Title of article :
AN IMPROVED INTELLIGENT ALGORITHM BASED ON THE GROUP SEARCH ALGORITHM an‎d THE ARTIFICIAL FISH SWARM ALGORITHM
Author/Authors :
Wang, Y. Y. School of Civil and Transportation Engineering - Guangdong University Technology, Guangzhou, China , Li, L. J. School of Civil and Transportation Engineering - Guangdong University Technology, Guangzhou, China
Pages :
16
From page :
37
To page :
52
Abstract :
This article introduces two swarm intelligent algorithms, a group search optimizer (GSO) and an artificial fish swarm algorithm (AFSA). A single intelligent algorithm always has both merits in its specific formulation and deficiencies due to its inherent limitations. Therefore, we propose a mixture of these algorithms to create a new hybrid optimization algorithm known as the group search-artificial fish swarm algorithm (GS-AFSA). This algorithm has been applied to three different discrete truss optimization problems. The optimization results are compared with those obtained using the standard GSO, the AFSA and the quick group search optimizer (QGSO). The proposed GS-AFSA eliminated the shortcomings of GSO regarding falling into the local optimum by taking advantage of AFSA’s stable convergence characteristics and achieving a better convergence rate and convergence accuracy than the GSO and the AFSA. Furthermore, the GS-AFSA has a superior convergence accuracy compared to the QGSO, all while solving a complicated structural optimization problem containing numerous design variables.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
group search optimizer , artificial fish swarm algorithm , hybrid algorithm , structural optimization
Journal title :
International Journal of Optimization in Civil Engineering
Serial Year :
2015
Record number :
2510700
Link To Document :
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