Meta databases of steel frame buildings for surrogate modelling and machine learning-based feature importance analysis

Delbaz Samadian, Imrose B. Muhit, Annalisa Occhipinti, Nashwan Dawood
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Abstract

Traditionally, nonlinear time history analysis (NLTHA) is used to assess the performance of structures under future hazards which is necessary to develop effective disaster risk management strategies. However, this method is computationally intensive and not suitable for analyzing a large number of structures on a city-wide scale. Surrogate models offer an efficient and reliable alternative and facilitate evaluating the performance of multiple structures under different hazard scenarios. However, creating a comprehensive database for surrogate modelling at the city level presents challenges. To overcome this, the present study proposes meta databases and a general framework for surrogate modelling of steel structures. The dataset includes 30,000 steel moment-resisting frame buildings, representing low-rise, mid-rise and high-rise buildings, with criteria for connections, beams, and columns. Pushover analysis is performed and structural parameters are extracted, and finally, incorporating two different machine learning algorithms, random forest and Shapley additive explanations, sensitivity and explainability analyses of the structural parameters are performed to identify the most significant factors in designing steel moment resisting frames. The framework and databases can be used as a validated source of surrogate modelling of steel frame structures in order for disaster risk management.

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用于代用建模和基于机器学习的特征重要性分析的钢结构建筑元数据库
传统上,非线性时间历程分析法(NLTHA)用于评估结构在未来灾害下的性能,这对于制定有效的灾害风险管理策略十分必要。然而,这种方法计算量大,不适合分析城市范围内的大量结构。代用模型提供了一种高效可靠的替代方法,便于评估多种结构在不同灾害情况下的性能。然而,在城市层面建立代用模型的综合数据库是一项挑战。为克服这一难题,本研究提出了用于钢结构代用建模的元数据库和总体框架。该数据集包括 30,000 个钢制矩抵抗框架建筑,分别代表低层、中层和高层建筑,并附有连接、梁和柱的标准。最后,结合两种不同的机器学习算法--随机森林算法和夏普利加法解释算法,对结构参数进行敏感性和可解释性分析,以确定钢制抗弯框架设计中最重要的因素。该框架和数据库可作为钢框架结构代用模型的有效来源,用于灾害风险管理。
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