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Hierarchical Data Aggregation Using Compressive Sensing (HDACS) in WSNs

机译:WSN中使用压缩感知(HDACS)的分层数据聚合

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摘要

Energy efficiency is one of the key objectives in data gathering in wireless sensor networks (WSNs). Recent research on energy-efficient data gathering in WSNs has explored the use of Compressive Sensing (CS) to parsimoniously represent the data. However, the performance of CS-based data gathering methods has been limited since the approaches failed to take advantage of judicious network configurations and effective CS-based data aggregation procedures. In this article, a novel Hierarchical Data Aggregation method using Compressive Sensing (HDACS) is presented, which combines a hierarchical network configuration with CS. Our key idea is to set multiple compression thresholds adaptively based on cluster sizes at different levels of the data aggregation tree to optimize the amount of data transmitted. The advantages of the proposed model in terms of the total amount of data transmitted and data compression ratio are analytically verified. Moreover, we formulate a new energy model by factoring in both processor and radio energy consumption into the cost, especially the computation cost incurred in relatively complex algorithms. We also show that communication cost remains dominant in data aggregation in the practical applications of large-scale networks. We use both the real-world data and synthetic datasets to test CS-based data aggregation schemes on the SIDnet-SWANS simulation platform. The simulation results demonstrate that the proposed HDACS model guarantees accurate signal recovery performance. It also provides substantial energy savings compared with existing methods.
机译:能源效率是无线传感器网络(WSN)数据收集的主要目标之一。无线传感器网络中有关节能数据收集的最新研究已经探索了使用压缩感知(CS)来简化表示数据的方法。但是,基于CS的数据收集方法的性能受到限制,因为这些方法无法利用明智的网络配置和有效的基于CS的数据聚合过程。在本文中,提出了一种使用压缩传感(HDACS)的新颖的分层数据聚合方法,该方法将分层网络配置与CS结合在一起。我们的关键思想是根据数据聚合树不同级别上的簇大小自适应地设置多个压缩阈值,以优化传输的数据量。通过分析验证了该模型在传输的数据总量和数据压缩率方面的优势。此外,我们通过将处理器和无线电能耗两者都计入成本,尤其是在相对复杂的算法中产生的计算成本,来制定新的能源模型。我们还表明,在大型网络的实际应用中,通信成本在数据聚合中仍然占主导地位。我们使用真实数据和综合数据集在SIDnet-SWANS仿真平台上测试基于CS的数据聚合方案。仿真结果表明,所提出的HDACS模型可以保证准确的信号恢复性能。与现有方法相比,它还可以节省大量能源。

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