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基于迭代估计的未知衰落信道学习跟踪

Learning Tracking Over Unknown Fading Channels Based on Iterative Estimation.

作者信息

Shen Dong, Yu Xinghuo

出版信息

IEEE Trans Neural Netw Learn Syst. 2022 Jan;33(1):48-60. doi: 10.1109/TNNLS.2020.3027475. Epub 2022 Jan 5.

Abstract

With fast developments in communication technologies, a large number of practical systems adopt the networked control structure. For this structure, the fading problem is an emerging issue among other network problems. It has not been extensively investigated how to guarantee superior control performance in the presence of unknown fading channels. This article presents a learning strategy for gradually improving the tracking performance. To this end, an iterative estimation mechanism is first introduced to provide necessary statistical information such that the biased signals after transmission can be corrected before being utilized. Then, learning control algorithms incorporating with a decreasing step-size sequence are designed for both output and input fading cases. The convergence in both mean-square and almost-sure senses of the proposed schemes is strictly proved under mild conditions. Illustrative simulations verify the effectiveness of the entire learning framework.

摘要

随着通信技术的快速发展,大量实际系统采用了网络控制结构。对于这种结构,衰落问题是其他网络问题中出现的一个新问题。在存在未知衰落信道的情况下,如何保证卓越的控制性能尚未得到广泛研究。本文提出了一种用于逐步提高跟踪性能的学习策略。为此,首先引入一种迭代估计机制来提供必要的统计信息,以便在传输后的有偏信号被利用之前对其进行校正。然后,针对输出和输入衰落情况,设计了结合递减步长序列的学习控制算法。在所提出的方案在温和条件下严格证明了均方和几乎必然意义上的收敛性。说明性仿真验证了整个学习框架的有效性。

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