Random access schemes are widely used in IoT wireless access networks to accommodate simplicity and power consumption constraints. As a result, the interference arising from overlapping IoT transmissions is a significant issue in such networks. Traditional signal detection methods are based on the well-established matched filter using the complex conjugate of the signal, which is proven as the optimal filter under additive white Gaussian noise. However, with the colored interference arising from the overlapping IoT transmissions, deep learning approaches are being considered as a better alternative. In this paper, we present a hybrid framework, HybNet, that switches between deep learning and match filter pathways based on the detected interference level. This helps the detector work in a broader range of conditions, optimally leveraging the matched filter and deep learning robustness. We compare the performance of several possible data modalities and detection architectures concerning the interference-to-noise ratio, demonstrating that the proposed HybNet surpasses the complex conjugate matched filter performance under interference-limited scenarios.
翻译:随机访问计划被广泛用于IoT无线接入网络,以适应简单和电力消耗的限制,因此,重叠的IoT传输引起的干扰是这类网络中的一个重要问题,传统信号探测方法的基础是使用复杂的信号聚合体,以完善的匹配过滤器为基础,这已被证明是添加白高斯噪音的最佳过滤器。然而,由于重叠的IoT传输造成的有色干扰,深层学习方法被视作一个更好的替代方法。在本文中,我们提出了一个混合框架,即HybNet,根据检测到的干扰程度,在深层学习和匹配过滤路径之间开关。这有助于探测器在更广泛的条件下工作,最佳地利用匹配的过滤器和深层学习的稳健性。我们比较了与干扰-噪音比率有关的几种可能的数据模式和检测结构的性能,表明拟议的HybNet超过了在受干扰的情景下与过滤器的复杂性能相匹配。