首页> 外文OA文献 >Automatic operational modal analysis: challenges and applications to historic structures and infrastructures
【2h】

Automatic operational modal analysis: challenges and applications to historic structures and infrastructures

机译:自动运行分析模型:历史结构和基础设施的挑战和应用

摘要

The core of the work turns around the capability to automate Operational Modal Analysis methods for permanent dynamic monitoring systems. In general, the application of OMA methods requires an experienced engineer in experimental dynamics and modal analysis; in addition, a lot of time is usually spent in manual analysis, necessary to ensure the best estimation of modal parameters. Those features are in contrast with permanent dynamic monitoring, which requires algorithms in order to efficiently manage the huge amount of recorded data in short time, ensuringudan acceptable quality of results. Therefore, the use of parametric identification methods, like SSI methods, are explored and some recommendations concerning its application are provided. The identification process is combined with the automatic interpretation of stabilization diagrams based on a damping ratio check and on modal complexity inspection. Finally, a clustering method for theudidentified modes and a modal tracking strategy is suggested and discussed. The whole procedure is validated with a one-month and a one-year set of "manually-identified" modal parameters. This constitutes a quite unique set of validation data in the literature. Two monitoring case studies are studied: a railway iron arch bridge (1889) and a masonry bell-tower (XII century). Within this framework, classical and new strategies to handle the huge amount of recorded and identified data are proposed and compared for structural anomaly detection. The classical strategiesudare mainly based on the inspection of any irreversible frequency variation. To such purpose, it is mandatory an extensive correlation study with environmental and operational factors which affect the frequency of the vibration modes. Conversely, one of the proposed strategy aims to use alternative dynamic features that are not sensitive to environmental factors, like mode shape orudmodal complexity, instead of frequency parameters in order to detect any structural anomaly. In addition, a further strategy has the goal to eliminate the environmental-induced effects on frequency without the knowledge and the measurements of such factors. The procedure is mainly based on the combination of a simple regression model with the results obtained by a Principal ComponentudAnalysis. Furthermore, two automated Operational Modal Analysis (OMA) procedures are compared for Structural Health Monitoring (SHM) purposes: the first one is based on SSI methods, while the second one involves a non-parametric technique like the Frequency Domain Decomposition methodud(FDD). In conclusion, a model updating strategy for historic structures using Ambient Vibration Testudand long term monitoring results is presented. The main goal is to integrate the information provided by a FE model with those continuously extracted by a dynamic monitoring system, basing so any detection of structural anomalies on the variation of the uncertain structural parameters.
机译:这项工作的核心围绕着为永久动态监视系统自动化操作模态分析方法的能力。通常,OMA方法的应用需要经验丰富的工程师进行实验动力学和模态分析。此外,通常需要花费大量时间进行手动分析,以确保最佳估计模态参数。这些功能与永久动态监视相反,永久动态监视需要算法以便在短时间内有效管理大量记录的数据,从而确保结果的质量。因此,探索了参数识别方法(如SSI方法)的使用,并提供了有关其应用的一些建议。识别过程与基于阻尼比检查和模态复杂度检查的稳定图自动解释相结合。最后,提出并讨论了模式识别的聚类方法和模态跟踪策略。整个过程通过一个月和一年的一组“手动识别”模态参数进行验证。这构成了文献中一组非常独特的验证数据。研究了两个监测案例:铁路铁拱桥(1889年)和砖石钟楼(十二世纪)。在此框架内,提出了处理大量已记录和已识别数据的经典和新策略,并将其进行了比较,以进行结构异常检测。经典策略主要基于对任何不可逆频率变化的检查。为此,必须对影响振动模式频率的环境和操作因素进行广泛的相关性研究。相反,所提议的策略之一旨在使用对环境因素不敏感的替代动态特征(如模式形状或 umodal复杂度),而不是频率参数,以检测任何结构异常。另外,另一种策略的目标是在不了解和测量此类因素的情况下消除环境对频率的影响。该过程主要基于简单回归模型与主成分 udAnalysis获得的结果的组合。此外,比较了两种自动化的操作模态分析(OMA)程序,以进行结构健康监测(SHM):第一种是基于SSI方法,而第二种是涉及非参数技术,例如频域分解方法 ud( FDD)。最后,提出了一种使用环境振动测试长期监测结果的历史建筑模型更新策略。主要目标是将有限元模型提供的信息与动态监测系统连续提取的信息集成在一起,以便对结构异常进行任何检测都取决于不确定的结构参数的变化。

著录项

  • 作者

    Cabboi Alessandro;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号