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Sparsely Self-Supervised Generative Adversarial Nets for Radio Frequency Estimation

机译:用于射频估计的稀疏自我监督生成对抗网络

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Radio frequency (RF) estimation plays a significant role in cellular network's planning and optimization. The conventional methods for RF estimation are mainly based on radio propagation models, which suffer from low accuracy and coarse granularity. Distinguished from existing methods, we propose sparsely self-supervised generative adversarial nets (SS-GAN), a novel data-driven model to generate the RF maps of an area from irregularly distributed measurement samples. SS-GAN meticulously adopts the standard GAN framework, where the generator learns the distribution of true observations under the guidance of the discriminator that discriminates whether the input data is from real samples or from generated outputs. Competition in the minmax game between generator and discriminator drives them to improve their capability, until the generator is indistinguishable from the true RF distribution. Specifically, on top of the GAN framework, SS-GAN carries out a variety of operations to enhance the estimation: (1) In addition to observations of the measured RF coverage and RF interference, SS-GAN also employs a collection of crucial auxiliary information (e.g., geographic data) as additional input features to the GAN framework so as to precisely characterize the RF environment; (2) To dampen the training instability, a new lightweight reconstruction loss is introduced to the objective function of SS-GAN rather than solely using the adversarial loss, which aims to impose a weak supervision on the generated RF maps according to estimation accuracy; (3) Moreover, SS-GAN designs an innovative sparsely self-supervised (SS) learning mechanism that facilitates the validation of the estimated results for a model lacking direct ground truth knowledge. Extensive experiments on a real-world 4G LTE dataset demonstrate that SS-GAN can substantially improve the estimation accuracy over the state-of-the-art baselines. Comparison results are presented through visualized case studies and quantitative statistics.
机译:射频(RF)估计在蜂窝网络的规划和优化中起着重要作用。常规的RF估计方法主要基于无线电传播模型,该模型具有较低的精度和较粗糙的粒度。与现有方法不同,我们提出了稀疏自我监督的生成对抗网络(SS-GAN),这是一种新型的数据驱动模型,可以从不规则分布的测量样本中生成区域的RF图。 SS-GAN精心采用标准GAN框架,在此基础上,生成器在鉴别器的指导下学习真实观测值的分布,该鉴别器区分输入数据是来自真实样本还是来自生成的输出。在minmax游戏中,生成器和鉴别器之间的竞争驱使它们提高其能力,直到生成器与真实的RF分布无法区分为止。具体而言,在GAN框架的顶部,SS-GAN进行了多种操作来增强估计:(1)除了观察测量的RF覆盖范围和RF干扰之外,SS-GAN还采用了关键的辅助信息的集合(例如,地理数据)作为GAN框架的附加输入功能,以精确表征RF环境; (2)为了减轻训练的不稳定性,在SS-GAN的目标函数中引入了一种新的轻量级重建损失,而不是仅仅使用对抗损失,其目的是根据估计精度对生成的RF图进行弱监督; (3)此外,SS-GAN设计了一种创新的稀疏自我监督(SS)学习机制,该机制有助于验证缺少直接地面真相知识的模型的估计结果。在现实世界中的4G LTE数据集上进行的大量实验表明,SS-GAN可以大大提高当前技术水平基线上的估计精度。通过可视化的案例研究和定量统计来提供比较结果。

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