Streamflow drought: implication of drought definitions and its application for drought forecasting

Streamflow drought forecasting is a key element of contemporary drought early warning systems (DEWS). The term streamflow drought forecasting (not streamflow forecasting), however, has created confusion within the scientific hydrometeorological community as well as in operational weather and water m...

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Veröffentlicht in:Hydrology and earth system sciences 2021-07, Vol.25 (7), p.3991-4023
Hauptverfasser: Sutanto, Samuel J., Van Lanen, Henny A. J.
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description Streamflow drought forecasting is a key element of contemporary drought early warning systems (DEWS). The term streamflow drought forecasting (not streamflow forecasting), however, has created confusion within the scientific hydrometeorological community as well as in operational weather and water management services. Streamflow drought forecasting requires an additional step, which is the application of a drought identification method to the forecasted streamflow time series. The way streamflow drought is identified is the main reason for this misperception. The purpose of this study, therefore, is to provide a comprehensive overview of the differences between different drought identification approaches to identify droughts in European rivers, including an analysis of both historical drought and implications for forecasting. Streamflow data were obtained from the LISFLOOD hydrological model forced with gridded meteorological observations (known as LISFLOOD-Simulation Forced with Observed, SFO). The same model fed with seasonal meteorological forecasts of the European Centre for Medium-Range Weather Forecasts system 5 (ECMWF SEAS 5) was used to obtain the forecasted streamflow. Streamflow droughts were analyzed using the daily and monthly variable threshold methods (VTD and VTM, respectively), the daily and monthly fixed threshold methods (FTD and FTM, respectively), and the Standardized Streamflow Index (SSI). Our results clearly show that streamflow droughts derived from different approaches deviate from each other in their characteristics, which also vary in different climate regions across Europe. The daily threshold methods (FTD and VTD) identify 25 %-50 % more drought events than the monthly threshold methods (FTM and VTM), and accordingly the average drought duration is longer for the monthly than for the daily threshold methods. The FTD and FTM, in general, identify drought occurrences earlier in the year than the VTD and VTM. In addition, the droughts obtained with the VTM and FTM approaches also have higher drought deficit volumes (about 25 %-30 %) than the VTD and FTD approaches. Overall, the characteristics of SSI-1 drought are close to what is being identified by the VTM. The different outcome obtained with the drought identification methods illustrated with the historical analysis is also found in drought forecasting, as documented for the 2003 drought across Europe and for the Rhine River specifically. In the end, there is no unique hydrolog
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J.</creator><creatorcontrib>Sutanto, Samuel J. ; Van Lanen, Henny A. J.</creatorcontrib><description>Streamflow drought forecasting is a key element of contemporary drought early warning systems (DEWS). The term streamflow drought forecasting (not streamflow forecasting), however, has created confusion within the scientific hydrometeorological community as well as in operational weather and water management services. Streamflow drought forecasting requires an additional step, which is the application of a drought identification method to the forecasted streamflow time series. The way streamflow drought is identified is the main reason for this misperception. The purpose of this study, therefore, is to provide a comprehensive overview of the differences between different drought identification approaches to identify droughts in European rivers, including an analysis of both historical drought and implications for forecasting. Streamflow data were obtained from the LISFLOOD hydrological model forced with gridded meteorological observations (known as LISFLOOD-Simulation Forced with Observed, SFO). The same model fed with seasonal meteorological forecasts of the European Centre for Medium-Range Weather Forecasts system 5 (ECMWF SEAS 5) was used to obtain the forecasted streamflow. Streamflow droughts were analyzed using the daily and monthly variable threshold methods (VTD and VTM, respectively), the daily and monthly fixed threshold methods (FTD and FTM, respectively), and the Standardized Streamflow Index (SSI). Our results clearly show that streamflow droughts derived from different approaches deviate from each other in their characteristics, which also vary in different climate regions across Europe. The daily threshold methods (FTD and VTD) identify 25 %-50 % more drought events than the monthly threshold methods (FTM and VTM), and accordingly the average drought duration is longer for the monthly than for the daily threshold methods. The FTD and FTM, in general, identify drought occurrences earlier in the year than the VTD and VTM. In addition, the droughts obtained with the VTM and FTM approaches also have higher drought deficit volumes (about 25 %-30 %) than the VTD and FTD approaches. Overall, the characteristics of SSI-1 drought are close to what is being identified by the VTM. The different outcome obtained with the drought identification methods illustrated with the historical analysis is also found in drought forecasting, as documented for the 2003 drought across Europe and for the Rhine River specifically. In the end, there is no unique hydrological drought definition (identification method) that fits all purposes, and hence developers of DEWS and end-users should clearly agree in the co-design phase upon a sharp definition of which type of streamflow drought is required to be forecasted for a specific application.