Adaptive-PCA: An event-based data aggregation using principal component analysis for WSNs

Patcharapol Poekaew, P. Champrasert
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引用次数: 11

Abstract

Dimensionality reduction techniques are convenient for data aggregation to reduce battery energy consumption in sensor nodes. Normally, principal component analysis (PCA), a dimensionality reduction technique, has been used for data aggregation in WSNs. However, PCA yields to data errors when the sensing data are not related. The PCA processing time is also an issue in an urgent situation that the sensing data are required to be transmitted to the base station instantly. This paper proposes a novel data aggregation mechanism for WSNs, called Adaptive-PCA. In Adaptive-PCA, PCA is performed dynamically based on the sensing data. In a normal situation, PCA is performed for data aggregation to reduce the number of transmitted packets. On the other hand, in an urgent situation, sensing data change dramatically, PCA is not performed; the sensing data are transmitted to the base station instantly. Adaptive-PCA consists of two schemes which are 1) event checker and 2) PCA data accuracy checker. These two schemes drive each sensor node whether perform PCA or instantly transmit the sensing data. The simulation results show that Adaptive-PCA adjusts the number of transmitted packets to the environmental changes. Using Adaptive-PCA, the total battery energy consumption is less than that of a traditional WSN. Also, the data accuracy of Adaptive-PCA is higher than that of Non-adaptive-PCA.
自适应主成分分析:一种基于事件的数据聚合方法
降维技术便于数据聚合,降低传感器节点的电池能耗。通常,主成分分析(PCA)是一种降维技术,用于WSNs的数据聚合。然而,当感知数据不相关时,PCA会产生数据误差。在需要将传感数据即时传输到基站的紧急情况下,PCA处理时间也是一个问题。本文提出了一种新的无线传感器网络数据聚合机制——自适应pca。自适应主成分分析是基于感知数据动态地进行主成分分析。在正常情况下,通过PCA进行数据聚合,减少传输报文的数量。另一方面,在紧急情况下,传感数据变化剧烈,不进行主成分分析;传感数据立即传输到基站。自适应主成分分析包括两种方案:1)事件检查和2)主成分分析数据精度检查。这两种方案驱动每个传感器节点执行PCA或立即传输传感数据。仿真结果表明,自适应主成分分析能够根据环境的变化调整传输数据包的数量。采用自适应主成分分析,电池总能耗低于传统的无线传感器网络。自适应主成分分析的数据精度高于非自适应主成分分析。
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