PTDU:基于公交系统的城市人群感知数据上传框架

Zhenlong Peng, Jian An, Xiaolin Gui, Tianjie Wu
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引用次数: 0

摘要

如何利用不同参与者之间的机会性交流实现有效的数据传输一直是群体感知领域的研究热点。公共交通系统作为一种城市基础设施,具有公交机动性可预测、覆盖面积大、交互时间稳定等明显优势,可以传递非实时信息。在本文中,我们提出了一个新的框架来提高PTS的数据传输性能。首先,选取多个公交站点,根据其覆盖效用值设置WIFI接入点(AP)。其次,根据参与者上下车时的记录,在此框架下建立参与者的行程预测表。当乘客登上公共汽车时,他可能的路线可以根据TPT推测出来。第三,在转移之前,每个任务都标有任务标题,其中包括目标地址,数据大小,可能还有奖励等。所有潜在用户都可以收到任务标题并决定是否参与任务,然后根据TPT选择最合适的参与者进行数据中继。最后,我们采用了两种上传方案:直接等待上传方案(DWU)和基于预测和上下文的贪婪上传方案(PCGU)。结果表明,PCGU的平均运行时间为68.5分钟,比预定时间减少81%;DWU的平均运行时间为49.5分钟,比预定时间减少86.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PTDU: Public transit system based framework of data upload in urban crowd sensing
How to achieve effective data transmission between different participators based on their opportunistic communication is always a hot research topic in Crowd sensing (CS). Public transit system(PTS), as a city infrastructure, has several obvious advantages, such as predictable bus mobility, large coverage area, and stable interaction time to deliver non-real time information. In this paper, we propose a new framework to improve the performance of data delivery by PTS. Firstly, several bus stops are selected to set WIFI access point (AP) according to their coverage utility values. Secondly, the trip prediction tables (TPT) of participators can be established in this framework on the basis of the records collected when the participators get on and off the buses. When a passenger gets on a bus, his probable route can be speculated out based on TPT. Thirdly, before being transferred, every task is marked with a task title, which includes an objective address, data size, and maybe the reward etc. All the potential users can receive the task title and decide whether to participate in the task, and then according to TPT, the best suitable participators can be chosen out to relay the data. At last, we adopt two uploading schemes: Directly Waiting for Upload scheme (DWU) and Prediction and Context based Greedy Uploading scheme (PCGU). The results show that averagely, PCGU consumes 68.5 minutes which is 81% less than the scheduled time, while DWU consumes 49.5 minutes which is 86.3 % less than the scheduled time.
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