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Rapid seismic damage evaluation of bridge portfolios using machine learning techniques

机译:使用机器学习技术快速评估桥梁组合的地震破坏

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摘要

The damage state of a bridge has significant implications on the post-earthquake emergency traffic and recovery operations and is critical to identify the post-earthquake damage states without much delay. Currently, the damage states are identified either based on visual inspection or pre-determined fragility curves. Although these methodologies can provide useful information, the timely application of these methodologies for large scale regional damage assessments is often limited due to the manual or computational efforts. This paper proposes a methodology for the rapid damage state assessment (green, yellow, or red) of bridges utilizing the capabilities of machine learning techniques. Contrary to the existing methods, the proposed methodology accounts for bridge-specific attributes in the damage state assessment. The proposed methodology is demonstrated using two-span box-girder bridges in California. The prediction model is established using the training set, and the performance of the model is evaluated using the test set. It is noted that the machine learning algorithm called Random Forest provides better performance for the selected bridges, and its tagging accuracy ranges from 73% to 82% depending on the bridge configuration under consideration. The proposed methodology revealed that input parameters such as span length and reinforcement ratio in addition to the ground motion intensity parameter have a significant influence on the expected damage state.
机译:桥梁的损坏状态对地震后的紧急交通和恢复操作具有重大影响,并且对于立即确定地震后的损坏状态至关重要。当前,基于视觉检查或预定的脆性曲线来识别损坏状态。尽管这些方法可以提供有用的信息,但是由于人工或计算上的努力,这些方法在大规模区域破坏评估中的及时应用通常受到限制。本文提出了一种利用机器学习技术的能力对桥梁进行快速损伤状态评估(绿色,黄色或红色)的方法。与现有方法相反,所提出的方法考虑了损伤状态评估中桥梁特有的属性。加利福尼亚州的两跨箱梁桥证明了所提出的方法。使用训练集建立预测模型,并使用测试集评估模型的性能。值得注意的是,称为随机森林的机器学习算法为选定的桥梁提供了更好的性能,其标记准确度范围为73%到82%,具体取决于所考虑的桥梁配置。所提出的方法表明,除了地面运动强度参数外,输入参数(如跨度长度和加强比)对预期的破坏状态也有重大影响。

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