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A Data Collection Method Based on the Region Division in Opportunistic Networks

机译:机会网络中基于区域划分的数据收集方法

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The popularity of wearable devices and smart phones provide a great convenience for large-scale data collection. Owing to the non-uniform distribution of mobile sensors, the data quantity collected from different regions has a wide variation. So we design the region division algorithm that divides area into different density grades and sets appropriate sampling frequency on different regions. Furthermore, we propose Circle of Time Slice (CoTS) and Cardinal Number Timing Method (CNTM) to solve the sampling error when nodes move from one area to another. On this basis, we propose the Data Collection Algorithm Based on the Sampling Frequency (DC-BSF) to reduce the data redundancy. Simulations demonstrate that the method proposed in this paper can reduce data redundancy under the condition of achieving high coverage.
机译:可穿戴设备和智能电话的普及为大规模数据收集提供了极大的便利。由于移动传感器的分布不均匀,因此从不同区域收集的数据量会有很大的差异。因此,我们设计了区域划分算法,将区域划分为不同的密度等级,并在不同的区域设置适当的采样频率。此外,我们提出了时间片循环(CoTS)和基数计时方法(CNTM),以解决节点从一个区域移动到另一个区域时的采样误差。在此基础上,我们提出了基于采样频率的数据收集算法(DC-BSF),以减少数据冗余。仿真表明,本文提出的方法可以在实现高覆盖的情况下减少数据冗余。

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