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Multi-Level-Phase Deep Learning Using Divide-and-Conquer for Scaffolding Safety

机译:使用分而治之脚手架安全的多阶段深度学习

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摘要

A traditional structural analysis of scaffolding structures requires loading conditions that are only possible during design, but not in operation. Thus, this study proposes a method that can be used during operation to make an automated safety prediction for scaffolds. It implements a divide-and-conquer technique with deep learning. As a test scaffolding, a four-bay, three-story scaffold model was used. Analysis of the model led to 1411 unique safety cases for the model. To apply deep learning, a test simulation generated 1,540,000 datasets for pre-training, and an additional 141,100 datasets for testing purposes. The cases were then sub-divided into 18 categories based on failure modes at both global and local levels, along with a combination of member failures. Accordingly, the divide-and-conquer technique was applied to the 18 categories, each of which were pre-trained by a neural network. For the test datasets, the overall accuracy was 99%. The prediction model showed that 82.78% of the 1411 safety cases showed 100% accuracy for the test datasets, which contributed to the high accuracy. In addition, the higher values of precision, recall, and F1 score for the majority of the safety cases indicate good performance of the model, and a significant improvement compared with past research conducted on simpler cases. Specifically, the method demonstrated improved performance with respect to accuracy and the number of classifications. Thus, the results suggest that the methodology could be reliably applied for the safety assessment of scaffolding systems that are more complex than systems tested in past studies. Furthermore, the implemented methodology can easily be replicated for other classification problems.
机译:脚手架结构的传统结构分析要求的载荷条件仅在设计过程中可行,而在操作中则不可行。因此,本研究提出了一种可在操作过程中用于对脚手架进行自动安全性预测的方法。它通过深度学习实现了分而治之的技术。作为测试脚手架,使用了四格三层脚手架模型。对模型的分析导致了1411个模型的独特安全案例。为了应用深度学习,测试模拟生成了1,540,000个数据集用于预训练,另外还生成了141,100个数据集用于测试。然后根据全局和局部级别的故障模式以及成员故障的组合将案例细分为18个类别。因此,分治法被应用于18个类别,每个类别都由神经网络进行了预训练。对于测试数据集,总体准确性为99%。预测模型显示,在1411个安全案例中,有82.78%的测试数据集显示了100%的准确性,这有助于提高准确性。此外,大多数安全案例的精度,召回率和F1得分较高,表明该模型具有良好的性能,并且与过去对较简单案例的研究相比,具有明显的改进。具体而言,该方法在准确性和分类数量方面表现出改进的性能。因此,结果表明该方法可以可靠地用于脚手架系统的安全评估,该系统比过去研究中测试的系统更为复杂。此外,对于其他分类问题,可以轻松地复制所实施的方法。

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