Trends can be detected in time series of extreme hydrological events. However, persistence and record length are often ignored in those analyses resulting in contradicting conclusions. The aim of this study is to evaluate their influence on trend detection in extreme streamflow time series. In this study, 108 time series of maximum and minimum streamflow in Brazil were analysed, with a minimum length of 60 years and an average of 76 years. Mann-Kendall (MK), Spearman's rho, and Pettitt statistical tests were applied to assess trends. Portmanteau and Hurst's autocorrelation tests were adopted to assess the persistence. Modifications of the MK test were used to remove the persistence effects. We found a strong persistence in the studied time series. Even after removing it, several time series remained non-stationary. Record length significantly affected the results of the analyses, with an increase in the number of trends according to the period analysed.
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Aryabhatta Res Inst Observat Sci, Naini Tal 263001, India
DDU Gorakhpur Univ, Dept Phys, Gorakhpur 273009, IndiaAryabhatta Res Inst Observat Sci, Naini Tal 263001, India
Sheoran, Rahul
Dumka, Umesh Chandra
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Aryabhatta Res Inst Observat Sci, Naini Tal 263001, India
Graph Era Deemed Univ, Dept Phys, Dehra Dun 248002, IndiaAryabhatta Res Inst Observat Sci, Naini Tal 263001, India
Dumka, Umesh Chandra
Tiwari, Rakesh K.
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DDU Gorakhpur Univ, Dept Phys, Gorakhpur 273009, IndiaAryabhatta Res Inst Observat Sci, Naini Tal 263001, India
Tiwari, Rakesh K.
Hooda, Rakesh K.
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Finnish Meteorol Inst, Erik Palmenin Aukio 1, FI-00560 Helsinki, FinlandAryabhatta Res Inst Observat Sci, Naini Tal 263001, India