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Failure mode identification of column base plate connection using data-driven machine learning techniques

机译:使用数据驱动机学习技术柱底板连接的故障模式识别

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摘要

Column base plate (CBP) connection is one of the most important structural elements of steel structures since the failure of these base plate connections can result in the collapse of the entire structure. The prediction of failure mode of CBP connection plays a significant role in ductile behavior of the structure which is critical for damage assessment or retrofitting strategies after any natural hazard. This study introduces a rapid failure mode identification technique for CBP connections by exploring the recent advances in machine learning (ML) techniques. A comprehensive database is assembled with 189 available experimental results for CBP connections including various parameters affecting the CBP behavior. To establish the best classification model, a total of nine different ML algorithms such as Support vector machine, Naive bayes, K-nearest neighbors, Decision tree, Random forest, Adaboost, XGboost, LightGBM, and Catboost are considered in this study. Comparing the developed ML models, the Decision tree based ML model is suggested in this study which has an overall accuracy of 91% for identifying the failure mode of CBP connections. It is also found that base plate thickness, embedment length, and anchor rod diameter are the influential parameters that govern the failure mode of CBP connections. Furthermore, an opensource classification model is provided to rapidly identify the failure mode of CBP connection by allowing modifications for future developments.
机译:柱底板(CBP)连接是钢结构最重要的结构元件之一,因为这些基板连接的故障可能导致整个结构的塌陷。 CBP连接失效模式的预测在结构的延性行为中起着重要作用,这对于任何自然灾害后损伤评估或改造策略至关重要。本研究通过探索机器学习(ML)技术的最近进步来介绍CBP连接的快速失效模式识别技术。通过189个可用的实验结果组装了一个全面的数据库,包括CBP连接,包括影响CBP行为的各种参数。为了建立最佳分类模型,共有九种不同的ML算法,如支持向量机,天真贝叶斯,K最近的邻居,决策树,随机林,Adaboost,XGBoost,LightGBM和Catboost都被考虑在本研究中。比较开发的ML模型,在本研究中提出了基于决策树的ML模型,其整体精度为91%,用于识别CBP连接的故障模式。还发现底板厚度,嵌入长度和锚杆直径是控制CBP连接的故障模式的有影响力的参数。此外,提供了一种鸦片源分类模型来快速识别CBP连接的故障模式,允许对未来的发展进行修改。

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