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Aggregation and sampling in deterministic chaos: implications for chaos identification in hydrological processes

机译:确定性混沌中的聚集和采样:对水文过程中混沌识别的影响

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摘要

A review of the literature reveals conflicting results regarding the existence and inherent nature of chaos in hydrological processes such as precipitation and streamflow, i.e. whether they are low dimensional chaotic or stochastic. This issue is examined further in this paper, particularly the effect that certain types of transformations, such as aggregation and sampling, may have on the identification of the dynamics of the underlying system. First, we investigate the dynamics of daily streamflows for two rivers in Florida, one with strong surface and groundwater storage contributions and the other with a lesser basin storage contribution. Based on estimates of the delay time, the delay time window, and the correlation integral, our results suggest that the river with the stronger basin storage contribution departs significantly from the behavior of a chaotic system, while the departure is less significant for the river with the smaller basin storage contribution. We pose the hypothesis that the chaotic behavior depicted on continuous precipitation fields or small time-step precipitation series becomes less identifiable as the aggregation (or sampling) time step increases. Similarly, because streamflows result from a complex transformation of precipitation that involves accumulating and routing excess rainfall throughout the basin and adding surface and groundwater flows, the end result may be that streamflows at the outlet of the basin depart from low dimensional chaotic behavior. We also investigate the effect of aggregation and sampling using series derived from the Lorenz equations and show that, as the aggregation and sampling scales increase, the chaotic behavior deteriorates and eventually ceases to show evidence of low dimensional determinism.
机译:文献综述揭示了关于水文过程中的混沌的存在和内在本质(例如降水和水流,即它们是低维混沌还是随机)的矛盾结果。本文将进一步研究此问题,尤其是某些类型的转换(例如聚合和采样)可能对底层系统动力学的识别产生的影响。首先,我们调查了佛罗里达州两条河流的日流量动态,一条河流具有强大的地表水和地下水储量,而另一条河流流域的储水量较小。基于对延迟时间,延迟时间窗口和相关积分的估计,我们的结果表明,具有较强流域存储贡献的河流与混沌系统的行为显着偏离,而对于具有流域存储的河流,偏离则不那么显着。盆地存储贡献较小。我们提出这样一个假设:随着聚集(或采样)时间步长的增加,连续降水场或小时间步长降水序列上描绘的混沌行为变得越来越难以识别。同样,由于水流是由复杂的降水转化产生的,涉及在整个流域内积累和输送过多的降雨,并增加了地表水和地下水流,因此最终结果可能是流域出口处的水流偏离了低维混沌行为。我们还研究了使用从Lorenz方程派生的级数进行聚集和采样的效果,并表明,随着聚集和采样规模的增加,混沌行为恶化,并最终不再显示低维确定性的证据。

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