No more black-boxes: estimate deformation capacity of non-ductile RC shear walls based on generalized additive models

IF 3.8 2区 工程技术 Q2 ENGINEERING, GEOLOGICAL Bulletin of Earthquake Engineering Pub Date : 2024-07-11 DOI:10.1007/s10518-024-01968-z
Zeynep Tuna Deger, Gulsen Taskin, John W. Wallace
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Abstract

Machine learning techniques have gained attention in earthquake engineering for their accurate predictions, but their opaque black-box models create ambiguity in the decision-making process due to inherent complexity. To address this issue, numerous methods have been developed in the literature that attempt to elucidate and interpret black-box machine learning methods. However, many of these methods evaluate the decision-making processes of the relevant machine learning techniques based on their own criteria, leading to varying results across different approaches. Therefore, the critical significance of developing transparent and interpretable models, rather than describing black-box models, becomes particularly evident in fields such as earthquake engineering, where the interpretation of the physical implications of the problem holds paramount importance. Motivated by these considerations, this study aims to advance the field by developing a novel methodological approach that prioritizes transparency and interpretability in estimating the deformation capacity of non-ductile reinforced concrete shear walls based on an additive meta-model representation. Specifically, this model will leverage engineering knowledge to accurately predict the deformation capacity, utilizing a comprehensive dataset collected from various locations globally. Furthermore, the integration of uncertainty analysis within the proposed methodology facilitates a comprehensive investigation into the influence of individual shear wall variables and their interactions on deformation capacity, thereby enabling a detailed understanding of the relationship dynamics. The proposed model stands out by aligning with scientific knowledge, practicality, and interpretability without compromising its high level of accuracy.

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不再是黑箱:基于广义加法模型估算非韧性 RC 剪力墙的变形能力
机器学习技术因其准确的预测而在地震工程领域备受关注,但由于其固有的复杂性,其不透明的黑箱模型在决策过程中造成了模糊性。为了解决这个问题,文献中已经开发了许多方法,试图阐明和解释黑箱机器学习方法。然而,其中许多方法都是根据自己的标准来评估相关机器学习技术的决策过程,导致不同方法的结果各不相同。因此,在地震工程等领域,开发透明、可解释的模型,而不是描述黑箱模型的关键意义变得尤为明显,因为在这些领域,解释问题的物理意义至关重要。基于这些考虑,本研究旨在开发一种新颖的方法论,在估算非韧性钢筋混凝土剪力墙的变形能力时,优先考虑透明度和可解释性,并以加法元模型为基础。具体来说,该模型将利用从全球各地收集的综合数据集,利用工程知识准确预测变形能力。此外,将不确定性分析整合到所提出的方法中,有助于全面研究各个剪力墙变量及其相互作用对变形能力的影响,从而详细了解两者之间的动态关系。所提出的模型既符合科学知识、实用性和可解释性,又不影响其高水平的准确性。
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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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