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Failure mode and effects analysis of RC members based on machine-learning-based SHapley Additive explanations (SHAP) approach

机译:基于机器学习的福利添加剂解释(SHAP)方法RC成员的故障模式及其效果分析

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摘要

Machine learning approaches can establish the complex and non-linear relationship among input and response variables for the seismic damage assessment of structures. However, lack of explainability of complex machine learning models prevents their use in such assessment. This paper uses extensive experimental databases to suggest random forest machine learning models for failure mode predictions of reinforced concrete columns and shear walls, employs the recently developed SHapley Additive exPlanations approach to rank input variables for identification of failure modes, and explains why the machine learning model predicts a specific failure mode for a given sample or experiment. A random forest model established provides an accuracy of 84% and 86% for unknown data of columns and shear walls, respectively. The geometric variables and reinforcement indices are critical parameters that influence failure modes. The study also reveals that existing strategies of failure mode identification based solely on geometric features are not enough to properly identify failure modes.
机译:机器学习方法可以在建立地震损伤评估的输入和响应变量之间建立复杂和非线性关系。然而,缺乏复杂机器学习模型的解释性阻止其在这种评估中的使用。本文采用广泛的实验数据库来提示随机林机器学习模型,用于钢筋混凝土柱和剪力墙的故障模式预测,采用最近开发的福利添加剂解释方法来排名输入变量,以便识别失效模式,并解释了为什么机器学习模型预测给定样本或实验的特定故障模式。随机森林模型分别为柱和剪力墙的未知数据提供了84%和86%的准确性。几何变量和强化指数是影响失效模式的关键参数。该研究还揭示了仅基于几何特征的失效模式识别的现有策略不足以正确识别失效模式。

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