Adaptive stochastic management of the storage function for a large open reservoir using an artificial intelligence method

Author:

Kozel Tomas1,Stary Milos1

Affiliation:

1. Brno University of Technology , Faculty of Civil Engineering, Institute of Landscape Water Management , Veveří 331/95, Brno , Czech Republic .

Abstract

Abstract The design and evaluation of algorithms for adaptive stochastic control of reservoir function of the water reservoir using artificial intelligence methods (learning fuzzy model and neural networks) are described in this article. This procedure was tested on an artificial reservoir. Reservoir parameters have been designed to cause critical disturbances during the control process, and therefore the influences of control algorithms can be demonstrated in the course of controlled outflow of water from the reservoir. The results of the stochastic adaptive models were compared. Further, stochastic model results were compared with a resultant course of management obtained using the method of classical optimisation (differential evolution), which used stochastic forecast data from real series (100% forecast). Finally, the results of the dispatcher graph and adaptive stochastic control were compared. Achieved results of adaptive stochastic management provide inspiration for continuing research in the field.

Publisher

Walter de Gruyter GmbH

Subject

Fluid Flow and Transfer Processes,Mechanical Engineering,Water Science and Technology

Reference22 articles.

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4. Broža, V., 1981. Methodological instructions for water management solutions of reservoirs (Metodické návody k vodohospodářským řešením nádrží). ČVUT v Praze, Praha.

5. Caudill, M., Butler, C., 1992. Understanding Neural Networks: Computer Explorations. Vols. 1 and 2. MIT Press, Cambridge, MA.

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