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Performance analysis of resource-aware framework classification, clustering and frequent items in wireless sensor networks

机译:无线传感器网络中资源感知框架分类,聚类和频繁项的性能分析

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Reliability device Wireless Sensor Network (WSN) can be measured through the effective utilization of energy in the form of battery, memory and CPU. The source energy became a major part of the WSN so that the required energy efficiency techniques to maximize the performance. In the process, implemented energy efficiency carried out by maximizing the process of selection of data to be processed and stored as raw data by applying the concept data mining of existing data. The implementation done by applying an algorithm that is resource-aware framework with Light Weight Classification (LWClass), Light Weight Frequent Item (LWF) and Light Weight Clustering (LWCluster). From the three forms of efficiency of the algorithm is obtained with a value efesiensi pada LWClass, LWF, and algorithms LWCluster each have an efficiency of 14.32%, 15.88% and 17.71%. Then usability of Resource Aware (RA) is proven to improve the efficiency and lifetime of a network of WSNs, reaching 14–17% and 10–11 hours.
机译:可靠性设备无线传感器网络(WSN)可以通过有效利用电池,内存和CPU形式的能量来进行测量。源能源成为WSN的重要组成部分,因此需要使用能效技术来最大化性能。在此过程中,通过应用现有数据的概念数据挖掘,通过最大化选择要处理并存储为原始数据的数据的过程来实现能效。通过应用一种算法来完成该实现,该算法是具有轻量级分类(LWClass),轻量级频繁项(LWF)和轻量级聚类(LWCluster)的资源感知框架。从三种效率形式中,使用值efesiensi pada LWClass,LWF和LWCluster算法分别具有14.32%,15.88%和17.71%的效率。然后证明了资源感知(RA)的可用性可以提高WSN网络的效率和生存期,分别达到14-17%和10-11小时。

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