预测钢筋混凝土柱承载能力和失效模式的可解释机器学习方法

IF 2.1 4区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Advances in Structural Engineering Pub Date : 2024-09-08 DOI:10.1177/13694332241281546
May Haggag, Mohamed K. Ismail, Wael El-Dakhakhni
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引用次数: 0

摘要

在地震事件中,钢筋混凝土 (RC) 柱在保持建筑物结构完整性方面发挥着至关重要的作用。这促使工程师和从业人员寻找影响此类柱子承载能力和破坏机制的关键参数。然而,地震效应的复杂性和非线性,以及 RC 柱作为复合系统的复杂性质,都对分析和经验方法准确捕捉 RC 柱响应的能力提出了挑战。因此,本研究利用机器学习(ML)技术来识别 RC 柱的失效模式,并根据其几何和材料属性预测相应的承载能力。研究采用了决策树和不同的集合方法来预测柱子的失效模式和极限承载力。在开发和验证模型时,使用了由 486 个循环加载的矩形和圆形柱子组成的多元数据集。此外,还采用了不同的嵌入式变量选择技术来评估输入参数在预测柱子性能方面的重要性。此外,还采用了局部依赖图和累积局部效应来揭示输入特征与模型输出之间的相互关系。所开发的模型在预测 RC 柱的失效模式和极限承载力方面的平均准确率分别为 90% 和 95%。鉴于如此高的准确性,可以推断 ML 技术有潜力提供高效可靠的预测工具,以支持抗震设计和评估决策--减轻地震风险并增强面对极端事件时的抗震规划能力。
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An interpretable machine learning approach for predicting the capacity and failure mode of reinforced concrete columns
During seismic events, reinforced concrete (RC) columns play a crucial role in maintaining buildings’ structural integrity. This motivated engineers and practitioners to search for key parameters that influence the load-carrying capacity and failure mechanisms of such columns. However, the complexity and nonlinearity of seismic effects along with the intricate nature of RC columns as a composite system challenge the capabilities of analytical and empirical approaches to accurately capture the response of RC columns. Subsequently, the present study utilizes Machine Learning (ML) techniques to identify the failure modes and predict the corresponding capacities of RC columns based on both their geometrical and material properties. Decision trees and different ensemble methods were employed to predict both the columns’ failure mode and ultimate capacity. A multivariate dataset consisting of 486 cyclically loaded rectangular and circular columns was used to develop and validate the models. In addition, different embedded variable selection techniques were employed to evaluate the significance of input parameters in predicting the performance of columns. Moreover, partial dependence plots and accumulated local effects were employed to uncover the interrelationships between the input features and the modelled outputs. The developed models yielded an average accuracy of 90% and 95% for predicting the failure mode and ultimate capacity of RC columns, respectively. Given such high accuracy, it can be inferred that, ML techniques have the potential to provide efficient and reliable prediction tools to support seismic design and assessment decisions - mitigating seismic risks and empowering resilience planning in the face of extreme events.
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来源期刊
Advances in Structural Engineering
Advances in Structural Engineering 工程技术-工程:土木
CiteScore
5.00
自引率
11.50%
发文量
230
审稿时长
2.3 months
期刊介绍: Advances in Structural Engineering was established in 1997 and has become one of the major peer-reviewed journals in the field of structural engineering. To better fulfil the mission of the journal, we have recently decided to launch two new features for the journal: (a) invited review papers providing an in-depth exposition of a topic of significant current interest; (b) short papers reporting truly new technologies in structural engineering.
期刊最新文献
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