首页> 外文期刊>International journal of structural stability and dynamics >Real-Time Tracking of Structural Stiffness Reduction with Unknown Inputs, Using Self-Adaptive Recursive Least-Square and Curvature-Change Techniques
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Real-Time Tracking of Structural Stiffness Reduction with Unknown Inputs, Using Self-Adaptive Recursive Least-Square and Curvature-Change Techniques

机译:使用自适应递归最小二乘和曲率变化技术实时跟踪结构刚度降低的结构刚度降低

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摘要

In this paper, a new computationally efficient algorithm is developed for online and real-time identification of time, location, and severity of abrupt changes in structural stiffness as well as the unknown inputs such as earthquake signal. The proposed algorithm consists of three stages and is based on self-adaptive recursive least-square (RLS) and curvature-change approaches. In stage 1 (intact structure), a simple compact RLS is hired to estimate the unknown parameters and input of the structure such as stiffness and earthquake. Once the damage has occurred, its time and location are identified in stage 2, using two robust damage indices which are based on the structural jerk response and the error between measured and estimated responses of structure from RLS. Finally, the damage severity as well as the unknown excitations are identified in the third stage (damaged structure), using a self-adaptive multiple-forgettingfactor RLS. The method is validated through numerical and experimental case studies including linear and nonlinear buildings, a truss structure, and a three-story steel frame with different excitations and damage scenarios. Results show that the proposed algorithm can effectively identify the time-varying structural stiffness as well as unknown excitations with high computational efficiency, even when the measured data is contaminated with different levels of noise. In addition, as no optimization method is used here, it can be applied to real-time applications with computational efficiency.
机译:在本文中,开发了一种新的计算高效算法,用于在线和实时识别结构刚度的突然变化的时间,位置和严重性以及诸如地震信号的未知输入。该算法由三个阶段组成,基于自适应递归最小二乘(RLS)和曲率改变方法。在第1阶段(完整结构)中,聘请简单的紧凑型RL,以估计未知参数和输入结构,例如刚度和地震。一旦发生损坏,它的时间和位置在阶段2中识别,使用基于结构JERK响应的两个强大损坏指数以及从RLS的测量和估计的结构响应之间的误差。最后,使用自适应多遗忘因子RLS,在第三阶段(损坏的结构)中识别了伤害严重程度以及未知激励。该方法通过包括线性和非线性建筑,桁架结构和具有不同激励和损坏情景的三层钢架的数值和实验性案例研究验证。结果表明,即使当测量的数据被不同的噪声污染时,该算法可以有效地识别时变结构刚度以及具有高计算效率的未知激励。此外,这里没有使用优化方法,可以应用于具有计算效率的实时应用。

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