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Optimal Artificial Neural Network design for propagation path-loss prediction using adaptive evolutionary algorithms

机译:基于自适应进化算法的传播路径损耗预测的最优人工神经网络设计

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In this paper we present an alternative procedure for the prediction of propagation path loss in urban environments, which is based on Artificial Neural Networks (ANN). The size of a neural network must be defined before it can be trained for any application. We apply different adaptive Differential Evolution (DE) algorithms, in order to design an optimal ANN for path loss propagation prediction. We present two different ANN design cases with two and three hidden layers respectively. The general performance of the both ANN shows their effectiveness to yield results with satisfactory accuracy in short time. The received results are compared to the respective ones yielded by the Ray-Tracing model and exhibit satisfactory accuracy.
机译:在本文中,我们提出了一种基于人工神经网络(ANN)的城市环境中传播路径损耗预测的替代程序。必须先定义神经网络的大小,然后才能针对任何应用进行训练。为了设计用于路径损耗传播预测的最佳ANN,我们应用了不同的自适应差分进化(DE)算法。我们提出两种分别具有两个和三个隐藏层的ANN设计案例。两种人工神经网络的总体性能都表明了它们在短时间内以令人满意的精度产生结果的有效性。将接收到的结果与Ray-Tracing模型产生的结果进行比较,并显示出令人满意的准确性。

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