A Study of Seating Suspension System Vibration Isolation Using a Hybrid Method of an Artificial Neural Network and Response Surface Modelling

IF 1.9 Q3 ENGINEERING, MECHANICAL Vibration Pub Date : 2024-01-08 DOI:10.3390/vibration7010003
Yuli Zhao, M. Khayet, Xu Wang
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Abstract

A reliable prediction model can greatly contribute to the research of car seating system vibration control. The novelty of this paper lies in the development of a hybrid method of an artificial neural network (ANN) and response surface methodology (RSM) to predict the peak seat-to-head transmissibility ratio of a seating suspension system and to evaluate its ride comfort for different seat design parameters. Additionally, this method can remove the experimental design of the RSM model. In this paper, four seat design parameters are selected as input parameters and arranged using the central composite design method. The peak transmissibility ratio from seat to head at 4 Hz is chosen as the response target output value. To illustrate this hybrid method, the response target output value of the peak transmissibility ratio is calculated from the frequency response of a five-degrees-of-freedom (5-DOF) lumped-parameter biodynamic seating suspension model. The input design parameters and the response target output values are used to train an ANN to establish the relationship between the seat design parameters and the peak transmissibility ratio. At the same time, the input design parameters and the response target output values predicted by the ANN are used to develop the relationship between the seat design parameters and the peak transmissibility ratio using the response surface method and linear regression models. The hybrid of the ANN and response surface methods makes the planning or design of experiments not essential. The hybrid model of the ANN and response surface method is more accurate and convenient than a linear regression model for the study of seating system vibration isolation.
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使用人工神经网络和响应面建模混合方法的座椅悬挂系统振动隔离研究
一个可靠的预测模型可以极大地促进汽车座椅系统振动控制的研究。本文的创新之处在于开发了一种人工神经网络(ANN)和响应面方法(RSM)的混合方法,用于预测座椅悬挂系统的峰值座面传递比,并评估不同座椅设计参数下的乘坐舒适性。此外,该方法还可以去除 RSM 模型的实验设计。本文选取四个座椅设计参数作为输入参数,并采用中心复合设计法进行排列。选择 4 Hz 时座椅到头部的峰值透射比作为响应目标输出值。为了说明这种混合方法,峰值传递率的响应目标输出值是通过五自由度(5-DOF)整数参数生物动力学座椅悬架模型的频率响应计算得出的。输入设计参数和响应目标输出值用于训练 ANN,以建立座椅设计参数与峰值传递率之间的关系。同时,使用响应面法和线性回归模型,将输入设计参数和 ANN 预测的响应目标输出值用于建立座椅设计参数与峰值传递率之间的关系。由于采用了方差网络和响应面法的混合方法,因此不需要进行试验规划或设计。在座椅系统隔振研究中,ANN 和响应面法的混合模型比线性回归模型更准确、更方便。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
0
审稿时长
10 weeks
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