Spatial-temporal tendencies of the ice regime of the Dnipro Cascade reservoirs

被引:0
|
作者
Khrystiuk, Borys [1 ,2 ]
Gorbachova, Liudmyla [1 ,2 ]
机构
[1] Ukrainian Hydrometeorol Inst, State Emergency Serv Ukraine, 37 Prospekt Nauky, UA-03028 Kiev, Ukraine
[2] Natl Acad Sci Ukraine, 37 Prospekt Nauky, UA-03028 Kiev, Ukraine
关键词
ice regime; Dnipro reservoirs; homogeneity; stationarity; cyclic fluctuations; tendencies; graphical and statistical methods; RIVER;
D O I
10.26565/2410-7360-2023-59-18
中图分类号
P5 [地质学];
学科分类号
0709 ; 081803 ;
摘要
Formulation of the problem. Knowledge about the formation, destruction and trends of the ice regime of rivers and reservoirs is very important for hydropower, shipping, fisheries, etc. There are almost no studies that evaluated the trends, homogeneity and stationarity of the ice regime of the Dnipro Cascade reservoirs. At the same time, such research is relevant especially in the conditions of a changing climate. The objective of this paper is evaluation of spatio-temporal trends of a observation series for the ice regime of the Dnipro Cascade reservoirs based on a complex approach using statistical and graphical methods. Methods. The research used statistical methods, namely the Pearson method for establishing of the trend equation in the time series and the correlation coefficient between variables, and the Mann-Kendell statistical non -parametric test for assessing the statistical significance of the trend. Among the graphic methods, the mass curve and residual mass curve were used to assess the homogeneity and stationarity of observation series, respectively, as well as combined chronological graphs for spatial analysis, determination of synchronous and in -phase (or on the contrary) long-term cyclic fluctuations of the ice regime characteristics at various water gauges. The research was carried out based on the observation data for dates of ice appearance, ice freeze-up, ice break-up (i.e., melt onset), ice disappearance for 35 water gauges. Results. According to the Mann -Kendall statistical test, contradictory results were obtained regarding the stationarity of the observation series of the ice regime of the Dnipro Cascade reservoirs. At the same time, according to graphic analysis, such series turned out to be quasi -homogeneous and quasi -stationary, since they have unfinished phases of increase and decrease of long-term cyclical fluctuations. In turn, the cyclic fluctuations are characterized by synchronous and in -phase, which indicates the same temporal and spatial tendencies of the ice regime of six reservoirs. The dates of the appearance of main phases of the ice regime of the Dnipro Cascade reservoirs are characterized by significant variability. Scientific novelty and practical significance. For the first time, modern knowledge about the ice regime characteristics of the Dnipro Cascade reservoirs were obtained based on the simultaneous application of statistical and graphical methods. In addition, the research results can be used for further research, namely any statistical processing (determination of probabilistic characteristics, search for prognostic dependencies, generalizations, etc.).
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页码:249 / 259
页数:11
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