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Machine Learning Based Context-Predictive Car-to-Cloud Communication Using Multi-Layer Connectivity Maps for Upcoming 5G Networks

机译:使用面向多层5G网络的多层连接映射基于机器学习的上下文预测车对云通信

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While cars were only considered as means of personal transportation for a long time, they are currently transcending to mobile sensor nodes that gather highly up-to-date information for crowdsensing-enabled big data services in a smart city context. Consequently, upcoming 5G communication networks will be confronted with massive increases in Machine-type Communication (MTC) and require resource-efficient transmission methods in order to optimize the overall system performance and provide interference-free coexistence with human data traffic that is using the same public cellular network. In this paper, we bring together mobility prediction and machine learning based channel quality estimation in order to improve the resource-efficiency of car-to-cloud data transfer by scheduling the transmission time of the sensor data with respect to the anticipated behavior of the communication context. In a comprehensive field evaluation campaign, we evaluate the proposed context-predictive approach in a public cellular network scenario where it is able to increase the average data rate by up to 194% while simultaneously reducing the mean uplink power consumption by up to 54%.
机译:尽管汽车在很长一段时间内仅被视为个人交通工具,但它们目前已超越了移动传感器节点的位置,这些节点收集最新信息,以在智能城市的环境中提供基于人群感应的大数据服务。因此,即将到来的5G通信网络将面临机器类型通信(MTC)的大量增长,并且需要资源有效的传输方法,以优化整体系统性能并与使用相同的人类数据流量提供无干扰的共存公共蜂窝网络。在本文中,我们将移动性预测和基于机器学习的信道质量估计结合在一起,以便通过针对通信的预期行为安排传感器数据的传输时间来提高车到云数据传输的资源效率语境。在一项全面的现场评估活动中,我们在公共蜂窝网络场景中评估了拟议的情景预测方法,该方法能够将平均数据速率提高多达194%,同时将平均上行链路功耗降低多达54%。

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