| Literature DB >> 35890805 |
Ningjun Ruan1,2, Han Wang3, Fangqing Wen2,4, Junpeng Shi5.
Abstract
Direction-of-arrival (DOA) estimation is the preliminary stage of communication, localization, and sensing. Hence, it is a canonical task for next-generation wireless communications, namely beyond 5G (B5G) or 6G communication networks. Both massive multiple-input multiple-output (MIMO) and millimeter wave (mmW) bands are emerging technologies that can be implemented to increase the spectral efficiency of an area, and a number of expectations have been placed on them for future-generation wireless communications. Meanwhile, they also create new challenges for DOA estimation, for instance, through extremely large-scale array data, the coexistence of far-field and near-field sources, mutual coupling effects, and complicated spatial-temporal signal sampling. This article discusses various open issues related to DOA estimation for B5G/6G communication networks. Moreover, some insights on current advances, including arrays, models, sampling, and algorithms, are provided. Finally, directions for future work on the development of DOA estimation are addressed.Entities:
Keywords: DOA estimation; array signal processing; massive MIMO
Year: 2022 PMID: 35890805 PMCID: PMC9318173 DOI: 10.3390/s22145125
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Illustration of beamforming in B5G/6G wireless communication networks.
Figure 2Schematic diagram of DOA-based positioning using two cooperative deciphers: (left) 2D positioning using 1D-DOA estimation; (right) 3D positioning using 2D-DOA estimation.
Advantages and disadvantages of typical algorithms.
| Method | Advantages | Disadvantages |
|---|---|---|
| MUSIC | Suitable for arbitrary geometry | Computationally inefficient, off-grid issues (can be avoided by root-MUSIC) |
| ESPRIT | Closed-form solution | Only suitable for uniform array geometry |
| PM | Computationally economic | Sensitive to small snapshots |
| Matrix pencil | Suitable for single snapshot | Sensitive to noise power |
| Sparse algorithms | Super-resolution, insensitive to prior knowledge of source number | Computationally inefficient, off-grid issues |
Figure 3Illustration of near-field source and far-field source.
Figure 4(a) Mutual coupling effect in DOA estimation with a ULA; (b) illustration of a coprime array; (c) EMVS array.
Advantages and disadvantages of sparse scalar/vector sensor array.
| Array Type | Advantages | Disadvantages |
|---|---|---|
| Scalar array | Low redundancy and low complexity | Strict sensor position, low identifiability |
| EMVS array | Closed-form solution, capable of 2D-DOA estimation with 1D geometry, suitable for arbitrary geometry, robust to sensor position error, better identifiability | High redundancy and high complexity |
Figure 5A general framework of a spatial CS for DOA estimation.
Figure 6An example of a temporal CS for DOA estimation.
Figure 7An example of a hybrid CS for DOA estimation.