深度强化学习:拥挤C-V2X场景下基于位置的资源分配

Shubhangi Bhadauria, S. Vasan, Moustafa Roshdi, Elke Roth-Mandutz, Georg Fischer
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引用次数: 2

摘要

第三代合作伙伴计划(3GPP)标准化的蜂窝-车到一切(C- V2X)通信在实现完全自动驾驶方面发挥着至关重要的作用。C- V2X设想支持各种用例,例如队列行驶和远程驾驶,在延迟、可靠性、数据速率和定位方面具有不同的服务质量(QoS)要求。为了在现实的移动场景中满足这些严格的QoS要求,需要一种智能高效的资源分配方案。本文研究了动态组播通信中基于深度强化学习(DRL)的车辆用户设备(V-UE)基于位置的资源分配中的信道拥塞问题,即在没有V-UE作为组头的情况下。使用DRL基站充当集中式代理。在城市交通模拟(SUMO)平台的TAPASCologne场景中,它适应了基于位置隔离的资源池中车辆密度造成的通道拥塞。系统级仿真表明,当资源池根据位置隔离时,基于drl的拥塞控制方法比传统的拥塞控制方案获得更好的分组接收比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Reinforcement Learning: Location-based Resource Allocation for Congested C-V2X Scenario
Cellular- Vehicle-to-Everything (C- V2X) communication as standardized in the 3rd generation partnership project (3GPP) plays an essential role in enabling fully autonomous driving. C- V2X envisions supporting various use-cases, e.g., platooning and remote driving, with varying quality of service (QoS) requirements regarding latency, reliability, data rate, and positioning. In order to ensure meeting these stringent QoS requirements in realistic mobility scenarios, an intelligent and efficient resource allocation scheme is required. This paper addresses channel congestion in location-based resource allocation based on Deep Reinforcement Learning (DRL) for vehicle user equipment (V-UE) in dynamic groupcast communication, i.e., without a V-UE acting as a group head. Using DRL base station acts as a centralized agent. It adapts the channel congestion due to vehicle density in resource pools segregated based on location in a TAPASCologne scenario in the Simulation of Urban Mobility (SUMO) platform. A system-level simulation shows that a DRL-based congestion approach can achieve a better packet reception ratio (PRR) than a legacy congestion control scheme when resource pools are segregated based on location.
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