READA: Redundancy Elimination for Accurate Data Aggregation in Wireless Sensor Networks

K. Khedo, Rubeena Doomun, Sonum Aucharuz
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引用次数: 50

Abstract

In monitoring systems, multiple sensor nodes can detect a single target of interest simultaneously and the data collected are usually highly correlated and redundant. If each node sends data to the base station, energy will be wasted and thus the network energy will be depleted quickly. Data aggregation is an important paradigm for compressing data so that the energy of the network is spent efficiently. In this paper, a novel data aggregation algorithm called Redundancy Elimination for Accurate Data Aggregation (READA) has been proposed. By exploiting the range of spatial correlations of data in the network, READA applies a grouping and compression mechanism to remove duplicate data in the aggregated set of data to be sent to the base station without largely losing the accuracy of the final aggregated data. One peculiarity of READA is that it uses a prediction model derived from cached values to confirm whether any outlier is actually an event which has occurred. From the various simulations conducted, it was observed that in READA the accuracy of data has been highly preserved taking into consideration the energy dissipated for aggregating the data.
无线传感器网络中精确数据聚合的冗余消除
在监测系统中,多个传感器节点可以同时检测单个感兴趣的目标,并且所收集的数据通常是高度相关和冗余的。如果每个节点都向基站发送数据,就会造成能量的浪费,从而导致网络能量的迅速消耗。数据聚合是一种重要的数据压缩范例,可以有效地利用网络的能量。提出了一种新的数据聚合算法——冗余消除精确数据聚合算法(READA)。通过利用网络中数据的空间相关性范围,READA采用分组和压缩机制,在不损失最终聚合数据准确性的情况下,删除聚合数据集中的重复数据,并将其发送到基站。READA的一个特点是,它使用从缓存值派生的预测模型来确认任何异常值是否实际上是已经发生的事件。从所进行的各种模拟中可以看出,考虑到聚合数据所消耗的能量,在READA中数据的准确性得到了很好的保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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