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An Objective Time‐Series‐Analysis Method for Rainfall‐Runoff Event Identification

Giulia Giani, Larisa Tarasova, Ross Woods, Miguel A. Rico‐Ramirez

2022Water Resources Research41 citationsDOIOpen Access PDF

Abstract

Abstract Methodologies for rainfall‐runoff event identification from continuous time series suffer from significant subjectivity. In particular, whether they initiate the identification from rainfall or from the streamflow timeseries, they usually require baseflow separation and they need substantial modifications and parameters’ recalibration when changing temporal resolution of the data. Therefore, here we propose a novel objective methodology for event identification that is easily transferable across sites and temporal resolutions, without having to make subjective choices and adjust multiple parameters. The proposed method to identify rainfall‐runoff events is based on a time series analysis technique that simultaneously considers rainfall and streamflow time series and does not make any a priori assumptions about baseflow separation. The novel method allows also to produce a baseflow separation a posteriori by connecting the delimiters of identified streamflow events. Moreover, the proposed method can be applied at any time resolution as long as the resolution is high enough to capture the time delay between precipitation and runoff response. When comparing the results between the proposed and the traditional baseflow‐based event identification approach, we observe a good agreement in terms of event properties both at hourly and daily scale (correlation of runoff ratios between the two methods equal to 0.78 [daily data] and 0.84 [hourly data]). The analysis comparing hourly and daily event identifications with the proposed method reveals also that the novel method produces coherent events across different temporal resolutions (correlation of runoff ratios between daily and hourly data equal to 0.71).

Topics & Concepts

BaseflowStreamflowSurface runoffIdentification (biology)Environmental scienceTime seriesEvent (particle physics)Temporal resolutionSeries (stratigraphy)PrecipitationComputer scienceStatisticsData miningMeteorologyMathematicsMachine learningGeographyGeologyDrainage basinPhysicsCartographyPaleontologyQuantum mechanicsBotanyEcologyBiologyHydrology and Watershed Management StudiesFlood Risk Assessment and ManagementHydrology and Drought Analysis
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