2019 AIChE Annual Meeting
(621b) Mixed-Integer Multi-Objective Optimization through Multiparametric Programming
Authors
In this work we present an algorithm for the exact explicit derivation of the pareto front of mixed-integer linear MOO problems based on multi-parametric programming. The ε-constraint approach is used to transform the MOO problem into a single objective multi-parametric mixed-integer linear problem where the tunable suboptimality variables (resulting from the ε-constraints) are considered as parameters. The reformulated problem can be solved using already developed multi-parametric mixed-integer algorithms through the POP toolbox [9], supplying the decision makers with the explicit form of the pareto front in terms of the tunable variables ε. The proposed approach is illustrated through a set of numerical examples and its capabilities are demonstrated in a computational study.
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