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Parameter identification of Bouc–Wen type hysteresis models using homotopy optimization

R. Manikantan, Tarutal Ghosh Mondal, S. Suriya Prakash, C. P. Vyasarayani

2020Mechanics Based Design of Structures and Machines12 citationsDOI

Abstract

Structural members exhibit hysteretic behavior under cyclic loading. Among the hysteresis models available in the literature, the differential model proposed by Bouc-Wen is most widely used, owing to its robustness. This model involves many parameters that define the shape of the hysteresis loops. Estimating these unknown parameters is an identification problem that can be tackled by optimization algorithms by using prediction error as the objective function. Stochastic methods like simulated annealing and genetic algorithms can help find global minima but at a high computational cost. Here, the homotopy technique is employed to identify the unknown parameters. The efficiency of this technique in identifying the parameters of the Bouc–Wen model is demonstrated with examples. The present approach is then compared with global optimization methods, such as genetic algorithms and particle swarm optimization techniques. Numerical results confirm that the homotopy method is superior in terms of computational effort and convergence efficiency.

Topics & Concepts

Maxima and minimaHomotopyParticle swarm optimizationSimulated annealingRobustness (evolution)Mathematical optimizationGlobal optimizationMathematicsGenetic algorithmConvergence (economics)Computer scienceAlgorithmBiochemistryPure mathematicsMathematical analysisChemistryEconomicsGeneEconomic growthMagnetic Properties and ApplicationsStructural Health Monitoring TechniquesComposite Structure Analysis and Optimization
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