PEACH: Proactive and Environment-Aware Channel State Information Prediction with Depth Images

Serkut Ayvaşık, Fidan Mehmeti, Edwin Babaians, W. Kellerer
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引用次数: 2

Abstract

Up-to-date and accurate prediction of Channel State Information (CSI) is of paramount importance in Ultra-Reliable Low-Latency Communications (URLLC), specifically in dynamic environments where unpredictable mobility is inherent. CSI can be meticulously tracked by means of frequent pilot transmissions, which on the downside lead to an increase in metadata (overhead signaling) and latency, which are both detrimental for URLLC. To overcome these issues, in this paper, we take a fundamentally different approach and propose PEACH, a machine learning system which utilizes environmental information with depth images to predict CSI amplitude in beyond 5G systems, without requiring metadata radio resources, such as pilot overheads or any feedback mechanism. PEACH exploits depth images by employing a convolutional neural network to predict the current and the next 100 ms CSI amplitudes. The proposed system is experimentally validated with extensive measurements conducted in an indoor environment, involving two static receivers and two transmitters, one of which is placed on top of a mobile robot. We prove that environmental information can be instrumental towards proactive CSI amplitude acquisition of both static and mobile users on base stations, while providing an almost similar performance as pilot-based methods, and completely avoiding the dependency on feedback and pilot transmission for both downlink and uplink CSI information. Furthermore, compared to demodulation reference signal based traditional pilot estimation in ideal conditions without interference, our experimental results show that PEACH yields the same performance in terms of average bit error rate when channel conditions are poor (using low order modulation), while not being much worse when using higher modulation orders, like 16-QAM or 64-QAM. More importantly, in the realistic cases with interference taken into account, our experiments demonstrate considerable improvements introduced by PEACH in terms of normalized mean square error of CSI amplitude estimation, up to 6 dB, when compared to traditional approaches.
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基于深度图像的主动环境感知信道状态信息预测
最新和准确的信道状态信息(CSI)预测在超可靠低延迟通信(URLLC)中至关重要,特别是在不可预测移动性固有的动态环境中。CSI可以通过频繁的导频传输来精确地跟踪,其缺点是导致元数据(开销信号)和延迟的增加,这对URLLC都是有害的。为了克服这些问题,在本文中,我们采用了一种完全不同的方法,并提出了PEACH,这是一种机器学习系统,它利用带有深度图像的环境信息来预测5G以上系统中的CSI振幅,而不需要元数据无线电资源,如飞行员开销或任何反馈机制。PEACH通过使用卷积神经网络来预测当前和下一个100毫秒CSI振幅,从而利用深度图像。该系统通过在室内环境中进行的大量测量进行了实验验证,包括两个静态接收器和两个发射器,其中一个放置在移动机器人的顶部。我们证明了环境信息可以有助于基站静态和移动用户的主动CSI振幅采集,同时提供与基于导频的方法几乎相似的性能,并且完全避免了对下行和上行CSI信息的反馈和导频传输的依赖。此外,在无干扰的理想条件下,与基于传统导频估计的解调参考信号相比,我们的实验结果表明,当信道条件较差(使用低阶调制)时,PEACH在平均误码率方面具有相同的性能,而当使用更高的调制顺序(如16-QAM或64-QAM)时,PEACH的性能并没有差太多。更重要的是,在考虑干扰的实际情况下,我们的实验表明,与传统方法相比,PEACH在CSI振幅估计的归一化均方误差方面带来了相当大的改进,最高可达6 dB。
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