A New Prediction-Based Algorithm for Dynamic Multi-objective Optimization Problems
Citation
KARKAZAN, Kalthoum, Haluk Rahmi TOPCUOĞLU & Shaaban SAHMOUD. "A New Prediction-Based Algorithm for Dynamic Multi-objective Optimization Problems". International Conference on the Applications of Evolutionary Computation (Part of EvoStar),(2023): 194-209.Abstract
The mechanism for reacting to the changes in an environ-
ment when detected is the key issue that distinguishes various algorithms
proposed for dynamic multi-objective optimization problems (DMOPs).
The severity of change is a significant approach to identify the dynamic
characteristics of DMOPs. In this paper, a prediction-based strategy
based on utilizing the degree of the changes is presented to address envi-
ronmental changes. In case of a change detection in the given DMOP, the
severity of change is evaluated and an appropriate reaction mechanism
is followed based on the degree of the observed change. To accelerate
the convergence process, the algorithm may respond multiple times for
the same change. The performance of our algorithm is evaluated by com-
paring it with dynamic multi-objective evolutionary algorithms using six
benchmarks. The effectiveness of our algorithm is demonstrated in the
experimental study where it outperforms other compared algorithms in
most of the tested instances considered.