Predicting the seat transmissibility of a seat-occupant system exposed to the whole-body vibration with combined artificial neural network and genetic algorithm

IF 2.5 2区 工程技术 Q2 ENGINEERING, INDUSTRIAL International Journal of Industrial Ergonomics Pub Date : 2024-08-16 DOI:10.1016/j.ergon.2024.103627
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Abstract

Inter-subject variability and seat conditions are complex and may affect the dynamic responses of the occupant-seat system to vibration. This research was aimed to clarify the contributions associated with the occupant and the seat to seat transmissibilities and thus developed an optimized artificial neural network model with the genetic algorithm to represent the cross-axis coupling and nonlinearity of seat transmissibilities with various seat conditions. Different vibration magnitudes, backrest inclinations, cushion thicknesses, frequencies and the mass of 12 subjects were set as the input parameters to predict the vertical in-line and horizontal cross-axis transmissibilities. For the predictive performance metrics (RMSE and R2), the mean values (0.118 and 0.889) were obtained for both seat transmissibilities within the testing data sets from BP-ANN models, and those with GA-BP-ANN models were optimized with 0.072 and 0.947, respectively. The seat transmissibility predicted from the model exhibited resonance behavior similar to that observed in the whole-body vibration test. With the optimization of the genetic algorithm, GA-BP-ANN models can provide enhanced predictions of the cross-axis coupling and nonlinearity of seat transmissibilities when compared to BP-ANN models.

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利用人工神经网络和遗传算法组合预测暴露于全身振动的座椅乘员系统的座椅透射率
受试者之间的差异和座椅条件非常复杂,可能会影响乘员-座椅系统对振动的动态响应。本研究旨在阐明乘员和座椅对座椅传导性的影响,因此利用遗传算法建立了一个优化的人工神经网络模型,以表示不同座椅条件下座椅传导性的跨轴耦合和非线性。将不同的振动幅度、靠背倾斜度、坐垫厚度、频率和 12 名受试者的质量设为输入参数,以预测垂直直列和水平横轴传递率。在预测性能指标(均方根误差和 R2)方面,BP-ANN 模型在测试数据集内的两个座椅传递率的平均值分别为 0.118 和 0.889,而 GA-BP-ANN 模型的优化值分别为 0.072 和 0.947。模型预测的座椅传递率表现出与全身振动测试中观察到的类似的共振行为。与 BP-ANN 模型相比,通过遗传算法的优化,GA-BP-ANN 模型能更好地预测座椅传递率的跨轴耦合和非线性。
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来源期刊
International Journal of Industrial Ergonomics
International Journal of Industrial Ergonomics 工程技术-工程:工业
CiteScore
6.40
自引率
12.90%
发文量
110
审稿时长
56 days
期刊介绍: The journal publishes original contributions that add to our understanding of the role of humans in today systems and the interactions thereof with various system components. The journal typically covers the following areas: industrial and occupational ergonomics, design of systems, tools and equipment, human performance measurement and modeling, human productivity, humans in technologically complex systems, and safety. The focus of the articles includes basic theoretical advances, applications, case studies, new methodologies and procedures; and empirical studies.
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