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Application of Nonlinear-Autoregressive-Exogenous model to predict the hysteretic behaviour of passive control systems

机译:非线性自回归 - 外生模型在被动控制系统滞回性能预测中的应用

摘要

This paper proposes to use the nonlinear-autogressive models with exogenous input (NARX) model to predict the hysteretic behaviour of passive control systems. Although existing analytical hysteresis models such as the generalized Bouc-Wen (BW) model and the Bouc-Wen-Baber-Noori (BWBN) model can be used to model the hysteretic behaviour of passive control systems, the generalized BW model fails to account the pinching or stiffness degradation of hysteretic systems and the BWBN model requires to tune considerable parameters before its application. Therefore, we propose this alternative approach to predict the hysteresis response of passive control systems. The NARX model is the branch of artificial intelligence which is a promising tool for the forecasting of time series problems. We adopted the NARX model to predict the hysteretic behaviour with experimental results conducted on yielding shear panel device (YSPD) and steel slit damper (SSD), respectively. A good agreement between the experimental results on both YSPD and SSD and the prediction results was achieved. We also combined the NARX model and the general regression neural network (GRNN) as a hybrid model to predict hysteretic behaviour of the SSD of which the damper design was hidden from the model training process. The performance of using the hybrid model to predict the hysteretic behaviour of SSD is reasonably well. Finally, the applicability of the hybrid model has been successfully demonstrated through the optimisation of the geometrical parameters of the SSD. We concluded that the proposed NARX model is capable to predict the hysteretic behaviour of passive control systems.
机译:本文提出使用带有外生输入的非线性自激模型(NARX)模型来预测被动控制系统的磁滞行为。尽管现有的分析滞后模型(例如广义Bouc-Wen(BW)模型和Bouc-Wen-Baber-Noori(BWBN)模型)可用于对无源控制系统的滞后行为进行建模,但广义BW模型无法说明滞回系统的收缩或刚度降低以及BWBN模型需要在应用之前调整大量参数。因此,我们提出了这种替代方法来预测被动控制系统的磁滞响应。 NARX模型是人工智能的一个分支,是预测时间序列问题的有前途的工具。我们采用NARX模型来预测滞后行为,并分别在屈服剪力板装置(YSPD)和钢缝阻尼器(SSD)上进行了实验。在YSPD和SSD上的实验结果与预测结果之间取得了很好的一致性。我们还将NARX模型和通用回归神经网络(GRNN)组合为一个混合模型,以预测SSD的滞后行为,其中阻尼器设计已从模型训练过程中隐藏了。使用混合模型预测SSD的滞后行为的性能相当好。最后,通过优化SSD的几何参数成功证明了混合模型的适用性。我们得出的结论是,提出的NARX模型能够预测被动控制系统的磁滞行为。

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