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首页> 外文期刊>Canadian Journal of Civil Engineering >Automated scaffolding safety analysis: strain feature investigation using support vector machines
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Automated scaffolding safety analysis: strain feature investigation using support vector machines

机译:自动脚手架安全性分析:应变特征调查使用支持向量机

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摘要

This study developed a methodology that can use real-time strain data for the assessment of scaffolding safety conditions. The researchers identified 23 safety cases of individual member failure with generic global failure for a four-bay, three-story scaffold model and used scaffold member strain values to identify potential failure cases. A computer simulation on the scaffold model generated the strain datasets required for classification with a support vector machine (SVM). The SVM classification demonstrated a stable prediction accuracy after training with a certain number of strain datasets. Furthermore, the 2nd order polynomial kernel function resulted in better prediction compared to other SVM kernel functions. These results imply that the real-time assessment of scaffolding structures is possible with a limited number of training data for machine-learning classification.
机译:本研究开发了一种方法,可以使用实时应变数据来评估脚手架的安全条件。研究人员为一个四跨三层脚手架模型确定了23个单独构件失效和通用整体失效的安全案例,并使用脚手架构件应变值来确定潜在失效案例。支架模型的计算机模拟生成了使用支持向量机(SVM)进行分类所需的应变数据集。经过一定数量的应变数据集训练后,SVM分类显示出稳定的预测精度。此外,与其他SVM核函数相比,二阶多项式核函数的预测效果更好。这些结果表明,在机器学习分类的训练数据有限的情况下,脚手架结构的实时评估是可能的。

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