将 CNN-LSTM 模型用于利用汽车跟随行为数据进行车辆加速度预测

IF 2 4区 工程技术 Q2 ENGINEERING, CIVIL Journal of Advanced Transportation Pub Date : 2024-04-08 DOI:10.1155/2024/2442427
Shuning Tang, Yajie Zou, Hao Zhang, Yue Zhang, Xiaoqiang Kong
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引用次数: 0

摘要

准确的车辆加速度预测有助于开发可靠的高级驾驶辅助系统(ADAS)和提高道路安全性。驾驶员异质性的存在放大了加速度数据的变化,从而对车辆加速度预测的精度产生了影响。然而,很少有研究在预测车辆加速度时充分考虑驾驶员的异质性。为了建立驾驶员个体特征模型,本研究首先确定了驾驶行为语义,即驾驶行为的基本模式。利用耦合隐马尔可夫模型(CHMM)的分析结果,通过 Wasserstein 距离评估不同驾驶员之间的驾驶行为差异。然后应用卷积神经网络(CNN)和长短期记忆(LSTM)网络预测车辆加速度。为了验证所提出的预测框架的准确性,从安全试验模型部署(SPMD)数据集中提取了跟车条件下的车辆加速度数据。分段结果表明,CHMM 具有对驾驶行为进行建模的强大能力。预测结果表明,所提出的框架在预测前对驾驶员进行了聚类,从而显著提高了预测的准确性。而 CNN-LSTM 在预测汽车跟随场景中的车辆加速度方面优于 LSTM。这项研究的结果可以加强 ADAS 中个性化功能的开发,促进其部署,从而提高其接受度和安全性。
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Application of CNN-LSTM Model for Vehicle Acceleration Prediction Using Car-following Behavior Data

Accurate vehicle acceleration prediction is useful for developing reliable Advanced Driving Assistance Systems (ADAS) and improving road safety. The existence of driver heterogeneity magnifies the variations in acceleration data, leading to consequential impacts on the precision of vehicle acceleration prediction. However, few studies have fully considered the driver heterogeneity when predicting vehicle acceleration. To model the characteristics of individual drivers, this study first identifies the driving behavior semantics which is defined as the underlying patterns of driving behaviors. The analysis results from the coupled hidden Markov model (CHMM) are used to evaluate the driving behavior differences between different drivers by Wasserstein distance. Then the convolutional neural network (CNN) and long short-term memory (LSTM) network are applied to predict vehicle acceleration. To validate the accuracy of the proposed prediction framework, vehicle acceleration data in car-following conditions is extracted from the safety pilot model deployment (SPMD) dataset. The segmentation results indicate that the CHMM possesses a robust capacity for modeling driving behavior. The prediction results demonstrate that the proposed framework, which incorporates driver clustering before prediction, significantly improves the accuracy of predictions. And the CNN-LSTM outperforms the LSTM in predicting vehicle acceleration during car-following scenarios. The findings from this study can enhance the development of personalized functionalities within ADAS to promote its deployment, thereby improving its acceptance and safety.

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来源期刊
Journal of Advanced Transportation
Journal of Advanced Transportation 工程技术-工程:土木
CiteScore
5.00
自引率
8.70%
发文量
466
审稿时长
7.3 months
期刊介绍: The Journal of Advanced Transportation (JAT) is a fully peer reviewed international journal in transportation research areas related to public transit, road traffic, transport networks and air transport. It publishes theoretical and innovative papers on analysis, design, operations, optimization and planning of multi-modal transport networks, transit & traffic systems, transport technology and traffic safety. Urban rail and bus systems, Pedestrian studies, traffic flow theory and control, Intelligent Transport Systems (ITS) and automated and/or connected vehicles are some topics of interest. Highway engineering, railway engineering and logistics do not fall within the aims and scope of JAT.
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