| Literature DB >> 29950788 |
Nizar Faisal Alkayem1, Maosen Cao1, Yufeng Zhang2,3, Mahmoud Bayat4, Zhongqing Su5.
Abstract
Structural damage identification based on finite element (FE) model updating has been a research direction of increasing interest over the last decade in the mechanical, civil, aerospace, etc., engineering fields. Various studies have addressed direct, sensitivity-based, probabilistic, statistical, and iterative methods for updating FE models for structural damage identification. In contrast, evolutionary algorithms (EAs) are a type of modern method for FE model updating. Structural damage identification using FE model updating by evolutionary algorithms is an active research focus in progress but lacking a comprehensive survey. In this situation, this study aims to present a review of critical aspects of structural damage identification using evolutionary algorithm-based FE model updating. First, a theoretical background including the structural damage detection problem and the various types of FE model updating approaches is illustrated. Second, the various residuals between dynamic characteristics from FE model and the corresponding physical model, used for constructing the objective function for tracking damage, are summarized. Third, concerns regarding the selection of parameters for FE model updating are investigated. Fourth, the use of evolutionary algorithms to update FE models for damage detection is examined. Fifth, a case study comparing the applications of two single-objective EAs and one multi-objective EA for FE model updating-based damage detection is presented. Finally, possible research directions for utilizing evolutionary algorithm-based FE model updating to solve damage detection problems are recommended. This study should help researchers find crucial points for further exploring theories, methods, and technologies of evolutionary algorithm-based FE model updating for structural damage detection.Entities:
Keywords: Dynamic characteristics; Evolutionary algorithms; Finite element model updating; Optimization; Residuals; Structural damage detection
Year: 2017 PMID: 29950788 PMCID: PMC5997129 DOI: 10.1007/s00521-017-3284-1
Source DB: PubMed Journal: Neural Comput Appl ISSN: 0941-0643 Impact factor: 5.606
Fig. 1FE model updating approaches
Fig. 2The organization of structural damage detection using FE model updating with EAs
Fig. 3FE model updating using single-objective EAs for damage identification
Fig. 4Convex Pareto front (a) and non-convex Pareto front (b)
Fig. 5FE model updating using multi-objective EAs for structural damage identification
A summary showing various applications of EAs for structural damage detection with FE model updating
| Algorithm | Reported applications | Studies |
|---|---|---|
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| GA and its variations | Various types of beams, bridges, frame structures, and trusses | Jung and Kim [ |
| PSO and its variations | Various types of beams, bridges, frame structures, and trusses | Marwala et al. [ |
| DE | Beams, trusses, and 3D structures | Seyedpoor et al. [ |
| ABC | Frames and trusses | Ding et al. [ |
| CS | Frames and trusses | Xu et al. [ |
| CMA-ES | Bridges | Jafarkhani and Masri [ |
|
| ||
| NSGA-II and its variations | Beams, bridges, and 3D structures | Cha and Buyukozturk [ |
| MOPSO | Beams | Wang et al. [ |
| DEMO | Beams | Wang et al. [ |
| SPGA | Large-scale structures | Perera and Ruiz [ |
Fig. 6The ASC–ASCE SHM benchmark 4-story building model. a The original model [154], b the developed model
Fig. 7The damage scenario
Fig. 8Damage detection using GA
Fig. 9Damage detection using GA under noisy conditions
Fig. 10Damage detection using PSO
Fig. 11Damage detection using PSO under noisy conditions
Fig. 12Damage detection using MOPSO
Fig. 13Damage detection using MOPSO under noisy conditions
A performance comparative study between the applied EAs
| Algorithm | Mean computational cost (s) | Consistency | Accuracy (minimum objective function value) | |
|---|---|---|---|---|
| Damage without noise | Damage with noise | |||
| GA | 795 | 6 | 11.2 × 10−4 | 0.08 |
| PSO | 345 | 9 | 3.07 × 10−8 | 0.072 |
| MOPSO | 564 | 8 | 3.57 × 10−7 | 0.0722 |