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Chaotic analysis of time series in the sediment transport phenomenon

机译:沉积物运输现象中的时间序列混沌分析

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In this paper, nonlinear time series modeling techniques are applied to analyze suspended sediment data. The data are collected from the Yellow River basin at Tongguan, Shanxi, China during January 1980–December 2002. The phase space, which describes the evolution of the behavior of a nonlinear system, is reconstructed using the delay embedding theorem suggested by TAKENS. The delay time used for the reconstruction is chosen after examining the first zerocrossing of the autocorrelation function and the first minimum of the average mutual information (AMI) of the data. It is found that both methods yield a delay time of 7 days and 9 days, respectively, for the suspended sediment time series. The sufficient embedding dimension is estimated using the false nearest neighbor algorithm which has a value of 12. Based on these embedding parameters we calculate the correlation dimension of the resulting attractor, as well as the average divergence rate of nearby orbits given by the largest Lyapunov exponent. The correlation dimension 6.6 and largest Lyapunov exponent 0.065 are estimated. Finally, the phase space embedding based weight predictor algorithm (PSEWPA) is employed to make a short-term prediction of the chaotic time series for which the governing equations of the system may be unknown. The predicted values are, in general, in good agreement with the observed ones within 15 days, but they appear much less accurate beyond the limits of 20 days. These results indicate that chaotic characteristics obviously exist in the sediment transport phenomenon; techniques based on phase space dynamics can be used to analyze and predict the suspended sediment concentration.
机译:本文采用非线性时间序列建模技术来分析悬浮沉积物数据。从2002年1月1980年1月,中国山西潼关的黄河流域收集了数据。阶段空间描述了使用Takens建议的延迟嵌入定理重建了非线性系统行为的演变。在检查自动相关函数的第一个zerocross和数据的第一最小值之后,选择用于重建的延迟时间。发现两种方法分别产生7天和9天的延迟时间,用于悬浮的沉积时间序列。使用具有值为12的错误最近邻算法估计了足够的嵌入尺寸。基于这些嵌入参数,我们计算所得吸引子的相关维度,以及最大Lyapunov指数给出的附近轨道的平均发散率。估计相关维度6.6和最大的Lyapunov指数0.065。最后,采用基于相位空间嵌入的权重预测器算法(PSEWPA)来进行混沌时间序列的短期预测,其系统的控制方程可能未知。通常,预测值与在15天内与观察到的值良好的达成一致,但它们显得超出了20天的限制的准确性。这些结果表明,沉积物运输现象明显存在的混沌特征;基于相空间动力学的技术可用于分析和预测悬浮的沉积物浓度。

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