From probabilistic seasonal streamflow forecasts to optimal reservoir operations: a stochastic programming approach
From probabilistic seasonal streamflow forecasts to optimal reservoir operations: a stochastic programming approach
We investigate the potential use of seasonal streamflow forecasts for the real-time operation of Angat reservoir (Philippines). The system is characterized by a strong intra- and inter-annual variability in the inflow process, which is further amplified by the El Niño Southern Oscillation (ENSO). We bank on the relationship between ENSO indices and local hydro-climatological processes to issue probabilistic streamflow forecasts (with a 3-month forecast horizon) and then integrate them within a Multistage Stochastic Programming (MSP) approach. The rolling-horizon, forecast-informed scheme is adopted for the period 1968–2014 and benchmarked against deterministic optimization solutions with perfect forecasts, climatology, and mean forecasts. We also compare its performance with the current operating rules, and the operating rules obtained by solving a Stochastic Dynamic Programming problem. Results show that the MSP approach can help reduce the severity of failures during prolonged droughts caused by ENSO.
El Niño Southern Oscillation, Multi-stage stochastic programming, Probabilistic seasonal streamflow forecasts, Water reservoir operation
1-8
Gokayaz, Gulten
db819df0-bfac-40c3-8df2-6abd82301e20
Ahipasaoglu, Selin D.
d69f1b80-5c05-4d50-82df-c13b87b02687
Galelli, Stefano
ed3c03d1-d1b2-4e51-8409-fa79e0c6a160
September 2019
Gokayaz, Gulten
db819df0-bfac-40c3-8df2-6abd82301e20
Ahipasaoglu, Selin D.
d69f1b80-5c05-4d50-82df-c13b87b02687
Galelli, Stefano
ed3c03d1-d1b2-4e51-8409-fa79e0c6a160
Gokayaz, Gulten, Ahipasaoglu, Selin D. and Galelli, Stefano
(2019)
From probabilistic seasonal streamflow forecasts to optimal reservoir operations: a stochastic programming approach.
1st IFAC Workshop on Control Methods for Water Resource Systems, CMWRS 2019, , Delft, Netherlands.
19 - 20 Sep 2019.
.
(doi:10.1016/j.ifacol.2019.11.001).
Record type:
Conference or Workshop Item
(Paper)
Abstract
We investigate the potential use of seasonal streamflow forecasts for the real-time operation of Angat reservoir (Philippines). The system is characterized by a strong intra- and inter-annual variability in the inflow process, which is further amplified by the El Niño Southern Oscillation (ENSO). We bank on the relationship between ENSO indices and local hydro-climatological processes to issue probabilistic streamflow forecasts (with a 3-month forecast horizon) and then integrate them within a Multistage Stochastic Programming (MSP) approach. The rolling-horizon, forecast-informed scheme is adopted for the period 1968–2014 and benchmarked against deterministic optimization solutions with perfect forecasts, climatology, and mean forecasts. We also compare its performance with the current operating rules, and the operating rules obtained by solving a Stochastic Dynamic Programming problem. Results show that the MSP approach can help reduce the severity of failures during prolonged droughts caused by ENSO.
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Published date: September 2019
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Publisher Copyright:
Copyright © 2019. The Authors. Published by Elsevier Ltd. All rights reserved.
Venue - Dates:
1st IFAC Workshop on Control Methods for Water Resource Systems, CMWRS 2019, , Delft, Netherlands, 2019-09-19 - 2019-09-20
Keywords:
El Niño Southern Oscillation, Multi-stage stochastic programming, Probabilistic seasonal streamflow forecasts, Water reservoir operation
Identifiers
Local EPrints ID: 504048
URI: http://eprints.soton.ac.uk/id/eprint/504048
PURE UUID: 616a2a87-c48b-48d6-b498-5c76795a5b4a
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Date deposited: 21 Aug 2025 16:14
Last modified: 22 Aug 2025 02:29
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Author:
Gulten Gokayaz
Author:
Stefano Galelli
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