基于机器学习的脉冲型地震动识别方法及特征重要性研究

Identification methods and feature importance of pulse-like ground motions based on machine learning

  • 摘要: 脉冲型地震动的识别是地震工程领域基本且重要的一项工作。现有脉冲型地震动识别方法往往都需要在时频域上进行信号分析和脉冲分量提取。然而,尚未有学者采用简单标量形式且容易获取的地震动强度参数来识别脉冲。为此,本文初步选取了33个地震动强度参数作为输入特征,分别建立了基于支持向量机、随机森林以及CatBoost的3个脉冲型地震动识别的机器学习模型,并从识别的准确度、召回率、准确率等角度比较了不同及其学习模型的性能;同时,根据输入特征的重要性对地震动强度参数进一步优化,给出了优化地震动强度参数后的性能最优的模型。研究结果表明,当采用33个地震动强度参数输入时,CatBoost模型的分类识别准确率最高,可以达到96%;综合3个模型中的地震动强度参数重要性排序,可认为累计绝对速度、峰值地面速度、卓越持时、峰值地面速度/峰值地面加速度4个输入参数是对于脉冲型地震动识别影响较大的地震动强度参数;采用8个地震动强度参数输入的CatBoost模型为性能最优的模型,在新地震动数据集上分类准确率达到90%,表现出了良好的泛化能力。

     

    Abstract: Identification of pulse-like ground motions is a fundamental and important task in earthquake engineering. Although many methods have been proposed for identifying pulse-like ground motions, they often require extracting pulse components in the time-frequency domain. No studies have yet used simple and easily obtainable ground motion intensity measures for identification. In this paper, 33 ground motion intensity measures were initially selected as input features, and three machine learning models—Support Vector Machine, Random Forest, and CatBoost—were developed to identify pulse-like ground motions, with their performance compared. Ground motion intensity measures were further optimized based on feature importance, and the best-performing model after ground motion intensity measure optimization was provided. The results show that the CatBoost model achieved the highest classification accuracy of 96% when using 33 ground motion intensity measures as input. The ground motion intensity measures importance ranking across the three models suggests that Cumulative Absolute Velocity, Peak Ground Velocity, Excellent Duratio, and the ratio of PGV to Peak Ground Acceleration are the most influential ground motion intensity measures for identifying pulse-like ground motions. The optimized CatBoost model, using 8 ground motion intensity measures as input, achieved a classification accuracy of 90% on a new dataset, demonstrating good generalization ability.

     

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