论文标题

通过人工智能技术对建筑物造成地震损伤的潜力分类

Classification of Buildings' Potential for Seismic Damage by Means of Artificial Intelligence Techniques

论文作者

Kostinakis, Konstantinos, Morfidis, Konstantinos, Demertzis, Konstantinos, Iliadis, Lazaros

论文摘要

开发了一种快速但也可靠的高效方法,用于对具有高地震性地区的国家建造的建筑物的地震损害潜力进行分类,这始终是现代科学研究的最前沿。这样的技术对于估计建筑物的地震前脆弱性至关重要,因此当局将能够制定地震安全计划,以对高度地震敏感的结构进行地震康复。在过去的几十年中,一些研究人员提出了这样的程序,其中一些程序是通过地震法定指南采用的。这些程序通常基于简单的计算或统计理论的应用来利用方法。最近,计算机功率的增加导致基于机器学习算法的采用,开发了现代统计方法。这些方法已被证明可用于通过从各种来源收集的数据中提取模式来预测地震性能和分类结构损伤水平。大型培训数据集用于实施分类算法。为此,使用非线性时间历史记录分析方法对65个真实的地震记录进行了分析,分析了带有三种不同砌体填充物的分布的90 3D R/C建筑物。地震损伤的水平以最大室内漂移比表示。为了估算建筑物的损害响应,使用了大量的机器学习算法。提取的最重要的结论是,在数学上已经建立了良好的机器学习方法,并且可以使用明显的逐步解释的操作来解决一些以高准确性考虑到一些最复杂的现实世界中问题。

Developing a rapid, but also reliable and efficient, method for classifying the seismic damage potential of buildings constructed in countries with regions of high seismicity is always at the forefront of modern scientific research. Such a technique would be essential for estimating the pre-seismic vulnerability of the buildings, so that the authorities will be able to develop earthquake safety plans for seismic rehabilitation of the highly earthquake-susceptible structures. In the last decades, several researchers have proposed such procedures, some of which were adopted by seismic code guidelines. These procedures usually utilize methods based either on simple calculations or on the application of statistics theory. Recently, the increase of the computers' power has led to the development of modern statistical methods based on the adoption of Machine Learning algorithms. These methods have been shown to be useful for predicting seismic performance and classifying structural damage level by means of extracting patterns from data collected via various sources. A large training dataset is used for the implementation of the classification algorithms. To this end, 90 3D R/C buildings with three different masonry infills' distributions are analysed utilizing Nonlinear Time History Analysis method for 65 real seismic records. The level of the seismic damage is expressed in terms of the Maximum Interstory Drift Ratio. A large number of Machine Learning algorithms is utilized in order to estimate the buildings' damage response. The most significant conclusion which is extracted is that the Machine Learning methods that are mathematically well-established and their operations that are clearly interpretable step by step can be used to solve some of the most sophisticated real-world problems in consideration with high accuracy.

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