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首页> 外文期刊>ACM transactions on multimedia computing communications and applications >TripRes: Traffic Flow Prediction Driven Resource Reservation for Multimedia IoV with Edge Computing
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TripRes: Traffic Flow Prediction Driven Resource Reservation for Multimedia IoV with Edge Computing

机译:Tripres:具有边缘计算的多媒体IOV的交通流预测驱动资源预留

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摘要

The Internet of Vehicles (IoV) connects vehicles, roadside units (RSUs) and other intelligent objects, enabling data sharing among them, thereby improving the efficiency of urban traffic and safety. Currently, collections of multimedia content, generated by multimedia surveillance equipment, vehicles, and so on, are transmitted to edge servers for implementation, because edge computing is a formidable paradigm for accommodating multimedia services with low-latency resource provisioning. However, the uneven or discrete distribution of the traffic flow covered by edge servers negatively affects the service performance (e.g., overload and underload) of edge servers inmultimedia IoV systems. Therefore, howto accurately schedule and dynamically reserve proper numbers of resources for multimedia services in edge servers is still challenging. To address this challenge, a traffic flowprediction driven resource reservation method, called TripRes, is developed in this article. Specifically, the city map is divided into different regions, and the edge servers in a region are treated as a "big edge server" to simplify the complex distribution of edge servers. Then, future traffic flows are predicted using the deep spatiotemporal residual network (ST-ResNet), and future traffic flows are used to estimate the amount of multimedia services each region needs to offload to the edge servers. With the number of services to be offloaded in each region, their offloading destinations are determined through latency-sensitive transmission path selection. Finally, the performance of TripRes is evaluated using real-world big data with over 100M multimedia surveillance records from RSUs in Nanjing China.
机译:车辆(IOV)互联网(IOV)连接车辆,路边单位(RSU)和其他智能物体,从而能够提高城市交通和安全的效率。目前,由多媒体监控设备,车辆等的多媒体内容集合传输到用于实现的边缘服务器,因为边缘计算是一种适用于具有低延迟资源配置的多媒体服务的强大范例。然而,边缘服务器覆盖的交通流量的不均匀或离散分布对Multimedia IOV系统中的边缘服务器的服务性能(例如,过载和欠载)产生负面影响。因此,如何准确安排和动态保留边缘服务器中的多媒体服务的适当资源数量仍然具有挑战性。为了解决这一挑战,在本文中开发了一种名为TripRES的流量流量驱动的资源预留方法。具体地,城市地图被划分为不同的区域,并且区域中的边缘服务器被视为“大边缘服务器”,以简化边缘服务器的复杂分布。然后,使用深蓝色的姓氏(ST-Reset)预测未来的流量流,并且将来的未来业务流量用于估计每个区域需要卸载到边缘服务器的多媒体服务量。通过在每个区域中卸载的服务数量,通过延迟敏感传输路径选择确定其卸载目的地。最后,使用现实世界的大数据评估Tripres的性能,其中包含来自南京中国的RSUS超过100米的多媒体监测记录。

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