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Application of artificial neural network modeling techniques to signal strength computation

机译:人工神经网络建模技术在信号强度计算中的应用

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摘要

This paper presents development of artificial neural network (ANN) models to compute received signal strength (RSS) for four VHF (very high frequency) broadcast stations using measured atmospheric parameters. The network was trained using Levenberg-Marquardt back-propagation (LMBP) algorithm. Evaluation of different effects of activation functions at the hidden and output layers, variation of number of neurons in the hidden layer and the use of different types of data normalisation were systematically applied in the training process. The mean and variance of calculated MSE (mean square error) for ten different iterations were compared for each network. From the results, the ANN model performed reasonably well as computed signal strength values had a good fit with the measured values. The computed MSE were very low with values ranging between 0.0027 and 0.0043. The accuracy of the trained model was tested on different datasets and it yielded good results with MSE of 0.0069 for one dataset and 0.0040 for another dataset. The measured field strength was also compared with ANN and ITU-R P. 526 diffraction models and a strong correlation was found to exist between the measured field strength and ANN computed signals, but no correlation existed between the measured field strength and the predicted field strength from diffraction model. ANN has thus proved to be a useful tool in computing signal strength based on atmospheric parameters.
机译:本文介绍了人工神经网络(ANN)模型的开发,用于使用测量的大气参数计算四个VHF(非常高频)广播站的接收信号强度(RSS)。使用Levenberg-Marquardt Back-Grows-Avapation(LMBP)算法培训网络。评估激活功能在隐藏和输出层的不同效果,在训练过程中系统地应用隐藏层中神经元数的变化以及使用不同类型的数据标准化。对每个网络进行比较计算MSE(均方误差)的计算MSE(均方误差)的平均值和方差。从结果,随着计算信号强度值的合理执行的ANN模型具有良好的拟合与测量值。计算的MSE非常低,值范围在0.0027和0.0043之间。在不同的数据集中测试了训练模型的准确性,并且在一个数据集的MSE为0.0069的MSE和其他数据集中产生了良好的结果。还将测量的场强与ANN和ITU-R P. 526衍射模型进行比较,发现在测量的场强和ANN计算信号之间存在强烈的相关性,但在测量的场强和预测场强之间没有相关的相关性来自衍射模型。因此,在基于大气参数的计算信号强度中被证明是一种有用的工具。

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