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首页> 外文期刊>International journal of non-linear mechanics >A robust online parametric identification method for non-deteriorating and deteriorating distributed element models with viscous damping
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A robust online parametric identification method for non-deteriorating and deteriorating distributed element models with viscous damping

机译:具有粘性阻尼的非恶化和恶化分布元素模型的鲁棒在线参数识别方法

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The online parametric identification of deteriorating and non-deteriorating distributed element models (DEMs) with viscous damping is studied using a generalization of Masing model to provide the proper framework for identification. The approach renders the hysteretic response of the DEM into a time-independent single-valued mapping from equivalent displacement values into equivalent force values, while considering the effect of damping as a parallel element. This approach allows for parametric identification of this non-linear rate-dependent hysteretic behavior to be performed using non-linear optimization techniques. A changing objective function, defined as a norm of force estimation error over a shifting window of recent data, is employed so that classic non-linear optimization techniques can be used for the online identification problem. A variation of the steepest descent method is used with significant modifications. Special measures are taken to guarantee robustness of the results in presence of noise. The results show that the proposed identification method exhibits a very good performance in identifying the correct values of the parameters in real time, and is robust in dealing with noise. The proposed method can be applied to many other types of hysteretic behavior as well.
机译:利用Masing模型的一般化,研究了具有粘性阻尼的退化和非退化分布元模型(DEM)的在线参数识别,以提供合适的识别框架。该方法将DEM的滞后响应转换为与时间无关的单值映射,将等效位移值转换为等效力值,同时将阻尼的影响视为并行元素。这种方法允许使用非线性优化技术来执行此非线性速率相关的滞后行为的参数识别。采用变化的目标函数,定义为最近数据的移动窗口上的力估计误差的范数,以便可以将经典的非线性优化技术用于在线识别问题。使用最速下降法的一种变体进行了重大修改。采取特殊措施以保证在存在噪声的情况下结果的鲁棒性。结果表明,所提出的识别方法在实时识别参数正确值方面表现出很好的性能,并且在处理噪声方面具有鲁棒性。所提出的方法也可以应用于许多其他类型的磁滞行为。

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