Matches in SemOpenAlex for { <https://semopenalex.org/work/W3081031779> ?p ?o ?g. }
- W3081031779 endingPage "104802" @default.
- W3081031779 startingPage "104802" @default.
- W3081031779 abstract "A multi-reservoir simulation-optimization model GRAPS, Generalized Multi-Reservoir Analyses using Probabilistic Streamflow Forecasts, is developed in which reservoirs and users across the basin are represented using a node-link representation. Unlike existing reservoir modeling software, GRAPS can handle probabilistic streamflow forecasts represented as ensembles for performing multi-reservoir prognostic water allocation and evaluate the reliability of forecast-based allocation with observed streamflow. GRAPS is applied to four linked reservoirs in the Jaguaribe Metropolitan Hydro-System (JMH) in Ceará, North East Brazil. Results from the historical simulation and the zero-inflow policy over the JMH system demonstrate the model's capability to support monthly water allocation and reproduce the observed monthly releases and storages. Additional analyses using streamflow forecast ensembles illustrate GRAP's abilities in developing storage-reliability curves under inflow-forecast uncertainty. Our analyses show that GRAPS is versatile and can be applied for 1) short-term operating policy studies, 2) long-term basin-wide planning evaluations, and 3) climate-information based application studies." @default.
- W3081031779 created "2020-09-01" @default.
- W3081031779 creator A5011120346 @default.
- W3081031779 creator A5037921148 @default.
- W3081031779 creator A5044194526 @default.
- W3081031779 creator A5059287497 @default.
- W3081031779 creator A5064967314 @default.
- W3081031779 creator A5083924263 @default.
- W3081031779 date "2020-11-01" @default.
- W3081031779 modified "2023-10-16" @default.
- W3081031779 title "GRAPS: Generalized Multi-Reservoir Analyses using probabilistic streamflow forecasts" @default.
- W3081031779 cites W1505994900 @default.
- W3081031779 cites W1547110895 @default.
- W3081031779 cites W1575073965 @default.
- W3081031779 cites W1644023502 @default.
- W3081031779 cites W1679265603 @default.
- W3081031779 cites W1824075050 @default.
- W3081031779 cites W1963574696 @default.
- W3081031779 cites W1965258104 @default.
- W3081031779 cites W1983650980 @default.
- W3081031779 cites W1989181386 @default.
- W3081031779 cites W1990568972 @default.
- W3081031779 cites W1992862998 @default.
- W3081031779 cites W1995973108 @default.
- W3081031779 cites W1996509149 @default.
- W3081031779 cites W1997501457 @default.
- W3081031779 cites W2016733717 @default.
- W3081031779 cites W2020801034 @default.
- W3081031779 cites W2021994706 @default.
- W3081031779 cites W2028637411 @default.
- W3081031779 cites W2028740558 @default.
- W3081031779 cites W2062544231 @default.
- W3081031779 cites W2065852965 @default.
- W3081031779 cites W2073452856 @default.
- W3081031779 cites W2082411706 @default.
- W3081031779 cites W2090966170 @default.
- W3081031779 cites W2093233187 @default.
- W3081031779 cites W2117823451 @default.
- W3081031779 cites W2120448460 @default.
- W3081031779 cites W2125276403 @default.
- W3081031779 cites W2136558239 @default.
- W3081031779 cites W2138164955 @default.
- W3081031779 cites W2153330426 @default.
- W3081031779 cites W2165955765 @default.
- W3081031779 cites W2166015849 @default.
- W3081031779 cites W2797409842 @default.
- W3081031779 cites W629204435 @default.
- W3081031779 doi "https://doi.org/10.1016/j.envsoft.2020.104802" @default.
- W3081031779 hasPublicationYear "2020" @default.
- W3081031779 type Work @default.
- W3081031779 sameAs 3081031779 @default.
- W3081031779 citedByCount "3" @default.
- W3081031779 countsByYear W30810317792021 @default.
- W3081031779 countsByYear W30810317792022 @default.
- W3081031779 countsByYear W30810317792023 @default.
- W3081031779 crossrefType "journal-article" @default.
- W3081031779 hasAuthorship W3081031779A5011120346 @default.
- W3081031779 hasAuthorship W3081031779A5037921148 @default.
- W3081031779 hasAuthorship W3081031779A5044194526 @default.
- W3081031779 hasAuthorship W3081031779A5059287497 @default.
- W3081031779 hasAuthorship W3081031779A5064967314 @default.
- W3081031779 hasAuthorship W3081031779A5083924263 @default.
- W3081031779 hasBestOaLocation W30810317791 @default.
- W3081031779 hasConcept C109007969 @default.
- W3081031779 hasConcept C121332964 @default.
- W3081031779 hasConcept C126645576 @default.
- W3081031779 hasConcept C127313418 @default.
- W3081031779 hasConcept C127413603 @default.
- W3081031779 hasConcept C151730666 @default.
- W3081031779 hasConcept C153294291 @default.
- W3081031779 hasConcept C154945302 @default.
- W3081031779 hasConcept C163258240 @default.
- W3081031779 hasConcept C183195422 @default.
- W3081031779 hasConcept C187320778 @default.
- W3081031779 hasConcept C205649164 @default.
- W3081031779 hasConcept C2776132308 @default.
- W3081031779 hasConcept C39432304 @default.
- W3081031779 hasConcept C41008148 @default.
- W3081031779 hasConcept C43214815 @default.
- W3081031779 hasConcept C49204034 @default.
- W3081031779 hasConcept C49937458 @default.
- W3081031779 hasConcept C53739315 @default.
- W3081031779 hasConcept C58640448 @default.
- W3081031779 hasConcept C62520636 @default.
- W3081031779 hasConcept C62611344 @default.
- W3081031779 hasConcept C66938386 @default.
- W3081031779 hasConcept C76886044 @default.
- W3081031779 hasConceptScore W3081031779C109007969 @default.
- W3081031779 hasConceptScore W3081031779C121332964 @default.
- W3081031779 hasConceptScore W3081031779C126645576 @default.
- W3081031779 hasConceptScore W3081031779C127313418 @default.
- W3081031779 hasConceptScore W3081031779C127413603 @default.
- W3081031779 hasConceptScore W3081031779C151730666 @default.
- W3081031779 hasConceptScore W3081031779C153294291 @default.
- W3081031779 hasConceptScore W3081031779C154945302 @default.
- W3081031779 hasConceptScore W3081031779C163258240 @default.
- W3081031779 hasConceptScore W3081031779C183195422 @default.
- W3081031779 hasConceptScore W3081031779C187320778 @default.