PopDMMO: A general framework of population-based stochastic search algorithms for dynamic multimodal optimization

Date

2021-11-12

Advisors

Journal Title

Journal ISSN

ISSN

2210-6502

Volume Title

Publisher

Elsevier

Type

Article

Peer reviewed

Yes

Abstract

Dynamic multimodal optimization problems (DMMOPs) are a class of problems consisting of two characteristics, i.e., dynamic and multimodal natures. The former characteristic reveals that the properties of DMMOPs change over time, which is derived from dynamic optimization problems (DOPs). The latter one indicates that there exist multiple global or acceptable local optima, which comes from the multimodal optimization problems (MMOPs). Although there has been much attention to both DOPs and MMOPs in the field of meta-heuristics, there is little work devoting to the connection between the dynamic and multimodal natures in DMMOPs. To solve DMMOPs, the strategies dealing with dynamic and multimodal natures in the algorithms should cooperate with each other. Before looking deeply into the connections between two natures, there is necessary to measure the performances of the methods dealing with two natures in DMMOPs. In this paper, first, considering the dynamic and multimodal natures of DMMOPs, we design a set of benchmark problems to simulate various dynamic and multimodal environments. Then, we propose the optimization framework called PopDMMO containing several popular algorithms and methods to test and compare the performances of these algorithms, which gives a general view of solving DMMOPs.

Description

The file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI link.

Keywords

Dynamic multimodal optimization, dynamic optimization, multimodal optimization, optimization framework

Citation

Lin. X., Luo, W., Xu, P., Qiao, Y. and Yang, S. (2021) PopDMMO: A general framework of population-based stochastic search algorithms for dynamic multimodal optimization. Swarm and Evolutionary Computation, 101011.

Rights

Research Institute