Digital Twin Enabled Data-Driven Approach for Traffic Efficiency and Software-Defined Vehicular Network Optimization

Mohammad Sajid Shahriar, Suresh Subramaniam, Motoharu Matsuura, Hiroshi Hasegawa, Shih-Chun Lin
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Abstract

In the realms of the internet of vehicles (IoV) and intelligent transportation systems (ITS), software defined vehicular networks (SDVN) and edge computing (EC) have emerged as promising technologies for enhancing road traffic efficiency. However, the increasing number of connected autonomous vehicles (CAVs) and EC-based applications presents multi-domain challenges such as inefficient traffic flow due to poor CAV coordination and flow-table overflow in SDVN from increased connectivity and limited ternary content addressable memory (TCAM) capacity. To address these, we focus on a data-driven approach using virtualization technologies like digital twin (DT) to leverage real-time data and simulations. We introduce a DT design and propose two data-driven solutions: a centralized decision support framework to improve traffic efficiency by reducing waiting times at roundabouts and an approach to minimize flow-table overflow and flow re-installation by optimizing flow-entry lifespan in SDVN. Simulation results show the decision support framework reduces average waiting times by 22% compared to human-driven vehicles, even with a CAV penetration rate of 40%. Additionally, the proposed optimization of flow-table space usage demonstrates a 50% reduction in flow-table space requirements, even with 100% penetration of connected vehicles.
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交通效率和软件定义车载网络优化的数字孪生数据驱动方法
在车联网(IoV)和智能交通系统(ITS)领域,软件定义车载网络(SDVN)和边缘计算(EC)已成为提高道路交通效率的有前途的技术。然而,不断增加的联网自动驾驶汽车(CAV)和基于边缘计算的应用带来了多领域的挑战,例如由于 CAV 协调不力导致的交通流量效率低下,以及 SDVN 中由于连接性增加和三元内容可寻址存储器(TCAM)容量有限导致的流表溢出。为了解决这些问题,我们将重点放在数据驱动的方法上,使用数字孪生(DT)等虚拟化技术来利用实时数据和模拟。我们介绍了一种数字孪生设计,并提出了两种数据驱动型解决方案:一种是通过减少环岛等待时间来提高交通效率的集中式决策支持框架,另一种是通过优化 SDVN 中的流量入口寿命来最大限度地减少流量表溢出和流量重装的方法。仿真结果表明,与人类驾驶的车辆相比,决策支持框架可将平均等待时间缩短 22%,即使 CAV 的渗透率为 40%。此外,即使互联车辆的渗透率达到 100%,所提出的流量表空间使用优化方案也能使流量表空间需求减少 50%。
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