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Self-organizing input space for control of structures

机译:自组织输入空间以控制结构

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We propose a novel type of neural networks for structural control, which comprises an adaptive input space. This feature is purposefully designed for sequential input selection during adaptive identification and control of nonlinear systems, which allows the input space to be organized dynamically, while the excitation is occurring. The neural network has the main advantages of (1) automating the input selection process for time series that are not known a priori; (2) adapting the representation to nonstationarities; and (3) using limited observations. The algorithm designed for the adaptive input space assumes local quasi-stationarity of the time series, and embeds local maps sequentially in a delay vector using the embedding theorem. The input space of the representation, which in our case is a wavelet neural network, is subsequently updated. We demonstrate that the neural net has the potential to significantly improve convergence of a black-box model in adaptive tracking of a nonlinear system. Its performance is further assessed in a full-scale simulation of an existing civil structure subjected to nonstationary excitations (wind and earthquakes), and shows the superiority of the proposed method.
机译:我们提出了一种用于结构控制的新型神经网络,其中包括一个自适应输入空间。此功能是专为在非线性系统的自适应识别和控制期间进行顺序输入选择而设计的,它允许在发生激励时动态组织输入空间。该神经网络的主要优点是:(1)使时间序列的输入选择过程自动化,这是先验未知的; (2)使表示适应非平稳性; (3)使用有限的观察结果。为自适应输入空间设计的算法假设时间序列的局部拟平稳性,并使用嵌入定理将局部映射顺序嵌入到延迟向量中。随后更新表示的输入空间(在本例中为小波神经网络)。我们证明了神经网络有潜力在非线性系统的自适应跟踪中显着提高黑盒模型的收敛性。它的性能在遭受非平稳激励(风和地震)的现有土木结构的全面模拟中得到了进一步评估,并显示了所提出方法的优越性。

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