A global sensitivity analysis method based on IBWO-SVR-SS

Author:

Cui Yuxin,Li Yong-HuaORCID,Zhang Dongxu,Wang Yufeng,Zhang ZhiyangORCID

Abstract

PurposeAiming at the inefficiency of solving the Sobol index using the traditional mathematical analytical method, a Sobol global sensitivity analysis method is proposed.Design/methodology/approachIn this paper, a support vector regression (SVR) surrogate model is constructed to solve the Sobol index. The optimal combination of SVR hyperparameters is obtained by using the improved beluga whale optimization (IBWO). Meanwhile, in order to solve the problem that Sobol sequences will form correlation regions in high-dimensional space leading to the uneven distribution of sampling points, a scrambled strategy is introduced in the Sobol sensitivity analysis using IBWO-SVR. Thus, the IBWO-SVR-SS sensitivity analysis model is established.FindingsThe results of two test functions show that the method further improves the accuracy of the sensitivity analysis. Finally, the first-order Sobol index and second-order Sobol index are solved by the IBWO-SVR-SS method using the metro bogie frame as an engineering example. Through the analysis results, the key design parameters of the frame and the design parameter combinations with more obvious coupling relationships are identified, providing a strong reference for the subsequent analysis and structural optimization.Originality/valueSobol sensitivity analysis using the surrogate model method can effectively improve the efficiency of the solution. In addition, IBWO is used for the optimization of the SVR hyperparameters to improve the accuracy and efficiency of the optimization, and finally, the correction of the Sobol sequence through the introduction of the disruption strategy also further improves the accuracy of the sensitivity analysis of Sobol.

Publisher

Emerald

Reference20 articles.

1. Global sensitivity analysis of energy-absorbing structure for rail vehicle based on Sobol’ method;Journal of the China Railway Society,2020

2. Dependence properties of scrambled Halton sequences;Mathematics and Computers in Simulation,2022

3. An improved sparrow search algorithm for solving large-scale optimization problems;Control and Decision,2023

4. Elite opposition-based learning quadratic interpolation slime mould algorithm;Application Research of Computers,2021

5. SOBOL sensitivity analysis and acoustic solid coupling approach to underwater explosion;Ocean Engineering,2023

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