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Long-Term Deflection Prediction from Computer Vision-Measured Data History for High-Speed Railway Bridges

机译:基于计算机视觉的高速铁路桥梁数据历史记录的长期挠度预测

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摘要

Management of the vertical long-term deflection of a high-speed railway bridge is a crucial factor to guarantee traffic safety and passenger comfort. Therefore, there have been efforts to predict the vertical deflection of a railway bridge based on physics-based models representing various influential factors to vertical deflection such as concrete creep and shrinkage. However, it is not an easy task because the vertical deflection of a railway bridge generally involves several sources of uncertainty. This paper proposes a probabilistic method that employs a Gaussian process to construct a model to predict the vertical deflection of a railway bridge based on actual vision-based measurement and temperature. To deal with the sources of uncertainty which may cause prediction errors, a Gaussian process is modeled with multiple kernels and hyperparameters. Once the hyperparameters are identified through the Gaussian process regression using training data, the proposed method provides a 95% prediction interval as well as a predictive mean about the vertical deflection of the bridge. The proposed method is applied to an arch bridge under operation for high-speed trains in South Korea. The analysis results obtained from the proposed method show good agreement with the actual measurement data on the vertical deflection of the example bridge, and the prediction results can be utilized for decision-making on railway bridge maintenance.
机译:高速铁路桥梁垂直长期变形的管理是保证交通安全和乘客舒适度的关键因素。因此,已经进行了努力,以基于物理的模型来预测铁路桥梁的竖向挠度,该模型表示了对竖向挠度的各种影响因素,例如混凝土的蠕变和收缩。但是,这并不是一件容易的事,因为铁路桥梁的垂直挠度通常会带来多种不确定性。本文提出了一种概率方法,该方法采用高斯过程来构建基于实际基于视觉的测量和温度来预测铁路桥梁竖向挠度的模型。为了处理可能导致预测误差的不确定性源,对具有多个核和超参数的高斯过程进行了建模。一旦使用训练数据通过高斯过程回归确定了超参数,建议的方法将提供95%的预测间隔以及关于桥梁垂直挠度的预测平均值。所提出的方法被应用于韩国正在运行的用于高速列车的拱桥。所提方法的分析结果与实例桥梁的竖向挠度的实际测量数据吻合良好,预测结果可用于铁路桥梁维护决策。

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