Memory-based multi-population genetic learning for dynamic shortest path problems
Date
2019-06
Advisors
Journal Title
Journal ISSN
ISSN
Volume Title
Publisher
IEEE
Type
Conference
Peer reviewed
Yes
Abstract
This paper proposes a general algorithm framework for solving dynamic sequence optimization problems (DSOPs). The framework adapts a novel genetic learning (GL) algorithm to dynamic environments via a clustering-based multi-population strategy with a memory scheme, namely, multi-population GL (MPGL). The framework is instantiated for a 3D dynamic shortest path problem, which is developed in this paper. Experimental comparison studies show that MPGL is able to quickly adapt to new environments and it outperforms several ant colony optimization variants.
Description
The file attached to this record is the author's final peer reviewed version.
Keywords
Dynamic shortest path, Dynamic sequence optimization, Genetic learning, Ant colony optimization, Clustering-based multi-population
Citation
Diao, Y., Li, C., Zeng, S., Mavrovouniotis, M. and Yang, S. (2019) Memory-based multi-population genetic learning for dynamic shortest path problems. Proceedings of the 2019 IEEE Congress on Evolutionary Computation, Wellington, New Zealand, June 2019.