根据 2015 年尼泊尔廓尔喀地震的案例研究数据,开发基于机器学习的既有建筑抗震评估快速视觉筛选方法

IF 3.8 2区 工程技术 Q2 ENGINEERING, GEOLOGICAL
Nurullah Bektaş, Orsolya Kegyes-Brassai
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引用次数: 0

摘要

在即将发生严重地震之前,必须利用快速目视筛查(RVS)方法对每栋现有建筑的抗震安全性进行评估,因为许多建筑都是在未考虑现行法规的情况下按照抗震标准建造的,而且根据其设计和维护方式,这些建筑的使用寿命和安全性都是有限的。地震造成的建筑物损坏会危及生命,并造成重大经济损失。因此,需要确定每栋建筑物的脆弱性,并采取适当的预防措施。由于进一步深入的脆弱性评估方法计算成本高昂,即使是对大型建筑群中的一个建筑物进行检查,成本也很高,因此在对大型建筑群进行评估时采用了 RVS 方法。可在现有建筑物中采用 RVS 方法,以确定地震即将发生时可能造成的破坏,并采取必要措施降低潜在危害。然而,传统的 RVS 方法在准确评估大型建筑群方面的可靠性有限。在本研究中,2015 年尼泊尔廓尔喀地震后获取的建筑物检测数据被用于训练九种不同的机器学习算法(决策树分类器、逻辑回归、轻梯度提升机分类器、极速梯度提升分类器、梯度提升分类器、随机森林分类器、支持向量机、K-邻居分类器和 Cat Boost 分类器),最终开发出一种可靠的 RVS 方法。震后建筑筛查数据被用于训练、验证并最终测试所开发的模型。通过采用先进的特征工程技术,在所开发的 RVS 方法中引入了高度复杂的参数。这些参数包括到震源的距离、基本结构周期和频谱加速度,通过整合这些参数来增强评估能力。通过这种整合,可以对不同地震易发地区的现有建筑物进行评估。这项研究表明,使用既定的 RVS 方法确定建筑物损坏状态与地震后观察到的损坏状态之间存在很强的相关性。在将所开发的方法与文献中报道的传统 RVS 方法的有限准确性进行比较时,测试准确率达到 73%,在准确划分建筑物损坏状态方面比传统 RVS 方法高出 40% 以上。这强调了地震后详细数据收集对于有效开发 RVS 方法的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Developing a machine learning-based rapid visual screening method for seismic assessment of existing buildings on a case study data from the 2015 Gorkha, Nepal earthquake

Developing a machine learning-based rapid visual screening method for seismic assessment of existing buildings on a case study data from the 2015 Gorkha, Nepal earthquake

Each existing building is required to be assessed before an impending severe earthquake utilizing Rapid Visual Screening (RVS) methods for its seismic safety since many buildings were constructed before seismic standards, without taking into account current regulations, and because they have a limited lifetime and safety based on how they were designed and maintained. Building damage brought on by earthquakes puts lives in danger and causes significant financial losses. Therefore, the fragility of each building needs to be determined and appropriate precautions need to be taken. RVS methods are used when assessing a large building stock since further in-depth vulnerability assessment methods are computationally expensive and costly to examine even one structure in a large building stock. RVS methods could be implemented in existing buildings in order to determine the damage potential that may occur during an impending earthquake and take necessary measures for decreasing the potential hazard. However, the reliability of conventional RVS methods is limited for accurately assessing large building stock. In this study, building inspection data acquired after the 2015 Gorkha, Nepal earthquake is used to train nine different machine learning algorithms (Decision Tree Classifier, Logistic Regression, Light Gradient Boosting Machine Classifier, eXtreme Gradient Boosting Classifier, Gradient Boosting Classifier, Random Forest Classifier, Support Vector Machines, K-Neighbors Classifier, and Cat Boost Classifier), which ultimately led to the development of a reliable RVS method. The post-earthquake building screening data was used to train, validate, and ultimately test the developed model. By incorporating advanced feature engineering techniques, highly sophisticated parameters were introduced into the developed RVS method. These parameters, including the distance to the earthquake source, fundamental structural period, and spectral acceleration, were integrated to enhance the assessment capabilities. This integration enabled the assessment of existing buildings in diverse seismically vulnerable areas. This study demonstrated a strong correlation between determining building damage states using the established RVS method and those observed after the earthquake. When comparing the developed method with the limited accuracy of conventional RVS methods reported in the literature, a test accuracy of 73% was achieved, surpassing conventional RVS methods by over 40% in accurately classifying building damage states. This emphasizes the importance of detailed data collection after an earthquake for the effective development of RVS methods.

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来源期刊
Bulletin of Earthquake Engineering
Bulletin of Earthquake Engineering 工程技术-地球科学综合
CiteScore
8.90
自引率
19.60%
发文量
263
审稿时长
7.5 months
期刊介绍: Bulletin of Earthquake Engineering presents original, peer-reviewed papers on research related to the broad spectrum of earthquake engineering. The journal offers a forum for presentation and discussion of such matters as European damaging earthquakes, new developments in earthquake regulations, and national policies applied after major seismic events, including strengthening of existing buildings. Coverage includes seismic hazard studies and methods for mitigation of risk; earthquake source mechanism and strong motion characterization and their use for engineering applications; geological and geotechnical site conditions under earthquake excitations; cyclic behavior of soils; analysis and design of earth structures and foundations under seismic conditions; zonation and microzonation methodologies; earthquake scenarios and vulnerability assessments; earthquake codes and improvements, and much more. This is the Official Publication of the European Association for Earthquake Engineering.
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