首页> 外文会议>Conference on Smart Systems and Nondestructive Evaluation for Civil Infrastructures Mar 3-6, 2003 San Diego, California, USA >Damage Diagnosis of a Building Structure Using Support Vector Machine and Modal Frequency Patterns
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Damage Diagnosis of a Building Structure Using Support Vector Machine and Modal Frequency Patterns

机译:基于支持向量机和模态频率模式的建筑结构损伤诊断。

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摘要

A method using the support vector machine (SVM) to detect local damages in a building structure with the limited number of sensors is proposed. The SVM is a powerful pattern recognition tool applicable to complicated classification problems. The method is verified to have capability to identify not only the location of damage but also the magnitude of damage with satisfactory accuracy. In our proposed method, feature vectors derived from the modal frequency patterns are used after proper normalization. The feature vectors contain the information on the location and magnitude of damages. As the method does not require modal shapes, typically only two vibration sensors are enough for detecting input and output signals to obtain the modal frequencies. The support vector machines trained for single damage is also effective for detecting damage in multiple stories.
机译:提出了一种使用支持​​向量机(SVM)检测传感器数量有限的建筑结构中局部损伤的方法。 SVM是适用于复杂分类问题的功能强大的模式识别工具。经验证,该方法不仅能够识别损坏的位置,而且能够以令人满意的精度识别损坏的程度。在我们提出的方法中,从模态频率模式导出的特征向量在正确归一化后使用。特征向量包含有关损坏的位置和大小的信息。由于该方法不需要模态形状,因此通常只有两个振动传感器足以检测输入和输出信号以获得模态频率。受过单个损坏训练的支持向量机还可以有效地检测多个楼层中的损坏。

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