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Statistical Clustering and Times Series Analysis for Bridge Monitoring Data

机译:桥梁监测数据的统计聚类和时间序列分析

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The process of implementing a damage detection strategy for bridges is referred to as Bridge Health Monitoring (BHM). The BHM process involves the observation of a system over time using periodically sampled dynamic response measurements from an array of sensors, the extraction of damage-sensitive features from these measurements, and the statistical analysis of these features to determine the current state of the system's health [12]. Therefore, the achieved data from attached sensors would be very huge in dimensions, would make researchers confused in further examinations on data bridge. There have been many approaches to solve the BHM sensors reduction problem, range from univariate analysis between couples of variables [13] to carefully selecting measurement points based on specific bridge knowledge [7]. However, they are either inapplicable for interrelated nature data sets, or using too much mechanical knowledge in its process.
机译:实施桥梁损伤检测策略的过程称为桥梁健康监测(BHM)。 BHM过程包括使用一段时间后从一系列传感器中定期采样的动态响应测量值对系统进行观察,从这些测量值中提取对损伤敏感的功能以及对这些功能的统计分析以确定系统的当前运行状况[12]。因此,从连接的传感器获得的数据将是非常庞大的,这将使研究人员在对数据桥的进一步检查中感到困惑。解决BHM传感器减少问题的方法很多,从变量对之间的单变量分析[13]到基于特定桥梁知识[7]精心选择测量点。但是,它们要么不适用于相互关联的自然数据集,要么在处理过程中使用过多的机械知识。

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