Using Neural Networks and Diversifying Differential Evolution for Dynamic Optimisation
August 10, 2020 ยท Declared Dead ยท ๐ IEEE Symposium Series on Computational Intelligence
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Authors
Maryam Hasani Shoreh, Renato Hermoza Aragonรฉs, Frank Neumann
arXiv ID
2008.04002
Category
cs.NE: Neural & Evolutionary
Citations
1
Venue
IEEE Symposium Series on Computational Intelligence
Last Checked
4 months ago
Abstract
Dynamic optimisation occurs in a variety of real-world problems. To tackle these problems, evolutionary algorithms have been extensively used due to their effectiveness and minimum design effort. However, for dynamic problems, extra mechanisms are required on top of standard evolutionary algorithms. Among them, diversity mechanisms have proven to be competitive in handling dynamism, and recently, the use of neural networks have become popular for this purpose. Considering the complexity of using neural networks in the process compared to simple diversity mechanisms, we investigate whether they are competitive and the possibility of integrating them to improve the results. However, for a fair comparison, we need to consider the same time budget for each algorithm. Thus, instead of the usual number of fitness evaluations as the measure for the available time between changes, we use wall clock timing. The results show the significance of the improvement when integrating the neural network and diversity mechanisms depends on the type and the frequency of changes. Moreover, we observe that for differential evolution, having a proper diversity in population when using neural networks plays a key role in the neural network's ability to improve the results.
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