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SHM-Based Probabilistic Fatigue Life Prediction for Bridges Based on FE Model Updating

机译:基于有限元模型更新的基于SHM的桥梁概率疲劳寿命预测

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摘要

Fatigue life prediction for a bridge should be based on the current condition of the bridge, and various sources of uncertainty, such as material properties, anticipated vehicle loads and environmental conditions, make the prediction very challenging. This paper presents a new approach for probabilistic fatigue life prediction for bridges using finite element (FE) model updating based on structural health monitoring (SHM) data. Recently, various types of SHM systems have been used to monitor and evaluate the long-term structural performance of bridges. For example, SHM data can be used to estimate the degradation of an in-service bridge, which makes it possible to update the initial FE model. The proposed method consists of three steps: (1) identifying the modal properties of a bridge, such as mode shapes and natural frequencies, based on the ambient vibration under passing vehicles; (2) updating the structural parameters of an initial FE model using the identified modal properties; and (3) predicting the probabilistic fatigue life using the updated FE model. The proposed method is demonstrated by application to a numerical model of a bridge, and the impact of FE model updating on the bridge fatigue life is discussed.
机译:桥梁的疲劳寿命预测应基于桥梁的当前状况,而不确定性的各种来源(例如材料特性,预期的车辆载荷和环境状况)会使预测非常具有挑战性。本文提出了一种基于结构健康监测(SHM)数据的有限元(FE)模型更新的桥梁概率疲劳寿命预测的新方法。近来,各种类型的SHM系统已用于监视和评估桥梁的长期结构性能。例如,SHM数据可用于估计服务中网桥的降级,这使得更新初始FE模型成为可能。所提出的方法包括三个步骤:(1)根据经过车辆的环境振动来识别桥梁的模态特性,例如模态形状和固有频率; (2)使用识别出的模态特性更新初始有限元模型的结构参数; (3)使用更新的有限元模型预测概率疲劳寿命。将该方法应用于桥梁数值模型,论证了有限元模型更新对桥梁疲劳寿命的影响。

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