dot
Detailansicht
Katalogkarte GBA
Katalogkarte ISBD
Suche präzisieren
Drucken
Download RIS
Hier klicken, um den Treffer aus der Auswahl zu entfernen
Titel Application of Chance-Constrained Stochastic Optimization for Mitigating Downstream Flood Risks
VerfasserIn Rodolfo Alvarado Montero, Dirk Schwanenberg, Fernando Mainardi Fan, Alberto Assis Dos Reis
Konferenz EGU General Assembly 2015
Medientyp Artikel
Sprache Englisch
Digitales Dokument PDF
Erschienen In: GRA - Volume 17 (2015)
Datensatznummer 250112364
Publikation (Nr.) Volltext-Dokument vorhandenEGU/EGU2015-12517.pdf
 
Zusammenfassung
Ensemble forecasting is a growing field in the operation of multi-purpose reservoirs and mitigation of flood risks in downstream river reaches. The assessment of uncertainty over the prediction horizon provides added value to the operational flow forecasting system. It provides probabilistic inflow forecasts which, combined with decision support systems, determine optimum release strategies. One way of doing this is through scenario tree-based stochastic optimization. The representation of the ensemble forecasted is converted into a scenario-tree and optimized based on an adaptive multi-stage stochastic optimization. Typical inequality constraints applied over this problem require a full compliance of each ensemble’s trajectory and neglect the uncertainty distribution. We propose the application of chance constrained optimization to overcome such problem, allowing a more flexible approach that does not depend on the number of ensembles but rather on the distribution of uncertainty. This technique is used to compute release trajectories of the reservoirs over a finite forecast horizon of up to 14 days by integrating a nonlinear gradient-based optimization algorithm and a model of the water system. The latter consists of simulation components for pool routing and kinematic or diffusive wave models for the downstream river reaches including a simulation mode and a reverse adjoint mode for the efficient computation of first-order derivatives. This framework has been implemented for a reservoir system operated by the Brazilian Companhia Energética de Minas Gerais S.A. (CEMIG). We present results obtained for the operation of the Tres Marias reservoir in the Brazilian state of Minas Gerais with a catchment area of near 55,000 km2. The focus of our discussion is the impact of chance constrains on the optimization procedure and its flexibility for extending the number of ensemble forecasts thus providing a more accurate representation of uncertainty. We compare the performance of the above mentioned optimization techniques and conclude over the usefulness of implementing chance-constrained optimization in operational flow forecasting systems.