从传感器节点优化按需数据流

J. Traub, S. Breß, T. Rabl, Asterios Katsifodimos, V. Markl
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引用次数: 35

摘要

实时传感器数据支持多种应用,如智能计量、交通监控和体育分析。在物联网中,数十亿传感器节点形成传感器云,并为分析系统提供数据流。然而,不可能以最大频率将所有可用数据传输到所有应用程序。因此,我们需要根据应用程序的需求定制数据流。我们提供了一种技术,可以在保持所需准确性的同时优化通信成本。我们的技术根据大量并发查询的数据需求来安排跨大量传感器的读取。我们引入了用户定义的采样函数,这些函数定义了查询的数据需求,并促进了各种自适应采样技术,从而减少了传输的数据量。此外,我们在查询之间共享传感器读取和数据传输。我们对真实数据的实验表明,我们的方法可以节省高达87%的数据传输。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized on-demand data streaming from sensor nodes
Real-time sensor data enables diverse applications such as smart metering, traffic monitoring, and sport analysis. In the Internet of Things, billions of sensor nodes form a sensor cloud and offer data streams to analysis systems. However, it is impossible to transfer all available data with maximal frequencies to all applications. Therefore, we need to tailor data streams to the demand of applications. We contribute a technique that optimizes communication costs while maintaining the desired accuracy. Our technique schedules reads across huge amounts of sensors based on the data-demands of a huge amount of concurrent queries. We introduce user-defined sampling functions that define the data-demand of queries and facilitate various adaptive sampling techniques, which decrease the amount of transferred data. Moreover, we share sensor reads and data transfers among queries. Our experiments with real-world data show that our approach saves up to 87% in data transmissions.
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