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Data Aggregation and Principal Component Analysis in WSNs

机译:无线传感器网络中的数据聚合和主成分分析

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Data aggregation plays an important role in wireless sensor networks (WSNs) as far as it reduces power consumption and boosts the scalability of the network, especially in topologies that are prone to bottlenecks (e.g. cluster-trees). Existing works in the literature use clustering approaches, principal component analysis (PCA) and/or compressed sensing (CS) strategies. Our contribution is aligned with PCA and explores whether a projection basis that is not the eigenvectors basis may be valid to sustain a normalized mean squared error (NMSE) threshold in signal reconstruction and reduce the energy consumption. We derivate first the NSME achieved with the new basis and elaborate then on the Jacobi eigenvalue decomposition ideas to propose a new subspace-based data aggregation method. The proposed solution reduces transmissions among the sink and one or more data aggregation nodes (DANs) in the network. In our simulations, we consider without loss of generality a single cluster network and results show that the new technique succeeds in satisfying the NMSE requirement and gets close in terms of energy consumption to the best possible solution employing subspace representations. Additionally, the proposed method alleviates the computational load with respect to an eigenvector-based strategy (by a factor of six in our simulations).
机译:数据聚合在无线传感器网络(WSN)中起着重要作用,因为它可以降低功耗并提高网络的可扩展性,尤其是在容易出现瓶颈的拓扑结构(例如群集树)中。文献中的现有作品使用聚类方法,主成分分析(PCA)和/或压缩感知(CS)策略。我们的贡献与PCA一致,并探讨了不是特征向量基础的投影基础是否可以有效地维持信号重建中的归一化均方误差(NMSE)阈值并降低能耗。我们首先导出用新的基础实现的NSME,然后详细阐述Jacobi特征值分解的思想,以提出一种新的基于子空间的数据聚合方法。提出的解决方案减少了网络中的接收器和一个或多个数据聚合节点(DAN)之间的传输。在我们的仿真中,我们在不失一般性的情况下考虑了单个群集网络,结果表明,该新技术成功满足了NMSE要求,并且在能耗方面与采用子空间表示的最佳解决方案接近。此外,所提出的方法减轻了基于特征向量的策略的计算负担(在我们的仿真中减少了六倍)。

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