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Published in: Water Resources Management 10/2016

01-08-2016

Predictive Temporal Data-Mining Approach for Evolving Knowledge Based Reservoir Operation Rules

Authors: S. Mohan, N. Ramsundram

Published in: Water Resources Management | Issue 10/2016

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Abstract

The persistent problem in reservoir operation is that the derived optimal releases fail to incorporate the decision maker or reservoir operators’ knowledge into reservoir operation models. The reservoir operators’ knowledge is specific to that particular reservoir and incorporating such an experienced knowledge will help to derive field reality based operation rules. The available historical reservoir operation databases are the representative samples of reservoir operators’ knowledge or experience. Thus, an attempt has been made that deals with the development of a methodological framework to recover or explore the historical reservoir operation database to derive the reservoir operators’ knowledge as operational rules. The developed methodological framework utilizes the strength and capability of recently developed predictive datamining algorithms to recover the knowledge from large historical database. Predictive data-mining algorithms such as a) classifier: Artificial Neural Network (ANN), and b) regression: Support Vector Regression (SVR) have been used for single reservoir operation data-mining (SROD) modelling framework to explore the temporal dependence between different variables of reservoir operation. The rules of operation or knowledge learned from the training database have been used as guiding rules for predicting the future reservoir operators’ decision on operating the reservoir for the given condition on the inflow, initial storage, and demand requirements. The developed SROD model was found to be efficient in exploring the hidden relationships that exist in a single reservoir system.

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Metadata
Title
Predictive Temporal Data-Mining Approach for Evolving Knowledge Based Reservoir Operation Rules
Authors
S. Mohan
N. Ramsundram
Publication date
01-08-2016
Publisher
Springer Netherlands
Published in
Water Resources Management / Issue 10/2016
Print ISSN: 0920-4741
Electronic ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-016-1351-5

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