Search Results - "Kollat, J.B"
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Comparing state-of-the-art evolutionary multi-objective algorithms for long-term groundwater monitoring design
Published in Advances in water resources (01-06-2006)“…This study compares the performances of four state-of-the-art evolutionary multi-objective optimization (EMO) algorithms: the Non-Dominated Sorted Genetic…”
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A computational scaling analysis of multiobjective evolutionary algorithms in long-term groundwater monitoring applications
Published in Advances in water resources (01-03-2007)“…This study contributes a detailed assessment of how increasing problem sizes (measured in terms of the number of decision variables being considered) impacts…”
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new epsilon-dominance hierarchical Bayesian optimization algorithm for large multiobjective monitoring network design problems
Published in Advances in water resources (01-05-2008)“…This study focuses on the development of a next generation multiobjective evolutionary algorithm (MOEA) that can learn and exploit complex interdependencies…”
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Parallelization strategies for rapid and robust evolutionary multiobjective optimization in water resources applications
Published in Advances in water resources (01-03-2007)“…This study uses a formal metrics-based framework to demonstrate the Master–Slave (MS) and the Multiple-Population (MP) parallelization schemes for the…”
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Evolutionary multiobjective optimization in water resources: The past, present, and future
Published in Advances in water resources (01-01-2013)“…► Evaluation of multi-objective evolutionary algorithms for water resources. ► Contributes a new comprehensive diagnostic framework for MOEA evaluation. ►…”
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Save now, pay later? Multi-period many-objective groundwater monitoring design given systematic model errors and uncertainty
Published in Advances in water resources (2012)“…► Demonstrates Adaptive Strategies for Sampling in Space and Time (ASSIST) framework. ► ASSIST is capable of overcoming severe systematic modeling errors. ►…”
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