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Synergistic combination of systems for structural health monitoring and earthquake early warning for structural health prognosis and diagnosis

机译:结构健康监测和地震预警系统的协同组合,用于结构健康的预后和诊断

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摘要

Earthquake early warning (EEW) systems are currently operating nationwide in Japan and are in beta-testing in California. Such a system detects an earthquake initiation using online signals from a seismic sensor network and broadcasts a warning of the predicted location and magnitude a few seconds to a minute or so before an earthquake hits a site. Such a system can be used synergistically with installed structural health monitoring (SHM) systems to enhance pre-event prognosis and post-event diagnosis of structural health. For pre-event prognosis, the EEW system information can be used to make probabilistic predictions of the anticipated damage to a structure using seismic loss estimation methodologies from performance-based earthquake engineering. These predictions can support decision-making regarding the activation of appropriate mitigation systems, such as stopping traffic from entering a bridge that has a predicted high probability of damage. Since the time between warning and arrival of the strong shaking is very short, probabilistic predictions must be rapidly calculated and the decision making automated for the mitigation actions. For post-event diagnosis, the SHM sensor data can be used in Bayesian updating of the probabilistic damage predictions with the EEW predictions as a prior. Appropriate Bayesian methods for SHM have been published. In this paper, we use pre-trained surrogate models (or emulators) based on machine learning methods to make fast damage and loss predictions that are then used in a cost-benefit decision framework for activation of a mitigation measure. A simple illustrative example of an infrastructure application is presented.
机译:地震预警(EEW)系统目前在日本全国范围内运行,并在加利福尼亚州进行Beta测试。这种系统使用来自地震传感器网络的在线信号来检测地震的发生,并在地震发生之前几秒钟到一分钟左右广播关于预测位置和震级的警告。这样的系统可以与已安装的结构健康监测(SHM)系统协同使用,以增强结构健康的事前预测和事后诊断。对于事前预测,可以使用基于性能的地震工程中的地震损失估算方法,将EEW系统信息用于对结构的预期损坏进行概率预测。这些预测可以支持有关激活适当的缓解系统的决策,例如阻止流量进入具有预测的高损坏率的桥梁。由于从警告到强烈震动到来之间的时间非常短,因此必须快速计算概率预测,并自动进行缓解措施的决策。对于事后诊断,可以将SHM传感器数据用于EEW预测作为先验的概率损伤预测的贝叶斯更新。 SHM的适当贝叶斯方法已经发布。在本文中,我们使用基于机器学习方法的预训练替代模型(或仿真器)进行快速损坏和损失预测,然后将其用于成本效益决策框架中以启动缓解措施。呈现了基础设施应用的简单说明性示例。

著录项

  • 作者

    Wu Stephen; Beck James L.;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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