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Load-Effect Separation of a Large-Span Prestressed Structure Based on an Enhanced EEMD-ICA Methodology

机译:基于增强EEMD-ICA方法的大跨度预应力结构荷载效应分离

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摘要

Prestressed structures have gained popularity in large-span buildings due to their great spanning capacity and light self-weights. This kind of structure is normally subjected to multiple types of loads, such as temperature load, wind load, and construction load. The determination of different load effects not only guides the design of similar structures but also helps reveal the damage-induced variation that would be concealed by the environmental loads. To determine the different load effects, separation of the load effects collected by structural health monitoring (SHM) is needed. This study presents an enhanced approach for load effect separation based on independent component analysis (ICA) and ensemble empirical mode decomposition (EEMD), called EEMD-ICA*. The proposed method is to minimize manual tuning of user-defined parameters, which makes the EEMD-ICA suitable for separating load effects from the different measured data. Specifically, an optimization method is developed to determine the appropriate level of the added white noise in the EEMD using the relative root-mean-square error (RMSE) index. A logarithm form of Bayesian information criterion (BIC) is employed for the robust estimation of the number of load effects in the ICA. Simulated structural responses from a square orthogonal cable-net are used to validate the effectiveness of the EEMD-ICA*. Then, the proposed methodology is employed to extract various load effects from the SHM data of the National Speed Skating Oval (NSSO), which is the largest single-layer cable-net structure in the world. (C) 2021 American Society of Civil Engineers.
机译:预应力结构因其跨度大、自重轻等特点,在大跨度建筑中越来越受欢迎。这种结构通常承受多种类型的荷载,如温度荷载、风荷载和建筑荷载。不同荷载效应的确定不仅指导了类似结构的设计,还有助于揭示环境荷载所掩盖的损伤引起的变化。为了确定不同的荷载效应,需要分离结构健康监测(SHM)收集的荷载效应。本研究提出了一种基于独立成分分析(ICA)和集成经验模态分解(EEMD)的增强型荷载效应分离方法,称为EEMD-ICA*。所提出的方法是尽量减少用户自定义参数的手动调整,这使得EEMD-ICA适用于将负载效应与不同的测量数据分开。具体而言,开发了一种优化方法,利用相对均方根误差(RMSE)指数确定EEMD中添加的白噪声的适当水平。采用贝叶斯信息准则 (BIC) 的对数形式对 ICA 中荷载效应的数量进行鲁棒估计。使用方形正交电缆网的模拟结构响应来验证EEMD-ICA*的有效性。然后,采用所提方法从世界上最大的单层索网结构国家速滑馆(NSSO)的SHM数据中提取各种荷载效应。(C) 2021 年美国土木工程师协会。

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