Liang Zhao;Tianyu Li;Guiying Meng;Ammar Hawbani;Geyong Min;Ahmed Y. Al-Dubai;Albert Y. Zomaya
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In particular, this study develops a VEC computing offloading scheme, namely, a Lagrange multipliers-based adaptive computing offloading with prediction model, considering multiple RSUs and vehicles within their coverage areas. First, the VEC network architecture employs GAN to establish a prediction model, utilizing the powerful predictive capabilities of GAN to forecast the maximum distance of future trajectories, thereby reducing the decision space for task offloading. Subsequently, we propose a real-time adaptive model and adjust the parameters in different scenarios to accommodate the dynamic characteristic of the VEC network. Finally, we apply Lagrange Multiplier-based Non-Uniform Genetic Algorithm (LM-NUGA) to make task offloading decision. Effectively, this algorithm provides reliable and efficient computing services. The results from simulation indicate that our proposed scheme efficiently reduces the computation cost for the whole VEC system. 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Finally, we apply Lagrange Multiplier-based Non-Uniform Genetic Algorithm (LM-NUGA) to make task offloading decision. Effectively, this algorithm provides reliable and efficient computing services. The results from simulation indicate that our proposed scheme efficiently reduces the computation cost for the whole VEC system. 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引用次数: 0
摘要
车载边缘计算(VEC)是移动边缘计算(MEC)的交通专用版本,专为车载场景设计。任务卸载允许车辆将计算任务发送到附近的路边单元(RSU),以降低整个系统的计算成本。然而,由于极其灵活的网络结构和复杂的交通数据,最先进的解决方案尚未完全解决低延迟大规模任务结果反馈的难题。在本文中,我们探讨了 VEC 中带有结果反馈成本的联合任务卸载和资源分配问题。具体而言,本研究开发了一种 VEC 计算卸载方案,即基于拉格朗日乘法器的自适应计算卸载预测模型,考虑了多个 RSU 及其覆盖区域内的车辆。首先,VEC 网络架构采用 GAN 建立预测模型,利用 GAN 强大的预测能力预测未来轨迹的最大距离,从而减少任务卸载的决策空间。随后,我们提出了实时自适应模型,并在不同场景下调整参数,以适应 VEC 网络的动态特性。最后,我们应用基于拉格朗日乘法器的非均匀遗传算法(LM-NUGA)来进行任务卸载决策。该算法能有效地提供可靠、高效的计算服务。仿真结果表明,我们提出的方案有效降低了整个 VEC 系统的计算成本。这为新一代颠覆性的可靠卸载方案铺平了道路。
Novel Lagrange Multipliers-Driven Adaptive Offloading for Vehicular Edge Computing
Vehicular Edge Computing (VEC) is a transportation-specific version of Mobile Edge Computing (MEC) designed for vehicular scenarios. Task offloading allows vehicles to send computational tasks to nearby Roadside Units (RSUs) in order to reduce the computation cost for the overall system. However, the state-of-the-art solutions have not fully addressed the challenge of large-scale task result feedback with low delay, due to the extremely flexible network structure and complex traffic data. In this paper, we explore the joint task offloading and resource allocation problem with result feedback cost in the VEC. In particular, this study develops a VEC computing offloading scheme, namely, a Lagrange multipliers-based adaptive computing offloading with prediction model, considering multiple RSUs and vehicles within their coverage areas. First, the VEC network architecture employs GAN to establish a prediction model, utilizing the powerful predictive capabilities of GAN to forecast the maximum distance of future trajectories, thereby reducing the decision space for task offloading. Subsequently, we propose a real-time adaptive model and adjust the parameters in different scenarios to accommodate the dynamic characteristic of the VEC network. Finally, we apply Lagrange Multiplier-based Non-Uniform Genetic Algorithm (LM-NUGA) to make task offloading decision. Effectively, this algorithm provides reliable and efficient computing services. The results from simulation indicate that our proposed scheme efficiently reduces the computation cost for the whole VEC system. This paves the way for a new generation of disruptive and reliable offloading schemes.
期刊介绍:
The IEEE Transactions on Computers is a monthly publication with a wide distribution to researchers, developers, technical managers, and educators in the computer field. It publishes papers on research in areas of current interest to the readers. These areas include, but are not limited to, the following: a) computer organizations and architectures; b) operating systems, software systems, and communication protocols; c) real-time systems and embedded systems; d) digital devices, computer components, and interconnection networks; e) specification, design, prototyping, and testing methods and tools; f) performance, fault tolerance, reliability, security, and testability; g) case studies and experimental and theoretical evaluations; and h) new and important applications and trends.