Evolutionary multi-objective worst-case robust optimisation

Many real-world problems are subject to uncertainty, and often solutions should not only be good, but also robust against environmental disturbances or deviations from the decision variables. While most papers dealing with robustness aim at finding solutions with a high expected performance given a...

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Main Author: Lu, Ke
Published: University of Warwick 2017
Subjects:
658
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.759650
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spelling ndltd-bl.uk-oai-ethos.bl.uk-7596502019-03-05T15:57:37ZEvolutionary multi-objective worst-case robust optimisationLu, Ke2017Many real-world problems are subject to uncertainty, and often solutions should not only be good, but also robust against environmental disturbances or deviations from the decision variables. While most papers dealing with robustness aim at finding solutions with a high expected performance given a distribution of the uncertainty, we examine the trade-off between the allowed deviations from the decision variables (tolerance level), and the worst case performance given the allowed deviations. In this research work, we suggest two multi-objective evolutionary algorithms to compute the available trade-offs between allowed tolerance level and worst-case quality of the solutions, and the tolerance level is defined as robustness which could also be the variations from parameters. Both algorithms are 2-level nested algorithms. While the first algorithm is point-based in the sense that the lower level computes a point of worst case for each upper level solution, the second algorithm is envelope-based, in the sense that the lower level computes a whole trade-off curve between worst-case fitness and tolerance level for each upper level solution. Our problem can be considered as a special case of bi-level optimisation, which is computationally expensive, because each upper level solution is evaluated by calling a lower level optimiser. We propose and compare several strategies to improve the efficiency of both algorithms. Later, we also suggest surrogate-assisted algorithms to accelerate both algorithms.658QA MathematicsUniversity of Warwickhttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.759650http://wrap.warwick.ac.uk/109864/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 658
QA Mathematics
spellingShingle 658
QA Mathematics
Lu, Ke
Evolutionary multi-objective worst-case robust optimisation
description Many real-world problems are subject to uncertainty, and often solutions should not only be good, but also robust against environmental disturbances or deviations from the decision variables. While most papers dealing with robustness aim at finding solutions with a high expected performance given a distribution of the uncertainty, we examine the trade-off between the allowed deviations from the decision variables (tolerance level), and the worst case performance given the allowed deviations. In this research work, we suggest two multi-objective evolutionary algorithms to compute the available trade-offs between allowed tolerance level and worst-case quality of the solutions, and the tolerance level is defined as robustness which could also be the variations from parameters. Both algorithms are 2-level nested algorithms. While the first algorithm is point-based in the sense that the lower level computes a point of worst case for each upper level solution, the second algorithm is envelope-based, in the sense that the lower level computes a whole trade-off curve between worst-case fitness and tolerance level for each upper level solution. Our problem can be considered as a special case of bi-level optimisation, which is computationally expensive, because each upper level solution is evaluated by calling a lower level optimiser. We propose and compare several strategies to improve the efficiency of both algorithms. Later, we also suggest surrogate-assisted algorithms to accelerate both algorithms.
author Lu, Ke
author_facet Lu, Ke
author_sort Lu, Ke
title Evolutionary multi-objective worst-case robust optimisation
title_short Evolutionary multi-objective worst-case robust optimisation
title_full Evolutionary multi-objective worst-case robust optimisation
title_fullStr Evolutionary multi-objective worst-case robust optimisation
title_full_unstemmed Evolutionary multi-objective worst-case robust optimisation
title_sort evolutionary multi-objective worst-case robust optimisation
publisher University of Warwick
publishDate 2017
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.759650
work_keys_str_mv AT luke evolutionarymultiobjectiveworstcaserobustoptimisation
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