nerc.ac.uk

Multi-population Evolutionary and Swarm Intelligence Dynamic Optimization Algorithms: A Survey

Yazdani, Delaram; Nouhi, Behnaz; Yazdani, Donya; Talatahari, Siamak; Yazdani, Danial; Gandomi, Amir H.. 2024 Multi-population Evolutionary and Swarm Intelligence Dynamic Optimization Algorithms: A Survey. In: Kulkarni, Anand J.; Gandomi, Amir H., (eds.) Handbook of Formal Optimization. Singapore, Springer Nature Singapore, 235-252, 18pp.

Full text not available from this repository. (Request a copy)

Abstract/Summary

Multi-population evolutionary and swarm intelligence dynamic optimization algorithms are the most flexible and effective methods for solving dynamic optimization problems. In a dynamic optimization problem, the search space is affected by environmental changes over time. In multi-population evolutionary and swarm intelligence dynamic optimization algorithms, the number of subpopulations is a parameter determined either by the user or adaptively. The use of multiple sub-populations enables these methods to efficiently track the moving optimum. These methods are capable of gathering historical knowledge about the search space, which is used to effectively react to changes and provide a warmed-up start for the algorithm in new environments. In this chapter, the components of multi-population algorithms are classified to the ones that are used for subpopulation formation, management of computational resources, transmission of information from previous environments, and handling diversity loss. Based on this classification, researchers can have a better understanding of how these components make evolutionary and swarm intelligence algorithms capable of addressing the challenges of dynamic optimization problems.

Item Type: Publication - Book Section
Digital Object Identifier (DOI): 10.1007/978-981-97-3820-5_5
ISBN: 978-981-97-3820-5
Additional Keywords: Dynamic optimization · Evolutionary dynamic optimization algorithms; Multi-population; Swarm intelligence dynamic optimization algorithms
Date made live: 20 Dec 2024 09:51 +0 (UTC)
URI: https://nora.nerc.ac.uk/id/eprint/538584

Actions (login required)

View Item View Item

Document Downloads

Downloads for past 30 days

Downloads per month over past year

More statistics for this item...