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Analysis of daily streamflow complexity by Kolmogorov measures and Lyapunov exponent

机译:KOLMOGOOROV措施和Lyapunov指数的日常流式复杂性分析

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Analysis of daily streamflow variability in space and time is important for water resources planning, development, and management. The natural variability of streamflow is being complicated by anthropogenic influences and climate change, which may introduce additional complexity into streamflow records. To address the complexity in streamflow, daily discharge data recorded during the period 1989-2016 at twelve gauging stations on Brazos River in Texas (USA) were used to derive a set of novel quantitative tools: Kolmogorov complexity (KC) and its derivative-associated measures to assess complexity, and Lyapunov time (LT) to assess predictability. It was found that all daily discharge series exhibited long memory with an increasing down-flow tendency, while the randomness of the series at individual sites could not be definitively concluded. All Kolmogorov complexity measures had relatively small values with the exception of the USGS (United States Geological Survey) 08088610 station at Graford, Texas, which exhibited the highest values of the complexity measures. This finding may be attributed to the elevated effect of human activities at Graford, and proportionally lesser effect at other stations. In addition, complexity tended to decrease downflow, meaning that larger catchments were generally less influenced by anthropogenic activities. The correction on randomness of Lyapunov time (quantifying predictability) was found to be inversely proportional to the Kolmogorov complexity, which strengthened our conclusion regarding the effect of anthropogenic activities, considering that KC and LT were distinct measures, based on rather different techniques. (C) 2019 Elsevier B.V. All rights reserved.
机译:对空间和时间的日常流式变异性分析对于水资源规划,开发和管理是重要的。通过人为影响和气候变化,流流的自然变化是复杂的,这可能会引入流流记录的额外复杂性。为了解决流出的复杂性,德克萨斯州巴西河(美国)的十二个测量站记录的日常放电数据用于推导一组新颖的定量工具:Kolmogorov复杂性(KC)及其衍生物相关的评估复杂性和Lyapunov时间(LT)评估可预测性的措施。结果发现,所有日排放系列都表现出长的记忆,随着下行流动倾向而增加,而个别位点的系列随机性无法明确地结束。所有Kolmogorov复杂性措施都除了USGS(美国地质调查)08088610站,德克萨斯州格拉斯队(美国地质调查)08088610站,展出了复杂性措施的最高价值。这一发现可能归因于榴弹德的人类活动的效果,以及在其他站点的比例较小。此外,复杂性倾向于降低下流,这意味着较大的流域通常对受试者活动的影响较小。发现Lyapunov时间(量化可预测性)的随机性校正与Kolmogorov复杂性成反比,这加强了我们关于人为活动的影响的结论,考虑到KC和LT是不同的措施,基于相当不同的技术。 (c)2019 Elsevier B.v.保留所有权利。

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