首页> 外文期刊>International Journal on Communications Antenna and Propagation >Investigation and Comparison of Generalization Ability of Multi-Layer Perceptron and Radial Basis Function Artificial Neural Networks for Signal Power Loss Prediction
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Investigation and Comparison of Generalization Ability of Multi-Layer Perceptron and Radial Basis Function Artificial Neural Networks for Signal Power Loss Prediction

机译:用于信号功率损耗预测的多层感知和径向基函数人工神经网络的泛化能力的调查与比较

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摘要

This research work investigates, compares and presents three different approaches to avoid poor generalization and to overcome the tendencies of over-fitting in Radial Basis Function (RBF) and Multi-Layer Perceptron (MLP) artificial neural networks, in order to enhance the prediction accuracy of signal power loss during electromagnetic signal propagation in metropolitan area using measured data from a Long-Term Evolution (LTE) network. These approaches are a variation of hidden layer neurons, early stopping and Bayesian Regularization techniques. In the variation of the hidden layer neurons in MLP network, an excellent prediction has been recorded with 40 neurons while an increase in the number of neurons leads to poor network generalization. The network shows the capability of modeling a moderate size propagation network and, for more complex networks, intermediary layers or network modifications are required. For RBF network, the generalization ability of the network increases as the network gets more complex with 70 neurons in the hidden layer giving the best prediction. Training RBF network using early stopping approach gives a better prediction with less errors compared to neuron variation in the hidden layer and Bayesian Regularization in MLP network. However, in RBF network training, there is no difference in the errors obtained when early stopping approach has been used compared to Bayesian Regularization approach. It models appropriately a complex network without signs of over-fitting, and because of its fixed three-layer architecture, there is no poor generalization resulting from architectural complexity which Bayesian regularization approach tackles.
机译:该研究工作调查,比较和提出了三种不同的方法,以避免普遍性差,并克服径向基函数(RBF)和多层感知(MLP)人工神经网络的过度拟合趋势,以提高预测准确性长期演化(LTE)网络中的Metodoplitan区域电磁信号传播中的信号功率损耗。这些方法是隐藏层神经元的变异,早期停止和贝叶斯正则化技术。在MLP网络中的隐藏层神经元的变化中,已经用40神经元记录了优异的预测,而神经元数量增加导致网络概括不良。该网络显示建模中等大小传播网络的能力,并且对于更复杂的网络,需要中间层或网络修改。对于RBF网络,网络的泛化能力随着网络在隐藏层中的70神经元变得更加复杂,提供最佳预测。使用早期停止方法训练RBF网络,与MLP网络中的隐藏层和贝叶斯正则化的神经元变化相比,误差更少。然而,在RBF网络训练中,与贝叶斯正规化方法相比,使用早期停止方法时,没有差异。它模拟了一个复杂的网络,没有过度拟合的迹象,而且由于其固定的三层架构,普通正规化方法解决的架构复杂性没有差的概率。

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