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首页> 外文期刊>Nae more, journal of marine sciences >PROPAGATION PREDICTION FOR INDOOR WIRELESS COMMUNICATION BASED ON NEURAL NETWORKS
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PROPAGATION PREDICTION FOR INDOOR WIRELESS COMMUNICATION BASED ON NEURAL NETWORKS

机译:基于神经网络的室内无线通信传播预测

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The installation of indoor radio systems requires rather detailed propagation characteristics for any arbitrary configuration, so appropriate wave propagation model must be established. In spite of a number proposed solutions for prediction of the propagation characteristics in WLAN environment, it is difficult to say that we have completely satisfied solution. A neural network propagation model that was trained for particular environment was developed. The network architecture is based on the multilayer perceptron. The neural network results are additionally compared with the numerical results obtained by the deterministic 3-D ray tracing model. The ray tracing model includes three reflected rays from the walls and other obstacles what was enough accurate for the given environment. The neural network is used to absorb the knowledge about given environment through training with three access points. Using such obtained knowledge the network is used to predict signal strength at any spot of space under consideration. The various training algorithms were applied to the network to achieve the best convergence results and best possible network model behavior. The network model was trained by Scaled Conjugate Gradient (SCG), Conjugate Gradient of Fletcher-Reeves (CGF), Quasi-Newton (QN), and Levenberg-Marquardt (LM) algorithms. The comparison of the obtained results is presented.
机译:室内无线电系统的安装对于任何任意配置都需要相当详细的传播特性,因此必须建立适当的波传播模型。尽管有许多建议的解决方案来预测WLAN环境中的传播特性,但很难说我们已经完全满意了。开发了针对特定环境训练的神经网络传播模型。网络体系结构基于多层感知器。将神经网络结果与确定性3-D射线跟踪模型获得的数值结果进行比较。光线追踪模型包括来自墙壁和其他障碍物的三道反射光线,对于给定的环境而言,这些光线足够准确。神经网络用于通过三个访问点的训练来吸收有关给定环境的知识。利用这样获得的知识,网络被用于预测所考虑的空间的任何点处的信号强度。将各种训练算法应用于网络,以实现最佳的收敛结果和最佳的网络模型行为。该网络模型通过比例共轭梯度(SCG),弗莱彻-里夫斯(CGF),准牛顿(QN)和Levenberg-Marquardt(LM)算法进行训练。给出了获得的结果的比较。

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