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Computation Offloading in a Cognitive Vehicular Networks with Vehicular Cloud Computing and Remote Cloud Computing

机译:使用车辆云计算和远程云计算的认知车辆网络中的计算卸载

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摘要

To satisfy the explosive growth of computation-intensive vehicular applications, we investigated the computation offloading problem in a cognitive vehicular networks (CVN). Specifically, in our scheme, the vehicular cloud computing (VCC)- and remote cloud computing (RCC)-enabled computation offloading were jointly considered. So far, extensive research has been conducted on RCC-based computation offloading, while the studies on VCC-based computation offloading are relatively rare. In fact, due to the dynamic and uncertainty of on-board resource, the VCC-based computation offloading is more challenging then the RCC one, especially under the vehicular scenario with expensive inter-vehicle communication or poor communication environment. To solve this problem, we propose to leverage the VCC’s computation resource for computation offloading with a perception-exploitation way, which mainly comprise resource discovery and computation offloading two stages. In resource discovery stage, upon the action-observation history, a Long Short-Term Memory (LSTM) model is proposed to predict the on-board resource utilizing status at next time slot. Thereafter, based on the obtained computation resource distribution, a decentralized multi-agent Deep Reinforcement Learning (DRL) algorithm is proposed to solve the collaborative computation offloading with VCC and RCC. Last but not least, the proposed algorithms’ effectiveness is verified with a host of numerical simulation results from different perspectives.
机译:为了满足计算密集型车辆应用的爆炸性增长,我们调查了认知车辆网络(CVN)中的计算卸载问题。具体地,在我们的方案中,共同考虑车辆云计算(VCC)和远程云计算(RCC)的计算卸载。到目前为止,在基于RCC的计算卸载上进行了广泛的研究,而基于VCC的计算卸载的研究相对较少。事实上,由于车载资源的动态和不确定性,基于VCC的计算卸载更具挑战,然后是RCC一,特别是在具有昂贵的车辆间通信或通信环境不良的车辆场景下。为了解决这个问题,我们建议利用VCC的计算资源以具有感知剥削方式的计算卸载,这主要包括资源发现和计算卸载两个阶段。在资源发现阶段,在动作观察历史上,提出了长期短期存储器(LSTM)模型来预测下次时隙在下次资源的内容资源。此后,基于所获得的计算资源分布,提出了一种分散的多代理深度增强学习(DRL)算法来解决与VCC和RCC的协同计算卸载。最后但并非最不重要的是,通过来自不同观点的一系列数值模拟结果来验证所提出的算法的有效性。

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