Robust packet loss compensation in the cloud-based TT & amp;C receiver using a predictive tracking loop with RBF network identification

Yimin Fan, Tian Liu, Ting Li, Yi Zhang, Liu Liu,Yang Liu

IET RADAR SONAR AND NAVIGATION(2023)

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摘要
In recent years, ground-based aerospace tracking, telemetry and control (TT & C) systems have been shifting towards an IP-based cloud TT & C network architecture to improve signal transmission efficiency and system flexibility. However, this new architecture presents new challenges for the performance of tracking loops in the cloud-based TT & C receiver. The authors present a predictive compensation tracking loop that addresses the problem of packet loss. The loop utilises radial basis function (RBF) online network identification for robust carrier and code frequency offset tracking. To account for packet loss, the phenomenon is modelled as a Bernoulli random process, and the predictive compensation loop uses the trained RBF network to maintain the system's tracking state. When normal data are received again, the loop can track the received information well and align the frequency offset locking state. The authors compare the performance of the proposed predictive compensation tracking loop with traditional loop tracking performance using data hold strategies under different packet loss rates. The results demonstrate the effectiveness of the proposed approach in maintaining stable tracking and solving in the discontinuous reception of the loop under packet loss environments. The proposed predictive compensation tracking loop offers a practical solution for addressing packet loss, which is a common issue in real-world applications. The authors propose a novel predictive compensation tracking loop for packet loss, which utilises radial basis function online network identification for robust carrier and code frequency offset tracking. This solution addresses the problem of unstable tracking due to intermittent reception caused by packet loss.image
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关键词
aerospace navigation,compensation,learning (artificial intelligence),receivers,tracking
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