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Structural damage detection using extended Kalman filter combined with statistical process control

机译:使用扩展卡尔曼滤波器结合统计过程控制进行结构损伤检测

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Traditional modal-based methods, which identify damage based upon changes in vibration characteristics of the structure on a global basis, have received considerable attention in the past decades. However, the effectiveness of the modal-based methods is dependent on the type of damage and the accuracy of the structural model, and these methods may also have difficulties when applied to complex structures. The extended Kalman filter (EKF) algorithm which has the capability to estimate parameters and catch abrupt changes, is currently used in continuous and automatic structural damage detection to overcome disadvantages of traditional methods. Structural parameters are typically slow-changing variables under effects of operational and environmental conditions, thus it would be difficult to observe the structural damage and quantify the damage in real-time with EKF only. In this paper, a Statistical Process Control (SPC) is combined with EFK method in order to overcome this difficulty. Based on historical measurements of damage-sensitive feathers involved in the state-space dynamic models, extended Kalman filter (EKF) algorithm is used to produce realtime estimations of these features as well as standard derivations, which can then be used to form control ranges for SPC to detect any abnormality of the selected features. Moreover, confidence levels of the detection can be adjusted by choosing different times of sigma and number of adjacent out-of-range points. The proposed method is tested using simulated data of a three floors linear building in different damage scenarios, and numerical results demonstrate high damage detection accuracy and light computation of this presented method.
机译:在过去的几十年中,传统的基于模态的方法基于结构的振动特性的变化来识别损坏,这种方法在全球范围内受到了广泛的关注。但是,基于模态的方法的有效性取决于损坏的类型和结构模型的准确性,并且这些方法在应用于复杂结构时也可能会遇到困难。扩展的卡尔曼滤波器(EKF)算法具有估计参数和捕捉突变的能力,目前用于连续和自动结构损伤检测中,以克服传统方法的缺点。在运行和环境条件的影响下,结构参数通常是变化缓慢的变量,因此仅通过EKF很难观察到结构损伤并实时量化损伤。为了克服这一困难,本文将统计过程控制(SPC)与EFK方法结合使用。基于状态空间动态模型中涉及的对伤害敏感的羽毛的历史测量,扩展卡尔曼滤波器(EKF)算法用于生成这些特征以及标准推导的实时估计,然后可用于形成控制范围。 SPC检测所选功能的任何异常。此外,可以通过选择不同的sigma时间和相邻超出范围的点数来调整检测的置信度。利用三层线性建筑物在不同破坏场景下的模拟数据对提出的方法进行了测试,数值结果表明该方法具有较高的破损检测精度和轻度计算能力。

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