基于DFT和SVM的建筑物地震运动检测与分类方法

Ernesto A. Taypicahuana Loza, Antero Castro Nieto, S. H. Huamán Bustamante
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引用次数: 3

摘要

分析地震事件中建筑物的加速度信号有助于识别结构的振动强度。本研究提出了一种利用P波响应识别地震中建筑物在最大振动前几秒钟的振动强度的方法。该方法基于离散傅立叶变换(DFT)和支持向量机(SVM)。这种方法的结果是根据其振动强度(低、中、高)分类的警报级别。每个建筑物在地震发生时可能有不同的警报,因为可能有不同的自然频率。在树莓派V4 B嵌入式系统上实现的原型,主要使用两个基于MEMS的加速度传感器MPU6050和Wi-Fi天线。此外,还使用了滤波器来衰减噪声。采用STA/LTA算法比较检测时间。结果表明,使用该方法是方便的,主要有两个原因。首先,它使用STA/LTA算法所需样本的十分之一进行检测,并且具有相同的效率。其次,建筑物的警戒等级分类与其结构发生的地震信号PGA的相关系数大于0.8。
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Seismic Motion Detection and Classification Methodology for Buildings Using DFT and SVM
Analyzing the acceleration signals of buildings during a seismic event helps us to identify the vibrational intensity of the structure. This research proposes a methodology to recognize the level of the vibrational intensity of a building during an earthquake with a few seconds before its maximum vibration using the P wave response. The proposed methodology is based on the Discrete Fourier Transform (DFT) and Support Vector Machine (SVM). This methodology results in an alert level that is classified according to its vibrational intensity (low, moderate and high). Each building could have different alerts in the event of an earthquake since may have different natural frequencies. A prototype implemented with a Raspberry Pi V4 B embedded system, two acceleration sensors called MPU6050 based on MEMS and a Wi-Fi antenna, mainly, is used. Also, filters were used to attenuate noise. The STA/LTA algorithm is used to compare the detection time. The results show that it is convenient to use the methodology for two main reasons. Firstly, this uses one tenth of the samples needed in the STA/LTA algorithm for detection and with the same efficiency. Secondly, the classification of the alert level in the building has a correlation greater than 0.8 with the PGA of the seismic signal that occurred in its structure.
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