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A stochastic optimization framework for the restoration of an over-exploited aquifer

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Autore
Mylopoulos N., Sidiropoulos P.
Data
2016
Language
en
DOI
10.1080/02626667.2014.993646
Soggetto
Aquifers
Groundwater
Groundwater flow
Hydraulic conductivity
Hydrogeology
Lakes
Optimization
Restoration
Stochastic models
Stochastic systems
Surface water resources
Surface waters
Sustainable development
Uncertainty analysis
Water resources
Over-exploited aquifers
Parameter uncertainty
Spatially distributed parameters
Stochastic optimization approach
Stochastic optimization problems
Stochastic optimization procedures
Stochastic optimizations
Stochastic simulations
Groundwater resources
aquifer
environmental restoration
groundwater flow
hydraulic conductivity
optimization
stochasticity
sustainability
Greece
Karla Lake
Magnesia
Thessaly
Taylor and Francis Ltd.
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Abstract
This study investigates the impact of hydraulic conductivity uncertainty on the sustainable management of the aquifer of Lake Karla, Greece, using the stochastic optimization approach. The lack of surface water resources in combination with the sharp increase in irrigation needs in the basin over the last 30 years have led to an unprecedented degradation of the aquifer. In addition, the lack of data regarding hydraulic conductivity in a heterogeneous aquifer leads to hydrogeologic uncertainty. This uncertainty has to be taken into consideration when developing the optimization procedure in order to achieve the aquifer’s sustainable management. Multiple Monte Carlo realizations of this spatially-distributed parameter are generated and groundwater flow is simulated for each one of them. The main goal of the sustainable management of the ‘depleted’ aquifer of Lake Karla is two-fold: to determine the optimum volume of renewable groundwater that can be extracted, while, at the same time, restoring its water table to a historic high level. A stochastic optimization problem is therefore formulated, based on the application of the optimization method for each of the aquifer’s multiple stochastic realizations in a future period. In order to carry out this stochastic optimization procedure, a modelling system consisting of a series of interlinked models was developed. The results show that the proposed stochastic optimization framework can be a very useful tool for estimating the impact of hydraulic conductivity uncertainty on the management strategies of a depleted aquifer restoration. They also prove that the optimization process is affected more by hydraulic conductivity uncertainty than the simulation process. © 2016 IAHS.
URI
http://hdl.handle.net/11615/76852
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  • Δημοσιεύσεις σε περιοδικά, συνέδρια, κεφάλαια βιβλίων κλπ. [19735]

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