Structural Engineering and Mechanics
Volume 70, Number 5, 2019, pages 513-524
DOI: 10.12989/sem.2019.70.5.513
Feasibility study of improved particle swarm optimization in kriging metamodel based structural model updating
Shiqiang Qin, Jia Hu, Yun-Lai Zhou, Yazhou Zhang and Juntao Kang
Abstract
This study proposed an improved particle swarm optimization (IPSO) method ensemble with kriging model for
model updating. By introducing genetic algorithm (GA) and grouping strategy together with elite selection into standard particle
optimization (PSO), the IPSO is obtained. Kriging metamodel serves for predicting the structural responses to avoid complex
computation via finite element model. The combination of IPSO and kriging model shall provide more accurate searching
results and obtain global optimal solution for model updating compared with the PSO, Simulate Annealing PSO (SimuAPSO),
BreedPSO and PSOGA. A plane truss structure and ASCE Benchmark frame structure are adopted to verify the proposed
approach. The results indicated that the hybrid of kriging model and IPSO could serve for model updating effectively and
efficiently. The updating results further illustrated that IPSO can provide superior convergent solutions compared with PSO,
SimuAPSO, BreedPSO and PSOGA.
Key Words
model updating; kriging metamodel; improved particle swarm optimization; elite selection; global best solution
Address
Shiqiang Qin, Jia Hu, Yazhou Zhang and Juntao Kang: School of Civil Engineering and Architecture, Wuhan University of Technology, Wuhan 430070, China
Yun-Lai Zhou: Department of Civil and Environmental Engineering, National University of Singapore, 2 Engineering Drive 2, 117576, Singapore