首页> 外文期刊>Wireless communications & mobile computing >Quality Utilization Aware Based Data Gathering for Vehicular Communication Networks
【24h】

Quality Utilization Aware Based Data Gathering for Vehicular Communication Networks

机译:基于质量利用感知的车载通信网络数据收集

获取原文
           

摘要

The vehicular communication networks, which can employ mobile, intelligent sensing devices with participatory sensing to gather data, could be an efficient and economical way to build various applications based on big data. However, high quality data gathering for vehicular communication networks which is urgently needed faces a lot of challenges. So, in this paper, a fine-grained data collection framework is proposed to cope with these new challenges. Different from classical data gathering which concentrates on how to collect enough data to satisfy the requirements of applications, a Quality Utilization Aware Data Gathering (QUADG) scheme is proposed for vehicular communication networks to collect the most appropriate data and to best satisfy the multidimensional requirements (mainly including data gathering quantity, quality, and cost) of application. In QUADG scheme, the data sensing is fine-grained in which the data gathering time and data gathering area are divided into very fine granularity. A metric named “Quality Utilization” (QU) is to quantify the ratio of quality of the collected sensing data to the cost of the system. Three data collection algorithms are proposed. The first algorithm is to ensure that the application which has obtained the specified quantity of sensing data can minimize the cost and maximize data quality by maximizing QU. The second algorithm is to ensure that the application which has obtained two requests of application (the quantity and quality of data collection, or the quantity and cost of data collection) could maximize the QU. The third algorithm is to ensure that the application which aims to satisfy the requirements of quantity, quality, and cost of collected data simultaneously could maximize the QU. Finally, we compare our proposed scheme with the existing schemes via extensive simulations which well justify the effectiveness of our scheme.
机译:可以使用具有参与感测功能的移动,智能感测设备来收集数据的车载通信网络,可能是一种基于大数据构建各种应用程序的有效且经济的方式。然而,迫切需要的用于车辆通信网络的高质量数据收集面临许多挑战。因此,在本文中,提出了一种细粒度的数据收集框架来应对这些新挑战。与传统的数据收集侧重于如何收集足够的数据以满足应用程序的需求不同,针对车辆通信网络,提出了一种质量利用感知数据收集(QUADG)方案,以收集最合适的数据并最好地满足多维需求(主要包括应用程序的数据收集数量,质量和成本)。在QUADG方案中,数据传感是细粒度的,其中将数据收集时间和数据收集区域划分为非常精细的粒度。名为“质量利用率”(QU)的度量标准是量化收集的传感数据的质量与系统成本的比率。提出了三种数据收集算法。第一种算法是确保已获得指定数量的传感数据的应用程序可以通过最大化QU来最小化成本并最大化数据质量。第二种算法是确保已获得两个应用程序请求(数据收集的数量和质量,或数据收集的数量和成本)的应用程序可以最大化QU。第三种算法是确保旨在同时满足收集的数据的数量,质量和成本要求的应用程序可以最大化QU。最后,我们通过广泛的仿真将我们提出的方案与现有方案进行比较,这充分证明了该方案的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号