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Bayesian forecasting approach for structure response prediction and load effect separation of a revolving auditorium

机译:北京教堂结构响应预测和负荷效应分离的贝叶斯预测方法

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摘要

A Bayesian dynamic linear model (BDLM) is presented for a data-driven analysis for response prediction and load effect separation of a revolving auditorium structure, where the main loads are self-weight and dead loads, temperature load, and audience load. Analyses are carried out based on the long-term monitoring data for static strains on several key members of the structure. Three improvements are introduced to the ordinary regression BDLM, which are a classificatory regression term to address the temporary audience load effect, improved inference for the variance of observation noise to be updated continuously, and component discount factors for effective load effect separation. The effects of those improvements are evaluated regarding the root mean square errors, standard deviations, and 95% confidence intervals of the predictions. Bayes factors are used for evaluating the probability distributions of the predictions, which are essential to structural condition assessments, such as outlier identification and reliability analysis. The performance of the present BDLM has been successfully verified based on the simulated data and the real data obtained from the structural health monitoring system installed on the revolving structure.
机译:提出了一种贝叶斯动态线性模型(BDLM)用于数据驱动分析,用于响应预测和旋转观众区结构的响应预测和负载效果分离,主要负载是自重和载荷,温度负荷和观众负载。基于结构的几个关键成员上的静态监测数据来进行分析。普通回归BDLM引入了三种改进,这是一个分类的回归术语来解决临时观众负载效应,改善了观察噪声方差的推理,以及有效负载效果分离的组件折扣因子。这些改进的效果是关于根均方误差,标准偏差和预测的95%置信区间的效果。贝叶斯因子用于评估预测的概率分布,这对结构条件评估至关重要,例如异常识别和可靠性分析。本BDLM的性能已经基于模拟数据和从安装在旋转结构上的结构健康监测系统获得的实际数据成功验证。

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