首页> 外文会议>IEEE International Conference on Cloud Computing Technology and Science >Towards Green Transportation: Fast Vehicle Velocity Optimization for Fuel Efficiency
【24h】

Towards Green Transportation: Fast Vehicle Velocity Optimization for Fuel Efficiency

机译:迈向绿色交通:优化车速以提高燃油效率

获取原文

摘要

To minimize the fuel consumption for driving, several methods have been proposed to calculate vehicles' optimal velocity profiles on a remote cloud. Considering the traffic dynamism, each vehicle needs to keep updating the velocity profile, which requires low latency for information uploading and profile calculation. However, these proposed methods cannot satisfy this requirement due to (1) high queuing delay for information uploading caused by a large number of vehicles, and (2) the neglect of the traffic light and high computation delay for velocity profile. For (1), considering the driving features of close vehicles on a road, e.g., similar velocity and interdistances, we propose to group vehicles within a certain range and let the leader vehicle in each group to upload the group information to the cloud, which then derives the velocity of each vehicle in the group. For (2), we propose spatial-temporal DP (ST-DP) that additionally considers the traffic lights. We innovatively find that the DP process makes it well suited to run on Spark (a fast parallel cluster computing framework) and then present how to run ST-DP on Spark. Finally, we demonstrate the superiority of our method using both trace-driven simulation (NS-2.33 simulator and MATLAB) and real-world experiments.
机译:为了最大程度地减少行驶中的燃油消耗,已提出了几种方法来计算远程云上车辆的最佳速度曲线。考虑到交通动态性,每辆车都需要不断更新速度曲线,这对于信息上传和曲线计算而言需要低等待时间。但是,这些提议的方法不能满足此要求,这是因为(1)由大量车辆引起的信息上传的高排队延迟,以及(2)交通信号灯的忽视和速度分布图的高计算延迟。对于(1),考虑到道路上近距离车辆的行驶特性(例如相似的速度和相距),我们建议将一定范围内的车辆进行分组,并让每个组中的领导车辆将组信息上载到云中,从而然后得出该组中每辆车的速度。对于(2),我们提出了时空DP(ST-DP),它另外考虑了交通信号灯。我们创新地发现DP流程使其非常适合在Spark(快速并行集群计算框架)上运行,然后介绍了如何在Spark上运行ST-DP。最后,我们使用跟踪驱动的仿真(NS-2.33仿真器和MATLAB)和真实世界的实验展示了我们方法的优越性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号