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基于时序模式分解的环形交叉口车辆轨迹预测OA

Vehicle Trajectory Prediction at Roundabouts Based on Time Series Pattern Decomposition

中文摘要英文摘要

为提升环形交叉口等复杂结构化场景下的车辆轨迹预测精度,提出一种结合了多头注意力机制(MHA)、简化图卷积(SGC)网络和TimeMixer机制的深度学习模型,构建了一个宏观-微观双层编码体系.在宏观层面,采用MHA捕捉由全局道路拓扑施加的长时程战略约束,即通过建模车辆完整历史轨迹和环岛结构(如出入口的深层关系)来推断其长期行驶意图;在微观层面,首先利用SGC网络提取车辆间的即时空间关系,随后引入TimeMixer机制,将一维交互时序映射为多尺度、多分辨率的二维时空图像,通过对周期性战术行为与趋势性战略意图的显式解耦和分层融合,实现对深层交互模式的精准捕捉.两类信息经门控网络融合后,由门控循环单元解码器生成最终的轨迹.实验结果表明,在 5 s 的预测时间内,该文提出的模型在公开数据集INTERACTION上的平均位移误差与最终位移误差分别为1.19和1.85 m,在公开数据集RounD上则分别为1.16和1.80 m,均优于基线模型,证明通过对宏观全局约束与微观时空交互进行分层建模,特别是对交互模式进行解耦分析,能有效提升模型在复杂场景下的轨迹预测性能.

To enhance the vehicle trajectory prediction accuracy in complex structured scenarios such as roundabouts,a deep learning model combining multi-head attention(MHA)mechanism,simplified graph convolution(SGC)network and TimeMixer mechanism,namely MST,is proposed.The model is built upon a macro-micro dual-encoder architecture.At the macro level,an MHA mechanism is employed to capture the long-term guiding constraints imposed by global road topology.That is,by modeling the complete historical trajectory of the vehicle and the structure of the roundabout(such as the deep relationship of the entrances and exits)to infer vehicle's long-term driving intention.At the micro level,first,an SGC network is used to extract instantaneous spatial relationships among vehicles.Subsequently,TimeMixer mechanism is introduced to map the one-dimension interaction sequence into multi-scale,multi-resolution 2D spatio-temporal images.By explicitly decoupling and hierarchically fusing periodic tactical behaviors and trend-oriented strategic intentions,a precise capture of deep interaction patterns is achieved.The information streams from both levels are integrated via a gated fusion network and then fed into a gated recurrent unit decoder to generate the final trajectory.Experiments on the public INTERACTION and RounD datasets demonstrate that,within a 5 s prediction period,the proposed model achieves an average displacement error and a final displacement error of 1.19 m and 1.85 m on the INTERACTION dataset,and 1.16 m and 1.80 m on the RounD dataset,respectively,outperforming all baseline models.The results indicate that hierarchically modeling macro-level global constraints and micro-level spatio-temporal interactions,particularly through the decoupling analysis of interaction patterns,can significantly improve the trajectory prediction performance in complex scenarios.

张建华;李玮

东北林业大学 土木与交通学院,黑龙江 哈尔滨 150040东北林业大学 土木与交通学院,黑龙江 哈尔滨 150040

交通工程

环形交叉口车辆轨迹预测多头注意力简化图卷积TimeMixer

roundaboutvehicle trajectory predictionmulti-head attentionsimplified graph convolutionTimeMixer

《华南理工大学学报(自然科学版)》 2026 (4)

132-143,12

黑龙江省重点研发计划项目(JD22A014)黑龙江省自然科学基金项目(YQ2022E003) Supported by the Key Research and Development Program of Heilongjiang Province(JD22A014)and the Natural Science Foundation of Heilongjiang Province(YQ2022E003)

10.12141/j.issn.1000-565X.250314

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