Rigorous analysis of Pareto fronts in sustainability studies based on bilevel optimization: Application to the redesign of the UK electricity mix


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Date

2017-10-15

Publication Type

Journal Article

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no

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Abstract

Multi-objective optimization (MOO) is at present widely used in the design and planning of sustainable systems where economic, environmental and social aspects must be considered simultaneously. The solution of a multi-objective model is given by a set of Pareto optimal points that feature the property that they cannot be improved in one objective without necessarily worsening at least another one. Identifying the best Pareto solution from this set is challenging, particularly when many objectives and decision-makers are involved in the analysis. In this work, we propose the first rigorous method (to the authors’ knowledge) based on bilevel optimization to explore Pareto points that allows to: (i) identify in a systematic manner non-dominated solutions which are particularly appealing for decision-makers; (ii) quantify the distance between any (suboptimal) feasible point of a MOO model and its Pareto front (i.e. project suboptimal points onto the Pareto frontier); and (iii) establish improvement targets for suboptimal solutions of a MOO (through projection onto the Pareto front) that if attained would make them optimal. Overall, our method allows analysing Pareto fronts and selecting a final Pareto point to be implemented in practice without the need to define subjective weights in an explicit manner. We illustrate the capabilities of our approach through its application to the optimization of the UK electricity mix according to several economic, environmental and social indicators.

Publication status

published

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Volume

164

Pages / Article No.

1602 - 1613

Publisher

Elsevier

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Edition / version

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Subject

Multi-objective optimization; Bilevel optimization; Sustainable development; Sustainability targets; Electricity generation

Organisational unit

09655 - Guillén Gosálbez, Gonzalo / Guillén Gosálbez, Gonzalo check_circle

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