利用机器学习技术和时间敏感型网络优化自动驾驶汽车网络中的交通调度

Ji-Hoon Kwon, Hyeong-Jun Kim, Suk Lee
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摘要

本研究探讨了在自动驾驶汽车网络中使用时敏网络(TSN)(一种确定性以太网)优化流量调度的问题。以太网具有高带宽和支持各种协议的兼容性,其应用范围正在从办公环境扩展到智能工厂、航空航天和汽车。TSN 是确定性以太网的代表技术,由时间同步、数据流预留、无缝冗余、帧抢占和预定流量等多种标准组成,是 IEEE 802.1 以太网的子标准,由 IEEE TSN 工作组制定。为了在 TSN 网络环境中最大限度地减少端到端延迟,确保实时传输,有必要在所有传输 ST(预定流量)的链路中安排传输时序。本文提出了应用机器学习(ML)技术优化流量调度的网络性能指标和方法。研究表明,流量调度问题的复杂度为 NP-hard,可以通过 ML 算法进行优化。对每种算法的性能进行了比较和分析,以确定最符合网络要求的调度算法。使用了强化学习算法,特别是 DQN(Deep Q Network,深度 Q 网络)和 A2C(Advantage Actor-Critic,优势行为批判),并提出了归一化性能指标(E2E 延迟、抖动和保护带宽使用)以及基于其加权和的评估函数。利用真实自动驾驶车辆网络的拓扑结构对每种算法的性能进行了评估,并比较了它们的优缺点。结果证实,基于人工智能的算法能有效优化 TSN 流量调度。这项研究表明,需要进一步开展理论和实践研究,以提高将确定性以太网应用于自主车辆网络的可行性,重点是时间同步和调度优化。
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Optimizing Traffic Scheduling in Autonomous Vehicle Networks Using Machine Learning Techniques and Time-Sensitive Networking
This study investigates the optimization of traffic scheduling in autonomous vehicle networks using time-sensitive networking (TSN), a type of deterministic Ethernet. Ethernet has high bandwidth and compatibility to support various protocols, and its application range is expanding from office environments to smart factories, aerospace, and automobiles. TSN is a representative technology of deterministic Ethernet and is composed of various standards such as time synchronization, stream reservation, seamless redundancy, frame preemption, and scheduled traffic, which are sub-standards of IEEE 802.1 Ethernet established by the IEEE TSN task group. In order to ensure real-time transmission by minimizing end-to-end delay in a TSN network environment, it is necessary to schedule transmission timing in all links transmitting ST (Scheduled Traffic). This paper proposes network performance metrics and methods for applying machine learning (ML) techniques to optimize traffic scheduling. This study demonstrates that the traffic scheduling problem, which has NP-hard complexity, can be optimized using ML algorithms. The performance of each algorithm is compared and analyzed to identify the scheduling algorithm that best meets the network requirements. Reinforcement learning algorithms, specifically DQN (Deep Q Network) and A2C (Advantage Actor-Critic) were used, and normalized performance metrics (E2E delay, jitter, and guard band bandwidth usage) along with an evaluation function based on their weighted sum were proposed. The performance of each algorithm was evaluated using the topology of a real autonomous vehicle network, and their strengths and weaknesses were compared. The results confirm that artificial intelligence-based algorithms are effective for optimizing TSN traffic scheduling. This study suggests that further theoretical and practical research is needed to enhance the feasibility of applying deterministic Ethernet to autonomous vehicle networks, focusing on time synchronization and schedule optimization.
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