D2D-Enabled Reliable Data Collection for Mobile Crowd Sensing

Pengfei Wang, Zhen Yu, Chi Lin, Leyou Yang, Yaqing Hou, Qiang Zhang
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引用次数: 6

Abstract

With increasing more powerful sensing capacities of mobile devices, the Mobile Crowd Sensing (MCS) system requires to collect larger sensing data from participants. Nevertheless, collecting such large volume of data will cost a lot for participants, base stations and MCS server. Even worse, some sensing data cannot satisfy the MCS sensing requirement due to the low quality and are filtered by the MCS server in clouds. Inspired by the D2D technique, where mobile devices can communicate directly with the help of the nearby base station, in 5G networks, we propose the Reliable Data Collection (RDC) algorithm to validate the generated sensing data at device sides in this paper. To be specific, the whole progress is formulated as a Probability problem of Discovering Reliable sensing data (PDR) at client sides, and Expectation Maximization (EM) is leveraged to devise the algorithm. Finally, the extensive simulations and real-world use case are conducted to evaluate the performance of RDC algorithm, and the result shows that RDC outperforms the other two benchmarks in estimating accuracy and saving data collection cost.
用于移动人群传感的d2d可靠数据收集
随着移动设备感知能力的不断增强,移动人群感知(MCS)系统需要从参与者那里收集更大的感知数据。然而,收集如此大量的数据对于参与者、基站和MCS服务器来说都是非常昂贵的。更糟糕的是,一些感知数据由于质量不高而无法满足MCS感知需求,被云中的MCS服务器过滤掉。受5G网络中移动设备可以直接与附近基站通信的D2D技术的启发,我们在本文中提出了可靠数据收集(RDC)算法来验证设备端生成的传感数据。具体来说,整个过程被表述为在客户端发现可靠传感数据(PDR)的概率问题,并利用期望最大化(EM)来设计算法。最后,通过大量的仿真和实际用例对RDC算法的性能进行了评估,结果表明RDC算法在估计精度和节省数据收集成本方面优于其他两种基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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