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Deep Reinforcement Learning for Computation Offloading and Caching in Fog-Based Vehicular Networks

机译:基于雾的车辆网络中的计算卸载和缓存的深增强学习

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The role of fog computing in future vehicular networks is becoming significant, enabling a variety of applications that demand high computing resources and low latency, such as augmented reality and autonomous driving. Fog-based computation offloading and service caching are considered two key factors in efficient execution of resource-demanding services in such applications. While some efforts have been made on computation offloading in fog computing, a limited amount of work has considered joint optimization of computation offloading and service caching. As fog platforms are usually equipped with moderate computing and storage resources, we need to judiciously decide which services to be cached when offloading computation tasks to maximize the system performance. The heterogeneity, dynamicity, and stochastic properties of vehicular networks also pose challenges on optimal offloading and resource allocation. In this paper, we propose an intelligent computation offloading architecture with service caching, considering both peer-pool and fog-pool computation offloading. An optimization problem of joint computation offloading and service caching is formulated to minimize the task processing time and long-term energy utilization. Finally, we propose an algorithm based on deep reinforcement learning to solve this complex optimization problem. Extensive simulations are undertaken to verify the feasibility of our proposed scheme. The results show that our proposed scheme exhibits an effective performance improvement in computation latency and energy consumption compared to the chosen baseline.
机译:雾计算在未来的车辆网络中的作用变得显着,使各种应用需要高计算资源和低延迟,例如增强现实和自主驾驶。基于FOG的计算卸载和服务缓存被认为是有效地执行这些应用中资源苛刻服务的两个关键因素。虽然在雾计算中对计算卸载进行了一些努力,但有限的工作已经考虑了计算卸载和服务缓存的联合优化。由于FOG平台通常配备适中的计算和存储资源,我们需要在卸载计算任务以最大化系统性能时,我们需要明智地确定要缓存的服务。车辆网络的异质性,动力学和随机特性也对最佳卸载和资源分配构成挑战。在本文中,我们提出了一种智能计算卸载架构,与服务缓存,考虑对等池和雾池计算卸载。配方地,共同计算卸载和服务缓存的优化问题,以最小化任务处理时间和长期能量利用。最后,我们提出了一种基于深度加强学习的算法来解决这个复杂的优化问题。进行广泛的模拟,以验证我们拟议计划的可行性。结果表明,与所选基线相比,我们所提出的方案表现出计算潜伏期和能量消耗的有效性能提高。

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