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Detection and predictive modeling of chaos in finite hydrological time series

机译:有限水文时间序列中混沌的检测和预测建模

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The ability to detect the chaotic signal from a finite time series observation of hydrologic systems is addressed in this paper. The presence of random and seasonal components in hydrological time series, like rainfall or runoff, makes the detection process challenging. Tests with simulated data demonstrate the presence of thresholds, in terms of noise to chaotic-signal and seasonality to chaotic-signal ratios, beyond which the set of currently available tools is not able to detect the chaotic component. The investigations also indicate that the decomposition of a simulated time series into the corresponding random, seasonal and chaotic components is possible from finite data. Real stream-flow data from the Arkansas and Colorado rivers are used to validate these results. Neither of the raw time series exhibits chaos. While a chaotic component can be extracted from the Arkansas data, such a component is either not present or can not be extracted from the Colorado data. This indicates that real hydrologic data may or may not have a detectable chaotic component. The strengths and limitations of the existing set of tools for the detection and modeling of chaos are also studied.
机译:本文讨论了从水文系统的有限时间序列观察中检测混沌信号的能力。水文时间序列中随机和季节性成分(如降雨或径流)的存在使检测过程具有挑战性。使用模拟数据进行的测试表明,在噪声与混沌信号的比率以及季节性与混沌信号的比率方面存在阈值,超过该阈值,当前可用的工具集将无法检测到混沌分量。研究还表明,可以从有限数据中将模拟时间序列分解为相应的随机,季节性和混沌分量。来自阿肯色州和科罗拉多河的实际流量数据用于验证这些结果。原始时间序列均未出现混乱。尽管可以从阿肯色州数据中提取混沌成分,但这种成分要么不存在,要么无法从Colorado数据中提取。这表明真实的水文数据可能具有也可能没有可检测的混沌成分。还研究了现有的用于检测和建模混沌的工具集的优缺点。

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