无线传感器网络中基于节能神经网络的聚类模型研究

C. Subha, S. Malarkan, K. Vaithinathan
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引用次数: 17

摘要

无线传感器网络的性能在很大程度上取决于其网络寿命。因此,在网络的部署和设计之后,以降低传感器节点能耗为目的的动态电源管理方法受到了许多研究的关注。近年来,由于神经网络具有简单的并行分布式计算、分布式存储、数据鲁棒性、传感器节点自动分类和传感器读取等优点,在无线传感器网络的节能方法中应用智能工具,尤其是神经网络,已经引起了人们的强烈兴趣。简单地从神经网络算法的输出中获得传感器数据的降维和分类预测可以降低通信成本和节约能源。基于神经网络的ART、ART1、FUZZY ART、IVEBF和EBCS等算法都很好地考虑了这些特征。本文讨论了这些算法及其在提高无线传感器网络寿命方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A survey on energy efficient neural network based clustering models in wireless sensor networks
The performance of wireless sensor networks strongly depends on their network lifetime. As a result, Dynamic Power Management approaches with the purpose of reduction of energy consumption in sensor node, after deployment and designing of the network, have drawn attentions of many research studies. Recently, there have been a strong interest to use the intelligent tools especially neural networks in energy efficient approach of Wireless sensor networks, due to their simple parallel distributed computation, distributed storage, data robustness, auto-classification off sensor nodes and sensor reading. Dimensionality reduction and prediction of classification of sensor data obtained simply from the outputs of the neural-networks algorithms can lead to lower communication costs and energy conservation. All these characteristics are well considered in the neural network based algorithms such as ART, ART1, FUZZY ART, IVEBF and EBCS. These algorithms and their performance in improving the lifetime of the WSN are discussed in this paper.
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