Energy Enhancement of WSN with Deep Learning based SOM Scheduling Algorithm

S. S. Sivaraju, C. Kumar
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引用次数: 2

Abstract

Energy efficiency is one of the primary requirements for designing a successful Wireless Sensor Network (WSN) model. The WSN systems are generally made with a group of nodes that are operated with a small size battery device. To improve the energy efficiency of such WSNs several methodologies like clustering approach, mobile node technique and optimal route planning designs were developed. Scheduling method is yet an efficient model that is widely used in WSN applications, that allows the nodes to be operated only for a certain prescribed time. The proposed work utilizes the Self Organizing Maps (SOM) approach for improving the performances of the scheduling algorithms to a certain limit. SOM is a kind of artificial neural network that analyzes the problem based on competitive learning rather than the backpropagation methods. The work compares the proposed algorithm with the traditional Ant Colony and Software Defined Network approaches, wherein the proposed approach has shown an improvement in terms of energy conservation and network lifetime.
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基于深度学习SOM调度算法的WSN能量增强
能源效率是设计一个成功的无线传感器网络(WSN)模型的主要要求之一。无线传感器网络系统通常由一组节点组成,这些节点由一个小尺寸的电池设备操作。为了提高无线传感器网络的能量利用率,研究了聚类方法、移动节点技术和最优路由规划设计等方法。调度方法是目前广泛应用于无线传感器网络的一种有效模型,它允许节点只在规定的时间内运行。本文利用自组织映射(SOM)方法在一定程度上提高了调度算法的性能。SOM是一种基于竞争学习而不是反向传播方法来分析问题的人工神经网络。该工作将所提出的算法与传统的蚁群和软件定义网络方法进行了比较,其中所提出的方法在节能和网络寿命方面显示出改进。
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