A bridge damage monitoring and assessment strategy based on Gaussian mixture modelling

Heng Li, Yitong Wu, Shaohua Xu, Mingde Zheng, Wentao Zhang, Feiyu Zheng
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Abstract

For the bridges equipped with health monitoring systems, it is essential to precisely assess the health status of the bridge from the data with noise and outliers. An improved Gaussian mixture model clustering algorithm is used to process the obtained bridge strain sensor monitoring data and generate the characteristic data of clustering in order to improve the accuracy of data analysis of bridge health monitoring system. The cluster and feature data are obtained by Expectation Maximization process, and the isolated clusters are filtered out by the threshold parameters of weight and the Euclidean distance between clusters center. Based on the feature data, a scoring strategy is established to assess the bridge health and sensor status. The proposed strategy is used to analyze the monitoring data of a bridge in western China, and the analysis results show the availability of this strategy. Compared with the directly collected data, the processed bridge health scoring curve variation is smooth, which can reduce the influence of noise and abnormal data. The sensor status scoring curve can track changes in collected data and respond to different transformation scenarios. This shows that the proposed strategy can evaluate the state of this bridge and the sensors. provided a reference for bridge maintenance decision during the operational period.
基于高斯混合物建模的桥梁损伤监测和评估策略
对于配备了健康监测系统的桥梁而言,从存在噪声和异常值的数据中精确评估桥梁的健康状况至关重要。为了提高桥梁健康监测系统数据分析的准确性,本文采用改进的高斯混合模型聚类算法来处理所获得的桥梁应变传感器监测数据,并生成聚类特征数据。通过期望最大化过程获得聚类和特征数据,并通过权重阈值参数和聚类中心之间的欧氏距离筛选出孤立的聚类。根据特征数据,建立了评估桥梁健康和传感器状态的评分策略。所提出的策略被用于分析中国西部某桥梁的监测数据,分析结果表明了该策略的可用性。与直接采集的数据相比,处理后的桥梁健康评分曲线变化平滑,可以减少噪声和异常数据的影响。传感器状态评分曲线能跟踪采集数据的变化,并能应对不同的转换场景。这表明所提出的策略可以对该桥梁和传感器的状态进行评估,为运营期桥梁维护决策提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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