A platform for research: civil engineering, architecture and urbanism
Adaptive range particle swarm optimization
Abstract This paper proposes a new technique for particle swarm optimization called adaptive range particle swarm optimization (ARPSO). In this technique an active search domain range is determined by utilizing the mean and standard deviation of each design variable. In the initial search stage, the search domain is explored widely. Then the search domain is shrunk so that it is restricted to a small domain while the search continues. To achieve these search processes, new parameters to determine the active search domain range are introduced. These parameters gradually increase as the search continues. Through these processes, it is possible to shrink the active search domain range. Moreover, by using the proposed method, an optimum solution is attained with high accuracy and a small number of function evaluations. Through numerical examples, the effectiveness and validity of ARPSO are examined.
Adaptive range particle swarm optimization
Abstract This paper proposes a new technique for particle swarm optimization called adaptive range particle swarm optimization (ARPSO). In this technique an active search domain range is determined by utilizing the mean and standard deviation of each design variable. In the initial search stage, the search domain is explored widely. Then the search domain is shrunk so that it is restricted to a small domain while the search continues. To achieve these search processes, new parameters to determine the active search domain range are introduced. These parameters gradually increase as the search continues. Through these processes, it is possible to shrink the active search domain range. Moreover, by using the proposed method, an optimum solution is attained with high accuracy and a small number of function evaluations. Through numerical examples, the effectiveness and validity of ARPSO are examined.
Adaptive range particle swarm optimization
Kitayama, Satoshi (author) / Yamazaki, Koetsu (author) / Arakawa, Masao (author)
Optimization and Engineering ; 10 ; 575-597
2009-03-05
23 pages
Article (Journal)
Electronic Resource
English
A Chaos Particle Swarm Optimization Based on Adaptive Inertia Weight
British Library Online Contents | 2011
|OPTIMIZATION OF MACHINING PARAMETERS BASED ON ADAPTIVE QUANTUM PARTICLE SWARM NETWORKS (MT)
DOAJ | 2023
|Economic Load Dispatch Using Adaptive Social Acceleration Constant Based Particle Swarm Optimization
Springer Verlag | 2018
|A Review of Particle Swarm Optimization
Springer Verlag | 2018
|British Library Conference Proceedings | 2012
|