Repository logoCyprus University of Technology
Log In(current)
Ελληνικά
English
  1. Home
  2. Cyprus University of Technology (Research Output)
  3. Άρθρα/Articles
  4. Direct Memory Schemes for Population-Based Incremental Learning in Cyclically Changing Environments
  • Details

Direct Memory Schemes for Population-Based Incremental Learning in Cyclically Changing Environments

Date Issued
January 1, 2016
Author(s)
Mavrovouniotis, Michalis  
Yang, Shengxiang  
DOI
10.1007/978-3-319-31153-1_16
Abstract
The population-based incremental learning (PBIL) algorithm is a combination of evolutionary optimization and competitive learning. The integration of PBIL with associative memory schemes has been successfully applied to solve dynamic optimization problems (DOPs). The best sample together with its probability vector are stored and reused to generate the samples when an environmental change occurs. It is straight forward that these methods are suitable for dynamic environments that are guaranteed to reappear, known as cyclic DOPs. In this paper, direct memory schemes are integrated to the PBIL where only the sample is stored and reused directly to the current samples. Based on a series of cyclic dynamic test problems, experiments are conducted to compare PBILs with the two types of memory schemes. The experimental results show that one specific direct memory scheme, where memory-based immigrants are generated, always improves the performance of PBIL. Finally, the memory-based immigrant PBIL is compared with other peer algorithms and shows promising performance.
Subjects

Algorithms

Associative processin...

Memory architecture

Optimization

Explore by
  • Collections
  • Research Outputs
  • Researchers
  • Faculty & Departments
  • Theses
  • Patents
  • Projects
  • Journals
  • Conferences
Useful Links
  • Researcher Portfolio Guide
  • Researcher Profile
  • Create an ORCID ID
  • CUT Open Access Author Fund
  • ETDS Guide
Copyright Policies

Use Sherpa/Romeo to find publisher copyright policies

Go
Go
  • SPARC Author Addendum Engine
  • National Open Access Policy in Cyprus
Deposit your work to Ktisis
  • Self-archiving. Please sign in to Ktisis.
  • Email your work to:
    library.dspace@cut.ac.cy
  • Contact your subject librarian

Member of

OpenAIREre3dataOpenDOARCOREDART
Cyprus University of Technology
Library and
Information
Services

Copyright © 2022 - Library and Information Services Feedback - Built with DSpace-CRIS - 4Science

  • Accessibility settings
  • Privacy policy
  • End User Agreement
COAR NotifyCOAR Notify