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首页> 外文期刊>Nonlinear Theory and Its Applications >Reconstructing bifurcation diagrams with Lyapunov exponents from only time-series data using an extreme learning machine
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Reconstructing bifurcation diagrams with Lyapunov exponents from only time-series data using an extreme learning machine

机译:使用极限学习机仅使用时间序列数据用李雅普诺夫指数重建分叉图

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We describe a method for reconstructing bifurcation diagrams with Lyapunov exponents for chaotic systems using only time-series data. The reconstruction of bifurcation diagrams is a problem of time-series prediction and predicts oscillatory patterns of time-series data when parameters change. Therefore, we expect the reconstruction of bifurcation diagram could be used for real-world systems that have variable environmental factors, such as temperature, pressure, and concentration. In the conventional method, the accuracy of the reconstruction can be evaluated only qualitatively. In this paper, we estimate Lyapunov exponents for reconstructed bifurcation diagrams so that we can quantitatively evaluate the reconstruction. We also present the results of numerical experiments that confirm that the features of the reconstructed bifurcation diagrams coincide with those of the original ones.
机译:我们描述了一种仅使用时序数据为混沌系统重建具有Lyapunov指数的分叉图的方法。分叉图的重建是时间序列预测的问题,并且在参数更改时预测时间序列数据的振荡模式。因此,我们希望分叉图的重建可用于具有可变环境因素(例如温度,压力和浓度)的实际系统。在传统方法中,只能定性地评估重建的准确性。在本文中,我们估计了重构分叉图的Lyapunov指数,以便可以定量评估重构。我们还提供了数值实验的结果,这些结果证实了重构的分叉图的特征与原始特征一致。

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