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Trend Analysis of Annual and Seasonal River Runoff by Using Innovative Trend Analysis with Significant Test

Yilinuer Alifujiang, Jilili Abuduwaili, Yongxiao Ge

2021Water39 citationsDOIOpen Access PDF

Abstract

This study investigated the temporal patterns of annual and seasonal river runoff data at 13 hydrological stations in the Lake Issyk-Kul basin, Central Asia. The temporal trends were analyzed using the innovative trend analysis (ITA) method with significance testing. The ITA method results were compared with the Mann-Kendall (MK) trend test at a 95% confidence level. The comparison results revealed that the ITA method could effectively identify the trends detected by the MK trend test. Specifically, the MK test found that the time series percentage decreased from 46.15% in the north to 25.64% in the south, while the ITA method revealed a similar rate of decrease, from 39.2% to 29.4%. According to the temporal distribution of the MK test, significantly increasing (decreasing) trends were observed in 5 (0), 6 (2), 4 (3), 8 (0), and 8 (1) time series in annual, spring, summer, autumn, and winter river runoff data. At the same time, the ITA method detected significant trends in 7 (1), 9 (3), 6(3), 9 (3), and 8 (2) time series in the study area. As for the ITA method, the “peak” values of 24 time series (26.97%) exhibited increasing patterns, 25 time series (28.09%) displayed increasing patterns for “low” values, and 40 time series (44.94%) showed increasing patterns for “medium” values. According to the “low”, “medium”, and “peak” values, five time series (33.33%), seven time series (46.67%), and three time series (20%) manifested decreasing trends, respectively. These results detailed the patterns of annual and seasonal river runoff data series by evaluating “low”, “medium”, and “peak” values.

Topics & Concepts

Trend analysisSurface runoffEnvironmental scienceSeries (stratigraphy)Time seriesHydrology (agriculture)Drainage basinPhysical geographyClimatologyStatisticsGeographyMathematicsGeologyEcologyCartographyBiologyGeotechnical engineeringPaleontologyHydrology and Watershed Management StudiesHydrology and Drought AnalysisHydrological Forecasting Using AI