论文标题
关节DOA估计和扭曲的传感器检测的低级别和行-SPARSE分解
Low-Rank and Row-Sparse Decomposition for Joint DOA Estimation and Distorted Sensor Detection
论文作者
论文摘要
扭曲的传感器可能会随机发生,并可能导致传感器阵列系统的崩溃。我们考虑了一个阵列模型,其中少数传感器会因未知传感器增益和相误差而变形。使用这样的阵列模型,研究了联合方向(DOA)估计和扭曲的传感器检测问题,并在低级别和行 - 帕克斯分解的框架下提出了该问题。我们得出了一种迭代重新加权的最小二乘(IRLS)算法,以解决无噪声和嘈杂的情况下产生的问题。通过单调性和目标函数的界限分析IRLS算法的收敛性。进行了广泛的模拟,涉及参数选择,收敛速度,计算复杂性以及DOA估计的性能以及扭曲的传感器检测。即使IRLS算法在检测扭曲的传感器时的交替方向方法稍差,但结果表明,在收敛速度,计算成本和DOA估计效果方面,我们的方法表现优于几种最先进的技术。
Distorted sensors could occur randomly and may lead to the breakdown of a sensor array system. 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 investigated and the problem 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 in both noiseless and noisy cases. 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.