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Application of a Maximum Entropy Method to Estimate the Probability Density Function of Nonlinear or Chaotic Behavior in Structural Health Monitoring Data

机译:最大熵方法在结构健康监测数据中估计非线性或混沌行为的概率密度函数的应用

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Bridges and other civil structures can exhibit nonlinear and/or chaotic behavior under ambient traffic or wind loadings. The probability density function (pdf) of the observed structural responses thus plays an important role for long-term structural health monitoring, LRFR and fatigue life analysis. However, the actual pdf of such structural response data often has a very complicated shape due to its fractal nature. Various conventional methods to approximate it can often lead to biased estimates. This paper presents recent research progress at the Turner-Fairbank Highway Research Center of the FHWA in applying a novel probabilistic scaling scheme for enhanced maximum entropy evaluation to find the most unbiased pdf. The maximum entropy method is applied with a fractal interpolation formulation based on contraction mappings through an iterated function system (IFS). Based on a fractal dimension determined from the entire response data set by an algorithm involving the information dimension, a characteristic uncertainty parameter, called the probabilistic scaling factor, can be introduced. This allows significantly enhanced maximum entropy evaluation through the added inferences about the fine scale fluctuations in the response data. Case studies using the dynamic response data sets collected from a real world bridge (Commodore Barry Bridge, PA) and from the simulation of a classical nonlinear chaotic system (the Lorenz system) are presented in this paper. The results illustrate the advantages of the probabilistic scaling method over conventional approaches for finding the unbiased pdf especially in the critical tail region that contains the larger structural responses.
机译:桥梁和其他土木结构在环境交通或风荷载下会表现出非线性和/或混沌行为。因此,观察到的结构响应的概率密度函数(pdf)在长期结构健康监测,LRFR和疲劳寿命分析中起着重要作用。但是,此类结构响应数据的实际pdf由于其分形性质而通常具有非常复杂的形状。逼近它的各种常规方法通常会导致估计偏差。本文介绍了FHWA特纳-费尔班克高速公路研究中心的最新研究进展,该研究应用了一种新颖的概率缩放方案来增强最大熵评估,以找到最公正的pdf。最大熵方法通过迭代函数系统(IFS)基于收缩映射与分形插值公式一起应用。基于由涉及信息维的算法从整个响应数据集确定的分形维,可以引入称为概率比例因子的特征不确定性参数。通过添加有关响应数据中小规模波动的推断,这可以显着增强最大熵评估。本文介绍了使用从现实世界的桥梁(Commodore Barry Bridge,PA)收集的动态响应数据集以及经典非线性混沌系统(Lorenz系统)的模拟进行的案例研究。结果表明,概率缩放方法相对于传统方法的优势在于找到无偏的pdf,尤其是在包含较大结构响应的临界尾部区域。

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