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Conditional Heteroscedasticity in Streamflow Process: Paradox or Reality?

机译:流过程中的条件异方差:悖论还是现实?

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The various physical mechanisms governing the dynamics of streamflow processes act on a seemingly wide range of temporal and spatial scales; almost all the mechanisms involved present some degree of nonlinearity. Against the backdrop of these issues, in this paper, attempt was made to critically look at the subject of Autoregressive Conditional Heteroscedasticity (ARCH) or volatility of streamflow processes, a form of nonlinear phenomena. Towards this end, streamflow data (both daily and monthly) of the River Benue, Nigeria were used for the study. Results obtained from the analyses indicate that the existence of conditional heteroscedasticity in streamflow processes is no paradox. Too, ARCH effect is caused by seasonal variation in the variance for monthly flows and could partly explain same in the daily streamflow. It was also evident that the traditional seasonal Autoregressive Moving Average (ARMA) models are inadequate in describing ARCH effect in daily streamflow process though, robust for monthly streamflow; and can be removed if proper deseasonalisation pre-processing was done. Considering the findings, the potential for a hybrid Autoregressive Moving Average (ARMA) and Generalised Autoregressive Conditional Heteroscedasticity (GARCH)type models should be further explored and probably embraced for modelling daily streamflow regime in view of the relevance of statistical modelling in hydrology.
机译:控制流过程动力学的各种物理机制在看似广泛的时间和空间尺度上起作用。几乎所有涉及的机制都存在一定程度的非线性。在这些问题的背景下,本文尝试批判性地研究自回归条件异方差(ARCH)或流量过程的波动性(非线性现象的一种形式)。为此,研究使用了尼日利亚贝努河的流量数据(每日和每月)。从分析中获得的结果表明,在流过程中存在条件异方差不是悖论。 ARCH效应也是由月流量方差的季节变化引起的,并且可以在日流量中部分解释。同样明显的是,传统的季节性自回归移动平均线(ARMA)模型不足以描述每日流量过程中的ARCH效应,但对每月流量却很健壮。如果进行了适当的反季节化预处理,则可以将其删除。考虑到这些发现,应进一步探索混合自回归移动平均值(ARMA)和广义自回归条件异方差(GARCH)类型模型的潜力,并考虑到水文统计建模的相关性,可能将其用于日流量模型。

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