Electronics, Communication & Automation Technology

Reconfigurable Intelligence Surface Channel Estimation Algorithm Based on RDN

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  • School of Communication and Information Engineering,Xi’an University of Posts and Telecommunications,Xi’an 710121,Shaanxi,China
郑娟毅(1977-),女,高级工程师,主要从事无线通信研究。E-mail: zjyi@xupt.edu.cn

Received date: 2023-03-03

  Online published: 2023-07-13

Supported by

the National Natural Science Foundation of China(61901367)

Abstract

Channel estimation is a key technology in communication systems, which involves evaluating the channel characteristics experienced by signals during transmission, so that the receiver can effectively process and recover the received signals. In order to improve the quality of the communication system under the LOS channel occlusion communication, this study used an intelligent hypersurface to assist the existing communication system. In the smart hypersurface assisted wireless communication system, in addition to the line of sight channel between the base station and the user, there are also cascaded channels from the base station to the smart hypersurface and from the smart hypersurface to the user. The current channel estimation methods basically use traditional algorithms to estimate. In order to solve the problems of low accuracy and high computational complexity of the cascaded channel estimation with complex statistical distribution in the intelligent hypersurface assisted multi-user system, this paper proposed a channel estimation algorithm based on the combination of traditional algorithm and deep learning algorithm. The interpretability of traditional algorithms and the high performance of deep learning algorithms were utilized. On the basis of convolutional network, a denoising method based on residual dense network (RDN) was proposed. Firstly, the data set of the real environment was generated according to the simulation of the system parameters. And the traditional least squares (LS) method was used to rough estimate the channel, and the channel was regarded as a two-dimensional noisy image. Secondly, dense blocks (RDB) were used to fully extract the local features of noise data, and multi-channel convolution and residual network were used to fuse the data features. Finally, the trained model was used to estimate the data online and obtain the denoising channel. The proposed algorithm was verified from the channel estimation accuracy, and theoretical formula derivation and system simulation analysis were carried out on the Rician channel model. Simulation results show that the proposed algorithm improves the accuracy of channel estimation compared with the traditional algorithm.

Cite this article

ZHENG Juanyi, DONG Jiahao, ZHANG Qingjue, et al . Reconfigurable Intelligence Surface Channel Estimation Algorithm Based on RDN[J]. Journal of South China University of Technology(Natural Science), 2024 , 52(3) : 102 -111 . DOI: 10.12141/j.issn.1000-565X.230081

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