具有MEC支持的弱势道路使用者的自适应安全上下文信息

Quang-Huy Nguyen, Michel Morold, K. David, F. Dressler
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引用次数: 15

摘要

协同脆弱道路使用者(VRU)避碰技术旨在通过交换环境信息,预防VRU与车辆之间可能发生的事故。在本文中,我们提出了一种基于多访问边缘计算(MEC)的VRU安全系统,作为早期纯粹基于自组织通信的VRU安全系统的替代方案,其中VRU智能手机利用蜂窝连接频繁地向MEC服务器发送上下文消息。然而,在这样的安全系统中,计算智能手机上的环境信息,已经资源有限,可能会导致电池寿命缩短,从而导致糟糕的用户体验。为了解决这一问题,我们提出了一种VRU上下文信息计算的自适应方法,该方法考虑在需要时使用计算卸载,以节省能源同时保证时效性。作为基准,我们使用机器学习应用程序来确定行人的活动。实验和仿真结果都表明,当更新间隔或传感器采样频率较低时,即采集的原始数据量较小时,将上下文信息计算交给MEC是值得的;否则,首选本地执行。我们把我们的研究结果作为设计更多VRU安全系统能效计算模型的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Safety Context Information for Vulnerable Road Users with MEC Support
Cooperative Vulnerable Road User (VRU) collision avoidance aims at preventing potential accidents between VRUs and vehicles by exchanging context information. In this paper, we present a Multi-access Edge Computing (MEC)-based VRU safety system as an alternative to earlier purely ad-hoc communication-based ones, in which VRU smartphones utilize the cellular connection to frequently send context messages to a MEC server. However, in such safety systems, calculating context information on smartphones, which are already resource-restricted, could lead to reduced battery lifetime and, thus, to poor user experiences. To deal with this issue, we propose an adaptive approach for VRU context information calculation, which considers the use of computation offloading when needed in order to save energy while still ensuring timeliness. As a baseline, we use our machine learning application for determining pedestrian activities. Both experimental and simulation results suggest that it is worth to offload context information computation to the MEC when the updating interval or the sensor sampling frequency is low, i.e., the amount of raw data collected is small; otherwise, local execution is preferable. We see our results as a basis for designing more energy-efficiency calculation models for VRU safety systems.
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