Parallel Processing of Sensor Network Data Using Column-oriented Databases

Kyung-Chang Kim , Choung-Seok Kim
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引用次数: 3

Abstract

Many wireless sensor network (WSN) applications require join of sensor data belonging to various sensor nodes. For join processing, it is important to minimize the communication cost since it is the main consumer of battery power. In this paper, we introduce a parallel join technique for sensor networks. A WSN consists of many independent sensor nodes and provides a natural platform for a shared-nothing architecture to carry out parallel processing. The proposed parallel join algorithm is based on sensor data that are stored in column-oriented databases. A column-oriented database store table data column-wise rather than row-wise as in traditional relational databases. The proposed algorithm is energy-efficient for two clear reasons. First, unlike relational databases, only relevant columns are shipped to the join region for final join processing. Second, parallel join processing of sensor data also improves performance. The performance analysis shows that the proposed algorithm outperforms join algorithms for sensor data that are based on relational databases.

基于列式数据库的传感器网络数据并行处理
许多无线传感器网络(WSN)应用需要连接属于不同传感器节点的传感器数据。对于join处理,最小化通信成本是很重要的,因为它是电池电量的主要消耗者。本文介绍了一种用于传感器网络的并行连接技术。无线传感器网络由许多独立的传感器节点组成,为无共享架构提供了一个自然的平台来进行并行处理。提出的并行连接算法是基于存储在面向列数据库中的传感器数据。面向列的数据库按列存储表数据,而不是像传统关系数据库那样按行存储表数据。该算法的高能效有两个明显的原因。首先,与关系数据库不同,只有相关的列被传送到连接区域进行最终的连接处理。其次,传感器数据的并行连接处理也提高了性能。性能分析表明,该算法优于基于关系数据库的传感器数据连接算法。
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