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Echo-Liquid State Deep Learning for 360° Content Transmission and Caching in Wireless VR Networks With Cellular-Connected UAVs

机译:具有蜂窝连接无人机的无线VR网络中的360°内容传输和缓存的回声状态深度学习

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In this paper, the problem of content caching and transmission is studied for a wireless virtual reality (VR) network in which cellular-connected unmanned aerial vehicles (UAVs) capture videos on live games or sceneries and transmit them to small base stations (SBSs) that service the VR users. To meet the VR delay requirements, the UAVs can extract specific visible content (e.g., user field of view) from the original 360 degrees VR data and send this visible content to the users so as to reduce the traffic load over backhaul and radio access links. The extracted visible content consists of 120 degrees horizontal and 120 degrees vertical images. To further alleviate the UAV-SBS backhaul traffic, the SBSs can also cache the popular contents that users request. This joint content caching and transmission problem are formulated as an optimization problem whose goal is to maximize the users' reliability defined as the probability that the content transmission delay of each user satisfies the instantaneous VR delay target. To address this problem, a distributed deep learning algorithm that brings together new neural network ideas from liquid state machine (LSM), and echo state networks (ESNs) is proposed. The proposed algorithm enables each SBS to predict the users' reliability so as to find the optimal contents to cache and content transmission format for each cellular-connected UAV. Analytical results are derived to expose the various network factors that impact content caching and content transmission format selection. Simulation results show that the proposed algorithm yields 25.4% and 14.7% gains, in terms of reliability compared to Q-learning and a random caching algorithm, respectively.
机译:在本文中,研究了无线虚拟现实(VR)网络的内容缓存和传输问题,在该网络中,蜂窝连接无人飞行器(UAV)捕获实况游戏或场景中的视频并将其传输到小型基站(SBS)为VR用户提供服务。为了满足VR延迟要求,UAV可以从原始360度VR数据中提取特定的可见内容(例如,用户视野)并将此可见内容发送给用户,从而减少回程和无线电访问链路上的流量负载。提取的可见内容包括120度水平图像和120度垂直图像。为了进一步减轻UAV-SBS的回程流量,SBS还可以缓存用户要求的流行内容。这个共同的内容缓存和传输问题被表述为一个优化问题,其目标是最大化用户的可靠性,定义为每个用户的内容传输延迟满足即时VR延迟目标的概率。为了解决这个问题,提出了一种分布式深度学习算法,该算法将来自液态状态机(LSM)和回声状态网络(ESN)的新神经网络思想融合在一起。所提出的算法使每个SBS能够预测用户的可靠性,从而找到要缓存的最佳内容以及每个蜂窝连接的无人机的内容传输格式。得出分析结果以揭示影响内容缓存和内容传输格式选择的各种网络因素。仿真结果表明,与Q学习和随机缓存算法相比,该算法在可靠性方面分别提高了25.4%和14.7%。

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