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An Improved Recurrent Neural Network for Radio Propagation Loss prediction

机译:一种改进的递归神经网络,用于无线电传输损耗预测

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Prediction of the radio propagation loss using a numeric parabolic equation method is often accepted for its accuracy, but the large computational time is a hindrance in applications requiring real-time situation awareness. A modified Elman recurrent neural network is proposed and developed to resolve this problem. In this paper, the three dimensional parabolic equation models is used to provide the sample set of the neural network, and improved BP algorithm is used for the training and study of network. Then the Elman network model established is used to predict propagation loss in rest region. In contrast to other prediction models, the results show that Elman neural network that dramatically improves the computation speed with a better precision is reliable and practical.
机译:人们常常接受使用数值抛物线方程法预测无线电传播损耗的准确性,但是在需要实时态势感知的应用中,较大的计算时间是一个障碍。提出并开发了一种改进的Elman递归神经网络来解决该问题。本文使用三维抛物线方程模型来提供神经网络的样本集,并使用改进的BP算法进行网络的训练和研究。然后建立的Elman网络模型用于预测静止区域的传播损耗。与其他预测模型相比,结果表明,以更高的精度显着提高计算速度的Elman神经网络是可靠且实用的。

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