Categorizing WSN's sensory data using Self Organizing Maps

A. Mannan, H. Babri
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引用次数: 2

Abstract

Wireless Sensor Networks suffer greatly from their limited battery power whose utilization is increased manifolds as a node has to transmit or receive fairly large amount of data. Several algorithms, some for scheduling battery power e.g. Dynamic Voltage Scheduling, Static Voltage Scheduling, Dynamic Power Management etc and other with emphasis on designing efficient routing protocols have been designed in past. Some algorithms, however, address this very issue at software level by writing memory and CPU friendly programs. This paper proposes Self Organizing Maps (SOM) based unsupervised Artificial Neural Network learning technique to enhance average battery life. Proposed system allows all active nodes to transmit their sensory data to the base station node (BSN) which has a 2×3 SOM running on it. Sensor nodes start sending data to the BSN; it keeps on making categories and puts relevant data in appropriate categories/ classes. SOM is trained after it has received a number of such transmissions from active nodes. Class definitions are then broadcast to all active nodes by BSN and from then onwards they transmit only the class definitions (that are fairly lesser in size) to BSN and hence significant battery power is conserved. We have showed an overall 48.5% battery power saving using the above technique.
利用自组织地图对WSN的传感数据进行分类
无线传感器网络受到其有限的电池电量的极大影响,电池电量的利用率随着节点必须传输或接收相当大量的数据而增加。过去已经设计了几种算法,其中一些用于调度电池电量,如动态电压调度,静态电压调度,动态电源管理等,其他的重点是设计有效的路由协议。然而,有些算法通过编写内存和CPU友好的程序,在软件级别解决了这个问题。提出了基于自组织地图(SOM)的无监督人工神经网络学习技术来提高电池平均寿命。提出的系统允许所有活动节点将它们的感知数据传输到运行在其上的2×3 SOM的基站节点(BSN)。传感器节点开始向BSN发送数据;它不断进行分类,并将相关数据放在适当的类别/类中。SOM在接收到来自活动节点的大量此类传输后进行训练。类定义然后由BSN广播到所有活动节点,从那时起,它们只将类定义(大小相对较小)传输到BSN,因此节省了大量电池电量。我们已经展示了使用上述技术可以节省48.5%的电池电量。
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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