Seasonal and Annual Probabilistic Forecasting of Water Levels in Large Lakes (Case Study of the Ladoga Lake)

IF 0.3
N. V. Myakisheva, E. Gaidukova, S. V. Shanochkin, A. A. Batmazova
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引用次数: 1

Abstract

The production functions of water-dependent sectors of the economy can include the water level in the lake as a natural resource. This characteristic must be able to reliably predict for the effective functioning of sectors of the economy. In the article the main attention is paid to the methods of forecasting based on the extrapolation of natural variations of the large lakes water level. As an example, is considered. In this paper, it is assumed that the level varies accordingly to a stochastic multi-cycle process with principal energy-containing zones in frequency bands associated with seasonal and multi-annual variations. Hence, the multi-year monthly and yearly averaged time series are represented by the ARIMA (auto-regression integrated moving average) processes. Forecasts are generated by using of the seasonal ARIMA-models, which take into account not only the seasonal but also the evolution non-stationarity. To compare the forecasts and the actual values, the relative errors are computed. It is shown that implementation of the models mainly allows receiving good and excellent forecasts. Subject Classification Numbers: UDC 556.555.2.06(4)
大湖水位的季节和年度概率预测(以拉多加湖为例)
依赖水的经济部门的生产功能可以包括作为自然资源的湖泊水位。这一特征必须能够可靠地预测经济部门的有效运作。本文主要关注基于大湖水位自然变化外推的预测方法。作为一个例子,考虑了。在本文中,假设水平随着随机多周期过程的变化而变化,该过程在与季节和多年变化相关的频带中具有主要的含能区。因此,多年月度和年度平均时间序列由ARIMA(自回归综合移动平均)过程表示。预测是通过使用季节ARIMA模型生成的,该模型不仅考虑了季节性,还考虑了进化的非平稳性。为了比较预测值和实际值,计算了相对误差。结果表明,模型的实现主要是为了获得良好的预报。受试者分类号:UDC 556.555.2.06(4)
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来源期刊
International Letters of Natural Sciences
International Letters of Natural Sciences MULTIDISCIPLINARY SCIENCES-
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