Key Issues in Real-World Applications of Many-Objective Optimisation and Decision Analysis
Deb, K., Fleming, P., Jin, Y., Miettinen, K., & Reed, P. M. (2023). Key Issues in Real-World Applications of Many-Objective Optimisation and Decision Analysis. In D. Brockhoff, M. Emmerich, B. Naujoks, & R. Purshouse (Eds.), Many-Criteria Optimization and Decision Analysis : State-of-the-Art, Present Challenges, and Future Perspective (pp. 29-57). Springer. Natural Computing Series. https://doi.org/10.1007/978-3-031-25263-1_2
Published in
Natural Computing SeriesDate
2023Discipline
Hyvinvoinnin tutkimuksen yhteisöMultiobjective Optimization GroupLaskennallinen tiedePäätöksen teko monitavoitteisestiSchool of WellbeingMultiobjective Optimization GroupComputational ScienceDecision analytics utilizing causal models and multiobjective optimizationAccess restrictions
Embargoed until: 2025-07-30Request copy from author
Copyright
© 2023 Springer Nature Switzerland AG
The insights and benefits to be realised through the optimisation of multiple independent, but conflicting objectives are well recognised by practitioners seeking effective and robust solutions to real-world application problems. Key issues encountered by users of many-objective optimisation (>3 objectives) in a real-world environment are discussed here. These include how to formulate the problem and develop a suitable decision-making framework, together with considering different ways in which decision-makers may be involved. Ways to manage the reduction of computational load and how to reduce the sensitivity of candidate solutions as a result of the inevitable uncertainties that arise in real-world applications are addressed. Other state-of-the-art topics such as the use of machine learning and the management of complex issues arising from multidisciplinary applications are also examined. It is recognised that optimisation in real-world applications is commonly undertaken by users and decision-makers who need not have specialist expertise in many-objective optimisation decision analysis methods. Advice is offered to experts and non-experts alike.
...
Publisher
SpringerParent publication ISBN
978-3-031-25262-4Is part of publication
Many-Criteria Optimization and Decision Analysis : State-of-the-Art, Present Challenges, and Future PerspectiveISSN Search the Publication Forum
1619-7127Keywords
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/184088062
Metadata
Show full item recordCollections
Additional information about funding
This exercise was undertaken with financial support from EPSRC, United Kingdom, and Jaguar Land Rover as part of the jointly funded Programme for Simulation Innovation (PSi) (EP/L025760/1).License
Related items
Showing items with similar title or keywords.
-
A Systematic Way of Structuring Real-World Multiobjective Optimization Problems
Afsar, Bekir; Silvennoinen, Johanna; Miettinen, Kaisa (Springer Nature Switzerland, 2023)In recent decades, the benefits of applying multiobjective optimization (MOO) methods in real-world applications have rapidly increased. The MOO literature mostly focuses on problem-solving, typically assuming the problem ... -
Visualisation for Decision Support in Many-Objective Optimisation : State-of-the-art, Guidance and Future Directions
Hakanen, Jussi; Gold, David; Miettinen, Kaisa; Reed, Patrick M. (Springer, 2023)This chapter describes the state-of-the-art in visualisation for decision support processes in problems with many objectives. Visualisation is an important part of a constructive decision making process for examining real ... -
Many-Objective Quality Measures
Afsar, Bekir; Fieldsend, Jonathan E.; Guerreiro, Andreia P.; Miettinen, Kaisa; Rojas Gonzalez, Sebastian; Sato, Hiroyuki (Springer, 2023)A key concern when undertaking any form of optimisation is how to characterise the quality of the putative solution returned. In many-objective optimisation an added complication is that such measures are on a set of ... -
A Surrogate-assisted Reference Vector Guided Evolutionary Algorithm for Computationally Expensive Many-objective Optimization
Chugh, Tinkle; Jin, Yaochu; Miettinen, Kaisa; Hakanen, Jussi; Sindhya, Karthik (Institute of Electrical and Electronics Engineers, 2018)We propose a surrogate-assisted reference vector guided evolutionary algorithm (EA) for computationally expensive optimization problems with more than three objectives. The proposed algorithm is based on a recently developed ... -
A feature rich distance-based many-objective visualisable test problem generator
Fieldsend, Jonathan; Chugh, Tinkle; Allmendinger, Richard; Miettinen, Kaisa (ACM, 2019)In optimiser analysis and design it is informative to visualise how a search point/population moves through the design space over time. Visualisable distance-based many-objective optimisation problems have been developed ...