自适应城市道路交通场景驾驶员心理负荷识别模型

IF 2.7 4区 工程技术 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY Transportation Safety and Environment Pub Date : 2023-09-01 DOI:10.1093/tse/tdac076
Jing Huang, Wei Wei, Xiaoyan Peng, Lin Hu, Huiqin Chen
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引用次数: 0

摘要

摘要目的目前对驾驶员心理负荷识别的研究大多是基于单一驾驶场景。然而,在道路交通场景中建立的驾驶员心理负荷模型在实际驾驶过程中难以适应周围道路环境的变化。提出了一种适应城市道路交通场景的驾驶员心理负荷识别模型。方法该模型包括驾驶场景识别子模型和驾驶员负载识别子模型,其中驾驶场景识别子模型能够快速准确地确定道路交通场景。驾驶员负载识别子模型通过对驾驶场景分类子模型的判断,选择场景中最优的特征子集和最优的模型算法。结果以5个车辆特征为特征子集的驾驶场景识别子模型表现最佳。基于最佳特征子集的驱动负载识别子模型降低了特征噪声,识别效果优于单源信号和所有数据的特征集。不同场景下的最佳识别算法趋于一致,支持向量机(SVM)算法优于k近邻(KNN)算法。结论所建立的驾驶员心理负荷识别模型能够快速准确地识别驾驶场景,进而识别驾驶员心理负荷。这样可以使我们的模型更适合实际驾驶,提高驾驶员心理负荷识别的效果。
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Driver mental load identification model for adaptive urban road traffic scene
Abstract Objective At present, most research on driver mental load identification is based on a single driving scene. However, the driver mental load model established in a road traffic scene is difficult to adapt to the changes of the surrounding road environment during the actual driving process. We proposed a driver mental load identification model which adapts to urban road traffic scenarios. Methods The model includes a driving scene discrimination sub-model and driver load identification sub-model, in which the driving scene discrimination sub-model can quickly and accurately determine the road traffic scene. The driver load identification sub-model selects the best feature subset and the best model algorithm in the scene based on the judgement of the driving scene classification sub-model. Results The results show that the driving scene discrimination sub-model using five vehicle features as feature subsets has the best performance. The driver load identification sub-model based on the best feature subset reduces the feature noise, and the recognition effect is better than the feature set using a single source signal and all data. The best recognition algorithm in different scenarios tends to be consistent, and the support vector machine (SVM) algorithm is better than the K-nearest neighbors (KNN) algorithm. Conclusion The proposed driver mental load identification model can discriminate the driving scene quickly and accurately, and then identify the driver mental load. In this way, our model can be more suitable for actual driving and improve the effect of driver mental load identification.
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来源期刊
Transportation Safety and Environment
Transportation Safety and Environment TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.90
自引率
13.60%
发文量
32
审稿时长
10 weeks
期刊最新文献
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