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Differential Evolution Optimal Parameters Tuning with Artificial Neural Network

Publication Year :
2021

Abstract

Differential evolution (DE) is a simple and efficient population-based stochastic algorithm for solving global numerical optimization problems. DE largely depends on algorithm parameter values and search strategy. Knowledge on how to tune the best values of these parameters is scarce. This paper aims to present a consistent methodology for tuning optimal parameters. At the heart of the methodology is the use of an artificial neural network (ANN) that learns to draw links between the algorithm performance and parameter values. To do so, first, a data-set is generated and normalized, then the ANN approach is performed, and finally, the best parameter values are extracted. The proposed method is evaluated on a set of 24 test problems from the Black-Box Optimization Benchmarking (BBOB) benchmark. Experimental results show that three distinct cases may arise with the application of this method. For each case, specifications about the procedure to follow are given. Finally, a comparison with four tuning rules is performed in order to verify and validate the proposed method’s performance. This study provides a thorough insight into optimal parameter tuning, which may be of great use for users.

Details

Database :
OAIster
Notes :
Ingeniería de sistemas y automática, Ingeniería nuclear y mecánica de fluidos, Sistemen ingeniaritza eta automatika, Ingeniaritza nuklearra eta jariakinen mekanika, Centeno Telleria, Manu, Zulueta Guerrero, Ekaitz, Fernández Gámiz, Unai, Teso Fernández de Betoño, Daniel, Teso Fernández de Betoño, Adrián
Publication Type :
Electronic Resource
Accession number :
edsoai.on1364728176
Document Type :
Electronic Resource