution classification with semi-supervised learning for indirect bridge structural health monitoring

机译:半监督学习的多分辨率分类用于间接桥梁结构健康监测

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We present a multiresolution classification framework with semi-supervised learning for the indirect structural health monitoring of bridges. The monitoring approach envisions a sensing system embedded into a moving vehicle traveling across the bridge of interest to measure the modal characteristics of the bridge. To enhance the reliability of the sensing system, we use a semi-supervised learning algorithm and a semi-supervised weighting algorithm within a multiresolution classification framework. We show that the proposed algorithm performs significantly better than supervised multiresolution classification.
机译:我们提出了一种具有半监督学习的多分辨率分类框架,用于桥梁的间接结构健康监测。监视方法设想了一个传感系统,该传感系统嵌入到行驶穿过目标桥梁的移动车辆中,以测量桥梁的模态特征。为了提高传感系统的可靠性,我们在多分辨率分类框架内使用了半监督学习算法和半监督加权算法。我们表明,提出的算法的性能明显优于监督的多分辨率分类。

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