Publication | Closed Access
Application of a Composite Differential Evolution Algorithm in Optimal Neural Network Design for Propagation Path-Loss Prediction in Mobile Communication Systems
91
Citations
14
References
2013
Year
Artificial IntelligenceEngineeringMachine LearningNeural Network SizeTraffic PredictionGenetic AlgorithmSystems EngineeringDifferential EvolutionIntelligent OptimizationComputer EngineeringPropagation Path LossMobile Communication SystemsDeep LearningNeural Architecture SearchEvolutionary ProgrammingEvolving Neural NetworkArtificial Neural NetworksCivil EngineeringPropagation Path-loss Prediction
In this letter, we present an alternative procedure for the prediction of propagation path loss in urban environments, which is based on artificial neural networks (ANNs). The correct selection of a neural network size can increase its response speed and therefore increase the overall system performance. We apply a recently proposed Differential Evolution (DE) algorithm, namely the Composite DE (CoDE) in order to design an optimal ANN for path-loss propagation prediction. CoDE uses three different trial-vector generation strategies with three preset control parameter settings. We compare CoDE with other popular DE strategies. We present two different ANN design cases with two and three hidden layers, respectively. The general performance of both the ANNs 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.
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