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A Machine Learning Approach to Predicting Coverage in Random Wireless Networks

机译:一种机器学习方法,以预测随机无线网络覆盖率

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There is a rich literature on the prediction of coverage in random wireless networks using stochastic geometry. Though valuable, the existing stochastic geometry-based analytical expressions for coverage are only valid for a restricted set of oversimplified network scenarios. Deriving such expressions for more general and more realistic network scenarios has so far been proven intractable. In this work, we adopt a data-driven approach to derive a model that can predict the coverage probability in any random wireless network. We first show that the coverage probability can be accurately approximated by a parametrized sigmoid-like function. Then, by building large simulation-based datasets, the relationship between the wireless network parameters and the parameters of the sigmoid-like function is modeled using a neural network.
机译:使用随机几何形状的随机无线网络中的覆盖率预测有丰富的文献。虽然有价值,但覆盖的现有的基于随机几何的分析表达式仅对受限制的超薄网络场景集有效。到目前为止,迄今为止,迄今为止侵害了这种表达。在这项工作中,我们采用数据驱动方法来导出可以预测任何随机无线网络中的覆盖概率的模型。我们首先表明覆盖概率可以通过参数化的矩形函数精确地近似。然后,通过构建大型基于仿真的数据集,使用神经网络建模无线网络参数和Sigmoid样功能的参数之间的关系。

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