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 scen...
Water resource system planning is complicated by uncertainty on the magnitude and direction of clima...
Abstract:Much progress has beenmade in the standardization of uncertainty analysis techniques for si...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
This paper proposes a novel optimization approach for multi-scenario multi-objective robust decision...
In recent years, a family of approaches has emerged for supporting decision-making on complex enviro...
Methods for decision support in the context of deep uncertainty have been gaining interest in the co...
Many-Objective Robust Decision Making (MORDM) is a prominent model-based approach for dealing with d...
Deep uncertainty in future climate, socio-economic and technological conditions poses a great challe...
Managing ecosystems with deeply uncertain threshold responses and multiple decision makers poses non...
The long-term planning of water and environmental systems presents major challenges to decision-make...
Decision-makers are often faced with multi-faceted problems that require making trade-offs between m...
This paper evaluates two established decision-making methods and analyzes their performance and suit...
This paper describes models and solution algorithms for solving robust multistage decision problems ...
This paper considers the problem of robust optimization, and presents the technique called Robust Op...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
Water resource system planning is complicated by uncertainty on the magnitude and direction of clima...
Abstract:Much progress has beenmade in the standardization of uncertainty analysis techniques for si...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
This paper proposes a novel optimization approach for multi-scenario multi-objective robust decision...
In recent years, a family of approaches has emerged for supporting decision-making on complex enviro...
Methods for decision support in the context of deep uncertainty have been gaining interest in the co...
Many-Objective Robust Decision Making (MORDM) is a prominent model-based approach for dealing with d...
Deep uncertainty in future climate, socio-economic and technological conditions poses a great challe...
Managing ecosystems with deeply uncertain threshold responses and multiple decision makers poses non...
The long-term planning of water and environmental systems presents major challenges to decision-make...
Decision-makers are often faced with multi-faceted problems that require making trade-offs between m...
This paper evaluates two established decision-making methods and analyzes their performance and suit...
This paper describes models and solution algorithms for solving robust multistage decision problems ...
This paper considers the problem of robust optimization, and presents the technique called Robust Op...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
Water resource system planning is complicated by uncertainty on the magnitude and direction of clima...
Abstract:Much progress has beenmade in the standardization of uncertainty analysis techniques for si...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...