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A new class of non-linear, multi-dimensional structures for long-term dynamic modelling of chaotic systems

机译:用于混沌系统长期动态建模的新型非线性多维结构

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In this paper, we specifically turn our attention to long-term prediction of dynamic multi-fractal chaotic systems. Here, the linear, quadratic, cubic, and nth-order non-linearities are each multiplied by a weighting function. The weighting functions can take a time-varying form, if necessary, to cater for the non-stationary dynamics of the signal. During the training phase, the characteristic parameters of the weighting functions adapt to the varying nature and emphasis of non-linearity. Once the training of the new adaptive structure is completed; the generalization performance is evaluated by performing recursive prediction in an autonomous fashion. Specifically, the long-term predictive capability of the structure is tested by using a closed-loop adaptation scheme without any external input signal applied to the structure. The dynamic invariants computed from the reconstructed time series must now closely match the corresponding ones computed from the original time series. We will provide evidence of long-term prediction in excess of several thousand samples of highly complex (nine dimension) multi-fractal labour contraction signals using only a small fraction of this sample (only 300 samples for the training phase). Also presented are interesting results obtained using Lorenz attractor, and performing two recursive long-term predictions; (i) the regularized Gaussian radial basis function networks, and (ii) our novel embedded Volterra-like structure with weighted linear, quadratic and cubic nonlinearities, which demonstrate the superior performance of the latter with reduced SNRs.
机译:在本文中,我们特别将注意力转向动态多分形混沌系统的长期预测。在此,线性,二次,三次和n阶非线性分别乘以加权函数。必要时,加权函数可以采用时变形式,以适应信号的非平稳动态。在训练阶段,加权函数的特征参数适应非线性的变化性质和重点。一旦完成新的自适应结构的训练;通过以自主方式执行递归预测来评估泛化性能。具体而言,通过使用闭环自适应方案来测试结构的长期预测能力,而无需将任何外部输入信号应用于该结构。现在,根据重构的时间序列计算出的动态不变量必须与根据原始时间序列计算出的对应值紧密匹配。我们将提供长期预测的证据,仅使用此样本的一小部分(训练阶段仅300个样本),即可对数千个高度复杂(九维)多重分形劳动收缩信号样本进行长期预测。还介绍了使用Lorenz吸引子并进行两个递归长期预测所获得的有趣结果。 (i)正则化高斯径向基函数网络,以及(ii)我们新颖的具有加权线性,二次和三次非线性的嵌入式Volterra式结构,证明了后者在降低SNR方面的优越性能。

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