基于树结构线性逼近的无线传感器网络数据压缩

Chu-Ming Wang, Chia-Cheng Yen, Wen-Yen Yang, Jia-Shung Wang
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引用次数: 2

摘要

在无线传感器网络(WSNs)中,如何降低功耗从而延长系统寿命是维持服务的关键问题之一。根据无线电模型,与传感和处理相比,分组传输消耗的能量预算要多得多。因此,为了最终节省传输功率,需要对传感数据进行有效的压缩或滤波。近年来,基于模型的方案被证明是一种很有前途的解决方案,该方案通常采用分段线性函数来逼近时间数据。本文提出了一种基于最优率失真(R-D)关系的树结构线性逼近算法来压缩传感数据。主要设计目标有两个:(1)提供一个自下而上的过程来探索全局建模的最佳拟合分段划分;(2)同时考虑传感器的异质性,使用我们提出的速率失真调整。也就是说,设计了一个畸变分配过程,将畸变分配给感知异构特性的传感器节点。因此,所提出的时空方案适用于异构传感器、不同采样率和数据异常值。通过实际数据集仿真验证了该方法的有效性。对于几乎所有具有失真要求的组合,所提出的方法在数据约简方面表现出比先前方法更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tree-Structured Linear Approximation for Data Compression over WSNs
In wireless sensor networks (WSNs), how to reduce the power consumption thus lengthen the system life time is one of the key issues to sustain the services. According to the radio model, packet transmission depletes a much more substantial amount of the energy budget when compared to sensing and processing. Therefore, it is desirable to compress or filter the sensing data effectively in order to save the transmission power eventually. Recently, the model-based scheme is proved to be a promising solution, which usually approximate temporal data by a piecewise linear function. In this paper, a tree-structured linear approximation scheme is proposed to compress sensing data according to an optimal rate-distortion (R-D) relationship. The main design goals are two: (1) providing a bottom-up procedure to explore the best-fit piecewise partition for modeling globally, (2) considering the heterogeneity of sensors simultaneously using our proposed rate-distortion adjustment. That is, a distortion allocation procedure is designed to allocate the distortions to sensor nodes for aware of the heterogeneous properties. Thus the proposed spatio-temporal scheme is adaptable to heterogeneous sensors, various sampling rate, and outliers of data. A real-world dataset simulation is applied to demonstrate the effectiveness. For nearly all combinations with distortion requirements, the proposed method shows better performance than the earlier approaches in terms of data reduction.
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