Experimental Analysis of A Statistical Multiploid Genetic Algorithm for Dynamic Environments
Citation
GAZİOĞLU Emrullah & A.Sima ETANER-UYAR. "Experimental Analysis of A Statistical Multiploid Genetic Algorithm for Dynamic Environments". Engineering Science and Technology, an International Journal, (2022): 2-8.Abstract
Dynamic environments are still a big challenge for optimization algorithms. In this paper, a Genetic
Algorithm using both Multiploid representation and the Bayesian Decision method is proposed. By
Multiploid representation, an implicit memory scheme is introduced to transfer useful information to
the next generations. In this representation, there are more than one genotypes and only one phenotype.
The phenotype values are determined based on the corresponding genotypes values. To determine phenotype values, the well-known Bayesian Optimization Algorithm (BOA) has been injected into our algorithm to create a Bayes Network by using the previous population to exploit interactions between
variables. With this algorithm, we have solved the well-known Dynamic Knapsack Problem (DKP) with
100, 250, and 500 items. Also, we have compared our algorithm with the most recent algorithm in the
literature by using the DKP with 100 items. Experiments have shown that the proposed algorithm is efficient and faster than the peer algorithms in the manner of tracking moving optima without using an
explicit memory scheme. In conclusion, using relationships between variables within the optimization
algorithms is useful when concerning dynamic environments