posted on 2024-07-13, 02:28authored byJames Montgomery, Marcus Randall, Andrew Lewis
Differential evolution (DE) has been traditionally applied to solving benchmark continuous optimisation functions. To enable it to solve a combinatorially oriented design problem, such as the construction of effective radio frequency identification antennas, requires the development of a suitable encoding of the discrete decision variables in a continuous space. This study introduces an encoding that allows the algorithm to construct antennas of varying complexity and length. The DE algorithm developed is a multiobjective approach that maximises antenna efficiency and minimises resonant frequency. Its results are compared with those generated by a family of ant colony optimisation (ACO) metaheuristics that have formed the standard in this area. Results indicate that DE can work well on this problem andthat the proposed solution encoding is suitable. On small antenna grid sizes (hence, smaller solution spaces) DE performs well in comparison to ACO, while as the solution space increases its relative performance decreases. However, as the ACO employs a local search operator that the DE currently does not, there is scope for further improvement to the DE approach.
Genetic and Evolutionary Computation Conference (GECCO 2011), a recombination of the 20th International Conference on Genetic Algorithms (ICGA) and the 16th Annual Genetic Programming Conference (GP), Dublin, Ireland, 12-16 July 2011 / Natalio Krasnogor (ed.)
Conference name
Genetic and Evolutionary Computation Conference GECCO 2011, a recombination of the 20th International Conference on Genetic Algorithms ICGA and the 16th Annual Genetic Programming Conference GP, Dublin, Ireland, 12-16 July 2011 / Natalio Krasnogor ed.