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Impact of Model Uncertainties on the Accuracy of Spatial Interpolation Based Coverage Estimation

机译:模型不确定性对基于空间插值的覆盖率估计精度的影响

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Improved propagation prediction has become important due to emerging 5G and ultra-dense wireless networks. One important aspect in this domain is to understand and model better the spatial correlations of the underlying shadowing fields. In this work, we investigate the sources of uncertainty on the predictions made by employing the optimal linear predictor, namely emph{kriging}. We show that kriging is robust to the estimation errors of the spatial correlation structure. Moreover, we show that the amount of the training data (known data points) has great impact on the prediction error. Our results help to quantify the trade off between number of data points collected and accuracy that can be reached by interpolation. The results especially help to design and optimize expensive measurement and test drive campaigns. Another contribution of the paper is to explicitly show the capabilities of kriging for coverage prediction.
机译:由于新兴的5G和超密集无线网络,改进的传播预测已变得非常重要。该领域的一个重要方面是要更好地理解和建模基础阴影字段的空间相关性。在这项工作中,我们调查了采用最佳线性预测变量\ emph {kriging}所作的预测的不确定性来源。我们表明克里金法对空间相关结构的估计误差具有鲁棒性。此外,我们表明训练数据(已知数据点)的数量对预测误差有很大的影响。我们的结果有助于量化所收集的数据点数量与内插可达到的精度之间的折衷。结果尤其有助于设计和优化昂贵的测量和试驾活动。本文的另一个贡献是明确显示了克里金法用于覆盖率预测的功能。

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