</description><identifier>ISSN: 1027-5606</identifier><identifier>ISSN: 1607-7938</identifier><identifier>EISSN: 1607-7938</identifier><identifier>DOI: 10.5194/hess-25-3991-2021</identifier><language>eng</language><publisher>GOTTINGEN: Copernicus Gesellschaft Mbh</publisher><subject>Co-design ; Daily ; Drought ; Drought forecasting ; Droughts ; Early warning systems ; Emergency communications systems ; Forecasting ; Frontotemporal dementia ; Geology ; Geosciences, Multidisciplinary ; Hydrologic data ; Hydrologic drought ; Hydrologic models ; Hydrology ; Hydrometeorology ; Identification ; Identification methods ; Management services ; Mathematical models ; Meteorological observations ; Monthly ; Physical Sciences ; Precipitation ; River networks ; Rivers ; Science &amp; Technology ; Stream discharge ; Stream flow ; Streamflow ; Streamflow data ; Streamflow forecasting ; Time series ; Warning systems ; Water management ; Water Resources ; Weather forecasting</subject><ispartof>Hydrology and earth system sciences, 2021-07, Vol.25 (7), p.3991-4023</ispartof><rights>COPYRIGHT 2021 Copernicus GmbH</rights><rights>2021. 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J.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Streamflow drought: implication of drought definitions and its application for drought forecasting</atitle><jtitle>Hydrology and earth system sciences</jtitle><stitle>HYDROL EARTH SYST SC</stitle><date>2021-07-08</date><risdate>2021</risdate><volume>25</volume><issue>7</issue><spage>3991</spage><epage>4023</epage><pages>3991-4023</pages><issn>1027-5606</issn><issn>1607-7938</issn><eissn>1607-7938</eissn><abstract>Streamflow drought forecasting is a key element of contemporary drought early warning systems (DEWS). The term streamflow drought forecasting (not streamflow forecasting), however, has created confusion within the scientific hydrometeorological community as well as in operational weather and water management services. Streamflow drought forecasting requires an additional step, which is the application of a drought identification method to the forecasted streamflow time series. The way streamflow drought is identified is the main reason for this misperception. The purpose of this study, therefore, is to provide a comprehensive overview of the differences between different drought identification approaches to identify droughts in European rivers, including an analysis of both historical drought and implications for forecasting. Streamflow data were obtained from the LISFLOOD hydrological model forced with gridded meteorological observations (known as LISFLOOD-Simulation Forced with Observed, SFO). The same model fed with seasonal meteorological forecasts of the European Centre for Medium-Range Weather Forecasts system 5 (ECMWF SEAS 5) was used to obtain the forecasted streamflow. Streamflow droughts were analyzed using the daily and monthly variable threshold methods (VTD and VTM, respectively), the daily and monthly fixed threshold methods (FTD and FTM, respectively), and the Standardized Streamflow Index (SSI). Our results clearly show that streamflow droughts derived from different approaches deviate from each other in their characteristics, which also vary in different climate regions across Europe. The daily threshold methods (FTD and VTD) identify 25 %-50 % more drought events than the monthly threshold methods (FTM and VTM), and accordingly the average drought duration is longer for the monthly than for the daily threshold methods. The FTD and FTM, in general, identify drought occurrences earlier in the year than the VTD and VTM. In addition, the droughts obtained with the VTM and FTM approaches also have higher drought deficit volumes (about 25 %-30 %) than the VTD and FTD approaches. Overall, the characteristics of SSI-1 drought are close to what is being identified by the VTM. The different outcome obtained with the drought identification methods illustrated with the historical analysis is also found in drought forecasting, as documented for the 2003 drought across Europe and for the Rhine River specifically. In the end, there is no unique hydrological drought definition (identification method) that fits all purposes, and hence developers of DEWS and end-users should clearly agree in the co-design phase upon a sharp definition of which type of streamflow drought is required to be forecasted for a specific application.</abstract><cop>GOTTINGEN</cop><pub>Copernicus Gesellschaft Mbh</pub><doi>10.5194/hess-25-3991-2021</doi><tpages>33</tpages><orcidid>https://orcid.org/0000-0003-4903-6445</orcidid><orcidid>https://orcid.org/0000-0001-9226-3921</orcidid><oa>free_for_read</oa></addata></record>
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subjects Co-design
Daily
Drought
Drought forecasting
Droughts
Early warning systems
Emergency communications systems
Forecasting
Frontotemporal dementia
Geology
Geosciences, Multidisciplinary
Hydrologic data
Hydrologic drought
Hydrologic models
Hydrology
Hydrometeorology
Identification
Identification methods
Management services
Mathematical models
Meteorological observations
Monthly
Physical Sciences
Precipitation
River networks
Rivers
Science & Technology
Stream discharge
Stream flow
Streamflow
Streamflow data
Streamflow forecasting
Time series
Warning systems
Water management
Water Resources
Weather forecasting
title Streamflow drought: implication of drought definitions and its application for drought forecasting
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