聚类分析为砖石教堂自然灾害脆弱性评估提供依据

IF 3.8 2区 工程技术 Q2 ENGINEERING, GEOLOGICAL
Federica Del Carlo, Silvia Caprili, Tiago Miguel Ferreira, Pere Roca, Marco Uzielli
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引用次数: 0

摘要

根据天主教会的一项普查,意大利境内有六万多座礼拜建筑。这些建筑大多建于公元1世纪至19世纪之间,采用承重砌体结构,特别容易受到自然灾害的破坏。本研究探讨了使用聚类算法来识别和聚类建筑和原型的类型。目的是定义几何和力学性能的统计模型,描绘一组代表整个建筑的参考结构,并最终选择可用于开发地震和滑坡易损性指标的“指标属性”。所提出的方法适用于托斯卡纳地区(意大利)西北部地区的71座教堂的具体组合。作品集中包含的教堂的主要几何和机械特征是使用一种新的简化的快速视觉调查形式收集的。然后,提出了一种使用三种著名的聚类算法(K-Means,高斯混合模型和核密度)来定义代表性原型的过程。在一起分析时,确定的原型可以描述所选组合中几何和机械特性的可变性,从而构成开发新的脆弱性模型的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster analysis for informing vulnerability assessment of masonry churches to natural hazards

According to a census by the Catholic Church, Italy’s territory hosts more than sixty thousand buildings of worship. Most of these buildings were built between the first and the nineteenth century A.D., with a load-bearing masonry structure that proved to be particularly prone to damage due to natural hazards. This investigation explores the use of clustering algorithms to identify and cluster typologies of buildings and archetypes. The aim is to define statistical models for the geometric and mechanical properties, to delineate a set of reference structures representative of the whole building stock, and finally select ‘indicator attributes’ that can be used in developing seismic and landslide vulnerability indicators. The proposed methodology is applied to a specific portfolio of seventy-one churches in the north-western area of the Tuscany region (Italy). The main geometric and mechanical features of the churches included in the portfolio are gathered using a new simplified Rapid Visual Survey form. A procedure is then proposed to define representative archetypes using three well-known clustering algorithms (K-Means, Gaussian Mixture Models, and Kernel-density). When analysed together, the identified archetypes can portray the variability of the geometric and mechanical properties in the selected portfolio, constituting a basis for developing new vulnerability models.

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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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