室内场强预测的神经网络模型比较

I. Vilović, N. Burum, Z. Sipus
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引用次数: 10

摘要

本文比较了基于光线追踪、多层感知器和径向基函数网络的室内场强预测方法。神经网络作为射频传播预测的有力工具已经被证明。在训练神经网络时,选择合适的训练算法是非常重要的,因此我们针对多层感知器模型比较了几种训练算法。本案例以杜布罗夫尼克某大学楼道为例,进行了信号强度的计算、模拟和测量。结果表明,如果训练算法和神经网络结构选择得当,神经网络的场强预测效果优于传统模型。采用径向基函数神经网络模型得到了最佳的结果。
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A comparison of neural network models for indoor field strength prediction
This paper presents a comparison of the field strength prediction in indoor environments based on ray tracing, multilayer perceptron and radial basis function networks. It has been already shown for neural networks as powerful tool in RF propagation prediction. It is very important to choose proper algorithm for training a neural network, so we compared several training algorithms for the case of multilayer perceptron model. As the case used a corridor of university building in Dubrovnik, for which calculation, simulation and measurement of signal strength were obtained. The results show an improvement in field strength prediction with neural models over conventional models if training algorithm and neural network architecture are carefully chosen. The best results are obtained by the radial basis function neural network model.
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