DOA Estimation Algorithm for Reconfigurable Intelligent Surface Co-Prime Linear Array Based on Multiple Signal Classification Approach
Abstract
:1. Introduction
- We proposed a layout of DAC module in an RIS array, so as to convert RIS array into an equivalent ULA. Then we introduce the concept of RIS CLA, which consists of RIS-based CLAs, and proposed a method to implement RIS CLA via controller.
- We proposed the signal receiving model of RIS CLA, based on its agile characteristics to change the configuration of subarrays.
- On the grounds of the model above, we, for the very first time, introduce a signal preprocessing method before MUSIC-based DOA estimation is conducted. During the preprocessing, the covariance matrix of the received signal is vectorized so as to construct a virtual difference array with higher DOF.
- To verify the feasibility as well as the resolution of the proposed algorithm, several simulative experiments were conducted. Results show that the DOF of RIS CLA improved by more than 30% compared with the traditional CLA. Moreover, the proposed algorithm can distinguish multiple irrelevant incident signals effectively. In terms of resolution, the accuracy of the proposed algorithm exceeds that of the traditional MUSIC algorithm by more than 70%, and is even 30% better than that of the MUSIC algorithm based on traditional CLA, under low SNR scenario.
2. Related Works
3. DOA Estimation Based on Traditional CLA
3.1. Typical CLA Structure
3.2. DOA Estimation Algorithm of CLA Based on MUSIC Method
4. DOA Estimation Algorithm for RIS CLA Based on MUSIC
4.1. RIS CLA
4.2. DOA Estimation Based on RIS CLA
- Control the RIS array, so that the -th () element is turned on, while other elements remain off. Denote this subarray as Subarray 1 and take sampling for snapshots;
- Control the RIS array, so that the -th () element is turned on, while other elements remain off. Denote this subarray as Subarray 2 and take sampling for snapshots;
- Change a pair of co-prime numbers and repeat steps 1 and 2 for times;
- Construct the observation of , namely according to the received signals;
- Vectorize , and obtain , the observation of ;
- Sort in phase order and remove redundant rows, mark the result as ;
- Decompose the covariance matrix of , and obtain the signal subspace and noise subspace ;
- Search the spectral peak of , and obtain , the estimation value of .
5. Simulation Result
5.1. Spatial DOF of Antenna Array
5.2. Effectiveness of the Algorithm
5.3. Resolution Performance
6. Conclusions & Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Lan, T.; Huang, K.; Jin, L.; Xu, X.; Sun, X.; Zhong, Z. DOA Estimation Algorithm for Reconfigurable Intelligent Surface Co-Prime Linear Array Based on Multiple Signal Classification Approach. Information 2022, 13, 72. https://doi.org/10.3390/info13020072
Lan T, Huang K, Jin L, Xu X, Sun X, Zhong Z. DOA Estimation Algorithm for Reconfigurable Intelligent Surface Co-Prime Linear Array Based on Multiple Signal Classification Approach. Information. 2022; 13(2):72. https://doi.org/10.3390/info13020072
Chicago/Turabian StyleLan, Tianyu, Kaizhi Huang, Liang Jin, Xiaoming Xu, Xiaoli Sun, and Zhou Zhong. 2022. "DOA Estimation Algorithm for Reconfigurable Intelligent Surface Co-Prime Linear Array Based on Multiple Signal Classification Approach" Information 13, no. 2: 72. https://doi.org/10.3390/info13020072
APA StyleLan, T., Huang, K., Jin, L., Xu, X., Sun, X., & Zhong, Z. (2022). DOA Estimation Algorithm for Reconfigurable Intelligent Surface Co-Prime Linear Array Based on Multiple Signal Classification Approach. Information, 13(2), 72. https://doi.org/10.3390/info13020072