基于分层边缘的MCS生态系统中的自主数据采集

M. Marjanović, Aleksandar Antonic, Ivana Podnar Žarko
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引用次数: 3

摘要

移动群体感知(MCS)是一种人类驱动的感知范式,它使普通公民能够使用他们的移动设备,成为环境的积极观察者。由于参与MCS任务的设备数量众多,MCS业务产生了大量的数据,这些数据需要通过网络传输,而用户固有的移动性会使信息迅速过时,需要高效的数据处理。由于传统的基于云的架构可能会增加数据传播延迟和网络流量,因此需要新的解决方案来优化通过网络传输的数据量。在我们之前的工作中,我们已经表明,边缘计算是一种很有前途的技术,可以分散MCS服务,并通过在移动用户附近移动计算来降低数据处理的复杂性。在本文中,我们引入了一种新的方法来减少分层边缘MCS生态系统中的冗余数据量。特别是,我们建议在移动设备和边缘服务器上使用Bloom过滤器数据结构,以使参与MCS任务的用户能够自主地做出是否向边缘服务器提供数据的明智决策。布隆滤波被证明是一种有效的技术,可以避免在并配置的移动设备上的冗余传感器活动,降低数据处理的复杂性和网络流量,同时可以有效地指示MCS数据在某个位置和时间点是否有价值。我们根据过滤器的大小和误报的概率来评估布隆过滤器,并分析与不同元素的预期数量相关的丢失数据读数的数量。我们的分析表明,滤波器的尺寸和错误率都足够小,可以用于MCS。
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Autonomous Data Acquisition in the Hierarchical Edge-Based MCS Ecosystem
Mobile crowdsensing (MCS) is a human-driven sensing paradigm that empowers ordinary citizens to use their mobile devices and become active observers of the environment. Due to the large number of devices participating in MCS tasks, MCS services generate a huge amount of data which needs to be transmitted over the network, while the inherent mobility of users can quickly make information obsolete, and requires efficient data processing. Since the traditional cloud-based architecture may increase the data propagation latency and network traffic, novel solutions are needed to optimize the amount of data which is transmitted over the network. In our previous work we have shown that edge computing is a promising technology to decentralize MCS services and reduce the complexity of data processing by moving computation in the proximity of mobile users. In this paper, we introduce a novel approach to reduce the amount of redundant data in the hierarchical edge-based MCS ecosystem. In particular, we propose the usage of Bloom filter data structure on mobile devices and edge servers to enable users participating in MCS tasks to make autonomous informed decisions on whether to contribute data to the edge servers or not. Bloom filter proves to be an efficient technique to obviate redundant sensor activity on collocated mobile devices, reduce the complexity of data processing and network traffic, while in the same time gives useful indication whether MCS data is valuable at a certain location and point in time. We evaluate Bloom filter with respect to filter size and probability of false positives, and analyze the number of lost data readings in relation to expected number of different elements. Our analysis shows that both filter size and error rate are sufficiently small to be used in MCS.
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