Identification of Bouc-Wen model parameters based on improved dung beetle optimizer algorithm
To improve the robustness and accuracy of parameter identification of Bouc-Wen model,a parame-ter identification method based on the improved dung beetle optimizer(IDBO)is proposed.Firstly,the global optimization and local exploration ability of the DBO algorithm are improved by three different strategies;sec-ondly,the parameters are limited to a reasonable range,and then the optimal solution of each parameter can be obtained by adopting a small number of iterations.Finally,the parameter identification of Bouc-Wen model of buckling-restrained brace(BRB)was conducted numerically to verify the effectiveness and robustness of the proposed method.On this basis,the quasi-static loading tests of BRB were conducted to verify the practicality of the proposed method.The results show that the proposed method can reconstruct the real curve well even under 20%noise,and the maximum relative error of the identified parameters is only 4.86%.Compared with the dung beetle optimizer(DBO)、grey wolf optimizer(GWO)、Harris hawks optimization(HHO)、whale opti-mization algorithm(WO A),and subtration-average-based optimizer(SABO),the accuracy of the proposed method is significantly improved,and the mean root mean square error(RMSE)is increased by 30.68%,8.03%,43.26%,52.63%,and 49.25%,respectively.The proposed method can be applied to the identifi-cation of structural hysteretic model and the simulation of structural nonlinear behavior.
structural health monitoringparametric identificationbuckling restrained brace(BRB)dung beetle optimizer(DBO)algorithmBouc-Wen model