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Use of monitored daily extreme stress data for performance prediction of steel bridges: Dynamic linear models and Gaussian mixed particle filter

机译:使用每日每日极限应力数据进行钢桥性能预测:动态线性模型和高斯混合粒子滤波器

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摘要

Sensors of modern bridge monitoring systems provide a huge amount of data used for reliability prediction. The proper handling of these data is one of the main difficulties in the field of structural health monitoring. To reasonably predict structural time-variant reliability based on the monitored daily extreme stress data, the objectives of this paper are to present: (a) a procedure for the effective incorporation of monitored daily extreme stress data for dynamic reliability prediction of bridge components, (b) a modelling approach of dynamic linear models based on historical daily extreme stress data in structural reliability prediction, and (c) an effective use of Gaussian mixed particle filter combining the monitored daily extreme stress data and dynamic linear models for dynamically predicting structural reliability. The monitored data obtained from an existing bridge is provided to illustrate the feasibility and application of the procedures and models proposed by this paper. (C) 2018 Elsevier Ltd. All rights reserved.
机译:现代桥梁监控系统的传感器提供了大量用于可靠性预测的数据。这些数据的正确处理是结构健康监测领域的主要困难之一。为了根据监测的每日极限应力数据合理预测结构时变可靠度,本文的目的是提出:(a)有效纳入监测的每日极限应力数据以动态预测桥梁构件的程序,(a) b)在结构可靠性预测中基于历史每日极限应力数据的动态线性模型的建模方法,以及(c)有效地使用高斯混合粒子滤波器结合监测的每日极限应力数据和动态线性模型来动态预测结构可靠性。提供从现有桥梁获得的监测数据,以说明本文提出的程序和模型的可行性和应用。 (C)2018 Elsevier Ltd.保留所有权利。

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