Redirigiendo al acceso original de articulo en 18 segundos...
Inicio  /  Algorithms  /  Vol: 15 Par: 5 (2022)  /  Artículo
ARTÍCULO
TITULO

Improving the Quantum Multi-Swarm Optimization with Adaptive Differential Evolution for Dynamic Environments

Vladimir Stanovov    
Shakhnaz Akhmedova    
Aleksei Vakhnin    
Evgenii Sopov    
Eugene Semenkin and Michael Affenzeller    

Resumen

In this study, the modification of the quantum multi-swarm optimization algorithm is proposed for dynamic optimization problems. The modification implies using the search operators from differential evolution algorithm with a certain probability within particle swarm optimization to improve the algorithm?s search capabilities in dynamically changing environments. For algorithm testing, the Generalized Moving Peaks Benchmark was used. The experiments were performed for four benchmark settings, and the sensitivity analysis to the main parameters of algorithms is performed. It is shown that applying the mutation operator from differential evolution to the personal best positions of the particles allows for improving the algorithm performance.

 Artículos similares

       
 
Jennifer Hasler and Eric Black    
Physical computing unifies real value computing including analog, neuromorphic, optical, and quantum computing. Many real-valued techniques show improvements in energy efficiency, enable smaller area per computation, and potentially improve algorithm sca... ver más

 
Xiaomin Guo, Chen Cheng, Tong Liu, Xin Fang and Yanqiang Guo    
This technique of improving the accuracy of g(2)(t) measurement is useful to extract higher order coherence and achieve desired laser source for quantum imaging and secure communication.
Revista: Applied Sciences