Parameter Identification and Dynamic Characteristic Research of a Fractional Viscoelastic Model for Sub-Frame Bushing

Bao Chen, Lunyang Chen, Feng Zhou, Liang Cao, Shengxiang Guo, Zehao Huang
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Abstract

This research focused on the rubber bushings of the rear sub-frame in an electric vehicle. A dynamic model was developed to represent the bushing, incorporating an elastic element, a frictional element, and a viscoelastic element arranged in series using a fractional-order Maxwell and a Kelvin–Voigt model. To identify the parameters of the bushing model, an improved adaptive chaotic particle swarm optimization algorithm was employed, in conjunction with dynamic stiffness test data obtained at an amplitude of 0.2 mm. The test data obtained at different amplitudes (0.2 mm, 0.3 mm, 0.5 mm, and 1 mm) were fitted to the model, resulting in fitting errors of 1.13%, 4.07%, 4.42%, and 28.82%, respectively, when compared to the corresponding test data in order to enhance the accuracy of the model fitting; the Sobol sensitivity analysis method was utilized to analyze the parameter sensitivity of the model. Following the analysis, the parameters α, β, and k2, which exhibited high sensitivity, were re-identified. This re-identification process led to a reduction in the fitting error at the 1 mm amplitude to 7.45%. The improved accuracy of the model plays a crucial role in enhancing the simulation accuracy of design of experiments (DOE) analysis and verifying the vehicle’s performance under various conditions, taking into account the influence of the bushing.
副框架衬套分数阶粘弹性模型参数辨识及动态特性研究
本文对某电动汽车后副车架橡胶衬套进行了研究。采用分数阶Maxwell和Kelvin-Voigt模型,建立了一个包含弹性单元、摩擦单元和粘弹性单元的动力学模型来表示衬套。为了确定轴套模型的参数,采用改进的自适应混沌粒子群优化算法,并结合在0.2 mm幅值下获得的动刚度试验数据。将不同幅值(0.2 mm、0.3 mm、0.5 mm和1 mm)下的试验数据拟合到模型中,与相应的试验数据相比拟合误差分别为1.13%、4.07%、4.42%和28.82%,以提高模型拟合的精度;采用Sobol灵敏度分析法对模型的参数灵敏度进行分析。分析后,对灵敏度较高的α、β和k2参数进行了重新鉴定。这种重新识别过程导致1毫米振幅处的拟合误差降低到7.45%。模型精度的提高对于提高试验设计(DOE)分析的仿真精度以及在考虑衬套影响的情况下验证车辆在各种工况下的性能具有至关重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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