基于数据流的无线传感器网络应用算法

Andre L. L. Aquino, C. M. Figueiredo, E. Nakamura, L. Buriol, A. Loureiro, A. O. Fernandes, C. Coelho
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引用次数: 27

摘要

无线传感器网络能量有限,其寿命的延长是其设计中的重要问题之一。通常,WSN从环境中收集大量的数据。与传统的遥感(基于卫星收集大图像、声音文件或特定的科学数据)相比,传感器网络倾向于从几个节点产生大量连续的小数据和面向元组的数据,这些数据构成数据流。在这项工作中,我们提出并评估了两种基于数据流的算法,它们使用采样和草图技术来减少WSN中的数据流量,从而降低延迟和能耗。具体来说,采样方案提供了一个只有log n项的样本来表示n个元素的原始数据。尽管减少了采样,但采样解决方案仍保持了良好的数据质量。仿真结果表明,该方法在不丢失数据代表性的前提下,有效地延长了网络生存期,降低了时延。如果应用程序不那么依赖于数据精度或网络在异常情况下运行(例如,剩余资源很少或有紧急情况),这种技术对于设计节能和时间限制的传感器网络非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Stream Based Algorithms For Wireless Sensor Network Applications
A wireless sensor network (WSN) is energy constrained, and the extension of its lifetime is one of the most important issues in its design. Usually, a WSN collects a large amount of data from the environment. In contrast to the conventional remote sensing - based on satellites that collect large images, sound files, or specific scientific data - sensor networks tend to generate a large amount of sequential small and tuple- oriented data from several nodes, which constitutes data streams. In this work, we propose and evaluate two algorithms based on data stream, which use sampling and sketch techniques, to reduce data traffic in a WSN and, consequently, decrease the delay and energy consumption. Specifically, the sampling solution, provides a sample of only log n items to represent the original data of n elements. Despite of the reduction, the sampling solution keeps a good data quality. Simulation results reveal the efficiency of the proposed methods by extending the network lifetime and reducing the delay without loosing data representativeness. Such a technique can be very useful to design energy-efficient and time-constrained sensor networks if the application is not so dependent on the data precision or the network operates in an exception situation (e.g., there are few resources remaining or there is an urgent situation).
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