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(ε, δ)-Approximate Aggregation Algorithms in Dynamic Sensor Networks

机译:动态传感器网络中的(ε,δ)-近似聚合算法

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摘要

Aggregation operations are important in WSN applications. Since large numbers of applications only require approximate aggregation results rather than the exact ones, some approximate aggregation algorithms have been proposed to save energy. However, the error bounds of these algorithms are fixed and it is impossible to adjust the error bounds automatically, so they cannot meet the requirement of arbitrary precision required by various users. Thus, a uniform sampling-based algorithm was proposed by the authors of this paper to satisfy arbitrary precision requirement. Unfortunately, this uniform sampling-based algorithm is only suitable for static sensor networks. To overcome the shortcoming of the uniform sampling-based algorithm, this paper proposes four Bernoulli sampling-based and distributed approximate aggregation algorithms to process the snapshot and continuous aggregation queries in dynamic sensor networks. Theoretical analysis and experimental results show that the proposed algorithms have high performance in terms of accuracy and energy consumption.
机译:聚合操作在WSN应用程序中很重要。由于大量的应用程序只需要近似的聚合结果而不是精确的聚合结果,因此提出了一些近似的聚合算法以节省能源。但是,这些算法的误差范围是固定的,不可能自动调整误差范围,因此不能满足各种用户所要求的任意精度的要求。因此,本文作者提出了一种基于均匀采样的算法来满足任意精度要求。不幸的是,这种基于统一采样的算法仅适用于静态传感器网络。为了克服基于统一采样算法的缺点,提出了四种基于伯努利采样和分布式近似聚合算法来处理动态传感器网络中的快照和连续聚合查询。理论分析和实验结果表明,所提算法在准确性和能耗上均具有较高的性能。

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