ScholarMate
客服热线:400-1616-289

Low-Rank and Row-Sparse Decomposition for Joint DOA Estimation and Distorted Sensor Detection

Huang, Huiping; Liu, Qi*; So, Hing Cheung; Zoubir, Abdelhak M. M.
Science Citation Index Expanded
-

摘要

Distorted sensors could occur randomly and may lead to the breakdown of a sensor array system. In this article, we consider an array model within which a small number of sensors are distorted by unknown sensor gain and phase errors. With such an array model, the problem of joint direction-of-arrival (DOA) estimation and distorted sensor detection is formulated under the framework of low-rank and row-sparse decomposition. We derive an iteratively reweighted least squares (IRLS) algorithm to solve the resulting problem. The convergence property of the IRLS algorithm is analyzed by means of the monotonicity and boundedness of the objective function. Extensive simulations are conducted regarding parameter selection, convergence speed, computational complexity, and performances of DOA estimation as well as distorted sensor detection. Even though the IRLS algorithm is slightly worse than the alternating direction method of multipliers in detecting the distorted sensors, the results show that our approach outperforms several state-of-the-art techniques in terms of convergence speed, computational cost, and DOA estimation performance.

关键词

Estimation Direction-of-arrival estimation Sensor arrays Sparse matrices Convergence Phase distortion Phased arrays Alternating direction method of multipliers direction-of-arrival (DOA) estimation distorted sensor iteratively reweighted least squares (IRLS) low-rank and row-sparse decomposition (LR < named-content xmlns:xlink="http: www w3 org 1999 xlink" xmlns:ali="http: niso schemas ali 1 0 " xmlns:mml="http: 1998 Math MathML" xmlns:xsi="http: 2001