基于回归模型和卷积神经网络的二维卫星图像路径损失预测

Usman Sammani Sani, D. Lai, O. A. Malik
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引用次数: 4

摘要

无线通信网络需要非常精确的设计,特别是5G网络在其异构超密集网络(H-UDN)架构中是各种网络类型的聚合。其局限性在于没有预测范围大、精度高的路径损耗模型。在这项工作中,我们使用卷积神经网络(CNN)和回归器的组合为多环境和多参数路径损失预测模型开发了一种新的架构。CNN从二维卫星图像中提取特征,并与一些数值特征一起训练成回归模型。使用各种机器学习算法作为回归量并评估其性能。与使用多层感知器代替回归器的深度学习架构相比,我们的模型实现了最小的均方根误差(RMSE)降低1.0262dB。我们还证明,使用由接收器和发射器位置的卫星图像以及从发射器到接收器的路径上的其他点组成的图像比仅使用接收器位置的图像改善了结果。
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A Hybrid Combination of a Convolutional Neural Network with a Regression Model for Path Loss Prediction Using Tiles of 2D Satellite Images
Wireless communications networks require very accurate design, especially for the 5G networks that is an aggregation of various network types in its Heterogeneous Ultra Dense Network (H-UDN) architecture. The limitation is that path loss models with large prediction scope and high accuracy are not available. In this work we developed a novel architecture for a multiple environment and multiple parameter path loss prediction model using a combination of a Convolutional Neural Network (CNN) and a regressor. The CNN extracts features from 2D satellite images and together with some numerical features are trained to a regressor model. Various machine learning algorithms were used as the regressor and their performances evaluated. A least decrease of 1.0262dB in Root Mean Squared Error (RMSE) was achieved by our model, in comparison to a deep learning architecture in which Multiple Layer Perceptron is used in place of the regressor. We also demonstrated that using an image composed of tiles of satellite images of the receiver and transmitter locations, and other points along the path from transmitter to receiver improves results over using the image at the receiver location only.
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