Metaheuristics for Sustainable Supply Chains
Laen...
Kuupäev
Autorid
Ajakirja pealkiri
Ajakirja ISSN
Köite pealkiri
Kirjastaja
Tartu Ülikool
Abstrakt
Optimizing models of sustainable supply chains is a high-dimensional multi-objective
optimization problem. The primary focus of this optimization is minimizing different
kinds of costs. Costs can generally be grouped into economic, environmental, and social
costs. Metaheuristics can be used for tackling this kind of task efficiently.
In this thesis, a realistic model of a supply chain is implemented. Different metaheuristics
are implemented or adapted for optimizing the above-mentioned model. The results
are then compared. It was found that genetic algorithms performed the best out of the
three compared stand-alone metaheuristics which also included simulated annealing
and particle swarm optimization. The results obtained by the genetic algorithms were
feasible solutions to the problem. Other stand-alone metaheuristics did not provide
solutions of sufficient quality. Two hybrid methods were also used. The first one
is a combination of the genetic algorithm and the particle swarm optimization. The
second one is a combination of the genetic algorithm and simulated annealing. The
simulated annealing hybrid did not improve on the initial solution provided by the genetic
algorithm in the simulated annealing phase. It was found that the particle swarm hybrid
improved the result of the genetic algorithm in the particle swarm phase. Based on the
experiments in this thesis the implementation of the hybrid genetic algorithm combined
with particle swarm optimization outperformed the implementation of the stand-alone
genetic algorithm.
Kirjeldus
Märksõnad
Metaheuristics, genetic algorithms, evolutionary techniques, particle swarm optimization, simulated annealing, optimization