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A Conditional Simulation Method for Predicting Wind Pressure Fields of Large-Span Spatial Structures

机译:一种用于预测大跨度空间结构风压场的条件仿真方法

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Wind load is among the control loads for large-span spatial structures. Wind tunnel test is one of the commonly used methods for measuring wind pressure fields of different kinds of structures. However, due to the limited wind pressure data obtained from wind tunnel testing, it is quite meaningful to employ the limited measured data to predict the unknown wind pressure at target points. Considering the complexity of wind pressure fields of large-span spatial structures, a simplified nonparametric method based on conditional simulation is proposed to predict the unknown pressures using the existing data. The Karhunen–Loève (KL for short) expansion is employed to represent wind pressure random variants as eigenfunctions of the covariance operator. To reduce the variant dimensionality, the nearest neighboring estimator is given for the transition distribution of the KL expansion. The targeted wind pressure fields are obtained by expanding the Fourier basis of the eigenfunction and estimating its expansion coefficients. The proposed method is applied to estimate wind pressures on a gable roof building. The relevant parameters of the wind pressure field are obtained, and the results compare well with those from wind tunnel testing, with higher efficiency. The proposed method effectively reduces the dimensionality of the predicted wind pressures, with reduced errors, higher accuracy, and increased efficiency.
机译:风负荷是大跨度空间结构的控制载荷之一。风洞测试是测量不同种类结构风压场的常用方法之一。然而,由于从风隧道测试获得的有限的风力压力数据,采用有限的测量数据是非常有意义的,以预测目标点处的未知风压。考虑到大跨度空间结构的风压场的复杂性,提出了一种基于条件模拟的简化非参数方法来预测使用现有数据的未知压力。 Karhunen-loève(kl for短暂的)扩展被用来表示风压随机变体,作为协方差运算符的特征功能。为了降低变型维度,给出了最接近的相邻估计器,用于延长KL扩展的转换分布。通过扩展特征函数的傅立叶和估计其膨胀系数来获得目标风压场。所提出的方法应用于估计山墙屋顶建筑​​上的风压。获得了风压场的相关参数,结果与风洞测试的结果相比,效率更高。所提出的方法有效地降低了预测风压的维度,减少了误差,更高的精度和提高效率。

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