Publication | Open Access
Sampling/stochastic dynamic programming for optimal operation of multi-purpose reservoirs using artificial neural network-based ensemble streamflow predictions
35
Citations
32
References
2013
Year
Optimization ModelsEngineeringSampling/stochastic Dynamic ProgrammingReservoir EngineeringWater Quality ForecastingData ScienceOptimal OperationSystems EngineeringHydrogeologySsdp/hist ModelEnsemble Streamflow PredictionsForecastingWater DistributionReservoir SimulationHydrologyReservoir ModelingWater ResourcesEnvironmental EngineeringCivil EngineeringMulti-purpose ReservoirsReservoir ManagementPetroleum Engineering
Due to limited water resources and the increasing demand for agricultural products, it is significantly important to operate surface water reservoirs optimally, especially those located in arid and semi-arid regions. This paper investigates uncertainty-based optimal operation of a multi-purpose water reservoir system by using four optimization models. The models include dynamic programming (DP), stochastic DP (SDP) with inflow classification (SDP/Class), SDP with inflow scenarios (SDP/Scenario), and sampling SDP (SSDP) with historical scenarios (SSDP/Hist). The performance of the models was tested in Zayandeh-Rud Reservoir system in Iran by evaluating how their release policies perform in a simulation phase. While the SDP approaches were better than the DP approach, the SSDP/Hist model outperformed the other SDP models. We also assessed the effect of ensemble streamflow predictions (ESPs) that were generated by artificial neural networks on the performance of SSDP/Hist. Application of the models to the Zayandeh-Rud case study demonstrated that SSDP in combination with ESPs and the K-means technique, which was used to cluster a large number of ESPs, could be a promising approach for real-time reservoir operation.
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