Enhanced Hybrid Metaheuristic Algorithms for Optimal Sizing of Steel Truss Structures With Numerous Discrete Variables
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Date
2017
Authors
Azad, Saeıd Kazemzadeh
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Publisher
Springer
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Abstract
The advent of modern computing technologies paved the way for development of numerous efficient structural design optimization tools in the recent decades. In the present study sizing optimization problem of steel truss structures having numerous discrete variables is tackled using combined forms of recently proposed metaheuristic techniques. Three guided, and three guided hybrid metaheuristic algorithms are developed by integrating a design oriented strategy to the stochastic search properties of three recently proposed metaheuristic optimization techniques, namely adaptive dimensional search, modified big bang-big crunch, and exponential big bang-big crunch algorithms. The performances of the proposed guided, and guided hybrid metaheuristic algorithms are compared to those of standard variants through optimum design of real-size steel truss structures with up to 728 design variables according to AISC-LRFD specification. The numerical results reveal that the hybrid form of adaptive dimensional search and exponential big bang-big crunch algorithm is the most promising algorithm amongst the other investigated techniques.
Description
Kazemzadeh Azad, Saeid/0000-0001-9309-607X
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Keywords
Discrete sizing optimization, Steel trusses, Metaheuristic algorithms, Adaptive dimensional search, Big bang-big crunch algorithm, AISC-LRFD
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Fields of Science
Citation
40
WoS Q
Q1
Scopus Q
Q1
Source
Volume
55
Issue
6
Start Page
2159
End Page
2180