用于高速铁路轨道监测结构响应稳健回归建模的概率异常值检测

IF 5.7 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Qi Li, Jingze Gao, J. Beck, Chao Lin, Yong Huang, Hui Li
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引用次数: 1

摘要

异常值检测是结构健康监测(SHM)中为创建干净可靠的数据而采取的重要步骤。提出了一种结合贝叶斯视角和极限学习机(ELM)神经网络模型的鲁棒时间序列异常值检测方法,并将其应用于高速铁路系统无砟轨道的长期监测数据。首先通过计算ELM权重参数的后验概率密度函数,然后对预测误差精度参数进行边缘化,建立了鲁棒稀疏贝叶斯ELM(SBELM)模型,得到了轨道温度与结构响应之间的鲁棒非线性回归模型。然后,考虑稳健SBELM模型的后验均值和相关的不确定性,计算每个可疑数据点的异常概率,从而量化其数据的“异常程度”。它有效地考虑了SBELM回归模型的预测不确定性。该方法适用于两个高速铁路轨道系统的轨道温度、轨道应变和相对位移响应的长期监测数据,其中既有轻微异常值,也有严重异常值。结果表明,所提出的方法可以通过量化异常值概率来可靠地检测异常值,并且最终结果对“阈值”的选择是稳健的。还表明,在检测和去除异常值后,我们的新算法显著提高了模型预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic outlier detection for robust regression modeling of structural response for high-speed railway track monitoring
Outlier detection is an important procedure taken in structural health monitoring (SHM) to create clean and reliable data. A robust time series outlier detection method incorporating a Bayesian perspective and an extreme learning machine (ELM) neural network model is proposed, with application to long-term monitoring data of ballastless tracks for high-speed railway systems. A robust sparse Bayesian ELM (SBELM) model is first established by computing the posterior probability density function of the ELM weight parameters and then marginalizing over the prediction-error precision parameter to obtain a robust nonlinear regression model between the track temperature and structural response. Both the posterior mean and the associated uncertainties of the robust SBELM model are then taken into account to compute the outlier probability for each suspicious data point, which quantifies their degree of data “outlier-ness.” It effectively takes into account the prediction uncertainty of the SBELM regression model. The method is applied to long-term monitoring data for track temperatures, and track strain and relative displacement responses, from two high-speed rail track systems where there are both slight and serious outliers. The results demonstrate that the proposed method can reliably detect outliers by quantifying the outlier probability and that the final results are robust to the selection of the “thresholds.” It is also shown that our new algorithm produces significantly improved model prediction performance after the outliers are detected and removed.
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来源期刊
CiteScore
12.80
自引率
12.10%
发文量
181
审稿时长
4.8 months
期刊介绍: Structural Health Monitoring is an international peer reviewed journal that publishes the highest quality original research that contain theoretical, analytical, and experimental investigations that advance the body of knowledge and its application in the discipline of structural health monitoring.
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