Objectification and prediction of the subjective criticality of axle damages using artificial neural networks as well as multibody- and real-time simulations

Q3 Engineering
Robert Schurmann, Alexander Lion, Bernhard Schick, Philipp Rupp
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引用次数: 0

Abstract

For the assessment of axle damages, real vehicle tests have mostly been used so far, but they are dangerous and difficult to reproduce. Therefore, driving simulators are becoming increasingly important for the virtual rating of vehicles. Regardless of whether a real vehicle or a driving simulator is used, the prediction of the subjective perception of axle damages requires time-consuming driving tests. A powerful dynamic driving simulator is used to obtain subjective evaluations of various axle damages. Objective vehicle quantities are logged simultaneously. Subsequently, multilinear regression (MLR) models and artificial neural networks (ANN) are used to identify correlations and predict subjective evaluations based on objective data. Furthermore, real-time capable vehicle models in CarMaker and multibody dynamic (MBD) models in ADAMS/Car are used to virtually carry out driving manoeuvres and generate synthetic data. By combining the simulated vehicle data with an ANN, subjective driver evaluations can be predicted entirely virtual.
利用人工神经网络和多体实时仿真对车轴损伤的主观临界性进行客观化和预测
对于车轴损伤的评估,目前多采用实车试验,但实车试验存在一定的危险性和重复性。因此,驾驶模拟器对于车辆的虚拟评级变得越来越重要。无论是使用真实车辆还是驾驶模拟器,对车轴损伤的主观感知预测都需要耗时的驾驶试验。采用功能强大的动态驾驶模拟器对车轴的各种损伤进行主观评价。同时记录目标车辆数量。随后,利用多元线性回归(MLR)模型和人工神经网络(ANN)识别相关性,并根据客观数据预测主观评价。此外,利用汽车制造商的实时车辆模型和ADAMS/Car的多体动力学模型进行虚拟驾驶操作并生成合成数据。通过将模拟车辆数据与人工神经网络相结合,可以完全虚拟地预测驾驶员的主观评价。
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来源期刊
International Journal of Vehicle Performance
International Journal of Vehicle Performance Engineering-Safety, Risk, Reliability and Quality
CiteScore
2.20
自引率
0.00%
发文量
30
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