Global Journal of Computer Sciences: Theory and Research

Global Journal of Computer Sciences: Theory and Research

Optimization of potential field parameters using genetic algorithm

Yazarlar: Mehmet Serdal Guzel, Vahid Babaei Ajabshir, Serhat Can, Erkan Bostanci

Cilt 7 , Sayı 2 , 2017 , Sayfalar 58-67

Konular:-

Anahtar Kelimeler:Path planning,Potential fields (PF) method,Genetic algorithm (GA),DEAP,Robot navigation,Parameter optimization.

Özet: This paper addresses a metaheuristics approach to optimize the parameters of the potential fields (PF) method. This method is an important algorithm and is primarily used for local navigation problems. However, estimating the appropriate parameters is essential for safe and smooth navigation. For instance, complex scenarios that include long and thin corridors or cluttered environments having numerous obstacles require reliable parameter estimation. Accordingly, the genetic algorithm is utilized to estimate the appropriate algorithms to overcome conventional navigation problems based on the PF method. The experimental results verify the reliability and efficiency of the proposed approach.


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BibTex
KOPYALA
@article{2017, title={Optimization of potential field parameters using genetic algorithm}, volume={7}, number={58–67}, publisher={Global Journal of Computer Sciences: Theory and Research}, author={Mehmet Serdal Guzel, Vahid Babaei Ajabshir, Serhat Can, Erkan Bostanci}, year={2017} }
APA
KOPYALA
Mehmet Serdal Guzel, Vahid Babaei Ajabshir, Serhat Can, Erkan Bostanci. (2017). Optimization of potential field parameters using genetic algorithm (Vol. 7). Vol. 7. Global Journal of Computer Sciences: Theory and Research.
MLA
KOPYALA
Mehmet Serdal Guzel, Vahid Babaei Ajabshir, Serhat Can, Erkan Bostanci. Optimization of Potential Field Parameters Using Genetic Algorithm. no. 58–67, Global Journal of Computer Sciences: Theory and Research, 2017.