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Analysis of Radial Basis Function network for localization framework in Wireless Sensor Networks

机译:无线传感器网络定位框架的径向基函数网络分析

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Wireless Sensor Networks (WSNs) are nowadays extensively preferred for collecting data in the field of disaster management, military operations, habitat monitoring, medical monitoring, and environment monitoring. The location of the sensor which is sending this data is very important for developing efficient routing algorithms, energy efficient communication protocols, and other Quality of services (QoS). Localization is the process by which the sensor motes in the network can identify their own location in the overall network. In this paper, we analyse Radial Basis Function (RBF) Network for developing localization framework in WSNs. RBF based localization framework is to be analysed for faster speed of convergence and low cost of computation. We present analysis of RBF through probabilistic neural network and generalized regression neural network in this paper. The proposed method can be used for designing cost-effective localization framework.
机译:如今,无线传感器网络(WSN)在收集灾害管理,军事行动,栖息地监控,医疗监控和环境监控领域的数据方面被广泛首选。发送此数据的传感器的位置对于开发有效的路由算法,节能通信协议以及其他服务质量(QoS)非常重要。本地化是网络中传感器节点可以识别其在整个网络中自己的位置的过程。在本文中,我们分析了径向基函数(RBF)网络以开发WSN中的定位框架。将基于RBF的定位框架进行分析,以实现更快的收敛速度和较低的计算成本。本文通过概率神经网络和广义回归神经网络对RBF进行分析。该方法可用于设计具有成本效益的本地化框架。

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