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Indexed by:期刊论文
Date of Publication:2017-01-01
Journal:ENGINEERING COMPUTATIONS
Included Journals:SCIE、EI
Volume:34
Issue:7,SI
Page Number:2358-2378
ISSN No.:0264-4401
Key Words:Particle swarm optimization; Inverse analysis; Parameter identification; Artificial bee colony algorithm; Concrete dam; Fireworks algorithm
Abstract:Purpose - Parameter identification is an important issue in structural health monitoring and damage identification for concrete dams. The purpose of this paper is to introduce a novel adaptive fireworks algorithm (AFWA) into inverse analysis of parameter identification.
Design/methodology/approach - Swarm intelligence algorithms and finite element analysis are integrated to identify parameters of hydraulic structures. Three swarm intelligence algorithms: AFWA, standard particle swarm optimization (SPSO) and artificial bee colony algorithm (ABC) are adopted to make a comparative study. These algorithms are introduced briefly and then tested by four standard benchmark functions. Inverse analysis methods based on AFWA, SPSO and ABC are adopted to identify Young's modulus of a concrete gravity dam and a concrete arch dam.
Findings - Numerical results show that swarm intelligence algorithms are powerful tools for parameter identification of concrete structures. The proposed AFWA-based inverse analysis algorithm for concrete dams is promising in terms of accuracy and efficiency.
Originality/value - Fireworks algorithm is applied for inverse analysis of hydraulic structures for the first time, and the problem of parameter selection in AFWA is studied.