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Multifractality, imperfect scaling and hydrological properties of rainfall time series simulated by continuous universal multifractal and discrete random cascade models

机译:连续通用分形和离散随机级联模型模拟的降雨时间序列的多重分形,不完全尺度和水文特性

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Discrete multiplicative random cascade (MRC) models were extensively studied and applied to disaggregate rainfall data, thanks to their formal simplicity and the small number of involved parameters. Focusing on temporal disaggregation, the rationale of these models is based on multiplying the value assumed by a physical attribute (e.g., rainfall intensity) at a given time scale IL/I, by a suitable number Ib/I of random weights, to obtain Ib/I attribute values corresponding to statistically plausible observations at a smaller IL/b/I time resolution. In the original formulation of the MRC models, the random weights were assumed to be independent and identically distributed. However, for several studies this hypothesis did not appear to be realistic for the observed rainfall series as the distribution of the weights was shown to depend on the space-time scale and rainfall intensity. Since these findings contrast with the scale invariance assumption behind the MRC models and impact on the applicability of these models, it is worth studying their nature. This study explores the possible presence of dependence of the parameters of two discrete MRC models on rainfall intensity and time scale, by analyzing point rainfall series with 5-min time resolution. Taking into account a discrete microcanonical (MC) model based on beta distribution and a discrete canonical beta-logstable (BLS), the analysis points out that the relations between the parameters and rainfall intensity across the time scales are detectable and can be modeled by a set of simple functions accounting for the parameter-rainfall intensity relationship, and another set describing the link between the parameters and the time scale. Therefore, MC and BLS models were modified to explicitly account for these relationships and compared with the continuous in scale universal multifractal (CUM) model, which is used as a physically based benchmark model. Monte Carlo simulations point out that the dependence of MC and BLS parameters on rainfall intensity and cascade scales can be recognized also in CUM series, meaning that these relations cannot be considered as a definitive sign of departure from multifractality. Even though the modified MC model is not properly a scaling model (parameters depend on rainfall intensity and scale), it reproduces the empirical traces of the moments and moment exponent function as effective as the CUM model. Moreover, the MC model is able to reproduce some rainfall properties of hydrological interest, such as the distribution of event rainfall amount, wet/dry spell length, and the autocorrelation function, better than its competitors owing to its strong, albeit unrealistic, conservative nature. Therefore, even though the CUM model represents the most parsimonious and the only physically/theoretically consistent model, results provided by MC model motivate, to some extent, the interest recognized in the literature for this type of discrete models.
机译:离散倍增随机级联(MRC)模型由于形式上的简单和所涉及参数的数量少,因此得到了广泛的研究,并被用于分解降雨数据。着眼于时间分解,这些模型的基本原理是将给定时间尺度 L 上的物理属性(例如降雨强度)假定的值乘以适当的值 b < / I>随机权重,以获得与 L / b 时间分辨率较小的统计上合理的观察值相对应的 b 属性值。在MRC模型的原始公式中,随机权重被假定为独立且分布均匀。但是,对于一些研究,该假设对于观测到的降雨序列似乎并不现实,因为权重的分布取决于时空尺度和降雨强度。由于这些发现与MRC模型背后的规模不变性假设形成对比,并且对这些模型的适用性产生影响,因此值得研究它们的性质。本研究通过分析具有5分钟时间分辨率的点降雨序列,探索了两个离散MRC模型的参数对降雨强度和时间尺度的依赖性的可能存在。考虑到基于β分布的离散微经典(MC)模型和离散β对数稳定(BLS)模型,分析指出跨时间尺度的参数和降雨强度之间的关系是可检测的,并且可以通过一组简单函数说明了参数与降雨强度的关系,另一组描述了参数与时间尺度之间的联系。因此,修改了MC和BLS模型以明确说明这些关系,并将其与用作物理基准模型的连续大规模通用分形(CUM)模型进行比较。蒙特卡洛模拟指出,MC和BLS参数对降雨强度和级联尺度的依赖性也可以在CUM系列中识别出来,这意味着这些关系不能被视为偏离多重分形的确定标志。即使修改后的MC模型不是正确的比例模型(参数取决于降雨强度和规模),它仍然可以再现与CUM模型一样有效的矩和矩指数函数的经验轨迹。此外,MC模型由于其强大的,尽管不切实际的,保守的性质,因此能够比竞争对手更好地再现一些具有水文意义的降雨特性,例如事件降雨量的分布,湿/干法线长度和自相关函数。 。因此,即使CUM模型代表了最简约和唯一的物理/理论上一致的模型,MC模型提供的结果在一定程度上激发了文献中对这种离散模型的兴趣。

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