论非地面网络辅助自动驾驶汽车的分层内容缓存和异步更新方案

Bomin Mao;Yangbo Liu;Hongzhi Guo;Yijie Xun;Jiadai Wang;Jiajia Liu;Nei Kato
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摘要

凭借无缝覆盖和无处不在连接的优势,由低地球轨道(LEO)卫星和无人机(uav)组成的非地面网络(NTNs)可以为未来的互联自动驾驶汽车(cav)提供内容缓存服务,以满足车载协同观看、交通传感和偏远地区的元宇宙娱乐。然而,异构的缓存硬件、通信环境和频繁的网络动态使得内容缓存策略的优化变得非常复杂。首先,将所有LEO卫星作为缓存卫星,会导致内容重复和无线电干扰,造成存储浪费和NTN传输质量下降。其次,在如此复杂的环境下,如何通过层内和层间的协同缓存提供定制的QoS仍然是一个有待解决的问题。因此,我们提出了一种延迟驱动的蚁群优化(DM-ACO)方案来选择具有较低系统传播延迟的高速缓存LEO卫星。然后,设计了基于多智能体深度强化学习的分层缓存和异步更新(MADRL-HCAU)策略,对LEO卫星和无人机的缓存容量进行管理,为无人机提供定制化服务,分配峰值流量。仿真结果表明,该方案不仅能有效加快缓存刷新和内容下载速度,还能显著降低丢包率,提高缓存命中率。
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On a Hierarchical Content Caching and Asynchronous Updating Scheme for Non-Terrestrial Network-Assisted Connected Automated Vehicles
With the advantages of seamless coverage and ubiquitous connections, Non-Terrestrial Networks (NTNs) composed of Low Earth Orbit (LEO) satellites and Unmanned Aerial Vehicles (UAVs) can provide content caching services for future Connected Automated Vehicles (CAVs) to satisfy onboard collaborative viewing, traffic sensing, and metaverse entertainments in remote areas. However, the heterogeneous caching hardware, communication environments, and frequent network dynamics make the optimization of content caching policy highly complicated. Firstly, considering all LEO satellites as caching satellites can lead to content duplication and radio interference, causing storage waste and NTN transmission quality deterioration. Secondly, how to provide customized QoS by intra-layer and inter-layer cooperative caching in such complicated environments remains an open issue. Thus, we propose a Delay-Motivated Ant Colony Optimization (DM-ACO) scheme to select caching LEO satellites with reduced system propagation delay. Then, the Multi-Agent Deep Reinforcement Learning-based Hierarchical Caching and Asynchronous Updating (MADRL-HCAU) strategy is designed to manage the caching capacity of LEO satellites and UAVs, providing customized services for CAVs and dispensing the peak traffic. Simulation results illustrate that the proposed scheme can not only effectively accelerate the caching refreshing and content downloading process but also significantly reduce the packet drop and improve the cache hit ratio.
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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