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Performance Analysis of Efficient Pipeline Architectures for Underwater Big Data Analytics

机译:水下大数据分析有效管道架构的性能分析

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Underwater sensor networks (UWSNs) have emerged as an essential technology for various undersea applications. However, the use of acoustic links in UWSNs poses critical challenges in terms of overall delay, energy consumption and low bandwidth, which make the transmission of raw data in large sizes impractical. In our previous work, we employed various nodes (processing nodes, gateway nodes, and sensing nodes) that are used to construct different candidate architectures (i.e. single, pipeline, and hybrid of parallel/pipeline). We exploit the idea of in-network data processing in order to reduce the volume of data and extract only valuable information. In this paper, we analytically calculate and compare the performance of the various types of proposed architectures. The tradeoff between the cost of processing and the expected speedup is also analyzed. The results confirm our previous research hypothesis that processing the collected data locally and applying the idea of pipeline/parallel processing leads to significant improvement in the performance of UWSNs.
机译:水下传感器网络(UWSNS)已成为各种Underea应用的基本技术。然而,在整体延迟,能量消耗和低带宽方面,在UWSN中使用声学链接造成关键挑战,这使得在大尺寸不切实际地使原始数据传输。在我们以前的工作中,我们使用了用于构造不同候选架​​构的各种节点(处理节点,网关节点和感测节点)(即单个,流水线和并行/流水线的混合)。我们利用网络内数据处理的想法,以减少数据量并仅提取有价值的信息。在本文中,我们分析了计算和比较各种类型的拟议架构的性能。还分析了加工成本与预期加速之间的权衡。结果证实了我们以前的研究假设,用于处理本地收集的数据并应用管道/并行处理的思想导致UWSNS性能的显着改善。

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