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Stochastic modeling of lake van water level time series with jumps and multiple trends

机译:具有跳跃和多重趋势的范湖水位时间序列的随机建模

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摘要

In the 1990s, water level in the closed-basin Lake Van located in the Eastern Anatolia, Turkey, has risen up about 2 m. Analysis of the hydrometeorological data shows that change in the water level is related to the water budget of the lake. In this study, stochastic models are proposed for simulating monthly water level data. Two models considering mono- and multiple-trend time series are developed. The models are derived after removal of trend and periodicity in the dataset. Trend observed in the lake water level time series is fitted by mono- and multiple-trend lines. In the so-called mono-trend model, the time series is treated as a whole under the hypothesis that the lake water level has an increasing trend. In the second model (so-called multiple-trend), the time series is divided into a number of segments to each a linear trend can be fitted separately. Application on the lake water level data shows that four segments, each fitted with a trend line, are meaningful. Both the mono- and multiple-trend models are used for simulation of synthetic lake water level time series under the hypothesis that the observed mono- and multiple-trend structure of the lake water level persist during the simulation period. The multiple-trend model is found better for planning the future infrastructural projects in surrounding areas of the lake as it generates higher maxima for the simulated lake water level.
机译:在1990年代,位于土耳其安那托利亚东部的流域密闭湖范湖的水位上升了约2 m。对水文气象数据的分析表明,水位的变化与湖泊的水量预算有关。在这项研究中,提出了用于模拟月度水位数据的随机模型。开发了两种考虑单趋势和多趋势时间序列的模型。在去除数据集中的趋势和周期性之后,得出模型。湖泊水位时间序列中观察到的趋势由单趋势线和多趋势线拟合。在所谓的单趋势模型中,在湖泊水位呈上升趋势的假设下,将时间序列作为一个整体进行处理。在第二种模型(所谓的多趋势)中,时间序列分为多个部分,每个部分可以分别拟合线性趋势。在湖泊水位数据上的应用表明,四个分段(每个分段都配有一条趋势线)是有意义的。假设观察到的湖水水位的单趋势和多趋势结构在模拟期间保持不变,则可以使用单趋势和多趋势模型对合成湖水位时间序列进行仿真。发现多趋势模型更好地计划了湖周边地区未来的基础设施项目,因为它为模拟的湖水位生成了更高的最大值。

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