Yan Ruibin, Gu Yijun, Zhang Zeyu, Jiao Shouzhong
College of Information and Cyber Security, People's Public Security University of China, Beijing 102600, China.
Sensors (Basel). 2023 Sep 18;23(18):7954. doi: 10.3390/s23187954.
Real-time computation tasks in vehicular edge computing (VEC) provide convenience for vehicle users. However, the efficiency of task offloading seriously affects the quality of service (QoS). The predictive-mode task offloading is limited by computation resources, storage resources and the timeliness of vehicle trajectory data. Meanwhile, machine learning is difficult to deploy on edge servers. In this paper, we propose a vehicle trajectory prediction method based on the vehicle frequent pattern for task offloading in VEC. First, in the initialization stage, a T-pattern prediction tree (TPPT) is constructed based on the historical vehicle trajectory data. Secondly, when predicting the vehicle trajectory, the vehicle frequent itemset with the largest vehicle trajectory support is found in the vehicle frequent itemset of the TPPT. Finally, in the update stage, the TPPT is updated in real time with the predicted vehicle trajectory results. Meanwhile, based on the proposed prediction method, the strategies of task offloading and optimization algorithm are designed to minimize energy consumption with time constraints. The experiments are carried out on real-vehicle datasets and the Capital Bikeshare datasets. The results show that compared with the baseline T-pattern method, the accuracy of the prediction method is improved by more than 10% and the prediction efficiency is improved by more than 6.5 times. The vehicle trajectory prediction method based on the vehicle frequent pattern has high accuracy and prediction efficiency, which can solve the problem of vehicle trajectory prediction for task offloading.
车辆边缘计算(VEC)中的实时计算任务为车辆用户提供了便利。然而,任务卸载效率严重影响服务质量(QoS)。预测模式任务卸载受到计算资源、存储资源和车辆轨迹数据及时性的限制。同时,机器学习难以在边缘服务器上部署。在本文中,我们提出了一种基于车辆频繁模式的车辆轨迹预测方法,用于VEC中的任务卸载。首先,在初始化阶段,基于历史车辆轨迹数据构建T模式预测树(TPPT)。其次,在预测车辆轨迹时,在TPPT的车辆频繁项集中找到具有最大车辆轨迹支持度的车辆频繁项集。最后,在更新阶段,利用预测的车辆轨迹结果实时更新TPPT。同时,基于所提出的预测方法,设计了任务卸载策略和优化算法,以在时间约束下最小化能耗。在真实车辆数据集和首都自行车共享数据集上进行了实验。结果表明,与基线T模式方法相比,预测方法的准确率提高了10%以上,预测效率提高了6.5倍以上。基于车辆频繁模式的车辆轨迹预测方法具有较高的准确率和预测效率,能够解决任务卸载中的车辆轨迹预测问题。