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Near Real-time Inverse Analysis for Discrete Dynamic Systems using Incomplete Acceleration Time Series

机译:使用不完整加速时间序列的离散动态系统近实时逆分析

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From the computational point of view, parametric identification for dynamic structures presents a challenging problem because of the convergence of the inverse analysis and the limitation of available measurements. A general inverse analysis methodology for structural parameter identification by the direct use of free vibration acceleration time histories without any eigenvalue extraction process that is required in many conventional inverse analysis algorithms is proposed. An acceleration-based neural network (ANN) and a parametric evaluation neural network (PENN) are constructed to identify structural inter-storey stiffness and damping coefficients using an evaluation index called root mean square of prediction difference vector (RMSPDV). The performance of the proposed methodology is examined by numerical simulations with a multi-degree-of-freedom (MDOF) shear structure. Numerical simulation results show that the proposed methodology can be employed as a near real-time inverse analysis method for parametric identification using several seconds of spatially incomplete dynamic responses time series.
机译:从来看,参数辨识动态结构的礼物,因为逆分析的收敛和可用测量的局限性的一个具有挑战性的问题的计算点。用于通过而不被在许多常规逆分析算法所要求的任何特征值提取过程中直接使用的自由振动加速度时程的结构参数识别的一般逆分析方法,提出了基于加速神经网络(ANN)和参数评估神经网络(PENN)被构造以识别结构层高间刚度和使用称为预测差分向量(RMSPDV)的根均方的评价指标阻尼系数。所提出的方法的性能是通过数值模拟与多度的自由度(多自由度)剪切结构检查。数值模拟结果表明,该方法可以采用作为参数辨识使用空间不完整的动态响应时间序列的几秒钟的接近实时的反分析方法。

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