Multi-strategy Differential Evolution

Apr 1, 2018·
Anil Yaman
,
Giovanni Iacca
Matt Coler
Matt Coler
,
George Fletcher
,
Mykola Pechenizkiy
· 0 min read
Abstract
We propose the Multi-strategy Differential Evolution (MsDE) algorithm to construct and maintain a self-adaptive ensemble of search strategies while solving an optimization problem. The ensemble of strategies is represented as agents that interact with the candidate solutions to improve their fitness. In the proposed algorithm, the performance of each agent is measured so that successful strategies are promoted within the ensemble. We propose two performance measures, and show their effectiveness in selecting successful strategies. We then present three population adaptation mechanisms, based on sampling, clone-best and clone-multiple adaptation schemes. The MsDE with different performance measures and population adaptation schemes is tested on the CEC2013 benchmark functions and compared with basic DE and with Self-Adaptive DE (SaDE).
Type
Publication
Applications of Evolutionary Computation: 21st International Conference, EvoApplications 2018