Efficient information exchange and reliable contextual reasoning are essential for vehicle-to-everything (V2X) networks. Conventional communication schemes often incur significant transmission overhead and latency, while existing trajectory prediction models generally lack environmental perception and logical inference capabilities. This paper presents a trajectory prediction framework that integrates semantic communication with Agentic AI to enhance predictive performance in vehicular environments. In vehicle-to-infrastructure (V2I) communication, a feature-extraction agent at the Roadside Unit (RSU) derives compact representations from historical vehicle trajectories, followed by semantic reasoning performed by a semantic-analysis agent. The RSU then transmits both feature representations and semantic insights to the target vehicle via semantic communication, enabling the vehicle to predict future trajectories by combining received semantics with its own historical data. In vehicle-to-vehicle (V2V) communication, each vehicle performs local feature extraction and semantic analysis while receiving predicted trajectories from neighboring vehicles, and jointly utilizes this information for its own trajectory prediction. Extensive experiments across diverse communication conditions demonstrate that the proposed method significantly outperforms baseline schemes, achieving up to a 47.5% improvement in prediction accuracy under low signal-to-noise ratio (SNR) conditions.
翻译:高效的信息交换与可靠的情境推理对于车联网至关重要。传统通信方案通常带来显著的传输开销与延迟,而现有的轨迹预测模型普遍缺乏环境感知与逻辑推理能力。本文提出一种将语义通信与智能体人工智能相结合的轨迹预测框架,以提升车辆环境中的预测性能。在车与基础设施通信中,路侧单元的特征提取智能体从历史车辆轨迹中推导出紧凑表示,随后由语义分析智能体执行语义推理。路侧单元通过语义通信将特征表示与语义洞察共同传输至目标车辆,使车辆能够结合接收到的语义信息与自身历史数据预测未来轨迹。在车与车通信中,每辆车在接收邻近车辆预测轨迹的同时执行本地特征提取与语义分析,并协同利用这些信息进行自身轨迹预测。在不同通信条件下的广泛实验表明,所提方法显著优于基线方案,在低信噪比条件下预测精度最高提升达47.5%。