Two Low-complexity DOA Estimators for Massive/Ultra-massive MIMO Receive Array
Yiwen Chen, Xichao Zhan, Feng Shu, Qijuan Jie, Xin Cheng, Zhihong, Zhuang, and Jiangzhou Wang

TL;DR
This paper introduces three low-complexity DOA estimation methods for massive MIMO arrays, significantly reducing computational complexity while maintaining high accuracy, with some methods approaching the theoretical CRLB.
Contribution
The paper proposes three novel low-complexity DOA estimators tailored for large-scale MIMO arrays, improving efficiency and performance over traditional methods like Root-MUSIC.
Findings
PSCC and PI-Max-CSCA achieve near-CRLB performance.
All three methods significantly reduce complexity compared to Root-MUSIC.
Simulation results confirm effectiveness for large-scale antenna arrays.
Abstract
Eigen-decomposition-based direction finding methods of using large-scale/ultra-large-scale fully-digital receive antenna arrays lead to a high or ultra-high complexity. To address the complexity dilemma, in this paper, three low-complexity estimators are proposed: partitioned subarray auto-correlation combining (PSAC), partitioned subarray cross-correlation combining (PSCC) and power iteration max correlation successive convex approximation (PI-Max-CSCA). Compared with the conventional no-partitioned direction finding method like root multiple signal classification (Root-MUSIC), in the PSAC method, the total set of antennas are equally partitioned into subsets of antennas, called subarrays, each subarray performs independent DOA estimation, and all DOA estimates are coherently combined to give the final estimation. For a better performance, the cross-correlation among sub-arrays is…
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Taxonomy
TopicsDirection-of-Arrival Estimation Techniques · Antenna Design and Optimization · Radio Astronomy Observations and Technology
