1. bookVolume 70 (2022): Edizione 2 (June 2022)
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Rivista
eISSN
1338-4333
Prima pubblicazione
28 Mar 2009
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4 volte all'anno
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Inglese
access type Accesso libero

Adaptive stochastic management of the storage function for a large, open reservoir using learned fuzzy models

Pubblicato online: 19 May 2022
Volume & Edizione: Volume 70 (2022) - Edizione 2 (June 2022)
Pagine: 213 - 221
Ricevuto: 23 Jul 2021
Accettato: 10 Feb 2022
Dettagli della rivista
License
Formato
Rivista
eISSN
1338-4333
Prima pubblicazione
28 Mar 2009
Frequenza di pubblicazione
4 volte all'anno
Lingue
Inglese
Abstract

The design and evaluation of algorithms for adaptive stochastic control of the reservoir function of a water reservoir using an artificial intelligence method (learned fuzzy model) are described in this article. This procedure was tested on the Vranov reservoir (Czech Republic). Stochastic model results were compared with the results of deterministic management obtained using the method of classical optimisation (differential evolution). The models used for controlling of reservoir outflow used single quantile from flow duration curve values or combinations of quantile values from flow duration curve for determination of controlled outflow. Both methods were also tested on forecast data from real series (100% forecast). Finally, the results of the dispatcher graph, adaptive deterministic control and adaptive stochastic control were compared. Achieved results of adaptive stochastic management were better than results provided by dispatcher graph and provide inspiration for continuing research in the field.

Keywords

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