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Multi-scenario multi-objective robust optimization under deep uncertainty: A posteriori approach

Babooshka Shavazipour, Jan Kwakkel, Kaisa Miettinen

2021Environmental Modelling & Software49 citationsDOIOpen Access PDF

Abstract

This paper proposes a novel optimization approach for multi-scenario multi-objective robust decision making, as well as an alternative way for scenario discovery and identifying vulnerable scenarios even before any solution generation. To demonstrate and test the novel approach, we use the classic shallow lake problem. We compare the results obtained with the novel approach to those obtained with previously used approaches. We show that the novel approach guarantees the feasibility and robust efficiency of the produced solutions under all selected scenarios, while decreasing computation cost, addresses the scenario-dependency issues, and enables the decision-makers to explore the trade-off between optimality/feasibility in any selected scenario and robustness across a broader range of scenarios. We also find that the lake problem is ill-suited for reflecting trade-offs in robust performance over the set of scenarios and Pareto optimality in any specific scenario, highlighting the need for novel benchmark problems to properly evaluate novel approaches.

Topics & Concepts

Robustness (evolution)Computer scienceRobust optimizationBenchmark (surveying)Multi-objective optimizationPareto principleMathematical optimizationComputationA priori and a posterioriDependency (UML)Set (abstract data type)Range (aeronautics)ExploitMachine learningArtificial intelligenceEngineeringAlgorithmMathematicsChemistryGeographyPhilosophyGeneAerospace engineeringGeodesyComputer securityEpistemologyBiochemistryProgramming languageWater resources management and optimizationRisk and Portfolio OptimizationReservoir Engineering and Simulation Methods
Multi-scenario multi-objective robust optimization under deep uncertainty: A posteriori approach | Litcius